Is the vascular network discriminant enough to classify renal cell carcinoma?

Alexis Zubiolo, E. Debreuve, D. Ambrosetti, P. Pognonec, X. Descombes
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引用次数: 3

Abstract

The renal cell carcinoma (RCC) is the most frequent type of kidney cancer (between 90% and 95%). Twelve subtypes of RCC can be distinguished, among which the clear cell carcinoma (ccRCC) and the papillary carcinoma (pRCC) are the two most common ones (75% and 10% of the cases, respectively). After resection (i.e., surgical removal), the tumor is prepared for histological examination (fixation, slicing, staining, observation with a microscope). Along with protein expression and genetic tests, the histological study allows to classify the tumor and define its grade in order to make a prognosis and to take decisions for a potential additional chemotherapy treatment. Digital histology is a recent domain, since routinely, histological slices are studied directly under the microscope. The pioneer works deal with the automatic analysis of cells. However, a crucial factor for RCC classification is the tumoral architecture relying on the structure of the vascular network. For example, coarsely speaking, ccRCC is characterized by a “fishnet” structure while the pRCC has a tree-like structure. To our knowledge, no computerized analysis of the vascular network has been proposed yet. In this context, we developed a complete pipeline to extract the vascular network of a given histological slice and compute features of the underlying graph structure. Then, we studied the potential of such a feature-based approach in classifying a tumor into ccRCC or pRCC. Preliminary results on patient data are encouraging.
血管网络是否足以区分肾细胞癌?
肾细胞癌(RCC)是肾癌中最常见的类型(90%至95%)。RCC可分为12种亚型,其中透明细胞癌(ccRCC)和乳头状癌(pRCC)是最常见的两种亚型(分别占75%和10%)。切除(即手术切除)后,准备肿瘤进行组织学检查(固定、切片、染色、显微镜观察)。通过蛋白质表达和基因检测,组织学研究可以对肿瘤进行分类并确定其级别,以便做出预后并决定是否进行潜在的额外化疗。数字组织学是最近的一个领域,因为通常,组织切片是直接在显微镜下研究的。先驱著作涉及细胞的自动分析。然而,RCC分类的一个关键因素是依赖于血管网络结构的肿瘤结构。例如,粗略地说,ccRCC具有“渔网”结构,而pRCC具有树状结构。据我们所知,还没有对血管网络进行计算机化分析的提议。在这种情况下,我们开发了一个完整的管道来提取给定组织学切片的血管网络,并计算底层图结构的特征。然后,我们研究了这种基于特征的方法将肿瘤分类为ccRCC或pRCC的潜力。患者数据的初步结果令人鼓舞。
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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