Xiao Han, Wang Jianping, Weng Zongpeng, Lin Xiaoxuan, Shu Man, Shen Jingxian, Sun Peng, Cai Muyan, Xiang Xiao, Li Bin, Wei Lihong, Shi Yiyu, Lai Jiaming, Kuang Ming, Yun Jingping, Chen Shuling, Peng Sui
Department of Medical Ultrasonics, The First Affiliated Hospital, Sun Yat-sen University, Guangzhou, China.
Department of Gastroenterology and Hepatology, The First Affiliated Hospital, Sun Yat-sen University, Guangzhou, China.
Br J Cancer. 2025 Feb;132(2):195-202. doi: 10.1038/s41416-024-02910-5. Epub 2024 Dec 2.
Targeted therapy for intrahepatic cholangiocarcinoma (ICC) shows superior survival outcomes but patients with certain targetable alterations are no more than 20%. Genetic alteration screening for all ICC patients is of high cost and not routinely performed. This study intends to develop a histopathology-based artificial intelligence (AI)-assisted system for predicting genetic alteration of ICC.
We constructed a Genetic Alteration Prediction (GAP) system based on multi-instance learning and self-supervised learning to predict genetic alterations using whole-slide images (WSIs) of H&E-stained slides. A total of 2069 WSIs from 232 ICC patients underwent surgery of the FAH-SYSU dataset were used for model construction and adjustment by five-fold cross-validation. Another 150 patients from three medical centres were used as independent external validations. We also compared the cost-effectiveness of GAP-assisted precise treatment and all-sequencing strategy to non-sequencing strategy.
The GAP was able to predict actionable genetic alterations of ICC, including FGFR2 and IDH. The area under the receiver operating characteristic curves (AUC) for FGFR2 and IDH were 0.754 and 0.713 in the internal dataset, and 0.724 and 0.656 in the external dataset, respectively. Furthermore, compared to giving chemotherapy without sequencing for every patient, GAP-assisted precise treatment could increase 1 progression-free quality-adjusted life month with a cost of $13871.72, the co-responding figure for all-sequencing strategy is $44538.93. Decision curve analysis showed that AI-assisted strategy provides better clinical benefits.
We constructed an AI-assisted genetic alteration screening system which is predictable to ICC actionable targets and has potential to assist precise targeted treatment of advanced ICC.
肝内胆管癌(ICC)的靶向治疗显示出更好的生存结果,但具有某些可靶向改变的患者不超过20%。对所有ICC患者进行基因改变筛查成本高昂,且未常规开展。本研究旨在开发一种基于组织病理学的人工智能(AI)辅助系统,用于预测ICC的基因改变。
我们构建了一个基于多实例学习和自监督学习的基因改变预测(GAP)系统,以使用苏木精和伊红(H&E)染色切片的全切片图像(WSIs)预测基因改变。来自FAH-SYSU数据集的232例接受手术的ICC患者的总共2069张WSIs用于通过五折交叉验证进行模型构建和调整。来自三个医疗中心的另外150例患者用作独立的外部验证。我们还比较了GAP辅助的精准治疗和全测序策略与非测序策略的成本效益。
GAP能够预测ICC的可操作基因改变,包括FGFR2和IDH。内部数据集中FGFR2和IDH的受试者操作特征曲线下面积(AUC)分别为0.754和0.713,外部数据集中分别为0.724和0.656。此外,与对每位患者不进行测序就给予化疗相比,GAP辅助的精准治疗可增加1个无进展质量调整生命月,成本为13871.72美元,全测序策略的相应数字为44538.93美元。决策曲线分析表明,AI辅助策略提供了更好的临床效益。
我们构建了一个AI辅助的基因改变筛查系统,该系统可预测ICC的可操作靶点,并有可能辅助晚期ICC的精准靶向治疗。