An immune checkpoint score system for prognostic evaluation and adjuvant chemotherapy selection in gastric cancer

Jia-Bin Wang(Fujian Medical University), Ping Li(Fujian Medical University), Xiaolong Liu(Mengchao Hepatobiliary Hospital), Qiao-Ling Zheng(Fujian Medical University), Yu‐Bin Ma(Qinghai University Affiliated Hospital), Yajun Zhao(University of Science and Technology of China), Jian‐Wei Xie(Fujian Medical University), Jian‐Xian Lin(Fujian Medical University), Jun Lü(Fujian Medical University), Qi‐Yue Chen(Fujian Medical University), Long‐Long Cao(Fujian Medical University), Mi Lin(Fujian Medical University), Lichao Liu(Fujian Medical University), Ning-Zi Lian(Fujian Medical University), Yinghong Yang(Fujian Medical University), Chang‐Ming Huang(Fujian Medical University), Chao‐Hui Zheng(Fujian Medical University)
Nature Communications
December 11, 2020
Cited by 120Open Access
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Abstract

Abstract Immunosuppressive molecules are extremely valuable prognostic biomarkers across different cancer types. However, the diversity of different immunosuppressive molecules makes it very difficult to accurately predict clinical outcomes based only on a single immunosuppressive molecule. Here, we establish a comprehensive immune scoring system (ISS GC ) based on 6 immunosuppressive ligands (NECTIN2, CEACAM1, HMGB1, SIGLEC6, CD44, and CD155) using the LASSO method to improve prognostic accuracy and provide an additional selection strategy for adjuvant chemotherapy of gastric cancer (GC). The results show that ISS GC is an independent prognostic factor and a supplement of TNM stage for GC patients, and it can improve their prognosis prediction accuracy; in addition, it can distinguish GC patients with better prognosis from those with high prognostic nutritional index score; furthermore, ISS GC can also be used as a tool to select GC patients who would benefit from adjuvant chemotherapy independent of their TNM stages, MSI status and EBV status.


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