Identifying causality, genetic correlation, priority and pathways of large-scale complex exposures of breast and ovarian cancers

体质指数 肿瘤科 内科学 乳腺癌 卵巢癌 医学 浆液性液体 内分泌学 生理学 相关性 生物 癌症 疾病 孟德尔随机化
作者
Shucheng Si,Jiqing Li,Marlvin Anemey Tewara,Hongkai Li,Xinhui Liu,Yunxia Li,Xiaolu Chen,Congcong Liu,Tonghui Yuan,Wenchao Li,Bojie Wang,Fuzhong Xue
出处
期刊:British Journal of Cancer [Springer Nature]
被引量:1
标识
DOI:10.1038/s41416-021-01576-7
摘要

BackgroundGenetic correlations, causalities and pathways between large-scale complex exposures and ovarian and breast cancers need systematic exploration.MethodsMendelian randomisation (MR) and genetic correlation (GC) were used to identify causal biomarkers from 95 cancer-related exposures for risk of breast cancer [BC: oestrogen receptor-positive (ER + BC) and oestrogen receptor-negative (ER − BC) subtypes] and ovarian cancer [OC: high-grade serous (HGSOC), low-grade serous, invasive mucinous (IMOC), endometrioid (EOC) and clear cell (CCOC) subtypes].ResultsOf 31 identified robust risk factors, 16 were new causal biomarkers for BC and OC. Body mass index (BMI), body fat mass (BFM), comparative body size at age 10 (CBS-10), waist circumference (WC) and education attainment were shared risk factors for overall BC and OC. Childhood obesity, BMI, CBS-10, WC, schizophrenia and age at menopause were significantly associated with ER + BC and ER − BC. Omega-6:omega-3 fatty acids, body fat-free mass and basal metabolic rate were positively associated with CCOC and EOC; BFM, linoleic acid, omega-6 fatty acids, CBS-10 and birth weight were significantly associated with IMOC; and body fat percentage, BFM and adiponectin were significantly associated with HGSOC. Both GC and MR identified 13 shared factors. Factors were stratified into five priority levels, and visual causal networks were constructed for future interventions.ConclusionsWith analysis of large-scale exposures for breast and ovarian cancers, causalities, genetic correlations, shared or specific factors, risk factor priority and causal pathways and networks were identified.
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