COVFILTER:一种用于资源受限农村社区Covid-19预测的低成本便携式设备

Sajedul Talukder, F. Hossen
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摘要

早期发现COVID-19对于预防死亡和重大疾病至关重要。由于缺乏充分的检测,生活在资源有限国家偏远地区的人们更难得到检测。因此,拥有一个可以帮助我们简化批量COVID测试以防止社区传播的主要过滤工具至关重要。在本文中,我们介绍了CovFilter,这是一种用于资源有限的农村社区COVID-19预测的低成本便携式设备,旨在鼓励人们以更知情的方式接受COVID-19检测。CovFilter硬件模块从三个传感器收集健康参数,CovFilter预测模块使用健康数据预测COVID-19状态。我们训练了监督学习算法和人工神经网络来从生命体征数据中预测COVID-19,其中多层感知器优于ANN、NaiveBayes、Logistic、SGD、DecisionStump和SVM, F1为93.22%。我们进一步表明,加权多数投票集成分类器可以优于所有单一分类器,达到超过94%的F1。
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COVFILTER: A Low-cost Portable Device for the Prediction of Covid-19 for Resource-Constrained Rural Communities
Early identification of COVID-19 is critical for preventing death and significant illness. People living in remote parts of resource-constrained countries find it more difficult to get tested due to a lack of adequate testing. As a result, having a primary filtering tool that can assist us in simplifying bulk COVID testing to prevent community spread is vital. In this paper, we introduce CovFilter, a low-cost portable device for COVID-19 prediction for resource-constrained rural communities, with the goal of encouraging people to be tested for COVID-19 in a more informed manner. CovFilter Hardware Module collects health parameters from three sensors while the CovFilter Prediction Module predicts COVID-19 status using the health data. We train supervised learning algorithms and an artificial neural network to predict COVID-19 from vital sign readings where MultilayerPerceptron outperformed ANN, NaiveBayes, Logistic, SGD, DecisionStump, and SVM with an F1 of 93.22%. We further show that a weighted majority voting ensemble classifier can outperform all single classifiers achieving an F1 of over 94%.
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