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Automatic classification of IgA endomysial antibody test for celiac disease: a new method deploying machine learning

机译:乳糜泻IgA肌内膜抗体测试的自动分类:部署机器学习的新方法

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摘要

Widespread use of endomysial autoantibody (EmA) test in diagnostics of celiac disease is limited due to its subjectivity and its requirement of an expert evaluator. The study aimed to determine whether machine learning can be applied to create a new observer-independent method of automatic assessment and classification of the EmA test for celiac disease. The study material comprised of 2597 high-quality IgA-class EmA images collected in 2017–2018. According to standard procedure, highly-experienced professional classified samples into the following four classes: I - positive, II - negative, III - IgA deficient, and IV - equivocal. Machine learning was deployed to create a classification model. The sensitivity and specificity of the model were 82.84% and 99.40%, respectively. The accuracy was 96.80%. The classification error was 3.20%. The area under the curve was 99.67%, 99.61%, 100%, and 99.89%, for I, II, III, and IV class, respectively. The mean assessment time per image was 16.11 seconds. This is the first study deploying machine learning for the automatic classification of IgA-class EmA test for celiac disease. The results indicate that using machine learning enables quick and precise EmA test analysis that can be further developed to simplify EmA analysis.
机译:由于乳糜泻的主观性和对专家评估人员的要求,因此在乳糜泻的诊断中广泛使用子宫内膜自身抗体(EmA)测试是有限的。这项研究旨在确定是否可以将机器学习应用于创建独立于观察者的新方法,以自动评估和评估乳糜泻EmA测试的分类。研究材料由2017-2018年收集的2597张高质量IgA级EmA图像组成。根据标准程序,经验丰富的专业人士将样品分为以下四个类别:I-阳性,II-阴性,III-IgA缺陷和IV-模棱两可。部署了机器学习来创建分类模型。该模型的敏感性和特异性分别为82.84%和99.40%。准确度是96.80%。分类误差为3.20%。对于I,II,III和IV类,曲线下面积分别为99.67%,99.61%,100%和99.89%。每张图像的平均评估时间为16.11秒。这是第一项将机器学习用于对乳糜泻的IgA级EmA测试进行自动分类的研究。结果表明,使用机器学习可以实现快速,准确的EmA测试分析,可以进一步进行开发以简化EmA分析。

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