Machine Learning Unveils Immune-Related Signature in Multicenter Glioma Studies

Sha Yang, Xiang Wang,Renzheng Huan,Mei Deng, Zhuo Kong, Yunbiao Xiong, Tao Luo, Zheng Jin, Jian Liu,Liangzhao Chu,Guoqiang Han,Jiqin Zhang, Ying Tan

iScience(2024)

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摘要
In glioma molecular subtyping, existing biomarkers are limited, prompting the development of new ones. We present a multicenter study-derived consensus immune-related and prognostic gene signature (CIPS) using an optimal risk score model and 101 algorithms. CIPS, an independent risk factor, showed stable and powerful predictive performance for overall and progression-free survival, surpassing traditional clinical variables. The risk score correlated significantly with the immune microenvironment, indicating potential sensitivity to immunotherapy. High-risk groups exhibited distinct chemotherapy drug sensitivity. Seven signature genes, including IGFBP2 and TNFRSF12A, were validated by qRT-PCR, with higher expression in tumors and prognostic relevance. TNFRSF12A, upregulated in GBM, demonstrated inhibitory effects on glioma cell proliferation, migration, and invasion. CIPS emerges as a robust tool for enhancing individual glioma patient outcomes, while IGFBP2 and TNFRSF12A pose as promising tumor markers and therapeutic targets.
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关键词
Immunotherapy,Biomarker,Machine learning,Prognosis,TME
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