利用机器学习客观地确定在环境照明下拍摄的手机照片的比色分析结果

Rachel Fisher, Karen S. Anderson, J. Christen
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引用次数: 1

摘要

比色测定法是一种重要的即时检测工具,具有快速反应时间和廉价成本等优点。目前限制其使用的一个因素是确定结果的客观措施。目前的解决方案包括创建一个测试阅读器,在测量之前标准化试纸条所处的条件。然而,这增加了成本并降低了这些检测的可移植性。本研究的重点是训练一个卷积神经网络(CNN),该网络可以客观地确定不同条件下的比色分析结果。为了确保模型对多种比色分析的灵活性,在同一CNN上训练了三个模型。这些模型训练的图像包括在不同光照和背景条件下拍摄的ETG(99.87%阳性分类,99.96%阴性分类)、芬太尼(99.60%阳性分类,99.56%阴性分类)和HPV抗体(99.86%阳性分类,100%阴性分类)条带的阳性和阴性图像。第四个模型在由所有三种条带类型组成的图像集上进行训练,其最低分类准确率为99.11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning to Objectively Determine Colorimetric Assay Results from Cell Phone Photos Taken Under Ambient Lighting
Colorimetric assays are an important tool in point-of-care testing that offers several advantages such as rapid response times and inexpensive costs. A factor that currently limits their use is objective measures to determine results. Current solutions consist of creating a test reader that standardizes the conditions the strip is under before measuring. However, this increases the cost and decreases the portability of these assays. The focus of this study is to train a convolutional neural network (CNN) that can objectively determine results of colorimetric assays under varying conditions. To ensure the flexibility of the model to several types of colorimetric assays, three models are trained on the same CNN. The images these models are trained on consist of positive and negative images of ETG (99.87% positive classification, 99.96% negative classification), fentanyl (99.60% positive classification, 99.56% negative classification), and HPV antibody (99.86% positive classification, 100% negative classification) strips taken under different lighting and background conditions. A fourth model is trained on an image set composed of all three strip types with the lowest classification accuracy being 99.11%.
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