作者
Oscar GF Geessink, Alexi Baidoshvili, Joost M Klaase, Babak Ehteshami Bejnordi, Geert JS Litjens, Gabi W van Pelt, Wilma E Mesker, Iris D Nagtegaal, Francesco Ciompi, Jeroen AWM van der Laak
发表日期
2019/6/1
期刊
Cellular oncology
卷号
42
页码范围
331-341
出版商
Springer Netherlands
简介
Purpose
Tumor-stroma ratio (TSR) serves as an independent prognostic factor in colorectal cancer and other solid malignancies. The recent introduction of digital pathology in routine tissue diagnostics holds opportunities for automated TSR analysis. We investigated the potential of computer-aided quantification of intratumoral stroma in rectal cancer whole-slide images.
Methods
Histological slides from 129 rectal adenocarcinoma patients were analyzed by two experts who selected a suitable stroma hot-spot and visually assessed TSR. A semi-automatic method based on deep learning was trained to segment all relevant tissue types in rectal cancer histology and subsequently applied to the hot-spots provided by the experts. Patients were assigned to a ‘stroma-high’ or ‘stroma-low’ group by both TSR methods (visual and automated). This allowed for …
引用总数
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