‘Antigen Rapid Test’ Image-Processing based Machine Learning Algorithm for ART Buddy

Christopher Nah, Weiling Wu, S. Gan, Scott Wei-Gen Wong
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Abstract

2021 witnessed subsequent waves of COVID-19 sweeping across the world. As the number of daily cases rose in many countries, many adopted the utilization of antigen rapid test (ART) kits for faster detection and isolation of the infected. However, the accuracy of the ART can be impacted by incorrect usage and self-reporting biases. Despite self-administration, image processing of submitted images could be leveraged for validation. Given the ubiquitous use of the smartphone camera, mobile applications that included features such as user uploading of ART kit result images, facilitate verification by backend servers against incorrect self-reported ART results while improving compliance rates. For this purpose, we describe an algorithm that was incorporated into the ‘ART Buddy’ app for the classification of submitted positive and negative ART images. The algorithm was based on machine learning using the Convolutional Neural Network (CNN) to achieve an accuracy of 79.31% and 88.46% on precision and recall were achieved respectively.
基于ART Buddy的“抗原快速检测”图像处理机器学习算法
2021年,一波又一波的COVID-19席卷全球。随着许多国家每日病例数的增加,许多国家采用抗原快速检测试剂盒,以便更快地发现和隔离感染者。然而,ART的准确性可能会受到不正确使用和自我报告偏差的影响。除了自我管理之外,还可以利用提交图像的图像处理来进行验证。鉴于智能手机相机的普遍使用,包括用户上传ART试剂盒结果图像等功能的移动应用程序,便于后端服务器对不正确的自我报告的ART结果进行验证,同时提高了合规率。为此,我们描述了一种算法,该算法被纳入“ART Buddy”应用程序,用于对提交的阳性和阴性ART图像进行分类。该算法基于卷积神经网络(CNN)的机器学习,在查准率和查全率上分别达到79.31%和88.46%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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