CN116824207B - Multidimensional pathological image classification and early warning method based on reinforcement learning mode - Google Patents
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Abstract
The multi-dimensional pathological image classification and early warning method based on the reinforcement learning mode comprises a multi-dimensional feature extraction module, a reinforcement learning classification module, an early warning module and an adaptive feature selection module, wherein the multi-dimensional feature extraction module is used for extracting multi-dimensional features from pathological images, the reinforcement learning classification module classifies the pathological images through a deep reinforcement learning network, the early warning module early warns the pathological images based on classification results, and the adaptive feature selection module automatically learns and selects different features in the pathological images. The invention has the beneficial effects that: the multi-dimensional features of the pathological images can be automatically extracted, and the importance of different features is learned, so that more accurate and reliable pathological classification and early warning are realized.
Description
Technical Field
The invention relates to the field of multi-dimensional pathological image classification and early warning, in particular to a multi-dimensional pathological image classification and early warning method based on a reinforcement learning mode.
Background
With the continuous development of medical imaging technology, the scale and complexity of medical image data are continuously increased, and automatic classification and early warning of medical images become an important research field. In multi-dimensional pathological image classification and early warning, how to improve classification accuracy and prediction performance is an important problem. Traditional image classification methods are mainly based on manually designed feature extraction algorithms, which typically require manual selection of features and do not necessarily enable efficient classification of all types of medical images. Furthermore, these methods may be limited by computational resources and time when processing large-scale data sets, and thus a more efficient and accurate method for image classification and prediction is needed.
In recent years, with the continuous development of machine learning and deep learning technologies, methods based on feature learning and end-to-end training have become mainstream. However, these methods typically require a large amount of labeling data, which is often limited due to the complexity and difficulty of data acquisition in the medical image classification and prediction field, which presents challenges to conventional machine learning and deep learning methods.
Reinforcement learning is a machine learning method that enables optimization of decisions through interactive learning. In medical image classification and prediction, reinforcement learning can discover an optimal decision strategy through interactive learning, so that classification accuracy and prediction performance are improved. In addition, reinforcement learning has the advantages of self-adaptability, robustness, universality and the like, and can cope with complexity and uncertainty in multi-dimensional pathological image classification and early warning.
Based on the background and the requirements, the patent provides a multidimensional pathological image classification and early warning method based on a reinforcement learning mode, which mainly comprises a multidimensional feature extraction module, a reinforcement learning classification module, a self-adaptive feature selection module and an early warning module. The method can adaptively select the optimal feature subset, classify and predict the feature subset through the reinforcement learning model, and improve classification accuracy and prediction performance.
Disclosure of Invention
Aiming at the problems, a multidimensional pathological image classification and early warning method based on a reinforcement learning mode is provided.
The aim of the invention is realized by the following technical scheme: the invention provides a multi-dimensional pathological image classification and early warning method based on a reinforcement learning mode, which comprises a multi-dimensional feature extraction module, a reinforcement learning classification module, an early warning module and a self-adaptive feature selection module, wherein the multi-dimensional feature extraction module is used for extracting multi-dimensional features from pathological images, converting information in the pathological images into feature vectors which can be processed by a deep reinforcement learning network, the reinforcement learning classification module classifies the pathological images through the deep reinforcement learning network, adopts an Actor-Critic algorithm to classify the multi-dimensional pathological images, realizes quick classification and accurate judgment of the pathological images by learning the relation and rules among the multi-dimensional features, the early warning module early warns the pathological images based on classification results, can timely find abnormal conditions in the pathological images, provides a specific treatment scheme, provides important references for clinicians, and the self-adaptive feature selection module automatically learns and selects different features in the pathological images, flexibly adjusts feature selection strategies according to different pathological image types and clinical requirements, and improves classification accuracy and robustness.
Further, the multidimensional feature extraction module converts information in the pathological image into feature vectors which can be processed by the deep reinforcement learning network, so that the classification and early warning accuracy of the pathological image are improved. Meanwhile, the collected patient disease and medical information data are mapped from the high-dimensional feature space to the low-dimensional feature space through the low-dimensional feature mapping module, so that the data have good separability, and the classification and early warning efficiency is improved.
Furthermore, the reinforcement learning classification module automatically learns an optimal decision strategy on the basis of the feature vectors obtained by the multi-dimensional feature extraction module, so that the accuracy and the efficiency of classification and early warning of the pathological images are improved to the greatest extent.
Further, the Actor-Critic algorithm is adopted to classify the multidimensional pathological images, and the method is as follows:
the Actor-Critic algorithm comprises a strategy network and a value network, and the state set of the Actor-Critic algorithm is recorded asWherein->State of time 1->State of time 2->State of t-th time is indicated,/->Indicate->Policy network for status of time of day->Calculating probability distribution, policy network->Comprises three elements of action, state and strategy network parameters, randomly sampling according to probability distribution>Action at time->To ensure unbiased samples, random decimation is performed>Reinforcement learning environment will provide ∈ ->Status of time->And discount factor->Will->Status of time->Reinforcement learning input, use of policy network +.>Calculating new probability distribution, obtaining new actions randomly>Here->Is a fictitious action, satisfy->=/>Wherein->Is->Is not performed by reinforcement learning network, and +.>Wherein->Is the policy network parameter at the time t, the output of the 2 times value network is +.>And->The invention expresses time difference error by adopting a mode of error square sum>:/>Wherein->For discount factors, the value network is then derived, recorded as +.>:
Wherein,for value network parameters, the value network parameters are scaled by using a time difference algorithm>Further updating:wherein->For learning factors, deriving the strategy network, recorded as +.>:
And further updating strategy network parameters by using a gradient ascent method:wherein->Monte Carlo approximation, which is a strategy gradient overall, in order to further reduce the variance, makes the algorithm converge faster, replacing +.>The obtained updated expected value of the strategy network parameter is unchanged, so that the variance is reduced, and the method is updated as follows:
wherein,for learning factor, here learning factor +.>Is->Independent of each other, and finally, the updated strategy network parameters and value network parameters are brought into a training set of a reinforcement learning Actor-Critic algorithm throughThe activation function outputs.
Further, the early warning module is a module for performing disease early warning and risk assessment according to the classification result of the pathological image and other related information on the basis of the pathological image classification module, and for the research period T, the early warning module is used for performing early warning and risk assessment byThe activation function outputs the reinforcement learning Actor-Critic algorithm to obtain: />Judging whether to alarm by calculating a center distance alarm module between an output value and a normal value:
wherein the method comprises the steps ofFor the order of->The early warning module is used for carrying out risk assessment and illness state prediction on pathological images in a normal value interval, and provides a more comprehensive and accurate clinical decision basis for doctors.
Furthermore, the self-adaptive feature selection module can automatically learn and select the optimal feature subset according to different pathological images so as to fully utilize feature information and improve classification accuracy and prediction performance, and meanwhile, the self-adaptive feature selection module automatically eliminates irrelevant and redundant features, avoids overfitting and noise influence and further improves classification accuracy and prediction.
The invention has the beneficial effects that: the invention adopts SLFE algorithm to extract the characteristic information of multi-dimensional pathological image, the innovation is that manifold similar matrix is utilized to replace traditional manifold matrix to make the matrix bounded and converged, the embedded coordinates of the middle point of low-dimensional space are updated in an incremental mode, and the characteristic value and the characteristic vector are calculated locally and linearly through inner product matrix, in addition, the multi-dimensional pathological image is classified by adopting the Actor-Critic algorithm, the innovation is that the original time difference error is updated, the error square sum is utilized to replace the time difference residual error, the supervision function of the abnormal value of the training set can be played, the value error deviating from the normal interval is amplified and is abandoned by the Actor-Critic training layer, in addition, when the strategy network parameters are updated, the invention uses the time difference error to replace the time difference errorCompared with the traditional deep learning-based method, the method can carry out intelligent adjustment according to actual conditions, can reduce classification errors and can improve classificationThe method has the advantages that the optimal feature subset is selected in a self-adaptive mode, the classification accuracy and the prediction performance are further improved, the method has wide application prospects in medical image classification and prediction, prediction and early warning of pathological images are achieved, abnormal conditions of the pathological images can be found early, and the method has important significance for prevention and treatment of diseases. Compared with the traditional deep learning-based method, the method can more accurately predict the development trend of the pathological image, thereby better guiding the treatment decision of doctors, improving the classification accuracy and the prediction performance, greatly improving the automation degree of pathological image classification and early warning, and simultaneously reducing the cost and time of manual intervention, so as to better guide the treatment and prevention of diseases.
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The invention will be further described with reference to the accompanying drawings, in which embodiments do not constitute any limitation on the invention, and other drawings can be obtained by one of ordinary skill in the art without undue effort from the following drawings.
Fig. 1 is a schematic diagram of the structure of the present invention.
Detailed Description
The invention will be further described with reference to the following examples.
The invention provides a multi-dimensional pathological image classification and early warning method based on a reinforcement learning mode, which comprises a multi-dimensional feature extraction module, a reinforcement learning classification module, an early warning module and a self-adaptive feature selection module, wherein the multi-dimensional feature extraction module is used for extracting multi-dimensional features from pathological images, converting information in the pathological images into feature vectors which can be processed by a deep reinforcement learning network, the reinforcement learning classification module classifies the pathological images through the deep reinforcement learning network, adopts an Actor-Critic algorithm to classify the multi-dimensional pathological images, realizes quick classification and accurate judgment of the pathological images by learning the relation and rules among the multi-dimensional features, the early warning module early warns the pathological images based on classification results, can timely find abnormal conditions in the pathological images, provides a specific treatment scheme, provides important references for clinicians, and the self-adaptive feature selection module automatically learns and selects different features in the pathological images, flexibly adjusts feature selection strategies according to different pathological image types and clinical requirements, and improves classification accuracy and robustness.
Specifically, the multidimensional feature extraction module converts information in the pathological image into feature vectors which can be processed by the deep reinforcement learning network, so that the classification and early warning accuracy of the pathological image are improved. Meanwhile, the collected patient disease and medical information data are mapped from the high-dimensional feature space to the low-dimensional feature space through the low-dimensional feature mapping module, so that the data have good separability, and the classification and early warning efficiency is improved.
Specifically, the reinforcement learning classification module automatically learns an optimal decision strategy on the basis of the feature vectors obtained by the multidimensional feature extraction module, so that the accuracy and the efficiency of classification and early warning of the pathological images are improved to the greatest extent.
Preferably, the Actor-Critic algorithm is adopted to classify the multidimensional pathological images, and the method is as follows:
the Actor-Critic algorithm comprises a strategy network and a value network, and the state set of the Actor-Critic algorithm is recorded asWherein->State of time 1->State of time 2->State of t-th time is indicated,/->Indicate->Policy network for status of time of day->Calculating probability distribution, policy network->Comprises three elements of action, state and strategy network parameters, randomly sampling according to probability distribution>Action at time->To ensure unbiased samples, random decimation is performed>Reinforcement learning environment will provide ∈ ->Status of time->And discount factor->Will->Status of time->Reinforcement learning input, use of policy network +.>Calculating new probability distribution, obtaining new actions randomly>Here->Is a fictitious action, satisfy->=/>Wherein->Is->Is not performed by reinforcement learning network, and +.>Wherein->Is the policy network parameter at the time t, the output of the 2 times value network is +.>And->The invention expresses time difference error by adopting a mode of error square sum>:/>Wherein->For discount factors, the value network is then derived, recorded as +.>:
Wherein,for value network parameters, the value network parameters are scaled by using a time difference algorithm>Further updating:wherein->For learning factors, deriving the strategy network, recorded as +.>:
And further updating strategy network parameters by using a gradient ascent method:wherein->Monte Carlo approximation, which is a strategy gradient overall, in order to further reduce the variance, makes the algorithm converge faster, replacing +.>The obtained updated expected value of the strategy network parameter is unchanged, so that the variance is reduced, and the method is updated as follows:
wherein,for learning factor, here learning factor +.>Is->Independent of each other, and finally, the updated strategy network parameters and value network parameters are brought into a training set of a reinforcement learning Actor-Critic algorithm throughThe activation function outputs.
Specifically, the early warning module is a module for performing disease early warning and risk assessment according to the classification result of the pathological image and other related information on the basis of the pathological image classification module, and for the research period T, the early warning module is used for performing early warning and risk assessment byThe activation function outputs the reinforcement learning Actor-Critic algorithm to obtain: />Judging whether to alarm by calculating a center distance alarm module between an output value and a normal value:
wherein the method comprises the steps ofFor the order of->The early warning module is used for carrying out risk assessment and illness state prediction on pathological images in a normal value interval, and provides a more comprehensive and accurate clinical decision basis for doctors.
Specifically, the self-adaptive feature selection module can automatically learn and select the optimal feature subset according to different pathological images so as to fully utilize feature information and improve classification accuracy and prediction performance, and meanwhile, the self-adaptive feature selection module automatically eliminates irrelevant and redundant features, avoids overfitting and noise influence and further improves classification accuracy and prediction.
Finally, it should be noted that the above embodiments are only for illustrating the technical solution of the present invention, and not for limiting the scope of the present invention, and although the present invention has been described in detail with reference to the preferred embodiments, it should be understood by those skilled in the art that modifications can be made to the technical solution of the present invention without departing from the spirit and scope of the technical solution of the present invention.
Claims (3)
1. The multi-dimensional pathological image classification and early warning method based on the reinforcement learning mode comprises a multi-dimensional feature extraction module, a reinforcement learning classification module, an early warning module and a self-adaptive feature selection module, wherein the multi-dimensional feature extraction module is used for extracting multi-dimensional features from pathological images, converting information in the pathological images into feature vectors which can be processed by a deep reinforcement learning network, the reinforcement learning classification module classifies the pathological images through the deep reinforcement learning network, adopts an Actor-Critic algorithm to classify the multi-dimensional pathological images, realizes quick classification and accurate judgment of the pathological images by learning the relation and rules among the multi-dimensional features, the early warning module early warns the pathological images based on classification results, can timely find abnormal conditions in the pathological images, provides a specific treatment scheme, provides important references for clinicians, and the self-adaptive feature selection module automatically learns and selects different features in the pathological images, flexibly adjusts feature selection strategies according to different pathological image types and clinical requirements, and improves classification accuracy and robustness;
the reinforcement learning classification module classifies the multidimensional pathological images by adopting an Actor-Critic algorithm, and specifically comprises the following steps:
the Actor-Critic algorithm comprises a strategy network and a value network, and the state set of the Actor-Critic algorithm is recorded as S= { S 1 ,s 2 ,…,s t ,s t+1 … }, wherein s 1 State s representing time 1 2 State s representing time 2 t Representing the state at time t, s t+1 The state at time t+1 is represented by a policy network pi comprising three elements of action, state and policy network parameters, the action a at time t is randomly sampled according to the probability distribution t ToEnsuring unbiasedness of samples, performing random decimated a t The reinforcement learning environment provides a state s at time t+1 t+1 And discount factor r t State s at time t+1 t+1 Strengthening learning input, calculating new probability distribution by using strategy network pi, and obtaining new actions randomlyHere, theIs a fictitious action, satisfy->Wherein (1)>Is->Is not performed by reinforcement learning network, and +.>Wherein θ t Is the policy network parameter at the time t, the output of the 2 times value network is q respectively t =q(s t ,a t ;w t ) And->The invention expresses the time difference error delta by adopting a mode of error square sum t :/>Wherein gamma is a discount factor, followed by deriving the value network, denoted D w :
Wherein d w,1 Is the derivation of the value network at time 1, d w,2 Is the derivation of the value network at time 2,
d w,t is the value network at the t moment to conduct derivation, d w,t+1 Deriving the value network at the t+1 moment, wherein w is a value network parameter, and further updating the value network parameter w by using a time difference algorithm: w (w) t+1 =w t -αδ t d w,t Wherein alpha is a learning factor, deriving a strategy network, and recording as D θ :
Wherein d θ,1 Is the derivation of the strategy network at the 1 st moment, d θ,2 Is the derivation of the policy network at time 2,
d θ,t is the derivation of the policy network at the t moment, d θ,t+1 The policy network at the t+1 moment is subjected to derivation, and the parameters of the policy network are further updated by using a gradient ascent method: θ t+1 =θ t +βq t d θ,t Wherein q is t d θ,t Monte Carlo approximation, which is a strategic gradient overall, allows the algorithm to converge faster in order to further reduce variance by using time differential error instead of q t The obtained updated expected value of the strategy network parameter is unchanged, so that the variance is reduced, and the method is updated as follows:
wherein, beta is a learning factor, the learning factor beta and the learning factor alpha are mutually independent, and finally, the updated strategy network parameters and value network parameters are brought into a training set of a reinforcement learning Actor-Critic algorithm and output through a softmax activation function; the early warning module is a pathological image classification moduleBased on the blocks, according to the classification result of the pathological images and other related information, the module for carrying out disease early warning and risk assessment outputs a reinforcement learning Actor-Critic algorithm through a softmax activation function for a research period T, so as to obtain: y=softmax (a T ,s T ,w T ,θ T ) Wherein a is T The action at the moment T is an action at the moment T,
s T is in the state of T moment, w T Value network parameter theta at time T T For the policy network parameter at the moment T, judging whether to alarm or not by calculating a center distance alarm module between an output value and a normal value:
wherein E () is mathematical expectation, k is order, common is normal value interval, and the early warning module is used for carrying out risk assessment and illness state prediction on pathological images, so as to provide more comprehensive and accurate clinical decision basis for doctors.
2. The reinforcement learning mode-based multidimensional pathological image classification and early warning method according to claim 1, wherein the multidimensional feature extraction module converts information in pathological images into feature vectors which can be processed by a deep reinforcement learning network so as to improve the accuracy of classification and early warning of the pathological images; meanwhile, the collected patient disease and medical information data are mapped from the high-dimensional feature space to the low-dimensional feature space through the low-dimensional feature mapping module, so that the data have good separability, and the classification and early warning efficiency is improved.
3. The multi-dimensional pathological image classification and early warning method based on the reinforcement learning mode according to claim 1, wherein the self-adaptive feature selection module can automatically learn and select the optimal feature subset according to different pathological images so as to fully utilize feature information and improve classification accuracy and prediction performance, and simultaneously, the self-adaptive feature selection module automatically eliminates irrelevant and redundant features, avoids overfitting and noise influence and further improves classification accuracy and predictability.
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