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Machine learning-based integration develops an immune-derived lncRNA signature for improving outcomes in colorectal cancer

Zaoqu Liu, Long Liu, Siyuan Weng, Chunguang Guo, Qin Dang, Hui Xu, Libo Wang, Taoyuan Lu, Yuyuan Zhang, Zhenqiang Sun, Xinwei Han

2022Nature Communications917 citationsDOIOpen Access PDF

Abstract

Long noncoding RNAs (lncRNAs) are recently implicated in modifying immunology in colorectal cancer (CRC). Nevertheless, the clinical significance of immune-related lncRNAs remains largely unexplored. In this study, we develope a machine learning-based integrative procedure for constructing a consensus immune-related lncRNA signature (IRLS). IRLS is an independent risk factor for overall survival and displays stable and powerful performance, but only demonstrates limited predictive value for relapse-free survival. Additionally, IRLS possesses distinctly superior accuracy than traditional clinical variables, molecular features, and 109 published signatures. Besides, the high-risk group is sensitive to fluorouracil-based adjuvant chemotherapy, while the low-risk group benefits more from bevacizumab. Notably, the low-risk group displays abundant lymphocyte infiltration, high expression of CD8A and PD-L1, and a response to pembrolizumab. Taken together, IRLS could serve as a robust and promising tool to improve clinical outcomes for individual CRC patients.

Topics & Concepts

Immune systemColorectal cancerMedicineOncologyClinical significanceAdjuvantComputer scienceBioinformaticsInternal medicineCancerImmunologyBiologyCancer-related molecular mechanisms researchColorectal Cancer Treatments and StudiesMycobacterium research and diagnosis