Department of Public Health, Wuhan Fourth Hospital, Wuhan, China.
Front Public Health. 2022 Aug 1;10:906774. doi: 10.3389/fpubh.2022.906774. eCollection 2022.
Heavy metals are present in many environmental pollutants, and have cumulative effects on the human body through water or food, which can lead to several diseases, including osteoarthritis (OA). In this research, we aimed to explore the association between heavy metals and OA.
We extracted 18 variables including age, gender, race, education level, marital status, smoking status, body mass index (BMI), physical activity, diabetes mellitus, hypertension, poverty level index (PLI), Lead (Pb), cadmium (Cd), mercury (Hg), selenium (Se), manganese (Mn), and OA status from National Health and Nutrition Examination Survey (NHANES) 2011-2020 datasets.
In the baseline data, the test and Chi-square test were conducted. For heavy metals, quartile description and limit of detection (LOD) were adopted. To analyze the association between heavy metals and OA among elderly subjects, multivariable logistic regression was conducted and subgroup logistic by gender was also carried out. Furthermore, to make predictions based on heavy metals for OA, we compared eight machine learning algorithms, and XGBoost (AUC of 0.8, accuracy value of 0.773, and kappa value of 0.358) was the best machine learning model for prediction. For interactive use, a shiny application was made (https://alanwu.shinyapps.io/NHANES-OA/).
The overall and gender subgroup logistic regressions all showed that Pb and Cd promoted the prevalence of OA while Mn could be a protective factor of OA prevalence among the elderly population of the United States. Furthermore, XGBoost model was trained for OA prediction.
重金属存在于许多环境污染物中,通过水或食物会对人体造成累积效应,从而导致多种疾病,包括骨关节炎(OA)。在这项研究中,我们旨在探讨重金属与 OA 之间的关系。
我们从国家健康和营养检查调查(NHANES)2011-2020 年数据集提取了 18 个变量,包括年龄、性别、种族、教育水平、婚姻状况、吸烟状况、体重指数(BMI)、身体活动、糖尿病、高血压、贫困指数(PLI)、铅(Pb)、镉(Cd)、汞(Hg)、硒(Se)、锰(Mn)和 OA 状况。
在基线数据中,进行了 t 检验和卡方检验。对于重金属,采用四分位数描述和检出限(LOD)。为了分析老年人中重金属与 OA 之间的关系,进行了多变量逻辑回归和性别亚组逻辑回归。此外,为了基于重金属对 OA 进行预测,我们比较了八种机器学习算法,XGBoost(AUC 为 0.8、准确度值为 0.773、kappa 值为 0.358)是预测 OA 的最佳机器学习模型。为了实现交互使用,我们制作了一个 shiny 应用程序(https://alanwu.shinyapps.io/NHANES-OA/)。
整体和性别亚组逻辑回归均表明 Pb 和 Cd 促进了 OA 的患病率,而 Mn 可能是美国老年人群中 OA 患病率的保护因素。此外,还针对 OA 预测训练了 XGBoost 模型。