Abstract

With the rapid development of information technology, hospital informatization has become the general trend. In this context, disease monitoring based on medical big data has been proposed and has aroused widespread concern. In order to overcome the shortcomings of the BP neural network, such as slow convergence speed and easy to fall into local extremum, simulated annealing algorithm is used to optimize the BP neural network and high-order simulated annealing neural network algorithm is constructed. After screening the potential target indicators using the random forest algorithm, based on medical big data, the experiment uses high-order simulated annealing neural network algorithm to establish the obesity monitoring model to realize obesity monitoring and prevention. The results show that the training times of the SA-BP neural network are 1480 times lower than those of the BP neural network, and the mean square error of the SA-BP neural network is 3.43 times lower than that of the BP neural network. The MAE of the SA-BP neural network is 1.81 times lower than that of the BP neural network, and the average output error of the obesity monitoring model is about 2.35 at each temperature. After training, the average accuracy of the obesity monitoring model was 98.7%. The above results show that the obesity monitoring model based on medical big data can effectively complete the monitoring of obesity and has a certain contribution to the diagnosis, treatment, and early warning of obesity.

Highlights

  • In recent years, with the rapid development of information science, the combination of medical treatment and information technology to achieve hospital information construction is of great significance to the improvement of the efficiency of residents’ health management and the efficiency of medical treatment [1]

  • The BP neural network was generally used for obesity monitoring, but the traditional BP neural network has the disadvantages of slow convergence speed and easy to fall into local optimization, so the monitoring efficiency is low [3]

  • Simulated annealing algorithm has the function of global optimization, so it is used to optimize the BP neural network and construct the SA-BP neural network algorithm, which solves the defects of the BP neural network, namely, easy to fall into local optimization and slow convergence speed [4]

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Summary

Introduction

With the rapid development of information science, the combination of medical treatment and information technology to achieve hospital information construction is of great significance to the improvement of the efficiency of residents’ health management and the efficiency of medical treatment [1]. Simulated annealing algorithm has the function of global optimization, so it is used to optimize the BP neural network and construct the SA-BP neural network algorithm, which solves the defects of the BP neural network, namely, easy to fall into local optimization and slow convergence speed [4]. Based on medical big data and SA-BP neural network algorithm, the obesity monitoring model is constructed to realize the monitoring and prevention of obesity. E innovative contribution of this study is that simulated annealing algorithm is used to optimize BP neural network, SA-BP neural network algorithm is constructed, and the obesity monitoring model is constructed based on SA-BP neural network algorithm and medical big data to realize the monitoring, prevention, and control of obesity.

Obesity Monitoring Model
Construction of the Obesity Monitoring Model Based on SA Algorithm
Performance Analysis of the Obesity Monitoring Model
Training error Random disturbance times
Findings
Conclusion
Full Text
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