Classification of Tumor Histology via Morphometric Context.

Hang Chang, Alexander Borowsky, Paul Spellman, Bahram Parvin
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引用次数: 0

Abstract

Image-based classification of tissue histology, in terms of different components (e.g., normal signature, categories of aberrant signatures), provides a series of indices for tumor composition. Subsequently, aggregation of these indices in each whole slide image (WSI) from 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 and biological variations that are always present in a large cohort. In this paper, we propose two algorithms for classification of tissue histology based on robust representations of morphometric context, which are built upon nuclear level morphometric features at various locations and scales within the spatial pyramid matching (SPM) framework. These methods have been evaluated on two distinct datasets of different tumor types collected from The Cancer Genome Atlas (TCGA), and the experimental results indicate that our methods are (i) extensible to different tumor types; (ii) robust in the presence of wide technical and biological variations; (iii) invariant to different nuclear segmentation strategies; and (iv) scalable with varying training sample size. In addition, our experiments suggest that enforcing sparsity, during the construction of morphometric context, further improves the performance of the system.

通过形态学内涵对肿瘤组织学进行分类。
基于图像的组织学分类可根据不同的成分(如正常特征、异常特征类别)提供一系列肿瘤组成指数。随后,将这些指数汇总到来自大型群组的每张全切片图像(WSI)中,可提供临床结果的预测模型。然而,现有技术的性能受到了很大的阻碍,因为在大型队列中总是存在很大的技术和生物差异。在本文中,我们提出了两种基于形态学背景稳健表征的组织组织学分类算法,这两种算法建立在空间金字塔匹配(SPM)框架内不同位置和尺度的核级形态学特征上。实验结果表明,我们的方法(i) 可扩展到不同肿瘤类型;(ii) 在广泛的技术和生物变异中保持稳健;(iii) 不受不同核分割策略的影响;(iv) 可根据不同的训练样本规模进行扩展。此外,我们的实验表明,在构建形态测量上下文时强制执行稀疏性,可进一步提高系统的性能。
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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CiteScore
43.50
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0.00%
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