Litcius/Paper detail

Interpretable multi-modal artificial intelligence model for predicting gastric cancer response to neoadjuvant chemotherapy

Peng Gao, Qiong Xiao, Hui Juan Jennifer Tan, Jiangdian Song, Yu Fu, Jingao Xu, Junhua Zhao, Miao Yuan, Xiaoyan Li, Jing Yi, Yingying Feng, Zitong Wang, Yingjie Zhang, Enbo Yao, Tao Xu, Jipeng Mei, Hanyu Chen, Xue Jiang, Yuchong Yang, Zhengyang Wang, Xianchun Gao, Minwen Zheng, Liying Zhang, Min Jiang, Yuying Long, Lijie He, Jinghua Sun, Yanhong Deng, Bin Wang, Yan Zhao, Yi Ba, Guan Wang, Yong Zhang, Ting Deng, Dinggang Shen, Z. Wang

2024Cell Reports Medicine25 citationsDOIOpen Access PDF

Abstract

Neoadjuvant chemotherapy assessment is imperative for prognostication and clinical management of locally advanced gastric cancer. We propose an incremental supervised contrastive learning model (iSCLM), an interpretable artificial intelligence framework integrating pretreatment CT scans and H&E-stained biopsy images, for improved decision-making regarding neoadjuvant chemotherapy. We have constructed and tested iSCLM using retrospective data from 2,387 patients across 10 medical centers and evaluated its discriminative ability in a prospective cohort (132 patients; ChiCTR2300068917). iSCLM achieves areas under receiver operating characteristic curves of 0.846–0.876 across different test cohorts. Computed tomography (CT) and pathological attention heatmaps from Shapley additive explanations and global sort pooling illustrate additional benefits for capturing morphological features through supervised contrastive learning. Specifically, pathological top-ranked tiles exhibit decreased distances to tumor-invasive borders and increased inflammatory cell infiltration in responders compared with non-responders. Moreover, CD11c expression is elevated in responders. The developed interpretable model at the molecular pathology level accurately predicts chemotherapy efficacy. • iSCLM is a multi-modal framework to predict neoadjuvant chemotherapy response • iSCLM enables a focus on tumor-invasive borders with multi-modal data • iSCLM is interpreted with increased inflammatory cell infiltration Gao et al. develop an interpretable AI model (iSCLM) integrating CT scans and biopsy images to predict the response of neoadjuvant chemotherapy in gastric cancer. Validated with a multicenter cohort, iSCLM shows interpretable pathology changes in responders, contributing to the advancement of clinical practices in screening patients for neoadjuvant chemotherapy administration.

Topics & Concepts

ModalNeoadjuvant therapyChemotherapyCancerComputer scienceComplete responseMedicineOncologyArtificial intelligenceInternal medicinePolymer chemistryChemistryBreast cancerGastric Cancer Management and OutcomesRadiomics and Machine Learning in Medical ImagingLung Cancer Diagnosis and Treatment