Abstract

Cyber-Physical Systems (CPS) embed computation and communication capability into its core to regulate physical processes and seamlessly mediate between the cyber and the physical world for various control and monitoring tasks. Health CPS, a variant of CPS in the healthcare sector, acts as a health monitoring system to dynamically capture, process, and analyze health sensor data through integrated internet of things (IoT)-enabled cyber-physical processes. These systems can suitably support patients suffering from non-communicable diseases (NCDs) or who are at risk of suffering from those. Identifying the risk of NCDs, such as heart disease and diabetes, requires artificial intelligence (AI) techniques into the core of health CPS. Recently, there has been growing interest to incorporate machine learning into CPS, which can facilitate the disease classification, detection, monitoring, and prediction of several NCDs. However, there is a shortage of visible work that focus on early-stage risk prediction of these diseases. In this work, we propose a novel machine learning based health CPS framework that addresses the challenge of effectively processing the wearable IoT sensor data for early risk prediction of diabetes as an example of NCDs. In the experiment, a verified diabetic dataset has been used for training, while the testing has been performed on an artificially generated data collection from sensors. The experiment with several machine learning algorithms shows the effectiveness of the proposed approach in achieving the maximum precision from the Random Tree algorithm, which requires a minimum time of 0.01s to construct a model and obtains 94% accuracy to predict the probability of diabetes at an early point.

Highlights

  • Cyber-physical systems (CPS) promote the integration of internet of things (IoT)-enabled physical world with the computation-powered cyber world through seamless communication between them [1] [2] [3]

  • This paper reports our contribution in two-folds: first, we propose a closed-loop machine learning (ML)-powered HCPS for early-stage risk prediction of non-communicable diseases (NCDs), considering diabetes as an example; and second, we incorporate the innovative concept of verified training dataset and dynamic test dataset, which have paved the way for applying ML on real-time data from wearable sensors

  • RELATED WORK This section comments on existing work that are relevant to artificial intelligence (AI)-based approach such as deep learning (DL), ML-based approach for smart health monitoring, AI-IoT convergence for healthcare, healthcare Internet of Things [36], CPS for smart healthcare, ML-based CPS, medical CPS (MCPS) or HCPS for NCDs risk prediction, and ML in predicting diabetes risk with or without HCPS context [27], [37]

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Summary

INTRODUCTION

Cyber-physical systems (CPS) promote the integration of IoT-enabled physical world with the computation-powered cyber world through seamless communication between them [1] [2] [3]. These include the work of remote patient observation [25] [26], activity monitoring [2], home health monitoring [27], heart health monitoring for cardiovascular disease [28], stroke detection [29], and epilepsy detection [30], to list a few While such systems provide patient monitoring to a broader extent in a sensor-rich smart environment [25] [31], these are often used for disease classification and real-time alerting as a way of avoiding NCDs without any emphasis on early prediction of such diseases.

RELATED WORK
5) Evaluation
CONCLUSION
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