Automated microscopy and machine learning for expert-level malaria field diagnosis

Charles B. Delahunt, C. Mehanian, Liming Hu, Shawn K. McGuire, Cary R. Champlin, M. Horning, Benjamin K. Wilson, Clay M. Thompson
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引用次数: 32

Abstract

The optical microscope is one of the most widely used tools for diagnosing infectious diseases in the developing world. Due to its reliance on trained microscopists, field microscopy often suffers from poor sensitivity, specificity, and reproducibility. The goal of this work, called the Autoscope, is a low-cost automated digital microscope coupled with a set of computer vision and classification algorithms, which can accurately diagnose of a variety of infectious diseases, targeting use-cases in the developing world. Our initial target is malaria, because of the high difficulty of the task and because manual microscopy is currently a central but highly imperfect tool for malaria work in the field. In addition to diagnosis, the algorithm performs species identification and quantitation of parasite load, parameters which are critical in many field applications but which are not effectively determined by rapid diagnostic tests (RDTs). We have built a hardware prototype which can scan approximately 0.1 μL of blood volume in a standard Giemsa-stained thick smear blood slide in approximately 20 minutes. We have also developed a comprehensive machine learning framework, leveraging computer vision and machine learning techniques including support vector machines (SVMs) and convolutional neural networks (CNNs). The Autoscope has undergone successful initial field testing for malaria diagnosis in Thailand.
用于专家级疟疾现场诊断的自动显微镜和机器学习
光学显微镜是发展中国家最广泛使用的传染病诊断工具之一。由于它依赖于训练有素的显微镜,现场显微镜往往有较差的灵敏度,特异性和再现性。这项工作的目标,被称为Autoscope,是一种低成本的自动数字显微镜,结合了一套计算机视觉和分类算法,可以准确诊断各种传染病,针对发展中国家的用例。我们最初的目标是疟疾,因为这项任务的难度很高,而且手工显微镜目前是疟疾领域工作的核心工具,但非常不完善。除诊断外,该算法还进行物种鉴定和寄生虫负荷定量,这些参数在许多现场应用中至关重要,但无法通过快速诊断试验(RDTs)有效确定。我们已经建立了一个硬件原型,可以在大约20分钟内扫描标准giemsa染色的厚涂片血玻片中大约0.1 μL的血容量。我们还开发了一个全面的机器学习框架,利用计算机视觉和机器学习技术,包括支持向量机(svm)和卷积神经网络(cnn)。Autoscope已在泰国成功地进行了疟疾诊断的初步现场测试。
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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