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Automated classification of brain tumor type in whole-slide digital pathology images using local representative tiles

机译:使用局部代表图块在全幻灯片数字病理图像中自动分类脑肿瘤类型

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Computerized analysis of digital pathology images offers the potential of improving clinical care (e.g. automated diagnosis) and catalyzing research (e.g. discovering disease subtypes). There are two key challenges thwarting computerized analysis of digital pathology images: first, whole slide pathology images are massive, making computerized analysis inefficient, and second, diverse tissue regions in whole slide images that are not directly relevant to the disease may mislead computerized diagnosis algorithms. We propose a method to overcome both of these challenges that utilizes a coarse-to-fine analysis of the localized characteristics in pathology images. An initial surveying stage analyzes the diversity of coarse regions in the whole slide image. This includes extraction of spatially localized features of shape, color and texture from tiled regions covering the slide. Dimensionality reduction of the features assesses the image diversity in the tiled regions and clustering creates representative groups. A second stage provides a detailed analysis of a single representative tile from each group. An Elastic Net classifier produces a diagnostic decision value for each representative tile. A weighted voting scheme aggregates the decision values from these tiles to obtain a diagnosis at the whole slide level. We evaluated our method by automatically classifying 302 brain cancer cases into two possible diagnoses (glioblastoma multiforme (N = 182) versus lower grade glioma (N = 120)) with an accuracy of 93.1 % (p 0.001). We also evaluated our method in the dataset provided for the 2014 MICCAI Pathology Classification Challenge, in which our method, trained and tested using 5-fold cross validation, produced a classification accuracy of 100% (p 0.001). Our method showed high stability and robustness to parameter variation, with accuracy varying between 95.5% and 100% when evaluated for a wide range of parameters. Our approach may be useful to automatically differentiate between the two cancer subtypes. (C) 2015 Elsevier B.V. All rights reserved.
机译:数字病理图像的计算机分析提供了改善临床护理(例如自动诊断)和促进研究(例如发现疾病亚型)的潜力。阻碍对数字病理图像进行计算机分析的主要挑战有两个:首先,整个玻片病理图像庞大,使计算机分析效率低下;其次,整个玻片图像中与疾病不直接相关的不同组织区域可能会误导计算机诊断算法。我们提出了一种克服这两个挑战的方法,该方法利用了对病理图像中局部特征的粗到细分析。初步调查阶段分析了整个幻灯片图像中粗糙区域的多样性。这包括从覆盖玻片的平铺区域中提取形状,颜色和纹理的空间局部特征。特征的降维可评估平铺区域中的图像多样性,并且聚类可创建代表性的组。第二阶段提供来自每个组的单个代表性图块的详细分析。 Elastic Net分类器为每个代表图块生成诊断决策值。加权投票方案汇总来自这些图块的决策值以获得整个幻灯片级别的诊断。我们通过将302例脑癌病例自动分为两种可能的诊断(多形胶质母细胞瘤(N = 182)与低级神经胶质瘤(N = 120))进行了评估,准确度为93.1%(p 0.001)。我们还在2014年MICCAI病理学分类挑战赛提供的数据集中评估了我们的方法,其中我们的方法经过5次交叉验证训练和测试,得出的分类准确度为100%(p 0.001)。我们的方法对参数变化表现出很高的稳定性和鲁棒性,当对各种参数进行评估时,精度在95.5%和100%之间变化。我们的方法对于自动区分两种癌症亚型可能有用。 (C)2015 Elsevier B.V.保留所有权利。

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