Abstract

Internet of Medical Things (IoMT) provides an excellent opportunity to investigate better automatic medical decision support tools with the effective integration of various medical equipment and associated data. This study explores two such medical decision-making tasks, namely COVID-19 detection and lung area segmentation detection, using chest radiography images. We also explore different cutting-edge machine learning techniques, such as federated learning, semi-supervised learning, transfer learning, and multi-task learning to explore the issue. To analyze the applicability of computationally less capable edge devices in the IoMT system, we report the results using Raspberry Pi devices as accuracy, precision, recall, for COVID-19 detection, and average dice score for lung segmentation detection tasks. We also publish the results obtained through server-centric simulation for comparison. The results show that Raspberry Pi-centric devices provide better performance in lung segmentation detection, and server-centric experiments provide better results in COVID-19 detection. We also discuss the IoMT application-centric settings, utilizing medical data and decision support systems, and posit that such a system could benefit all the stakeholders in the IoMT domain.

Highlights

  • With the ever-increasing availability of information, the connectivity among different electronic devices, and the transformation of the healthcare system, we have a new and promising research area: the internet of medical things (IoMT)

  • The results show that with 10 rounds of federated learning based training, the overall result is improved

  • Accuracy is comparatively lower in Raspberry Pi-centric results for the COVID-19 detection task, and the average dice score is similar in the chest boundary segmentation task

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Summary

Introduction

With the ever-increasing availability of information, the connectivity among different electronic devices, and the transformation of the healthcare system, we have a new and promising research area: the internet of medical things (IoMT). A simple but robust and secured structure, and cheap and user-friendly devices will ensure a significant increase in productivity [7], and be valuable for medical professionals to maintain the cases of many patients in a quick and organized manner [8,9]. It will help the ever-increasing aging population ( in the west) and the decentralization of living areas from the city centers [10]. One of the critical aspects to ensure this success is the effective utilization of medical decision support systems or tools [11]

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