Stacked Predictive Sparse Coding for Classification of Distinct Regions of Tumor Histopathology.

Hang Chang, Yin Zhou, Paul Spellman, Bahram Parvin
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引用次数: 24

Abstract

Image-based classification of tissue histology, in terms of distinct histopathology (e.g., tumor or necrosis regions), provides a series of indices for tumor composition. Furthermore, aggregation of these indices from each whole slide image (WSI) in a large cohort can provide predictive models of clinical outcome. However, the performance of the existing techniques is hindered as a result of large technical variations (e.g., fixation, staining) and biological heterogeneities (e.g., cell type, cell state) that are always present in a large cohort. We suggest that, compared with human engineered features widely adopted in existing systems, unsupervised feature learning is more tolerant to batch effect (e.g., technical variations associated with sample preparation) and pertinent features can be learned without user intervention. This leads to a novel approach for classification of tissue histology based on unsupervised feature learning and spatial pyramid matching (SPM), which utilize sparse tissue morphometric signatures at various locations and scales. This approach has been evaluated on two distinct datasets consisting of different tumor types collected from The Cancer Genome Atlas (TCGA), and the experimental results indicate that the proposed approach is (i) extensible to different tumor types; (ii) robust in the presence of wide technical variations and biological heterogeneities; and (iii) scalable with varying training sample sizes.

堆叠预测稀疏编码用于肿瘤组织病理学不同区域的分类。
基于图像的组织组织学分类,根据不同的组织病理学(如肿瘤或坏死区域),提供了一系列肿瘤组成指标。此外,在一个大的队列中,从每个整张幻灯片图像(WSI)中汇总这些指标可以提供临床结果的预测模型。然而,由于大的技术变化(例如,固定,染色)和生物异质性(例如,细胞类型,细胞状态)总是存在于大型队列中,现有技术的性能受到阻碍。我们认为,与现有系统中广泛采用的人类工程特征相比,无监督特征学习更能容忍批处理效应(例如,与样品制备相关的技术变化),并且无需用户干预即可学习相关特征。这导致了一种基于无监督特征学习和空间金字塔匹配(SPM)的组织组织学分类的新方法,该方法利用了不同位置和尺度上的稀疏组织形态特征。该方法已在癌症基因组图谱(TCGA)中收集的不同肿瘤类型的两个不同数据集上进行了评估,实验结果表明,该方法可扩展到不同的肿瘤类型;(ii)在存在广泛的技术变化和生物异质性的情况下具有稳健性;(iii)随训练样本大小的变化而扩展。
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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