TY - EJOU AU - Yang, Bin AU - Xiang, Lingyun AU - Chen, Xianyi AU - Jia, Wenjing TI - An Online Chronic Disease Prediction System Based on Incremental Deep Neural Network T2 - Computers, Materials \& Continua PY - 2021 VL - 67 IS - 1 SN - 1546-2226 AB - Many chronic disease prediction methods have been proposed to predict or evaluate diabetes through artificial neural network. However, due to the complexity of the human body, there are still many challenges to face in that process. One of them is how to make the neural network prediction model continuously adapt and learn disease data of different patients, online. This paper presents a novel chronic disease prediction system based on an incremental deep neural network. The propensity of users suffering from chronic diseases can continuously be evaluated in an incremental manner. With time, the system can predict diabetes more and more accurately by processing the feedback information. Many diabetes prediction studies are based on a common dataset, the Pima Indians diabetes dataset, which has only eight input attributes. In order to determine the correlation between the pathological characteristics of diabetic patients and their daily living resources, we have established an in-depth cooperation with a hospital. A Chinese diabetes dataset with 575 diabetics was created. Users’ data collected by different sensors were used to train the network model. We evaluated our system using a real-world diabetes dataset to confirm its effectiveness. The experimental results show that the proposed system can not only continuously monitor the users, but also give early warning of physiological data that may indicate future diabetic ailments. KW - Deep learning; incremental learning; network architecture design; chronic disease prediction DO - 10.32604/cmc.2021.014839