Department of Biomedical Engineering and Physics, Amsterdam UMC, University of Amsterdam, Amsterdam, the Netherlands; Department of Urology, Amsterdam UMC, University of Amsterdam, Amsterdam, the Netherlands.
Department of Biomedical Engineering and Physics, Amsterdam UMC, University of Amsterdam, Amsterdam, the Netherlands.
Am J Pathol. 2020 Jul;190(7):1483-1490. doi: 10.1016/j.ajpath.2020.03.013. Epub 2020 Apr 10.
Accurate grading of non-muscle-invasive urothelial cell carcinoma is of major importance; however, high interobserver variability exists. A fully automated detection and grading network based on deep learning is proposed to enhance reproducibility. A total of 328 transurethral resection specimens from 232 patients were included, and a consensus reading by three specialized pathologists was used. The slides were digitized, and the urothelium was annotated by expert observers. The U-Net-based segmentation network was trained to automatically detect urothelium. This detection was used as input for the classification network. The classification network aimed to grade the tumors according to the World Health Organization grading system adopted in 2004. The automated grading was compared with the consensus and individual grading. The segmentation network resulted in an accurate detection of urothelium. The automated grading shows moderate agreement (κ = 0.48 ± 0.14 SEM) with the consensus reading. The agreement among pathologists ranges between fair (κ = 0.35 ± 0.13 SEM and κ = 0.38 ± 0.11 SEM) and moderate (κ = 0.52 ± 0.13 SEM). The automated classification correctly graded 76% of the low-grade cancers and 71% of the high-grade cancers according to the consensus reading. These results indicate that deep learning can be used for the fully automated detection and grading of urothelial cell carcinoma.
准确分级非肌肉浸润性尿路上皮癌非常重要;然而,观察者间存在很大的变异性。提出了一种基于深度学习的全自动检测和分级网络,以提高可重复性。共纳入 232 名患者的 328 例经尿道切除标本,并由 3 名专业病理学家进行共识阅读。对幻灯片进行数字化处理,并由专家观察者对尿路上皮进行注释。基于 U-Net 的分割网络经过训练可自动检测尿路上皮。该检测结果用作分类网络的输入。分类网络旨在根据 2004 年采用的世界卫生组织分级系统对肿瘤进行分级。将自动分级与共识和个体分级进行比较。分割网络对尿路上皮的检测结果非常准确。自动分级与共识阅读具有中等一致性(κ=0.48±0.14 SEM)。病理学家之间的一致性在中等(κ=0.52±0.13 SEM 和 κ=0.38±0.11 SEM)和一般(κ=0.35±0.13 SEM)之间。根据共识阅读,自动分类正确分级了 76%的低级别癌症和 71%的高级别癌症。这些结果表明,深度学习可用于全自动检测和分级尿路上皮癌。