Institute of Pathology, Tel-Aviv Sourasky Medical Center, Tel-Aviv, Israel.
Institute of Pathology, Rabin Medical Center, Petah-Tikva, Israel.
Technol Cancer Res Treat. 2024 Jan-Dec;23:15330338241257479. doi: 10.1177/15330338241257479.
Assessment of muscularis propria invasion is a crucial step in the management of urothelial carcinoma since it necessitates aggressive treatment. The diagnosis of muscle invasion is a challenging process for pathologists. Artificial intelligence is developing rapidly and being implemented in various fields of pathology. The purpose of this study was to develop an algorithm for the detection of muscularis propria invasion in urothelial carcinoma. The Training cohort consisted of 925 images from 50 specimens of urothelial carcinoma. Ninety-seven images from 10 new specimens were used as a validation cohort. Clinical validation used 127 whole specimens with a total of 617 slides. The algorithm determined areas where tumor and muscularis propria events were in nearest proximity, and presented these areas to the pathologist. Analytical evaluation showed a sensitivity of 72% for muscularis propria and 65% for tumor, and a specificity of 46% and 77% for muscularis propria and tumor detection, respectively. The incorporation of the spatial proximity factor between muscularis propria and tumor in the clinical validation significantly improved the detection of muscularis propria invasion, as the algorithm managed to identify all except for one case with muscle invasive bladder cancer in the clinical validation cohort. The case missed by the algorithm was nested urothelial carcinoma, a rare subtype with unusual morphologic features. The pathologist managed to identify muscle invasion based on the images provided by the algorithm in a short time, with an average of approximately 5 s. The algorithm we developed may greatly aid in accurate identification of muscularis propria invasion by imitating the thought process of the pathologist.
评估肌层浸润是尿路上皮癌治疗的关键步骤,因为它需要积极的治疗。肌肉侵犯的诊断对病理学家来说是一个具有挑战性的过程。人工智能正在迅速发展,并被应用于病理学的各个领域。本研究的目的是开发一种用于检测尿路上皮癌中肌层浸润的算法。
训练队列由 50 例尿路上皮癌标本中的 925 张图像组成。10 例新标本的 97 张图像作为验证队列。临床验证使用了 127 个全标本,共 617 张切片。该算法确定了肿瘤和肌层最接近的区域,并将这些区域呈现给病理学家。
分析评估显示,肌层的敏感性为 72%,肿瘤的敏感性为 65%,肌层和肿瘤检测的特异性分别为 46%和 77%。在临床验证中纳入肌层与肿瘤之间的空间接近因素显著提高了肌层浸润的检测,因为该算法成功识别了临床验证队列中除一例膀胱癌浸润肌层外的所有病例。算法漏诊的病例是巢状尿路上皮癌,这是一种罕见的亚型,具有不同寻常的形态学特征。病理学家能够在短时间内根据算法提供的图像识别出肌肉侵犯,平均大约需要 5 秒。
我们开发的算法可以通过模拟病理学家的思维过程,极大地帮助准确识别肌层浸润。