Department of Public Health, College of Medicine, National Cheng Kung University.
Department of Internal Medicine, College of Medicine, National Cheng Kung University.
Environ Health Prev Med. 2024;29:7. doi: 10.1265/ehpm.23-00271.
Metabolic Dysfunction-associated Steatotic Liver Disease (MASLD) has become a global epidemic, and air pollution has been identified as a potential risk factor. This study aims to investigate the non-linear relationship between ambient air pollution and MASLD prevalence.
In this cross-sectional study, participants undergoing health checkups were assessed for three-year average air pollution exposure. MASLD diagnosis required hepatic steatosis with at least 1 out of 5 cardiometabolic criteria. A stepwise approach combining data visualization and regression modeling was used to determine the most appropriate link function between each of the six air pollutants and MASLD. A covariate-adjusted six-pollutant model was constructed accordingly.
A total of 131,592 participants were included, with 40.6% met the criteria of MASLD. "Threshold link function," "interaction link function," and "restricted cubic spline (RCS) link functions" best-fitted associations between MASLD and PM, PM/CO, and O /SO/NO, respectively. In the six-pollutant model, significant positive associations were observed when pollutant concentrations were over: 34.64 µg/m for PM, 57.93 µg/m for PM, 56 µg/m for O, below 643.6 µg/m for CO, and within 33 and 48 µg/m for NO. The six-pollutant model using these best-fitted link functions demonstrated superior model fitting compared to exposure-categorized model or linear link function model assuming proportionality of odds.
Non-linear associations were found between air pollutants and MASLD prevalence. PM, PM, O, CO, and NO exhibited positive associations with MASLD in specific concentration ranges, highlighting the need to consider non-linear relationships in assessing the impact of air pollution on MASLD.
代谢功能障碍相关脂肪性肝病 (MASLD) 已成为全球性流行疾病,空气污染已被确定为潜在的危险因素。本研究旨在探讨环境空气污染与 MASLD 患病率之间的非线性关系。
在这项横断面研究中,评估了参与者的三年平均空气污染暴露量。MASLD 的诊断需要有肝脂肪变性和至少 5 项心血管代谢标准中的 1 项。采用数据可视化和回归建模相结合的逐步方法,确定了六种空气污染物中每一种与 MASLD 之间最合适的连接函数。相应地构建了一个经协变量调整的六污染物模型。
共纳入 131592 名参与者,其中 40.6%符合 MASLD 标准。“阈值连接函数”、“交互连接函数”和“限制立方样条 (RCS) 连接函数”分别最佳拟合了 MASLD 与 PM、PM/CO 和 O/ SO/NO 之间的关联。在六污染物模型中,当污染物浓度超过以下水平时,观察到与 MASLD 呈显著正相关:PM 为 34.64 µg/m、PM 为 57.93 µg/m、O 为 56 µg/m、CO 为 643.6 µg/m 以下和 NO 为 33-48 µg/m 之间。与假设比例优势的暴露分类模型或线性连接函数模型相比,使用这些最佳拟合连接函数的六污染物模型显示出更好的模型拟合度。
发现空气污染物与 MASLD 患病率之间存在非线性关联。在特定浓度范围内,PM、PM、O、CO 和 NO 与 MASLD 呈正相关,这突出表明在评估空气污染对 MASLD 的影响时需要考虑非线性关系。