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Federated Semi-Supervised Multi-Task Learning to Detect COVID-19 and Lungs Segmentation Marking Using Chest Radiography Images and Raspberry Pi Devices: An Internet of Medical Things Application

机译:联邦半监督的多任务学习用胸部射线照相图像和覆盆子PI器件检测Covid-19和肺部分割标记:应用程序互联网

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摘要

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, Fscore 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.
机译:医疗器互联网(IOMT)提供了一个很好的机会,可以使用各种医疗设备和相关数据的有效集成来调查更好的自动医疗决策支持工具。本研究探讨了使用胸部造影图像的两个这样的医学决策任务,即Covid-19检测和肺区分割检测。我们还探讨了不同的尖端机学习技术,如联邦学习,半监督学习,转移学习和多任务学习探索问题。为了分析IOMT系统中的计算不太有效的边缘设备的适用性,我们将使用覆盆子PI器件作为准确性,精度,召回,FScore用于Covid-19检测的结果,以及用于肺部分割检测任务的平均骰子评分。我们还通过以服务器为中心的仿真发布结果进行比较。结果表明,Raspberry PI的器件在肺部分割检测中提供了更好的性能,服务器为中心的实验在Covid-19检测中提供更好的结果。我们还讨论了IOMT以应用程序为中心的设置,利用医疗数据和决策支持系统,并为这种系统有益于IOMT领域的所有利益相关者。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者

    Mahbub Ul Alam; Rahim Rahmani;

  • 作者单位
  • 年(卷),期 2021(21),15
  • 年度 2021
  • 页码 5025
  • 总页数 17
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:医疗互联网;联邦学习;半监督机器学习;多任务学习;转移学习;

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