Personalized immune subtypes based on machine learning predict response to checkpoint blockade in gastric cancer

被引:0
|
作者
Huang, Weibin
Zhangt, Yuhui
Chent, Songyao
Yin, Haofan
Liu, Guangyao
Zhang, Huaqi
Xu, Jiannan
Yu, Jishang
Xia, Yujian
He, Yulong
Zhang, Changhua
机构
[1] Department of Gastrointestinal Surgery, The First Affiliated Hospital of Sun Yat-sen University, 58 Zhongshan 2nd Road, Guangzhou, Guangdong
[2] Guangdong Provincial Key Laboratory of Digestive Cancer Research, Guangdong-Hong Kong-Macau University Joint Laboratory of Digestive Cancer Research, Digestive Diseases Center, The Seventh Affiliated Hospital of Sun Yat-Sen University, No. 628 Zhenyuan Roa
关键词
gastric cancer; immune checkpoint inhibitors; personalized immune subtypes; bioinformatic analysis; TUMOR MUTATIONAL BURDEN; EXPRESSION; PACKAGE;
D O I
10.1093/bib/bbac554
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Immune checkpoint inhibitors (ICI) show high efficiency in a small fraction of advanced gastric cancer (GC). However, personalized immune subtypes have not been developed for the prediction of ICI efficiency in GC. Herein, we identified Pan -Immune Activation Module (PIAM), a curated gene expression profile (GEP) representing the co -infiltration of multiple immune cell types in tumor microenvironment of GC, which was associated with high expression of immunosuppressive molecules such as PD -1 and CTLA-4. We also identified Pan -Immune Dysfunction Genes (PIDG), a conservative PIAM-derivated GEP indicating the dysfunction of immune cell cooperation, which was associated with upregulation of metastatic programs (extracellular matrix receptor interaction, TGF-beta signaling, epithelial-mesenchymal transition and calcium signaling) but downregulation of proliferative signalings (MYC targets, E2F targets, mTORC1 signaling, and DNA replication and repair). Moreover, we developed `GSClassifier', an ensemble toolkit based on top scoring pairs and extreme gradient boosting, for population -based modeling and personalized identification of GEP subtypes. With PIAM and PIDG, we developed four Pan -immune Activation and Dysfunction (PAD) subtypes and a GSClassifier model 'PAD for individual' with high accuracy in predicting response to pembrolizumab (anti -PD -1) in advance GC (AUC = 0.833). Intriguingly,. PAD -II (PIAM(high)PIDG(low)) displayed the highest objective response rate (60.0%) compared with other subtypes (PAD -I, PIAM(high)PIDG(high) 0%; PAD -III, PIAM(low)PIDG(high) 0%; PAD -IV, PIAM(low)PIDG(low), 17.6%; P = 0.003), which was further validated in the metastatic urothelial cancer cohort treated with atezolizumab (anti -PD -L1) (P = 0.018). In all, we provided `GSClassifier' as a refined computational framework for GEP-based stratification and PAD subtypes as a promising strategy for exploring ICI responders in GC. Metastatic pathways could be potential targets for GC patients with high immune infiltration but resistance to ICI therapy.
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页数:10
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