CN108614885A - Knowledge mapping analysis method based on medical information and device - Google Patents

Knowledge mapping analysis method based on medical information and device Download PDF

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Publication number
CN108614885A
CN108614885A CN201810413668.7A CN201810413668A CN108614885A CN 108614885 A CN108614885 A CN 108614885A CN 201810413668 A CN201810413668 A CN 201810413668A CN 108614885 A CN108614885 A CN 108614885A
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patient
disease
information
medical
obtains
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CN108614885B (en
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李成君
仇志雄
应旭河
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Jiangsu Zhizhi Intelligent Technology Co.,Ltd.
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Hangzhou Know Technology Co Ltd
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F18/00Pattern recognition
    • G06F18/20Analysing
    • G06F18/24Classification techniques
    • G06F18/241Classification techniques relating to the classification model, e.g. parametric or non-parametric approaches
    • G06F18/2415Classification techniques relating to the classification model, e.g. parametric or non-parametric approaches based on parametric or probabilistic models, e.g. based on likelihood ratio or false acceptance rate versus a false rejection rate
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F18/00Pattern recognition
    • G06F18/20Analysing
    • G06F18/22Matching criteria, e.g. proximity measures
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F18/00Pattern recognition
    • G06F18/20Analysing
    • G06F18/23Clustering techniques
    • G06F18/232Non-hierarchical techniques
    • G06F18/2321Non-hierarchical techniques using statistics or function optimisation, e.g. modelling of probability density functions
    • G06F18/23213Non-hierarchical techniques using statistics or function optimisation, e.g. modelling of probability density functions with fixed number of clusters, e.g. K-means clustering
    • GPHYSICS
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16HHEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
    • G16H50/00ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
    • G16H50/30ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for calculating health indices; for individual health risk assessment

Abstract

The knowledge mapping analysis method and device, this method that the present invention provides a kind of based on medical information include:It obtains and segments word included in patient medical information;Participle word is analyzed based on default medical knowledge base, obtains the target criteria medical data corresponding to participle word;Target criteria medical data is matched with default disease knowledge collection of illustrative plates;The disease of patient is determined according to matching result;The feature vector of patient is built based on the disease of patient medical information and patient;Deterioration probability calculation is carried out to feature vector by disease progression machine learning model, obtains the disease progression probability of patient.This method really considers patient medical information, obtained disease outcome is more accurate, and can predict the case where disease, obtains the probability of disease progression, the technical issues of it is poor to alleviate the disease outcome accuracy that existing method obtains, and the case where disease can not be predicted.

Description

Knowledge mapping analysis method based on medical information and device
Technical field
The present invention relates to the technical fields of data processing, are analyzed more particularly, to a kind of knowledge mapping based on medical information Method and device.
Background technology
Knowledge mapping is also known as mapping knowledge domains, be explicit knowledge's development process and structural relation it is a series of it is various not With figure, with visualization technique Description of Knowledge resource and its carrier, excavate, analysis, structure, draw and explicit knowledge and they Between connect each other.By by the theory of the subjects such as applied mathematics, graphics, Information Visualization Technology, information science and just The methods of method and meterological citation analysis, Co-occurrence Analysis combine, and the core of subject is visually shown using visual collection of illustrative plates Structure, developing history, Disciplinary Frontiers and whole Knowledge framework reach the modern theory of Multidisciplinary Integration purpose.For disciplinary study Practical, valuable reference is provided.Knowledge mapping is the semantic knowledge-base of structuring, for describing physics with sign format Concept in the world and its correlation, basic composition unit are entity-relationship-entity triple and entity and its phase Attribute-value pair is closed, is interconnected by relationship between entity, the webbed structure of knowledge of structure.
Currently, being widely used for knowledge mapping is general, in the field of medicine, build medical knowledge collection of illustrative plates, can by illness, Complicated relationship between disease and diagnosis and treatment means is built into database by knowledge mapping, so as to be medical staff Good auxiliary diagnosis means are provided.Based on this, occurs the application of a large amount of online question and answer at this stage, these applications receive patient Information description in conjunction with the domain knowledge collection of illustrative plates built in advance, return to the disease of a patient using Sentence analysis and related algorithm Sick diagnostic result.
The problem of existing technical solution is generally by search question and answer library with patient's description similarity highest, returns to institute Corresponding disease outcome.This method cannot reflect conditions of patients completely, and obtained disease outcome accuracy is poor, and can only obtain The disease that patient is suffered from can not predict the case where disease.
Invention content
In view of this, the purpose of the present invention is to provide a kind of knowledge mapping analysis method and dress based on medical information It sets, it is poor to alleviate the disease outcome accuracy that existing method obtains, and the technology that can not be predicted the case where disease is asked Topic.
In a first aspect, an embodiment of the present invention provides a kind of knowledge mapping analysis method based on medical information, the side Method includes:
It obtains and segments word included in patient medical information, wherein the patient medical information includes:The base of patient This information, the state of an illness information of patient, the treatment information of patient, the social information of patient;
The participle word is analyzed based on default medical knowledge base, obtains the target corresponding to the participle word Standard medical data;
The target criteria medical data is matched with default disease knowledge collection of illustrative plates, wherein the default disease is known Know the relevance collection of illustrative plates that collection of illustrative plates is various diseases factor associated therewith;
The disease of the patient is determined according to matching result;
Disease based on the patient medical information and the patient builds the feature vector of the patient, wherein described Feature vector includes:Genius morbi vector treats feature vector, relationship characteristic vector;
Deterioration probability calculation is carried out to described eigenvector by disease progression machine learning model, obtains the patient's Disease progression probability, wherein the disease progression machine learning model is to be carried out to a large amount of feature vectors by K-MEANS algorithms The model that training obtains.
With reference to first aspect, an embodiment of the present invention provides the first possible embodiments of first aspect, wherein base The feature vector that the patient is built in the disease of the patient medical information and the patient includes:
To the essential information of the patient, the state of an illness information of the patient and the disease of the patient calculate, and obtain To genius morbi vector;
The disease for the treatment of information and the patient to the patient calculates, and obtains the treatment feature vector;
The social information of disease and the patient to the patient calculates, and obtains the relationship characteristic vector.
With reference to first aspect, an embodiment of the present invention provides second of possible embodiments of first aspect, wherein right The essential information of the patient, the state of an illness information of the patient and the disease of the patient calculate, and obtain the disease Feature vector includes:
Genius morbi is determined according to the disease of the patient;
The disease spy of the genius morbi range and stable disease crowd of disease progression crowd is obtained based on the genius morbi Levy range;
The genius morbi of essential information and patient described in the state of an illness information extraction of the patient based on the patient;
In conjunction with the genius morbi range of the disease progression crowd, the genius morbi range of the stable disease crowd and The genius morbi of the patient determines the Crowds Distribute belonging to the patient;
The genius morbi vector is calculated based on the Crowds Distribute belonging to the patient.
With reference to first aspect, an embodiment of the present invention provides the third possible embodiments of first aspect, wherein right The treatment information of the patient and the disease of the patient calculate, and obtain the treatment feature vector and include:
Therapeutic scheme is determined according to the disease of the patient, wherein includes multiple treatment features in the therapeutic scheme;
The treatment feature of patient described in treatment information extraction based on the patient;
The treatment feature of the patient is matched with the treatment feature in the therapeutic scheme;
The treatment feature vector of the patient is determined according to matching result.
With reference to first aspect, an embodiment of the present invention provides the 4th kind of possible embodiments of first aspect, wherein right The social information of the disease of the patient and the patient calculate, and obtain the relationship characteristic vector and include:
The social information of the disease of the patient and the patient are associated with the foundation of historical relation collection of illustrative plates, wherein described Historical relation collection of illustrative plates is the relation map obtained according to historic patient medical information;
The historical relation collection of illustrative plates is calculated by community discovery algorithm, obtains the social group belonging to the patient Body;
The weighted value that side in the historical relation collection of illustrative plates is updated by the disease progression risk of the social groups, obtains more Relation map after new, wherein the disease progression risk of the social groups is to be obtained according to the historic patient medical information 's;
The updated relation map is calculated by Random Walk Algorithm and node2vector, is obtained described Relationship characteristic vector.
With reference to first aspect, an embodiment of the present invention provides the 5th kind of possible embodiments of first aspect, wherein base The participle word is analyzed in default medical knowledge base, obtains the target criteria medicine number corresponding to the participle word According to including:
It is obtained and the candidate criteria medical data corresponding to the participle word based on the default medical knowledge base;
According between each standard medical data in the incidence relation of the participle word and the medical knowledge base Topological relation, the target criteria medical data is determined from the candidate criteria medical data.
With reference to first aspect, an embodiment of the present invention provides the 6th kind of possible embodiments of first aspect, wherein After obtaining the disease progression probability of the patient, the method further includes:
It is that the patient recommends therapeutic regimen according to the disease progression probability of the patient.
With reference to first aspect, an embodiment of the present invention provides the 7th kind of possible embodiments of first aspect, wherein obtains Take included in patient medical information segment word include:
Obtain the patient medical information;
The cluster probability of word and word in the patient medical information is counted using condition random field algorithm;
The patient medical information is segmented according to the cluster probability, obtains the participle word.
Second aspect, the embodiment of the present invention additionally provides a kind of knowledge mapping analytical equipment based on medical information, described Device includes:
Acquisition module segments word for obtaining included in patient medical information, wherein the patient medical information Including:The essential information of patient, the state of an illness information of patient, the treatment information of patient, the social information of patient;
Analysis module analyzes the participle word for being based on default medical knowledge base, obtains the participle word Target criteria medical data corresponding to language;
Matching module, for matching the target criteria medical data with default disease knowledge collection of illustrative plates, wherein institute State the relevance collection of illustrative plates that default disease knowledge collection of illustrative plates is various diseases factor associated therewith;
Determining module, the disease for determining the patient according to matching result;
Build module, for the disease based on the patient medical information and the patient build the feature of the patient to Amount, wherein described eigenvector includes:Genius morbi vector treats feature vector, relationship characteristic vector;
Computing module carries out deterioration probability calculation for passing through disease progression machine learning model to described eigenvector, Obtain the disease progression probability of the patient, wherein the disease progression machine learning model is by K-MEANS algorithms to big The model that measure feature vector is trained.
In conjunction with second aspect, an embodiment of the present invention provides the first possible embodiments of second aspect, wherein institute Stating structure module includes:
First computing unit, for the essential information to the patient, the state of an illness information of the patient and the patient Disease calculated, obtain genius morbi vector;
Second computing unit, the disease for treatment information and the patient to the patient are calculated, are obtained The treatment feature vector;
Third computing unit, the social information for disease and the patient to the patient calculate, and obtain institute State relationship characteristic vector.
The embodiment of the present invention brings following advantageous effect:A kind of knowledge mapping analysis method and dress based on medical information It sets, this method includes:It obtains and segments word included in patient medical information, wherein patient medical information includes:Patient's Essential information, the state of an illness information of patient, the treatment information of patient, the social information of patient;Based on default medical knowledge base to dividing Word word is analyzed, and the target criteria medical data corresponding to participle word is obtained;By target criteria medical data and preset Disease knowledge collection of illustrative plates is matched, wherein default disease knowledge collection of illustrative plates is the relevance collection of illustrative plates of various diseases factor associated therewith; The disease of patient is determined according to matching result;The feature vector of patient is built based on the disease of patient medical information and patient, In, feature vector includes:Genius morbi vector treats feature vector, relationship characteristic vector;Pass through disease progression machine learning mould Type carries out deterioration probability calculation to feature vector, obtains the disease progression probability of patient, wherein disease progression machine learning model For the model being trained to a large amount of feature vectors by K-MEANS algorithms.
In the prior art, generally by search question and answer library with patient's description similarity highest the problem of, it is right to return to institute The disease outcome answered, the disease outcome accuracy that this method obtains is poor, and can not predict the case where disease.With it is existing Method is compared, can be according to patient medical information in the knowledge mapping analysis method based on medical information of the embodiment of the present invention In participle word determine its corresponding target criteria medical data, then target criteria medical data and default disease are known again Know collection of illustrative plates to be matched, the disease of patient is determined, after obtaining disease outcome, additionally it is possible to the disease based on patient and patient doctor The feature vector for learning information architecture patient carries out feature vector eventually by disease progression machine learning model to deteriorate probability meter It calculates, obtains the disease progression probability of patient.This method really considers patient medical information, and obtained disease outcome is more accurate Really, and the case where disease, can be predicted, obtains the probability of disease progression, alleviate the disease that existing method obtains As a result accuracy is poor, and the technical issues of can not predict the case where disease.
Other features and advantages of the present invention will illustrate in the following description, also, partly become from specification It obtains it is clear that understand through the implementation of the invention.The purpose of the present invention and other advantages are in specification, claims And specifically noted structure is realized and is obtained in attached drawing.
To enable the above objects, features and advantages of the present invention to be clearer and more comprehensible, preferred embodiment cited below particularly, and coordinate Appended attached drawing, is described in detail below.
Description of the drawings
It, below will be to specific in order to illustrate more clearly of the specific embodiment of the invention or technical solution in the prior art Embodiment or attached drawing needed to be used in the description of the prior art are briefly described, it should be apparent that, in being described below Attached drawing is some embodiments of the present invention, for those of ordinary skill in the art, before not making the creative labor It puts, other drawings may also be obtained based on these drawings.
Fig. 1 is a kind of flow chart of the knowledge mapping analysis method based on medical information provided in an embodiment of the present invention;
Fig. 2 is the flow chart that word is segmented included in acquisition patient medical information provided in an embodiment of the present invention;
Fig. 3 is the feature vector provided in an embodiment of the present invention that patient is built based on the disease of patient medical information and patient Flow chart;
Fig. 4 is the essential information provided in an embodiment of the present invention to patient, the state of an illness information of patient and the disease of patient It is calculated, obtains the flow chart of genius morbi vector;
Fig. 5 calculates the treatment information of patient and the disease of patient to be provided in an embodiment of the present invention, is controlled Treat the flow chart of feature vector;
Fig. 6 calculates the disease of patient and the social information of patient to be provided in an embodiment of the present invention, obtains relationship The flow chart of feature vector;
Fig. 7 is a kind of structure diagram of the knowledge mapping analytical equipment based on medical information provided in an embodiment of the present invention.
Icon:
11- acquisition modules;12- analysis modules;13- matching modules;14- determining modules;15- builds module;16- calculates mould Block.
Specific implementation mode
In order to make the object, technical scheme and advantages of the embodiment of the invention clearer, below in conjunction with attached drawing to the present invention Technical solution be clearly and completely described, it is clear that described embodiments are some of the embodiments of the present invention, rather than Whole embodiments.Based on the embodiments of the present invention, those of ordinary skill in the art are not making creative work premise Lower obtained every other embodiment, shall fall within the protection scope of the present invention.
For ease of understanding the present embodiment, first to a kind of disclosed in the embodiment of the present invention based on medical information Knowledge mapping analysis method describes in detail.
Embodiment one:
A kind of knowledge mapping analysis method based on medical information, with reference to figure 1, this method includes:
S102, it obtains and segments word included in patient medical information, wherein patient medical information includes:Patient's Essential information, the state of an illness information of patient, the treatment information of patient, the social information of patient;
In embodiments of the present invention, the executive agent for being somebody's turn to do the knowledge mapping analysis method based on medical information is server, Server can obtain and segment word included in patient medical information.Specifically, patient medical data includes:Patient's is basic Information, the state of an illness information of patient, the treatment information of patient, the social information of patient.
The essential information of patient includes:The name of patient, the gender of patient, the age of patient, the identification card number etc. of patient Deng the embodiment of the present invention is to it without concrete restriction.
The state of an illness information of patient includes:The symptom of patient, the medical history of patient, the duration of symptom, cause symptom can The event of doubting etc., the embodiment of the present invention is to it without concrete restriction.
The treatment information of patient includes:The time for the treatment of patients, mode (such as drug therapy, the treatment of needle liquid, gastroscope Etc.), therapeutic scheme (such as drug noun eaten in drug therapy, dosage etc.) etc., the embodiment of the present invention to its not into Row concrete restriction.
Content is again described in detail the process for obtaining participle word included in patient medical information below, herein It repeats no more.
S104, participle word is analyzed based on default medical knowledge base, obtains the target mark corresponding to participle word Quasi- medical data;
After obtaining segmenting word included in patient medical information, inventor is not special in view of certain participle words The medical terminology of industry, in order to which disease is more accurately determined and predicted, so needing based on default medical knowledge base pair Participle word is analyzed, and the target criteria medical data corresponding to participle word is obtained.Hereinafter the process is carried out again detailed Thin description, details are not described herein.
S106, target criteria medical data is matched with default disease knowledge collection of illustrative plates, wherein default disease knowledge figure Spectrum is the relevance collection of illustrative plates of various diseases factor associated therewith;
After obtaining target criteria medical data, by target criteria medical data and the progress of default disease knowledge collection of illustrative plates Match, wherein default disease knowledge collection of illustrative plates is the relevance collection of illustrative plates of various diseases factor associated therewith.
S108, the disease that patient is determined according to matching result;
After the completion of matching, the disease of patient is determined according to matching result.Specifically, the target criteria medicine number such as obtained It according to for dizziness, has a running nose, cough is had a throat-ache, these target criteria medical datas and default disease knowledge collection of illustrative plates are carried out Match, is given a mark to possible disease according to matched matching degree, the disease corresponding to score highest is determined as patient's Disease, the disease as determined by above-mentioned target criteria medical data are flu.The embodiment of the present invention is only carried out with a citing Explanation, does not limit the method in the present invention.
S110, the feature vector that patient is built based on the disease of patient medical information and patient, wherein feature vector packet It includes:Genius morbi vector treats feature vector, relationship characteristic vector;
After obtaining the disease of patient, be based further on the feature of the disease structure patient of patient medical information and patient to Amount.Since the social information of the essential information of patient, the state of an illness information of patient, the treatment information of patient, patient is not structure Change data, be not used to the computation in later stage, so needing these non-structured data carrying out structuring, obtains patient Feature vector, specifically included genius morbi vector, treat feature vector, relationship characteristic vector.Hereinafter again to the process It describes in detail.
S112, deterioration probability calculation is carried out to feature vector by disease progression machine learning model, obtains the disease of patient Disease deteriorates probability, wherein disease progression machine learning model is to be trained to a large amount of feature vectors by K-MEANS algorithms The model arrived.
After obtaining the feature vector of patient, deterioration probability is carried out to feature vector by disease progression machine learning model It calculates, it will be able to obtain the disease progression probability of patient.
Disease progression machine learning model in the embodiment of the present invention be it is pre- first pass through K-MEANS algorithms to big measure feature to The model being trained is measured, K-MEANS algorithms are one kind in unsupervised machine learning algorithm, and K- is being used in the present invention When MEANS algorithms, K therein is obtained after being analyzed a large amount of historic patient medical informations by Gaussian function.
After the completion of the disease progression machine learning model is established, it will be able to carry out online real-time learning, be carried out to the model Continuous iteration optimization.
In the prior art, generally by search question and answer library with patient's description similarity highest the problem of, it is right to return to institute The disease outcome answered, the disease outcome accuracy that this method obtains is poor, and can not predict the case where disease.With it is existing Method is compared, can be according to patient medical information in the knowledge mapping analysis method based on medical information of the embodiment of the present invention In participle word determine its corresponding target criteria medical data, then target criteria medical data and default disease are known again Know collection of illustrative plates to be matched, the disease of patient is determined, after obtaining disease outcome, additionally it is possible to the disease based on patient and patient doctor The feature vector for learning information architecture patient carries out feature vector eventually by disease progression machine learning model to deteriorate probability meter It calculates, obtains the disease progression probability of patient.This method really considers patient medical information, and obtained disease outcome is more accurate Really, and the case where disease, can be predicted, obtains the probability of disease progression, alleviate the disease that existing method obtains As a result accuracy is poor, and the technical issues of can not predict the case where disease.
In embodiments of the present invention, after obtaining the disease progression probability of patient, this method further includes:
It is that patient recommends therapeutic regimen according to the disease progression probability of patient.
Specifically, be directed to different diseases, different disease progression probability there are corresponding therapeutic regimen, After obtaining disease progression probability, it will be able to according to therapeutic regimen of the deterioration determine the probability corresponding to it, by the treatment side Case is pushed to corresponding patient.
The brief introduction that the above carries out the method in the present invention below carries out the particular content being directed to It is discussed in detail.
Optionally, with reference to figure 2, obtaining participle word included in patient medical information includes:
S201, patient medical information is obtained;
In embodiments of the present invention, patient medical information can be text message, or voice messaging, when for voice When information, first voice messaging is identified, the text message corresponding to voice messaging is obtained, then carries out subsequent mistake again Journey.
The essential information of patient is mainly that patient is defeated in the mode of voice input or word input when this method is used The state of an illness information of the information entered, patient includes the history state of an illness information of patient and current state of an illness information, and current state of an illness information is The information that patient is stated by way of voice description, or with the information etc. of graphic form publication, the history state of an illness of patient Information be acquired automatically by interface with the relevant history state of an illness information of current state of an illness information (such as passing case), Similarly, the treatment information of patient also includes the Current therapeutic information of patient, also includes the historical therapeutic information of patient, obtains Mode is similar to above-mentioned mode, and details are not described herein.
The social information of patient is the information crawled by way of web crawlers, certainly, the embodiment of the present invention pair It is without concrete restriction.
S202, the cluster probability that word and word in patient medical information are counted using condition random field algorithm;
It after obtaining patient medical information, needs first to pre-process patient medical information, specifically, pretreatment packet It includes:Impurity elimination is handled, and classification processing, impurity elimination processing does not meet the information of preset field requirement to remove in patient medical information, point Class processing is treated that information is classified according to the classification belonging to information by impurity elimination, such as symptom class, time class, medicine Species etc..
There are many kinds of the methods segmented to patient medical information, and condition random field algorithm is used in the embodiment of the present invention Segmented, count patient medical information in word and word cluster probability, then according to when join together probability be less than predetermined probabilities when, Word segmentation processing is carried out between two words.
S203, patient medical information is segmented according to cluster probability, obtains participle word.
After obtaining participle word, participle word is analyzed based on default medical knowledge base.
In one optionally embodiment, participle word is analyzed based on default medical knowledge base, is segmented Target criteria medical data corresponding to word includes:
(1) it obtains based on default medical knowledge base and segments the candidate criteria medical data corresponding to word;
Specifically, the advance manual sorting of medical profession can be asked to go out or sorted out by artificial intelligence technology various Standard medical data in first input database, are then established search index, and relevant knowledge entry cluster is got up, are obtained Medical knowledge base.It is, being stored with various standard medical data and its topological relation in medical knowledge base, group reticulates knot Structure facilitates storage and calling.For the ease of inquiry, medical knowledge base can also increase intelligent word processing and search function.Its In, generally there are two source, the clinical experiences of medical literature and a certain domain expert for medical knowledge.
Medical knowledge base can be understood as a primary medical knowledge collection of illustrative plates by putting and side forms, wherein point is used for Each standard medical data in medical knowledge base are described, for example various symptoms, various organs and tissue etc.;Side is used for describing each mark Relationship between quasi- medical data, such as " being located at ", "comprising" and " quantity ".
With the continuous development of the medical technologies such as medical test, medical image, clinical diagnosis and rehabilitation, medicine is known Knowing constantly to enrich, and in order to give full play to the effect of medical knowledge base, can constantly acquire newborn medical knowledge, update medicine Knowledge base.
Using distance metric method calculate participle word in default medical knowledge base at a distance from word, when distance is less than in advance If when value, extracting corresponding candidate criteria medical data (i.e. data of the distance less than preset value).The candidate criteria medicine number According to quantity may be one, can also be able to be multiple.
It should be noted that the distance metric method includes but not limited to COS distance, Euclidean distance or other distances Measure.
(2) it is closed according to the topology between each standard medical data in the incidence relation and medical knowledge base of participle word System determines target criteria medical data from candidate criteria medical data.
After obtaining candidate criteria medical data, further according in the incidence relation and medical knowledge base of participle word Topological relation between each standard medical data determines target criteria medical data from candidate criteria medical data.
It is that the cooccurrence relation of statistical medicine word is realized when specific implementation.Assuming that the participle word in patient medical information Both occurred symptom word " loss of appetite " in language, and disease word " gastritis " also occurred, and laboratory indexes " white blood cell count(WBC) is exceeded ", With drug " sanjiu weitai capsules ", then it represents that " loss of appetite " has cooccurrence relation with " gastritis ", and " loss of appetite " and " white blood cell count(WBC) is super Mark " has cooccurrence relation, and " loss of appetite " has cooccurrence relation with " sanjiu weitai capsules ".
Further, it if " loss of appetite " and the co-occurrence quantity of " gastritis " are very high, can indicate " to lose the appetite " and " stomach It is scorching " there is very strong cooccurrence relation.The very strong keyword of cooccurrence relation, referred to as neighbours.In this embodiment, the neighbours of " loss of appetite " It is " gastritis ", " white blood cell count(WBC) is exceeded ", " sanjiu weitai capsules ".
Topological relation between each standard medical data can be inquired from default medical knowledge base.If it was found that symptom Word " receive difference " and disease " gastritis ", symptom word " receive difference " and laboratory indexes " white blood cell count(WBC) is exceeded ", symptom word " receive difference " and medicine Product " sanjiu weitai capsules ", between have direct or indirect company side, then can be determined as " receive difference " and " gastritis " has topological relation, " receives Difference " has topological relation with " white blood cell count(WBC) is exceeded ", and " receive difference " has topological relation with " sanjiu weitai capsules ".
It is also referred to as neighbours there is the point in each medical knowledge base of topological relation.In the example above, medical knowledge base In the neighbours of " receive difference " be " gastritis ", " white blood cell count(WBC) is exceeded ", " sanjiu weitai capsules ".
Thus judge, " receive difference " is much like with the neighbours of " loss of appetite ", so, " receive difference " and " loss of appetite " with compared with Strong replacement possibility.
Why above-mentioned process is carried out, be because if when patient is described using voice, it is possible to the language recognized Message breath is incorrect.For example word wrong in the example above " receive difference " is recognized, it can analyze to obtain by this way correct Word.
The process for building patient characteristic vector is described below:
In one optionally embodiment, with reference to figure 3, build patient's based on the disease of patient medical information and patient Feature vector includes:
S301, the essential information to patient, the state of an illness information of patient and the disease of patient calculate, and obtain disease spy Sign vector;
Specifically, genius morbi vector is the essential information according to patient, the state of an illness information of patient and the disease of patient It is calculated, hereinafter specific calculating process is described in detail again, details are not described herein.
S302, the treatment information of patient and the disease of patient are calculated, obtain medical treatment feature vector;
Specifically, treatment feature vector is calculated according to the treatment information of patient and the disease of patient, hereafter In specific calculating process is described in detail again, details are not described herein.
S303, the disease of patient and the social information of patient are calculated, obtains relationship characteristic vector.
Specifically, relationship characteristic vector is calculated according to the disease of patient and the social information of patient, under same The process is described in detail in Wen Zhongzai, and details are not described herein.
Optionally, with reference to figure 4, to the essential information of patient, the state of an illness information of patient and the disease of patient calculate, Obtaining genius morbi vector includes:
S401, genius morbi is determined according to the disease of patient;
Specifically, for different diseases, corresponding genius morbi is also different, these genius morbis are specially medical expert By the representative feature that medical practice for many years is summarized, these genius morbis can be one, or It is multiple, it is no longer illustrated in embodiments of the present invention.
The disease of S402, the genius morbi range that disease progression crowd is obtained based on genius morbi and stable disease crowd are special Levy range;
After obtaining genius morbi, it is based further on genius morbi and obtains corresponding disease progression human diseases characteristic range With the genius morbi range of stable disease crowd.These ranges are also that expert obtains by summary of experience for many years.Certainly, also It may include the genius morbi range of disease improvement crowd, be also no longer illustrated here.
The genius morbi of the state of an illness information extraction patient of S403, the essential information based on patient and patient;
After obtaining the genius morbi range of genius morbi range and stable disease crowd of above-mentioned disease progression crowd, Extract the genius morbi of patient.
S404, the genius morbi range in conjunction with disease progression crowd, the genius morbi range of stable disease crowd and trouble The genius morbi of person determines the Crowds Distribute belonging to patient;
After obtaining the genius morbi of patient, by the genius morbi range of the genius morbi of patient and disease progression crowd, The genius morbi range of stable disease crowd matches, and determines the Crowds Distribute belonging to patient.
S405, genius morbi vector is calculated based on the Crowds Distribute belonging to patient.
Specifically, point patient belonging to Crowds Distribute after, it will be able to obtain genius morbi vector.Specifically, patient Genius morbi in the genius morbi range of disease progression crowd, the position of the genius morbi range of stable disease crowd is different, Obtained numerical value also differs, which is genius morbi vector.
Optionally, with reference to figure 5, the disease for the treatment of information and patient to patient calculates, the feature that obtains medical treatment to Amount includes:
S501, therapeutic scheme is determined according to the disease of patient, wherein include multiple treatment features in therapeutic scheme;
In embodiments of the present invention, therapeutic scheme is determined according to the disease of patient, includes multiple treatments spy in therapeutic scheme Sign.
S502, the treatment feature for treating information extraction patient based on patient;
After the treatment feature for the scheme of obtaining medical treatment, the treatment feature of the treatment information extraction patient based on patient.Specifically , treatment feature includes at least:Treatment time, therapeutic modality and with treatment-related other information.For example, therapeutic modality is Drug therapy, then including just the species characteristic of drug, the dose characteristics of drug in treatment feature.
S503, the treatment feature of patient is matched with the treatment feature in therapeutic scheme;
After the treatment feature for the scheme that obtains medical treatment and the treatment feature of patient, by the treatment feature and therapeutic scheme of patient In treatment feature matched.
S504, the treatment feature vector that patient is determined according to matching result.
Optionally, with reference to figure 6, the social information of disease and patient to patient calculates, and obtains relationship characteristic vector Including:
S601, the social information of the disease of patient and patient are associated with the foundation of historical relation collection of illustrative plates, wherein historical relation Collection of illustrative plates is the relation map obtained according to historic patient medical information;
In embodiments of the present invention, historic patient medical information is stored in server, so, it is corresponding that there is also history Relation map.After the social information of the disease and patient that obtain patient, those information are associated with the foundation of historical relation collection of illustrative plates. For example, in historical relation collection of illustrative plates, there are a user A, also there are one user A in the social information of patient, just can establish trouble The disease of person, the social information of patient are associated with historical relation collection of illustrative plates.
S602, historical relation collection of illustrative plates is calculated by community discovery algorithm, obtains the social groups belonging to patient;
Establish with after being associated with of historical relation collection of illustrative plates, by community discovery algorithm to the historical relation figure after establishing association Spectrum is calculated, and the social groups belonging to patient are obtained.
S603, the weighted value that side in historical relation collection of illustrative plates is updated by the disease progression risk of social groups, are updated Relation map afterwards, wherein the disease progression risk of social groups is to be obtained according to historic patient medical information;
The weighted value that side in historical relation collection of illustrative plates is updated by the disease progression risk of social groups, obtains updated pass It is collection of illustrative plates.Wherein, known to the disease progression risk of social groups.
S604, updated relation map is calculated by Random Walk Algorithm and node2vector, obtains relationship Feature vector.
After obtaining updated relation map, by Random Walk Algorithm and node2vector to updated relationship Collection of illustrative plates is calculated, and relationship characteristic vector is obtained.
Why such calculating is carried out, be because some diseases are group's bursty natures, which (closes It is feature vector) it is also required to account for.
The invention discloses a kind of knowledge mapping analysis method and device based on medical information, to unsupervised machine learning The technological innovation of model is applied in medical data processing, by the essential information to patient, the state of an illness information of patient, patient's Information is treated, the vectorization of the social information of patient calculates, and disease progression machine learning model is built by K-MEANS algorithms, Disease progression probability can be determined in real time so that patient and medical staff can carry out the disease event of patient deep Solution improves cure rate to take effective therapeutic scheme in time.
Embodiment two:
A kind of knowledge mapping analytical equipment based on medical information, with reference to figure 7, which includes:
Acquisition module 11 segments word for obtaining included in patient medical information, wherein patient medical information wraps It includes:The essential information of patient, the state of an illness information of patient, the treatment information of patient, the social information of patient;
Analysis module 12 analyzes participle word for being based on default medical knowledge base, and it is right to obtain participle word institute The target criteria medical data answered;
Matching module 13, for matching target criteria medical data with default disease knowledge collection of illustrative plates, wherein default Disease knowledge collection of illustrative plates is the relevance collection of illustrative plates of various diseases factor associated therewith;
Determining module 14, the disease for determining patient according to matching result;
Module 15 is built, the feature vector for building patient based on the disease of patient medical information and patient, wherein special Levying vector includes:Genius morbi vector treats feature vector, relationship characteristic vector;
Computing module 16 carries out deterioration probability calculation to feature vector for passing through disease progression machine learning model, obtains To the disease progression probability of patient, wherein disease progression machine learning model is by K-MEANS algorithms to a large amount of feature vectors The model being trained.
It, can be according in patient medical information in the knowledge mapping analytical equipment based on medical information of the embodiment of the present invention Participle word determine its corresponding target criteria medical data, then again by target criteria medical data and default disease knowledge Collection of illustrative plates is matched, and the disease of patient is determined, after obtaining disease outcome, additionally it is possible to the disease based on patient and patient medical The feature vector of information architecture patient carries out feature vector eventually by disease progression machine learning model to deteriorate probability meter It calculates, obtains the disease progression probability of patient.The device really considers patient medical information, and obtained disease outcome is more accurate Really, and the case where disease, can be predicted, obtains the probability of disease progression, alleviate the disease that existing method obtains As a result accuracy is poor, and the technical issues of can not predict the case where disease.
Optionally, structure module includes:
First computing unit, for the essential information to patient, the state of an illness information of patient and the disease of patient are counted It calculates, obtains genius morbi vector;
Second computing unit, the disease for treatment information and patient to patient calculate, and obtain medical treatment feature Vector;
Third computing unit, the social information for disease and patient to patient calculate, obtain relationship characteristic to Amount.
Optionally, the first computing unit includes:
First determination subelement, for determining genius morbi according to the disease of patient;
Subelement is obtained, genius morbi range and stable disease people for obtaining disease progression crowd based on genius morbi The genius morbi range of group;
First extraction subelement, the disease of the state of an illness information extraction patient for essential information and patient based on patient are special Sign;
Second determination subelement, for the genius morbi range in conjunction with disease progression crowd, the disease of stable disease crowd Characteristic range and the genius morbi of patient, determine the Crowds Distribute belonging to patient;
First computation subunit, for calculating genius morbi vector based on the Crowds Distribute belonging to patient.
Optionally, the second computing unit includes:
Third determination subelement, for determining therapeutic scheme according to the disease of patient, wherein comprising multiple in therapeutic scheme Treat feature;
Second extraction subelement, the treatment feature for the treatment information extraction patient based on patient;
Coupling subelement, for matching the treatment feature of patient with the treatment feature in therapeutic scheme;
4th determination subelement, the treatment feature vector for determining patient according to matching result.
Optionally, third computing unit includes:
Association subelement is established, is closed for establishing the social information of the disease of patient and patient and historical relation collection of illustrative plates Connection, wherein historical relation collection of illustrative plates is the relation map obtained according to historic patient medical information;
Second computation subunit calculates historical relation collection of illustrative plates for passing through community discovery algorithm, obtains patient institute The social groups of category;
Subelement is updated, the weight for updating side in historical relation collection of illustrative plates by the disease progression risk of social groups Value, obtains updated relation map, wherein the disease progression risk of social groups is to be obtained according to historic patient medical information 's;
Third computation subunit, for by Random Walk Algorithm and node2vector to updated relation map into Row calculates, and obtains relationship characteristic vector.
Optionally, analysis module includes:
First acquisition unit, for obtaining based on default medical knowledge base and segmenting the candidate criteria medicine corresponding to word Data;
Determination unit, between each standard medical data in the incidence relation and medical knowledge base according to participle word Topological relation, target criteria medical data is determined from candidate criteria medical data.
Optionally, device further includes:
Recommending module, for being that patient recommends therapeutic regimen according to the disease progression probability of patient.
Optionally, acquisition module includes:
Second acquisition unit, for obtaining patient medical information;
Statistic unit, for the cluster probability using word and word in condition random field algorithm statistics patient medical information;
Participle unit obtains participle word for being segmented to patient medical information according to cluster probability.
The detailed content that can be referred in above-described embodiment one is specifically described in the embodiment two, details are not described herein.
The computer program for the knowledge mapping analysis method and device based on medical information that the embodiment of the present invention is provided Product, including the computer readable storage medium of program code is stored, the instruction that said program code includes can be used for executing Method described in previous methods embodiment, specific implementation can be found in embodiment of the method, and details are not described herein.
It is apparent to those skilled in the art that for convenience and simplicity of description, the system of foregoing description It with the specific work process of device, can refer to corresponding processes in the foregoing method embodiment, details are not described herein.
In addition, in the description of the embodiment of the present invention unless specifically defined or limited otherwise, term " installation ", " phase Even ", " connection " shall be understood in a broad sense, for example, it may be being fixedly connected, may be a detachable connection, or be integrally connected;It can Can also be electrical connection to be mechanical connection;It can be directly connected, can also indirectly connected through an intermediary, Ke Yishi Connection inside two elements.For the ordinary skill in the art, above-mentioned term can be understood at this with concrete condition Concrete meaning in invention.
It, can be with if the function is realized in the form of SFU software functional unit and when sold or used as an independent product It is stored in a computer read/write memory medium.Based on this understanding, technical scheme of the present invention is substantially in other words The part of the part that contributes to existing technology or the technical solution can be expressed in the form of software products, the meter Calculation machine software product is stored in a storage medium, including some instructions are used so that a computer equipment (can be People's computer, server or network equipment etc.) it performs all or part of the steps of the method described in the various embodiments of the present invention. And storage medium above-mentioned includes:USB flash disk, mobile hard disk, read-only memory (ROM, Read-Only Memory), arbitrary access are deposited The various media that can store program code such as reservoir (RAM, Random Access Memory), magnetic disc or CD.
In the description of the present invention, it should be noted that term "center", "upper", "lower", "left", "right", "vertical", The orientation or positional relationship of the instructions such as "horizontal", "inner", "outside" be based on the orientation or positional relationship shown in the drawings, merely to Convenient for the description present invention and simplify description, do not indicate or imply the indicated device or element must have a particular orientation, With specific azimuth configuration and operation, therefore it is not considered as limiting the invention.In addition, term " first ", " second ", " third " is used for description purposes only, and is not understood to indicate or imply relative importance.
Finally it should be noted that:Embodiment described above, only specific implementation mode of the invention, to illustrate the present invention Technical solution, rather than its limitations, scope of protection of the present invention is not limited thereto, although with reference to the foregoing embodiments to this hair It is bright to be described in detail, it will be understood by those of ordinary skill in the art that:Any one skilled in the art In the technical scope disclosed by the present invention, it can still modify to the technical solution recorded in previous embodiment or can be light It is readily conceivable that variation or equivalent replacement of some of the technical features;And these modifications, variation or replacement, do not make The essence of corresponding technical solution is detached from the spirit and scope of technical solution of the embodiment of the present invention, should all cover the protection in the present invention Within the scope of.Therefore, the protection scope of the present invention shall be subject to the protection scope of the claims.

Claims (10)

1. a kind of knowledge mapping analysis method based on medical information, which is characterized in that the method includes:
It obtains and segments word included in patient medical information, wherein the patient medical information includes:The basic letter of patient Breath, the state of an illness information of patient, the treatment information of patient, the social information of patient;
The participle word is analyzed based on default medical knowledge base, obtains the target criteria corresponding to the participle word Medical data;
The target criteria medical data is matched with default disease knowledge collection of illustrative plates, wherein the default disease knowledge figure Spectrum is the relevance collection of illustrative plates of various diseases factor associated therewith;
The disease of the patient is determined according to matching result;
Disease based on the patient medical information and the patient builds the feature vector of the patient, wherein the feature Vector includes:Genius morbi vector treats feature vector, relationship characteristic vector;
Deterioration probability calculation is carried out to described eigenvector by disease progression machine learning model, obtains the disease of the patient Deteriorate probability, wherein the disease progression machine learning model is to be trained to a large amount of feature vectors by K-MEANS algorithms Obtained model.
2. according to the method described in claim 1, it is characterized in that, the disease based on the patient medical information and the patient The feature vector for building the patient includes:
To the essential information of the patient, the state of an illness information of the patient and the disease of the patient calculate, and obtain institute State genius morbi vector;
The disease for the treatment of information and the patient to the patient calculates, and obtains the treatment feature vector;
The social information of disease and the patient to the patient calculates, and obtains the relationship characteristic vector.
3. according to the method described in claim 2, it is characterized in that, essential information to the patient, the state of an illness of the patient Information and the disease of the patient calculate, and obtain the genius morbi vector and include:
Genius morbi is determined according to the disease of the patient;
The genius morbi model of the genius morbi range and stable disease crowd of disease progression crowd is obtained based on the genius morbi It encloses;
The genius morbi of essential information and patient described in the state of an illness information extraction of the patient based on the patient;
In conjunction with the genius morbi range of the disease progression crowd, the genius morbi range of the stable disease crowd and described The genius morbi of patient determines the Crowds Distribute belonging to the patient;
The genius morbi vector is calculated based on the Crowds Distribute belonging to the patient.
4. according to the method described in claim 2, it is characterized in that, the disease of the treatment information and the patient to the patient Disease is calculated, and is obtained the treatment feature vector and is included:
Therapeutic scheme is determined according to the disease of the patient, wherein includes multiple treatment features in the therapeutic scheme;
The treatment feature of patient described in treatment information extraction based on the patient;
The treatment feature of the patient is matched with the treatment feature in the therapeutic scheme;
The treatment feature vector of the patient is determined according to matching result.
5. according to the method described in claim 2, it is characterized in that, the social information of the disease and the patient to the patient It is calculated, obtaining the relationship characteristic vector includes:
The social information of the disease of the patient and the patient are associated with the foundation of historical relation collection of illustrative plates, wherein the history Relation map is the relation map obtained according to historic patient medical information;
The historical relation collection of illustrative plates is calculated by community discovery algorithm, obtains the social groups belonging to the patient;
The weighted value that side in the historical relation collection of illustrative plates is updated by the disease progression risk of the social groups, after obtaining update Relation map, wherein the disease progression risk of the social groups is to be obtained according to the historic patient medical information;
The updated relation map is calculated by Random Walk Algorithm and node2vector, obtains the relationship Feature vector.
6. according to the method described in claim 1, it is characterized in that, being carried out to the participle word based on default medical knowledge base Analysis, obtaining the target criteria medical data corresponding to the participle word includes:
It is obtained and the candidate criteria medical data corresponding to the participle word based on the default medical knowledge base;
According to opening up between each standard medical data in the incidence relation of the participle word and the medical knowledge base Relationship is flutterred, the target criteria medical data is determined from the candidate criteria medical data.
7. according to the method described in claim 1, it is characterized in that, after obtaining the disease progression probability of the patient, institute The method of stating further includes:
It is that the patient recommends therapeutic regimen according to the disease progression probability of the patient.
8. according to the method described in claim 1, segmenting word packet included in patient medical information it is characterized in that, obtaining It includes:
Obtain the patient medical information;
The cluster probability of word and word in the patient medical information is counted using condition random field algorithm;
The patient medical information is segmented according to the cluster probability, obtains the participle word.
9. a kind of knowledge mapping analytical equipment based on medical information, which is characterized in that described device includes:
Acquisition module segments word for obtaining included in patient medical information, wherein patient medical information's packet It includes:The essential information of patient, the state of an illness information of patient, the treatment information of patient, the social information of patient;
Analysis module analyzes the participle word for being based on default medical knowledge base, obtains participle word institute Corresponding target criteria medical data;
Matching module, for matching the target criteria medical data with default disease knowledge collection of illustrative plates, wherein described pre- If disease knowledge collection of illustrative plates is the relevance collection of illustrative plates of various diseases factor associated therewith;
Determining module, the disease for determining the patient according to matching result;
Module is built, the feature vector of the patient is built for the disease based on the patient medical information and the patient, Wherein, described eigenvector includes:Genius morbi vector treats feature vector, relationship characteristic vector;
Computing module carries out deterioration probability calculation to described eigenvector for passing through disease progression machine learning model, obtains The disease progression probability of the patient, wherein the disease progression machine learning model is by K-MEANS algorithms to a large amount of special The model that sign vector is trained.
10. device according to claim 9, which is characterized in that the structure module includes:
First computing unit, for the essential information to the patient, the state of an illness information of the patient and the disease of the patient Disease is calculated, and the genius morbi vector is obtained;
Second computing unit, the disease for treatment information and the patient to the patient calculate, and obtain described Treat feature vector;
Third computing unit, the social information for disease and the patient to the patient calculate, and obtain the pass It is feature vector.
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