State Key Laboratory of Environment Health (Incubation), Key Laboratory of Environment and Health, Ministry of Education, Key Laboratory of Environment and Health (Wuhan), Ministry of Environmental Protection, School of Public Health, Tongji Medical College, Huazhong University of Science and Technology, #13 Hangkong Road, Wuhan, 430030, Hubei, PR China.
Chemosphere. 2022 Feb;289:133015. doi: 10.1016/j.chemosphere.2021.133015. Epub 2021 Nov 22.
Exposure to some heavy metals has been demonstrated to be related to the risk of preterm birth (PTB). However, the effects of multi-metal mixture are seldom assessed. Thus, we aimed to investigate the associations of maternal exposure to metal mixture with PTB, and to identify the main contributors to PTB from the mixture.
The population in the nested case-control study was from a prospective cohort enrolled in Wuhan, China between 2012 and 2014. Eighteen metals were measured in maternal urine collected before delivery. Logistic regression, elastic net regularization (ENET), weighted quantile sum regression (WQSR), and Bayesian kernel machine regression (BKMR) were used to estimate the overall effect and identify important mixture components that drive the associations with PTB.
Logistic regression found naturally log-transformed concentrations of 13 metals were positively associated with PTB after adjusting for the covariates, and only V, Zn, and Cr remained the significantly positive associations when additionally adjusting for the 13 metals together. ENET identified 11 important metals for PTB, and V (β = 0.23) had the strongest association. WQSR determined the positive combined effect of metal mixture on PTB (OR: 1.44, 95%CI: 1.32, 1.57), and selected Cr and V (weighted 0.41 and 0.32, respectively) as the most weighted metals. BKMR analysis confirmed the overall mixture was positively associated with PTB, and the independent effect of V was the most significant. Besides, BKMR showed the non-linear relationships of V and Cu with PTB, and the potential interaction between Zn and Cu.
Applying different statistical models, the study found that exposure to the metal mixture was associated with a higher risk of PTB, and V was identified as the most important risk factor among co-exposed metals for PTB.
一些重金属的暴露已被证明与早产(PTB)的风险有关。然而,很少评估多金属混合物的影响。因此,我们旨在研究母体暴露于金属混合物与 PTB 的关系,并从混合物中确定导致 PTB 的主要因素。
嵌套病例对照研究的人群来自 2012 年至 2014 年在中国武汉招募的前瞻性队列。在分娩前采集的孕妇尿液中测量了 18 种金属。使用逻辑回归、弹性网络正则化(ENET)、加权分位数总和回归(WQSR)和贝叶斯核机器回归(BKMR)来估计总体效应并识别导致与 PTB 相关的重要混合物成分。
逻辑回归发现,在调整协变量后,13 种金属的自然对数浓度与 PTB 呈正相关,而当进一步同时调整这 13 种金属时,只有 V、Zn 和 Cr 仍与阳性关联。ENET 确定了 11 种与 PTB 相关的重要金属,其中 V(β=0.23)的关联最强。WQSR 确定了金属混合物对 PTB 的正联合效应(OR:1.44,95%CI:1.32,1.57),并选择 Cr 和 V(权重分别为 0.41 和 0.32)作为加权最重的金属。BKMR 分析证实了总体混合物与 PTB 呈正相关,V 的独立效应最为显著。此外,BKMR 显示了 V 和 Cu 与 PTB 的非线性关系,以及 Zn 和 Cu 之间的潜在相互作用。
应用不同的统计模型,本研究发现,暴露于金属混合物与 PTB 的风险增加有关,V 被确定为 PTB 共暴露金属中最重要的危险因素。