Abstract

BackgroundBig data technology provides unlimited potential for efficient storage, processing, querying, and analysis of medical data. Technologies such as deep learning and machine learning simulate human thinking, assist physicians in diagnosis and treatment, provide personalized health care services, and promote the use of intelligent processes in health care applications.ObjectiveThe aim of this paper was to analyze health care data and develop an intelligent application to predict the number of hospital outpatient visits for mass health impact and analyze the characteristics of health care big data. Designing a corresponding data feature learning model will help patients receive more effective treatment and will enable rational use of medical resources.MethodsA cascaded depth model was successfully implemented by constructing a cascaded depth learning framework and by studying and analyzing the specific feature transformation, feature selection, and classifier algorithm used in the framework. To develop a medical data feature learning model based on probabilistic and deep learning mining, we mined information from medical big data and developed an intelligent application that studies the differences in medical data for disease risk assessment and enables feature learning of the related multimodal data. Thus, we propose a cascaded data feature learning model.ResultsThe depth model created in this paper is more suitable for forecasting daily outpatient volumes than weekly or monthly volumes. We believe that there are two reasons for this: on the one hand, the training data set in the daily outpatient volume forecast model is larger, so the training parameters of the model more closely fit the actual data relationship. On the other hand, the weekly and monthly outpatient volume is the cumulative daily outpatient volume; therefore, errors caused by the prediction will gradually accumulate, and the greater the interval, the lower the prediction accuracy.ConclusionsSeveral data feature learning models are proposed to extract the relationships between outpatient volume data and obtain the precise predictive value of the outpatient volume, which is very helpful for the rational allocation of medical resources and the promotion of intelligent medical treatment.

Highlights

  • Over the past two decades, there has been dramatic growth in the amount of data being generated in many areas worldwide, including health care data, sensor data, various types of user-generated data, internet data, and financial company data

  • The Recurrent neural networks (RNNs) network model expands gradually with the time step and is used to generate the state of the hidden units in the restricted Boltzmann machine (RBM) network model, which are based on the input layer v(t) and the hidden

  • The weekly and monthly outpatient volume is the cumulative daily outpatient volume; the errors caused by the prediction will gradually accumulate, and the greater the interval, the lower the prediction accuracy

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Summary

Introduction

Over the past two decades, there has been dramatic growth in the amount of data being generated in many areas worldwide, including health care data, sensor data, various types of user-generated data, internet data, and financial company data. Big data technology provides unlimited potential for efficient storage, processing, querying, and analysis of medical data Technologies such as deep learning and machine learning simulate human thinking, assist physicians in diagnosis and treatment, provide personalized health services, and promote intelligent processes of health care applications. Technologies such as deep learning and machine learning simulate human thinking, assist physicians in diagnosis and treatment, provide personalized health care services, and promote the use of intelligent processes in health care applications. Conclusions: Several data feature learning models are proposed to extract the relationships between outpatient volume data and obtain the precise predictive value of the outpatient volume, which is very helpful for the rational allocation of medical resources and the promotion of intelligent medical treatment

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