Abstract

Remote health monitoring applications with the advent of Internet of Things (IoT) technologies have changed traditional healthcare services. Additionally, in terms of personalized healthcare and disease prevention services, these depend primarily on the strategy used to derive knowledge from the analysis of lifestyle factors and activities. Through the use of intelligent data retrieval and classification models, it is possible to study disease, or even predict any abnormal health conditions. To predict such abnormality, the Convolutional neural network (CNN) model is used, which can detect the knowledge related to disease prediction accurately from unstructured medical health records. However, CNN uses a large amount of memory if it uses a fully connected network structure. Moreover, the increase in the number of layers can lead to an increase in the complexity analysis of the model. Therefore, to overcome these limitations of the CNN-model, we propose a CNN-regular target detection and recognition model based on the Pearson Correlation Coefficient and regular pattern behavior, where the term “regular” denotes objects that generally appear in similar contexts and have structures with low variability. In this framework, we develop a CNN-regular pattern discovery model for data classification. First, the most important health-related factors are selected in the first hidden layer, then in the second layer, a correlation coefficient analysis is conducted to classify the positively and negatively correlated health factors. Moreover, regular patterns' behaviors are discovered through mining the regular pattern occurrence among the classified health factors. The output of the model is subdivided into regular-correlated parameters related to obesity, high blood pressure, and diabetes. Two distinct datasets are adopted to mitigate the effects of the CNN-regular knowledge discovery model. The experimental results show that the proposed model has better accuracy, and low computational load, compared with three different machine learning techniques methods.

Highlights

  • In modern society, monitoring human daily life using Internet of Things (IoT) technology includes the activities, vital signs and physiological parameters, stress, and sleep of a user inThe associate editor coordinating the review of this manuscript and approving it for publication was Victor Hugo Albuquerque .the health industry

  • In the medical big data field, critical health decisions are required to help patients attend to their health status

  • This work presents a Convolutional neural network (CNN)-based regular pattern mining model for the discovery of knowledge related to regularity in health conditions

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Summary

INTRODUCTION

In modern society, monitoring human daily life using Internet of Things (IoT) technology includes the activities, vital signs and physiological parameters, stress, and sleep of a user in. He may experience a specific decrease in another vital health parameter (e.g blood pressure) Studying such regular behavior knowledge [15]–[17]from the collected data facilitate the exploration of more characteristics regarding health-related parameters management and analysis. To this end, the contributions of this work can be summarized as follows: 1) A new CNN learning model for knowledge discovery of regular correlated health-related factors to reveal regular co-occurring disease and symptoms relationships. The output of the model are classified according to the collected health-related parameters for obesity, high blood pressure, and diabetes

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