Department of Pathology, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Seongnam-si, Republic of Korea.
Department of Pathology, Ewha Womans University Mokdong Hospital, Ewha Womans University College of Medicine, Seoul, Republic of Korea.
Histopathology. 2024 Jul;85(1):81-91. doi: 10.1111/his.15176. Epub 2024 Mar 13.
Immune checkpoint inhibitors targeting programmed death-ligand 1 (PD-L1) have shown promising clinical outcomes in urothelial carcinoma (UC). The combined positive score (CPS) quantifies PD-L1 22C3 expression in UC, but it can vary between pathologists due to the consideration of both immune and tumour cell positivity.
An artificial intelligence (AI)-powered PD-L1 CPS analyser was developed using 1,275,907 cells and 6175.42 mm of tissue annotated by pathologists, extracted from 400 PD-L1 22C3-stained whole slide images of UC. We validated the AI model on 543 UC PD-L1 22C3 cases collected from three institutions. There were 446 cases (82.1%) where the CPS results (CPS ≥10 or <10) were in complete agreement between three pathologists, and 486 cases (89.5%) where the AI-powered CPS results matched the consensus of two or more pathologists. In the pathologist's assessment of the CPS, statistically significant differences were noted depending on the source hospital (P = 0.003). Three pathologists reevaluated discrepancy cases with AI-powered CPS results. After using the AI as a guide and revising, the complete agreement increased to 93.9%. The AI model contributed to improving the concordance between pathologists across various factors including hospital, specimen type, pathologic T stage, histologic subtypes, and dominant PD-L1-positive cell type. In the revised results, the evaluation discordance among slides from different hospitals was mitigated.
This study suggests that AI models can help pathologists to reduce discrepancies between pathologists in quantifying immunohistochemistry including PD-L1 22C3 CPS, especially when evaluating data from different institutions, such as in a telepathology setting.
针对程序性死亡配体 1(PD-L1)的免疫检查点抑制剂在尿路上皮癌(UC)中显示出了有前景的临床结果。联合阳性评分(CPS)量化了 UC 中 PD-L1 22C3 的表达,但由于考虑了免疫细胞和肿瘤细胞的阳性,不同病理学家之间可能存在差异。
使用 1275907 个细胞和 6175.42mm 由病理学家标注的组织,开发了一种基于人工智能(AI)的 PD-L1 CPS 分析器,这些组织取自 400 例 PD-L1 22C3 染色的 UC 全幻灯片图像。我们在来自三个机构的 543 例 UC PD-L1 22C3 病例中验证了 AI 模型。在三位病理学家中,有 446 例(82.1%)的 CPS 结果(CPS≥10 或<10)完全一致,有 486 例(89.5%)的 AI 驱动的 CPS 结果与两位或更多病理学家的共识一致。在病理学家对 CPS 的评估中,根据来源医院的不同,观察到了统计学上的显著差异(P=0.003)。三位病理学家重新评估了与 AI 驱动的 CPS 结果不一致的病例。在使用 AI 作为指导并进行修改后,完全一致的比例增加到 93.9%。AI 模型有助于提高病理学家在量化免疫组化方面的一致性,包括 PD-L1 22C3 CPS,特别是在评估来自不同医院的幻灯片数据时,例如在远程病理学设置中。
本研究表明,AI 模型可以帮助病理学家减少在量化免疫组化(包括 PD-L1 22C3 CPS)方面的差异,特别是在评估来自不同机构的数据时,例如在远程病理学设置中。