To address the substantial variability in immune checkpoint blockade (ICB) therapy effectiveness, we developed an innovative R package called integrated Machine Learning and Genetic Algorithm-driven Multiomics analysis (iMLGAM), which establishes a comprehensive scoring system for predicting treatment outcomes through advanced multi-omics data integration. Our research demonstrates that iMLGAM scores exhibit superior predictive performance across independent cohorts, with lower scores correlating significantly with enhanced therapeutic responses and outperforming existing clinical biomarkers. Detailed analysis revealed that tumors with low iMLGAM scores display distinctive immune microenvironment characteristics, including increased immune cell infiltration and amplified antitumor immune responses. Critically, through clustered regularly interspaced short palindromic repeats screening, we identified Centrosomal Protein 55 (CEP55) as a key molecule modulating tumor immune evasion, mechanistically confirming its role in regulating T cell-mediated antitumor immune responses. These findings not only validate iMLGAM as a powerful prognostic tool but also propose CEP55 as a promising therapeutic target, offering novel strategies to enhance ICB treatment efficacy. The iMLGAM package is freely available on GitHub (https://github.com/Yelab1994/iMLGAM), providing researchers with an innovative approach to personalized cancer immunotherapy prediction.
iMLGAM: Integrated Machine Learning and Genetic Algorithm-driven Multiomics analysis for pan-cancer immunotherapy response prediction.
iMLGAM:基于机器学习和遗传算法的多组学分析,用于泛癌免疫治疗反应预测
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作者:Ye Bicheng, Fan Jun, Xue Lei, Zhuang Yu, Luo Peng, Jiang Aimin, Xie Jiaheng, Li Qifan, Liang Xiaoqing, Tan Jiaxiong, Zhao Songyun, Zhou Wenhang, Ren Chuanli, Lin Haoran, Zhang Pengpeng
| 期刊: | Imeta | 影响因子: | 33.200 |
| 时间: | 2025 | 起止号: | 2025 Mar 8; 4(2):e70011 |
| doi: | 10.1002/imt2.70011 | 研究方向: | 免疫/内分泌 |
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