A two-step, two-sample Mendelian randomization analysis investigating the interplay between gut microbiota, immune cells, and melanoma skin cancer

免疫系统 黑色素瘤 医学 孟德尔随机化 皮肤癌 癌症 免疫学 疾病 肿瘤科 癌症研究 生物 基因型 内科学 遗传学 基因 遗传变异
作者
Jiaqi Lou,Ziyi Xiang,Xiaoyu Zhu,Youfen Fan,Ji‐Liang Li,Guoying Jin,Shengyong Cui,Neng Huang,Xin Le
出处
期刊:Medicine [Ovid Technologies (Wolters Kluwer)]
卷期号:103 (45): e40432-e40432
标识
DOI:10.1097/md.0000000000040432
摘要

This study aims to rigorously explore the potential causal relationships among gut microbiota (GM), immune cells, and melanoma skin cancer among participants from Europe, where this disease exhibits significant prevalence and profound societal impact. Using the genome-wide association analysis database, a double-sample Mendelian randomization (MR) analysis was drawn upon to investigate GM, immune cells, and melanoma skin cancer. The inverse variance weighted approach was applied to estimate the causal connections among these variables. A two-step MR analysis was employed to quantitatively gauge the impact of immune cells mediated GM on melanoma skin cancer. To address potential sources of bias, such as pleiotropy and heterogeneity, multiple analytical techniques were integrated. The MR analysis pinpointed 6 GM taxa related to either an augmented or declined risk of late-stage melanoma skin cancer. In the same vein, 32 immune cell phenotypes were noticed as correlates with modified risk of melanoma skin cancer. Our study also implies that the probable association between GM and melanoma could be facilitated by 5 immune cell phenotypes. The findings of our study underline certain GM taxa and immune cells as potential influencers on the onset and development of melanoma skin cancer. Importantly, our results spotlight 5 immune cell phenotypes as potential agents mediating this association.

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