Author:
Shi Run,Sun Jing,Zhou Hanyu,Hu Tong,Gao Zhaojia,Wang Xin,Li Minglun,Zhou Zhaokai,Shu Yongqian
Abstract
AbstractAssessing the hypoxic status within the tumor microenvironment (TME) is crucial for its significant clinical relevance in evaluating drug resistance and tailoring individualized strategies. In this study, we proposed a robust pan-cancer hypoxic quantification method utilizing multiple public databases, diverse bioinformatics, and statistical methods. All tumor samples were classified into four subtypes: non-hypoxic/TMEhigh (C1), hypoxic/TMEhigh (C2), non-hypoxic/TMElow (C3), and hypoxic/TMElow (C4). We systematically analyzed multi-omics data and single-cell RNA-sequencing (scRNA-seq) data to reveal distinct immune landscape patterns and genomic characteristics among the four subtypes across pan-cancer. Furthermore, we employed multiple machine learning approaches to construct a hypoxic-TME model to enhance the predictive accuracy of immunotherapy response. Additionally, drug repositioning was implemented for cancer patients predicted as non-responders to immunotherapy. A pan-cancer analysis identified PDK1 as a hub gene linking tumor hypoxia, glycolysis, and immunotherapy resistance. In vivo experimental validation further confirmed that targeting PDK1 could improve the response to immunotherapy. Overall, our study may offer valuable insights for integrating hypoxic-TME classification into tumor staging and providing personalized strategies for cancer patients.
Funder
Natural Science Foundation of Jiangsu Province
Jiangsu Funding Program for Excellent Postdoctoral Talent
Postdoctoral International Exchange Program
Jiangsu Provincial Medical Innovation Center of Jiangsu Province Capability Improvement Project through Science, Technology and Education
Publisher
Springer Science and Business Media LLC