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When machine vision meets histology: A comparative evaluation of model architecture for classification of histology sections

机译:当机器视觉与组织学相遇时:对组织学部分分类的模型体系结构的比较评估

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摘要

Classification of histology sections in large cohorts, in terms of distinct regions of microanatomy (e.g., stromal) and histopathology (e.g., tumor, necrosis), enables the quantification of tumor composition, and the construction of predictive models of genomics and clinical outcome. To tackle the large technical variations and biological heterogeneities, which are intrinsic in large cohorts, emerging systems utilize either prior knowledge from pathologists or unsupervised feature learning for invariant representation of the underlying properties in the data. However, to a large degree, the architecture for tissue histology classification remains unexplored and requires urgent systematical investigation. This paper is the first attempt to provide insights into three fundamental questions in tissue histology classification: I. Is unsupervised feature learning preferable to human engineered features? II. Does cellular saliency help? III. Does the sparse feature encoder contribute to recognition? We show that (a) in I, both Cellular Morphometric Feature and features from unsupervised feature learning lead to superior performance when compared to SIFT and [Color, Texture]; (b) in II, cellular saliency incorporation impairs the performance for systems built upon pixel-/patch-level features; and (c) in III, the effect of the sparse feature encoder is correlated with the robustness of features, and the performance can be consistently improved by the multi-stage extension of systems built upon both Cellular Morphmetric Feature and features from unsupervised feature learning. These insights are validated with two cohorts of Glioblastoma Multiforme (GBM) and Kidney Clear Cell Carcinoma (KIRC).
机译:根据微观解剖学(例如基质)和组织病理学(例如肿瘤,坏死)的不同区域,对大队列中的组织学切片进行分类,可以量化肿瘤成分,并构建基因组学和临床结果的预测模型。为了解决大型队列中固有的巨大技术差异和生物学异质性,新兴系统利用病理学家的先验知识或无监督的特征学习来不变表示数据中的基本属性。然而,在很大程度上,组织组织学分类的体系结构仍待探索,需要紧急的系统研究。本文是首次尝试提供对组织组织学分类中三个基本问题的见解:I.无监督特征学习优于人工工程特征吗?二。细胞显着性有帮助吗?三,稀疏特征编码器有助于识别吗?我们显示(a)在I中,与SIFT和[颜色,纹理]相比,细胞形态特征和来自无监督特征学习的特征均具有出色的性能; (b)在第二部分中,蜂窝显着性的加入会损害基于像素/补丁级别功能构建的系统的性能; (c)在III中,稀疏特征编码器的效果与特征的鲁棒性相关,并且可以通过基于细胞形态特征和无监督特征学习的特征的系统的多阶段扩展来持续改善性能。这些见解已通过多形性胶质母细胞瘤(GBM)和肾脏透明细胞癌(KIRC)的两个队列验证。

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