Pan-cancer Analysis Reveals m6A Variation and Cell-specific Regulatory Network in Different Cancer Types
Author:
Lin YaoORCID, Li JingyiORCID, Liang ShuaiyiORCID, Chen YaxinORCID, Li YueqiORCID, Cun YixianORCID, Tian LeiORCID, Zhou YuanliORCID, Chen YitongORCID, Chu JiemeiORCID, Chen HubinORCID, Luo QiangORCID, Zheng RuiliORCID, Wang GangORCID, Liang HaoORCID, Cui PingORCID, An Sanqi
Abstract
AbstractAs the most abundant mRNA modification in mRNA,N6-methyladenosine (m6A) plays a crucial role in RNA fate, impacting cellular and physiological processes in various tumor types. However, our understanding of the function and role of the m6A methylome in tumor heterogeneity remains limited. Herein, we collected and analyzed m6A methylomes across nine human tissues from 97 m6A-seq and RNA-seq samples. Our findings demonstrate that m6A exhibits different heterogeneity in most tumor tissues compared to normal tissues, which contributes to the diverse clinical outcomes in different cancer types. We also found that the cancer type-specific m6A level regulated the expression of different cancer-related genes in distinct cancer types. Utilizing a novel and reliable method called “m6A-express”, we predicted m6A– regulated genes and revealed that cancer type-specific m6A-regulated genes contributed to the prognosis, tumor origin and infiltration level of immune cells in diverse patient populations. Furthermore, we identified cell-specific m6A regulators that regulate cancer-specific m6A and constructed a regulatory network. Experimental validation was performed, confirming that the cell-specific m6A regulatorCAPRIN1controls the m6A level ofTP53. Overall, our work reveals the clinical relevance of m6A in various tumor tissues and explains how such heterogeneity is established. These results further suggest the potential of m6A for cancer precision medicine for patients with different cancer types.
Publisher
Cold Spring Harbor Laboratory
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