作者
Xuanwen Bao,Qiong Li,Chen Dong,Xiaomeng Dai,Chuan Liu,Weihong Tian,Hangyu Zhang,Yuzhi Jin,Yin Wang,Jinlin Cheng,Chun-Yu Lai,Chanqi Ye,Xin Shan,Xin Li,Ge Su,Yongfeng Ding,Yang‐Yang Xiong,Jindong Xie,Vincent Tano,Yanfang Wang,Wenguang Fu,Shuiguang Deng,Weijia Fang,Jianpeng Sheng,Jian Ruan,Peng Zhao
摘要
Colorectal cancer (CRC) is a common malignancy involving multiple cellular components. The CRC tumor microenvironment (TME) has been characterized well at single-cell resolution. However, a spatial interaction map of the CRC TME is still elusive. Here, we integrate multiomics analyses and establish a spatial interaction map to improve the prognosis, prediction, and therapeutic development for CRC. We construct a CRC immune module (CCIM) that comprises FOLR2+ macrophages, exhausted CD8+ T cells, tolerant CD8+ T cells, exhausted CD4+ T cells, and regulatory T cells. Multiplex immunohistochemistry is performed to depict the CCIM. Based on this, we utilize advanced deep learning technology to establish a spatial interaction map and predict chemotherapy response. CCIM-Net is constructed, which demonstrates good predictive performance for chemotherapy response in both the training and testing cohorts. Lastly, targeting FOLR2+ macrophage therapeutics is used to disrupt the immunosuppressive CCIM and enhance the chemotherapy response in vivo.