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Incorporating Local and Global Context for Better Automated Analysis of Colorectal Cancer on Digital Pathology Slides

机译:结合本地和全局上下文,以更好地自动化分析数字病理幻灯片上的结直肠癌

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Phenotypic information derived from visual characteristics of colorectal cancer (CRC) is routinely used for diagnosis and recommendations for treatment. Previously published studies show that the ratio of tissue types within CRC is prognostic. Such studies generate large amounts of data, combining expert classifications with x-y coordinates, which has previously been used to train image analysis algorithms. This paper describes extensions to algorithms employed in previously published work, using pixel clustering as a pre-processing step before normalised cuts in order to reduce the size of the graph for unsupervised segmentation. Image segments are processed for features and given a candidate classification which is weighted by neighbouring segment classes. Global slide features are incorporated to mitigate inconsistencies in overall appearance caused by histological and biological differences. The proposed algorithm increases agreement with the ground truth from 75% to 79% on a dataset of 7,159 images across 157 digital slides.
机译:通常将从大肠癌(CRC)视觉特征中获得的表型信息用于诊断和治疗建议。先前发表的研究表明,CRC中组织类型的比率是预后的。此类研究产生了大量数据,将专家分类与x-y坐标相结合,该数据以前已用于训练图像分析算法。本文介绍了对以前发表的工作中使用的算法的扩展,它使用像素聚类作为归一化剪切之前的预处理步骤,以减小用于无监督分割的图形尺寸。对图像段进行特征处理并给出候选分类,该候选分类由相邻的段类别加权。整合了全局幻灯片功能,以减轻由于组织学和生物学差异而导致的整体外观不一致。在157个数字幻灯片上的7159张图像的数据集上,该算法将与地面真实性的一致性从75%提高到79%。

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