Han Ting, Zhuo Meng, Song Ziyu, Chen Peilin, Chen Shiting, Zhang Wei, Zhou Yuanyuan, Li Hong, Zhang Dadong, Lin Xiaolin, Liu Zebing, Xiao Xiuying
Department of Oncology, Renji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, China.
Department of Pathology, Renji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, China.
Front Immunol. 2025 Aug 6;16:1614099. doi: 10.3389/fimmu.2025.1614099. eCollection 2025.
Programmed cell death ligand-1 (PD-L1) combined positive score (CPS) evaluation plays a pivotal role in predicting immunotherapy efficacy for gastric cancer. However, manual CPS assessment suffers from significant inter-observer variability among pathologists, leading to clinical inconsistencies. To address this limitation, we developed a deep learning-based artificial intelligence (AI) system that automates PD-L1 CPS quantification for patients with gastric cancer (GC) using whole slide images (WSIs).
We developed a deep learning-based artificial intelligence (AI) system that automates PD-L1 CPS quantification for patients with gastric cancer (GC) using whole slide images (WSIs). Our pipeline firstly employs a dual-network architecture for tumor region detection: MobileNet for patch-level classification and U-Net for pixel-level segmentation. Followed by a YOLO-based cell detection model to compute PD-L1 expression on different cells for CPS calculation. A total of 308 GC WSIs were included, including 210 in the internal cohort and 98 in the external cohort. Within the internal cohort, 100 WSIs were utilized for the model development, while the remaining 110 WSIs served as an internal testing set for comparative analysis between AI-derived CPS values and pathologist-derived reference standards.
The AI-derived CPS demonstrated strong concordance with expert pathologists' consensus in internal cohort (Cohen's kappa = 0.782). Furthermore, the AI-based CPS prediction pipeline was evaluated for its performance in the external cohort, and showed robust performance (Cohen's kappa = 0.737).
Our system provides a standardized decision-support tool for immunotherapy stratification in GC management, demonstrating potential to improve CPS assessment reproducibility.
程序性细胞死亡配体1(PD-L1)联合阳性评分(CPS)评估在预测胃癌免疫治疗疗效中起着关键作用。然而,病理学家之间手动进行CPS评估存在显著的观察者间差异,导致临床结果不一致。为解决这一局限性,我们开发了一种基于深度学习的人工智能(AI)系统,该系统使用全视野图像(WSIs)对胃癌(GC)患者的PD-L1 CPS进行自动化定量分析。
我们开发了一种基于深度学习的人工智能(AI)系统,该系统使用全视野图像(WSIs)对胃癌(GC)患者的PD-L1 CPS进行自动化定量分析。我们的流程首先采用双网络架构进行肿瘤区域检测:用于块级分类的MobileNet和用于像素级分割的U-Net。随后是基于YOLO的细胞检测模型,以计算不同细胞上的PD-L1表达用于CPS计算。共纳入308例GC WSI,其中内部队列210例,外部队列98例。在内部队列中,100例WSI用于模型开发,其余110例WSI作为内部测试集,用于比较AI得出的CPS值与病理学家得出的参考标准。
AI得出的CPS与内部队列中专家病理学家的共识显示出高度一致性(Cohen's kappa = 0.782)。此外,基于AI的CPS预测流程在外部队列中进行了性能评估,并显示出稳健的性能(Cohen's kappa = 0.737)。
我们的系统为GC管理中的免疫治疗分层提供了标准化的决策支持工具,显示出提高CPS评估可重复性的潜力。