CN105975740B - A kind of medical system with intelligent diagnostics - Google Patents

A kind of medical system with intelligent diagnostics Download PDF

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Publication number
CN105975740B
CN105975740B CN201610251473.8A CN201610251473A CN105975740B CN 105975740 B CN105975740 B CN 105975740B CN 201610251473 A CN201610251473 A CN 201610251473A CN 105975740 B CN105975740 B CN 105975740B
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patient
module
attending physician
data
neural network
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CN105975740A (en
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寇玮蔚
张明飞
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Beijing Hengchuang Jiayi Pharmaceutical Co ltd
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    • 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
    • G16H50/20ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
    • G06F19/3418
    • 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

A kind of medical system with intelligent diagnostics, it is characterised in that:Including hospital system, home system and remote monitoring center, hospital system includes medical investigative apparatus, patient condition diversity module, intelligent diagnostics module, data consolidation server, and home system includes Portable Monitoring Set.

Description

A kind of medical system with intelligent diagnostics
Technical field
The invention belongs to smart machine fields, more particularly to a kind of medical department with intelligent diagnostics for Nephrology dept. System.
Background technology
Intelligent medical system analyzed using computer, retrieved, science is calculated, is reasonable, comprehensive diagnostic result, pathology Inspection etc. is learned, the required correlative factor of the disease is made a definite diagnosis to each disease offer of diagnostic result.But current intelligent medical system System rests in the collection of patient's essential information and case history mostly, and diagnose and treat scheme is all to have doctor to make, working doctor Amount is not mitigated, and is lacked in family's care monitoring.
Invention content
The technical problem to be solved by the present invention is to how by algorithm realize to the assessment of condition-inference and therapeutic scheme with And formulate, provide a kind of medical system with intelligent diagnostics to this present invention comprising hospital system, home system and far Range monitoring center,
Hospital system includes medical investigative apparatus, patient condition diversity module, intelligent diagnostics module, Data Integration service Device,
Home system includes Portable Monitoring Set,
Attending physician realizes the formulation to the medical examination of patient, diagnosis and therapeutic scheme by hospital system, cures mainly Doctor is in the real time data to nurse the sick by the acquisition of the Portable Monitoring Set of home system, Portable Monitoring Set also with Remote monitoring center is wirelessly connected, to which reply can be taken in time when emergency occurs in patient, and emergency is same Shi Tongzhi attending physicians and upload data consolidation server,
When patient is in hospital system, medical investigative apparatus detects the multinomial medical examination data of patient, and inputs disease People's state diversity module, patient condition diversity module assess the state of an illness of patient using assessment algorithm, and attending physician then passes through It crosses authentication and enters patient condition diversity module and the assessment result of division is verified, if what attending physician thought to divide Assessment result is correct, then files the relevant information of patient and medical examination data according to assessment result, and input intelligence Diagnostic module is determined the assessment result of patient by attending physician if attending physician thinks that the assessment result divided is incorrect, The relevant information of patient and medical examination data are filed according to assessment result again, and input intelligent diagnostics module;Intelligence Diagnostic module automatically generates corresponding therapeutic scheme according to the relevant information, medical examination data and assessment result of patient, main It controls doctor and enters intelligent diagnostics module by authentication and therapeutic scheme is verified, if attending physician thinks therapeutic scheme Correctly, then the relevant information of patient, medical examination data, therapeutic scheme and assessment result are uploaded to Data Integration service Device reformulates therapeutic scheme if attending physician thinks that therapeutic scheme is incorrect by attending physician, then by the correlation of patient Information, medical examination data, therapeutic scheme and assessment result are uploaded to data consolidation server;
Intelligent diagnostics module includes dynamic comprehensive database, neural network learning module, inference machine, explanation module, sample Knowledge base, neural network structure knowledge base, clinical symptoms Description of Knowledge library, disease knowledge library, therapeutic scheme knowledge base, history note Knowledge base, knowledge data database management module are recorded,
Expert can modify to neural network learning module and by knowledge base management module to each knowledge base into Update is safeguarded in row adjustment management;
Explanation module is the bridge linked up between system and attending physician, is responsible for converting the diagnosis of attending physician to system The information that can be identified, and convert the last output result of system to attending physician it will be appreciated that information;
Inference machine utilizes each knowledge base, relevant information, medical treatment inspection in conjunction with the patient provided in dynamic comprehensive database It looks into data and assessment result makes inferences, obtain corresponding therapeutic scheme.
Inference machine includes ANN Reasoning module and rule-based reasoning module;
Neural network learning module proposes the neural network knot including the network number of plies, input, output, hidden node number Structure organizes learning sample to be trained and Learning Algorithm, is learnt by the extraction of sample knowledge library, is weighed Distribution value completes knowledge acquisition.
Further, neural network structure is realized by the method that fuzzy logic and neural network combine, neural network Learning algorithm is BP algorithm.
Sample knowledge library, neural network structure knowledge base, clinical symptoms Description of Knowledge library, disease knowledge library, scheme of curing the disease Knowledge base, historical record knowledge base store corresponding knowledge data respectively;Each knowledge base is dynamic expansion, has self study From the function of supplement.
ANN Reasoning module is inputted according to neural network structure knowledge base, dynamic comprehensive database and explanation module Data make inferences, and the reasoning results are exported and give rule-based reasoning module, rule-based reasoning module combines dynamic State integrated database, clinical symptoms Description of Knowledge library, disease knowledge library, scheme of curing the disease knowledge base, historical record Analysis of Knowledge Bases Reasoning Generate final therapeutic scheme;
Knowledge data database management module has the function of that complete database manipulation, expert pass through knowledge data database management module Being inquired, added and being deleted and being changed to each knowledge base
Dynamic comprehensive database receives and stores the relevant information of patient, medical examination data and assessment result;
The course of work of inference machine is as follows:
The relevant information of patient, medical examination data and assessment result are carried out Fuzzy processing by step (1), and with this Input pattern as each sub-neural network;
Step (2) reads in the weight matrix of each sub-neural network from neural network structure knowledge base;
Step (3) combines the weight matrix of each sub-neural network input layer, implicit interlayer, calculates each sub-neural network input The output of layer neuron, and will be output as the input of hidden layer neuron;
The weight matrix that step (4) combines each sub-neural network hidden layer, exports interlayer calculates the defeated of output layer neuron Go out value;
Step (5) is according to the output valve of output layer neuron, in conjunction with the relevant information in dynamic comprehensive database into professional etiquette Then reasoning assigns a cause for an illness, and provides confidence level;
Whether step (6) correct according to the cause of disease that Credibility judgement reasoning obtains, if confidence level 80% hereinafter, if recognize It is incorrect for reasoning, return to step (1), if confidence level is 80% or more, then it is assumed that reasoning is correct, enters step (7);
Step (7) provides the therapeutic scheme corresponding to the specific cause of disease according to finally determining reason in conjunction with relevant information.
Beneficial effects of the present invention:
(1) evaluation to patient's state of an illness is realized by assessment algorithm, to be Case treatment scheme and Case treatment ring The selection in border provides foundation;
(2) there is home system, to ensure that the round-the-clock monitoring of patient's residential care;
(3) intelligent diagnostics mode is introduced, therapeutic scheme is automatically generated, to greatly reduce the labor intensity of doctor.
Description of the drawings
Fig. 1 is the system block diagram of the present invention;
Fig. 2 is the intelligent diagnostics module composition frame chart of the present invention;
Specific implementation mode
The present invention is further illustrated with embodiment below in conjunction with the accompanying drawings.
The embodiment of the present invention shows with reference to figure 1-2.
A kind of medical system with intelligent diagnostics comprising hospital system, home system and remote monitoring center,
Hospital system includes medical investigative apparatus, patient condition diversity module, intelligent diagnostics module, Data Integration service Device,
Home system includes Portable Monitoring Set,
Attending physician realizes the formulation to the medical examination of patient, diagnosis and therapeutic scheme by hospital system, cures mainly Doctor is in the real time data to nurse the sick by the acquisition of the Portable Monitoring Set of home system, Portable Monitoring Set also with Remote monitoring center is wirelessly connected, to which reply can be taken in time when emergency occurs in patient, and emergency is same Shi Tongzhi attending physicians and upload data consolidation server,
When patient is in hospital system, medical investigative apparatus detects the multinomial medical examination data of patient, and inputs disease People's state diversity module, patient condition diversity module assess the state of an illness of patient using assessment algorithm, and attending physician then passes through It crosses authentication and enters patient condition diversity module and the assessment result of division is verified, if what attending physician thought to divide Assessment result is correct, then files the relevant information of patient and medical examination data according to assessment result, and input intelligence Diagnostic module is determined the assessment result of patient by attending physician if attending physician thinks that the assessment result divided is incorrect, The relevant information of patient and medical examination data are filed according to assessment result again, and input intelligent diagnostics module;Intelligence Diagnostic module automatically generates corresponding therapeutic scheme according to the relevant information, medical examination data and assessment result of patient, main It controls doctor and enters intelligent diagnostics module by authentication and therapeutic scheme is verified, if attending physician thinks therapeutic scheme Correctly, then the relevant information of patient, medical examination data, therapeutic scheme and assessment result are uploaded to Data Integration service Device reformulates therapeutic scheme if attending physician thinks that therapeutic scheme is incorrect by attending physician, then by the correlation of patient Information, medical examination data, therapeutic scheme and assessment result are uploaded to data consolidation server;
The assessment algorithm of patient condition diversity module is specially:
Grade classification is carried out to each single item medical examination data, then
Whole detection measured value is:
Wherein, OPM is whole detection measured value, TiFor the grade point of i-th medical examination data, i=1,2 ..., N, Ti =1,2 ..., M, M be greatest level value, M >=2, N be medical examination data total item;
Maximum entirety measured value is:
OPM_MAX is maximum whole measured value
Then the assessed value as patient's state of an illness of assessment result is:
Above-mentioned assessment calculates the state of an illness that can effectively assess patient, to carry out Put on file.
Further, M=5, N=6
Medical investigative apparatus includes glucometer, ECG detecting device, respiratory rate detector, cholesterol levels detection Device, blood pressure instrument, X-ray production apparatus,
Medical examination data include blood sugar concentration, ECG data evaluation, respiratory rate, cholesterol levels, blood pressure conditions, Radioscopy is evaluated,
Further,
Wherein, the opinion rating of blood sugar concentration divides as shown in the table;
Grade 1 2 3 4 5
Blood sugar concentration (mg/DL) < 98 98-154 155-183 184-254 > 254
The opinion rating of respiratory rate divides as shown in the table;
The opinion rating of cholesterol levels divides as shown in the table;
Grade 1 2 3 4 5
Cholesterol levels (mmolg/l) < 5.2 5.2-5.5 5.6-5.8 5.9-6.0 > 6.0
The opinion rating of blood pressure conditions divides as shown in the table;
ECG data evaluation refers to that doctor evaluates according only to the grade that electrocardiogram is made;
Radioscopy evaluation refers to that doctor evaluates according only to the grade that X-ray is made;
Intelligent diagnostics module includes dynamic comprehensive database, neural network learning module, inference machine, explanation module, sample Knowledge base, neural network structure knowledge base, clinical symptoms Description of Knowledge library, disease knowledge library, therapeutic scheme knowledge base, history note Knowledge base, knowledge data database management module are recorded,
Expert can be adjusted pipe to neural network learning module and by knowledge base management module to each knowledge base Reason safeguards update;
Explanation module is the bridge linked up between system and attending physician, is responsible for converting the diagnosis of attending physician to system The information that can be identified, and convert the last output result of system to attending physician it will be appreciated that information;
Inference machine utilizes each knowledge base, relevant information, medical treatment inspection in conjunction with the patient provided in dynamic comprehensive database It looks into data and assessment result makes inferences, obtain corresponding therapeutic scheme.
Inference machine includes ANN Reasoning module and rule-based reasoning module;
Neural network learning module proposes the neural network knot including the network number of plies, input, output, hidden node number Structure organizes learning sample to be trained and Learning Algorithm, is learnt by the extraction of sample knowledge library, is weighed Distribution value completes knowledge acquisition.
Further, neural network structure is realized by the method that fuzzy logic and neural network combine, neural network Learning algorithm is BP algorithm.
Sample knowledge library, neural network structure knowledge base, clinical symptoms Description of Knowledge library, disease knowledge library, scheme of curing the disease Knowledge base, historical record knowledge base store corresponding knowledge data respectively;Each knowledge base is dynamic expansion, has self study From the function of supplement.
ANN Reasoning module is inputted according to neural network structure knowledge base, dynamic comprehensive database and explanation module Data make inferences, and the reasoning results are exported and give rule-based reasoning module, rule-based reasoning module combines dynamic State integrated database, clinical symptoms Description of Knowledge library, disease knowledge library, scheme of curing the disease knowledge base, historical record Analysis of Knowledge Bases Reasoning Generate final therapeutic scheme;
Knowledge data database management module has the function of that complete database manipulation, expert pass through knowledge data database management module Being inquired, added and being deleted and being changed to each knowledge base
Dynamic comprehensive database receives and stores the relevant information of patient, medical examination data and assessment result;
The course of work of inference machine is as follows:
The relevant information of patient, medical examination data and assessment result are carried out Fuzzy processing by step (1), and with this Input pattern as each sub-neural network;
Step (2) reads in the weight matrix of each sub-neural network from neural network structure knowledge base;
Step (3) combines the weight matrix of each sub-neural network input layer, implicit interlayer, calculates each sub-neural network input The output of layer neuron, and will be output as the input of hidden layer neuron;
The weight matrix that step (4) combines each sub-neural network hidden layer, exports interlayer calculates the defeated of output layer neuron Go out value;
Step (5) is according to the output valve of output layer neuron, in conjunction with the relevant information in dynamic comprehensive database into professional etiquette Then reasoning assigns a cause for an illness, and provides confidence level;
Whether step (6) correct according to the cause of disease that Credibility judgement reasoning obtains, if confidence level 80% hereinafter, if recognize It is incorrect for reasoning, return to step (1), if confidence level is 80% or more, then it is assumed that reasoning is correct, enters step (7);
Step (7) provides the therapeutic scheme corresponding to the specific cause of disease according to finally determining reason in conjunction with relevant information;
Intelligent diagnostics are truly realized by intelligent diagnostics module, full and accurate therapeutic scheme can be provided for doctor, in turn Reduce its working strength.
Data consolidation server includes interactive interface module, registration module, communication monitoring module, data storage dress It sets, attending physician carries out grade registration by registering module, and by interactive interface module accesses data storage device Patient information, communication monitoring module be used for and remote monitoring center carry out data exchange.
Data consolidation server realizes comprehensive integration of patient information to provide full and accurate information for treating physician.
Determine whether patient can be in nursing according to the opinion of assessed value C and attending physician, if assessed value for C >= 0.4, then patient need be hospitalized;If assessed value is 0 < C < 0.1, such patient has fully recovered substantially, without further examining Disconnected monitoring service;If assessed value is 0.1≤C < 0.4 and attending physician agrees to, patient can carry out residential care;
When patient is in home system, according to assessed value judge the required basic diagnosis service of home care patients, High level diagnostics service, diagnosis report form, attending physician's type, monitoring period and monitoring period;
As 0.1≤C < 0.2, such patient is slight patient,
Basic diagnosis service is patient's essential information, case history, electrocardiogram, blood pressure detecting;
Without high level diagnostics service;
Diagnosis report form is web page notification and mail;
Attending physician's type is the attending physician of 10 years or less experiences;
Monitoring period is 1 day;
It is 1 hour primary to monitor the period;
As 0.2≤C < 0.3, such patient is moderate patient,
Basic diagnosis service is patient's essential information, case history, electrocardiogram, blood pressure detecting, blood sugar test, cardiopulmonary detection, courage Sterol levels detect;
Without high level diagnostics service;
Diagnosis report form is web page notification and mail;
Attending physician's type is the attending physician of 10 years or less experiences;
Monitoring period is 7 days;
It is 1 hour primary to monitor the period;
As 0.3≤C < 0.4, such patient is severe patient,
Basic diagnosis service is patient's essential information, case history, electrocardiogram, blood pressure detecting, blood sugar test, cardiopulmonary detection, courage Sterol levels detect, assessment aroused in interest, heart radiography;
High level diagnostics service is virtual heart, expert consultation;
Diagnosis report form is mobile phone, web page notification and mail;
Attending physician's type is the attending physician of 10 years or more experiences;
Monitoring period is 30 days;
It is 1 minute to monitor the period;
It can be directed to the state of an illness of different patients by above-mentioned classification, different treatments and nursing care mode are taken, to close Reason configuration medical resource, reduces medical treatment cost.
Furtherly, wherein basic diagnosis service, high level diagnostics service are realized by Portable Monitoring Set.
Embodiment described above only expresses one embodiment of the present invention, but can not therefore be interpreted as to this The limitation of invention scope.It should be pointed out that for those of ordinary skill in the art, in the premise for not departing from present inventive concept Under, various modifications and improvements can be made, these are all within the scope of protection of the present invention.

Claims (7)

1. a kind of medical system with intelligent diagnostics, it is characterised in that:Including hospital system, home system and remote monitoring Center,
Hospital system includes medical investigative apparatus, patient condition diversity module, intelligent diagnostics module, data consolidation server,
Home system includes Portable Monitoring Set,
Attending physician realizes the formulation to the medical examination of patient, diagnosis and therapeutic scheme, attending physician by hospital system Be in the real time data to nurse the sick by the acquisition of the Portable Monitoring Set of home system, Portable Monitoring Set also with remotely Monitoring center is wirelessly connected, and to take reply in time when emergency occurs in patient, and emergency is led to simultaneously Know attending physician and upload data consolidation server,
When patient is in hospital system, medical investigative apparatus detects the multinomial medical examination data of patient, and inputs patient's shape State diversity module, patient condition diversity module assess the state of an illness of patient using assessment algorithm, and attending physician then passes through body Part certification enters patient condition diversity module and verifies the assessment result of division, if attending physician thinks the assessment divided As a result correct, then the relevant information of patient and medical examination data are filed according to assessment result, and input intelligent diagnostics Module is determined the assessment result of patient by attending physician, then will if attending physician thinks that the assessment result divided is incorrect The relevant information and medical examination data of patient is filed according to assessment result, and inputs intelligent diagnostics module;Intelligent diagnostics Module automatically generates corresponding therapeutic scheme according to the relevant information, medical examination data and assessment result of patient, cures mainly doctor Life enters intelligent diagnostics module by authentication and verifies therapeutic scheme, if attending physician thinks therapeutic scheme just Really, then the relevant information of patient, medical examination data, therapeutic scheme and assessment result are uploaded to data consolidation server, If attending physician thinks that therapeutic scheme is incorrect, therapeutic scheme is reformulated by attending physician, then the correlation of patient is believed Breath, medical examination data, therapeutic scheme and assessment result are uploaded to data consolidation server;
Intelligent diagnostics module includes dynamic comprehensive database, neural network learning module, inference machine, explanation module, sample knowledge Library, neural network structure knowledge base, clinical symptoms Description of Knowledge library, disease knowledge library, therapeutic scheme knowledge base, historical record are known Know library, knowledge data database management module;
Explanation module is the bridge linked up between medical system and attending physician with intelligent diagnostics, is responsible for attending physician's Diagnosis is converted into the information that the medical system with intelligent diagnostics can identify, and the medical system with intelligent diagnostics is last Output result be converted into attending physician it will be appreciated that information;
Inference machine utilizes each knowledge base, relevant information, medical examination number in conjunction with the patient provided in dynamic comprehensive database According to this and assessment result makes inferences, and obtains corresponding therapeutic scheme,
Inference machine includes ANN Reasoning module and rule-based reasoning module;
Neural network learning module propose neural network structure including the network number of plies, input, output, hidden node number, Learning sample to be trained and Learning Algorithm are organized, is learnt by the extraction of sample knowledge library, obtains weights Knowledge acquisition is completed in distribution,
Neural network structure realizes that Learning Algorithm is calculated for BP by the method that fuzzy logic and neural network combine Method;
Sample knowledge library, neural network structure knowledge base, clinical symptoms Description of Knowledge library, disease knowledge library, scheme of curing the disease knowledge Library, historical record knowledge base store corresponding knowledge data respectively;Each knowledge base is dynamic expansion, and it is self-complementary to have self study The function of filling,
The number that ANN Reasoning module is inputted according to neural network structure knowledge base, dynamic comprehensive database and explanation module According to making inferences, and the reasoning results are exported and give rule-based reasoning module, rule-based reasoning module combines dynamic comprehensive Close database, clinical symptoms Description of Knowledge library, disease knowledge library, scheme of curing the disease knowledge base, the generation of historical record Analysis of Knowledge Bases Reasoning Final therapeutic scheme;
Knowledge data database management module has the function of complete database manipulation, and expert is by knowledge data database management module to each A knowledge base is inquired, added and is deleted and changed
Dynamic comprehensive database receives and stores the relevant information of patient, medical examination data and assessment result;
The course of work of inference machine is as follows:
Step (1) by the relevant information of patient, medical examination data and assessment result carry out Fuzzy processing, and in this, as The input pattern of each sub-neural network;
Step (2) reads in the weight matrix of each sub-neural network from neural network structure knowledge base;
Step (3) combines the weight matrix of each sub-neural network input layer, implicit interlayer, calculates each sub-neural network input layer god Output through member, and will be output as the input of hidden layer neuron;
The weight matrix that step (4) combines each sub-neural network hidden layer, exports interlayer calculates the output of output layer neuron Value;
Step (5) is pushed away in conjunction with the relevant information in dynamic comprehensive database into line discipline according to the output valve of output layer neuron Reason, assigns a cause for an illness, provides confidence level;
Whether step (6) is correct according to the cause of disease that Credibility judgement reasoning obtains, if confidence level is below 80%, then it is assumed that push away Manage incorrect, return to step (1), if confidence level is 80% or more, then it is assumed that reasoning is correct, enters step (7);
Step (7) provides the therapeutic scheme corresponding to the specific cause of disease according to finally determining reason in conjunction with relevant information.
2. a kind of medical system with intelligent diagnostics according to claim 1, it is characterised in that:Patient condition is classified mould The assessment algorithm of block is specially:
Grade classification is carried out to each single item medical examination data, then whole detection measured value is:
Wherein, OPM is whole detection measured value, TiFor the grade point of i-th medical examination data, i=1,2 ..., N, Ti=1, 2 ..., M, M are greatest level value, and M >=2, N are the total item of medical examination data;
Maximum entirety measured value is:
OPM_MAX is maximum whole measured value
Then the assessed value C as patient's state of an illness of assessment result is:
Above-mentioned assessment calculates the state of an illness that can effectively assess patient, to carry out Put on file.
3. a kind of medical system with intelligent diagnostics according to claim 2, it is characterised in that:M=5, N=6,
Medical investigative apparatus includes glucometer, ECG detecting device, respiratory rate detector, cholesterol levels detector, blood Instrument, X-ray production apparatus are pressed, medical examination data include blood sugar concentration, ECG data evaluation, respiratory rate, cholesterol levels, blood pressure Situation, radioscopy evaluation.
4. a kind of medical system with intelligent diagnostics according to claim 1, it is characterised in that:Data consolidation server Including interactive interface module, registration module, communication monitoring module, data storage device, attending physician passes through registration Module carries out grade registration, and by the patient information in interactive interface module accesses data storage device, communicates monitoring module For carrying out data exchange with remote monitoring center.
5. a kind of medical system with intelligent diagnostics according to claim 2, it is characterised in that:According to assessed value C with And the opinion of attending physician determines whether patient can be in nursing, if assessed value is C >=0.4, patient's needs are hospitalized;Such as Fruit assessed value is 0 < C < 0.1, and patient has fully recovered, without further diagnosis monitoring service;If assessed value is 0.1≤C < 0.4 and attending physician's agreement, then patient can carry out residential care.
6. a kind of medical system with intelligent diagnostics according to claim 5, it is characterised in that:Patient is in system of family When in system, the required basic diagnosis service of home care patients, high level diagnostics service, diagnosis report shape are judged according to assessed value Formula, attending physician's type, monitoring period and monitoring period;
As 0.1≤C < 0.2, patient is slight patient,
Basic diagnosis service be patient's essential information, case history, electrocardiogram, blood pressure detecting,
Without high level diagnostics service,
Diagnosis report form be web page notification and mail,
Attending physician's type is the attending physician of 10 years or less experiences,
Monitoring period is 1 day,
It is 1 hour primary to monitor the period;
As 0.2≤C < 0.3, patient is moderate patient,
Basic diagnosis service is patient's essential information, case history, electrocardiogram, blood pressure detecting, blood sugar test, cardiopulmonary detection, cholesterol Level detection, no high level diagnostics service,
Diagnosis report form be web page notification and mail,
Attending physician's type is the attending physician of 10 years or less experiences,
Monitoring period is 7 days,
It is 1 hour primary to monitor the period;
As 0.3≤C < 0.4, patient is severe patient,
Basic diagnosis service is patient's essential information, case history, electrocardiogram, blood pressure detecting, blood sugar test, cardiopulmonary detection, cholesterol Level detection, assessment aroused in interest, heart radiography,
High level diagnostics service be virtual heart, expert consultation,
Diagnosis report form be mobile phone, web page notification and mail,
Attending physician's type is the attending physician of 10 years or more experiences,
Monitoring period is 30 days,
It is 1 minute 1 time to monitor the period.
7. a kind of medical system with intelligent diagnostics according to claim 6, it is characterised in that:Basic diagnosis service, High level diagnostics service is realized by Portable Monitoring Set.
CN201610251473.8A 2016-04-21 2016-04-21 A kind of medical system with intelligent diagnostics Expired - Fee Related CN105975740B (en)

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