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分析中国钢铁工人非酒精性脂肪肝的影响因素及风险评估研究。

Analysis of factors affecting nonalcoholic fatty liver disease in Chinese steel workers and risk assessment studies.

机构信息

School of Public Health, North China University of Science and Technology, Caofeidian New Town, No. 21 Bohai Avenue, Tangshan, 063210, China.

出版信息

Lipids Health Dis. 2023 Aug 9;22(1):123. doi: 10.1186/s12944-023-01886-0.

Abstract

BACKGROUND

The global incidence of nonalcoholic fatty liver disease (NAFLD) is rapidly escalating, positioning it as a principal public health challenge with significant implications for population well-being. Given its status as a cornerstone of China's economic structure, the steel industry employs a substantial workforce, consequently bringing associated health issues under increasing scrutiny. Establishing a risk assessment model for NAFLD within steelworkers aids in disease risk stratification among this demographic, thereby facilitating early intervention measures to protect the health of this significant populace.

METHODS

Use of cross-sectional studies. A total of 3328 steelworkers who underwent occupational health evaluations between January and September 2017 were included in this study. Hepatic steatosis was uniformly diagnosed via abdominal ultrasound. Influential factors were pinpointed using chi-square (χ) tests and unconditional logistic regression analysis, with model inclusion variables identified by pertinent literature. Assessment models encompassing logistic regression, random forest, and XGBoost were constructed, and their effectiveness was juxtaposed in terms of accuracy, area under the curve (AUC), and F1 score. Subsequently, a scoring system for NAFLD risk was established, premised on the optimal model.

RESULTS

The findings indicated that sex, overweight, obesity, hyperuricemia, dyslipidemia, occupational dust exposure, and ALT serve as risk factors for NAFLD in steelworkers, with corresponding odds ratios (OR, 95% confidence interval (CI)) of 0.672 (0.487-0.928), 4.971 (3.981-6.207), 16.887 (12.99-21.953), 2.124 (1.77-2.548), 2.315 (1.63-3.288), 1.254 (1.014-1.551), and 3.629 (2.705-4.869), respectively. The sensitivity of the three models was reported as 0.607, 0.680 and 0.564, respectively, while the precision was 0.708, 0.643, and 0.701, respectively. The AUC measurements were 0.839, 0.839, and 0.832, and the Brier scores were 0.150, 0.153, and 0.155, respectively. The F1 score results were 0.654, 0.661, and 0.625, with log loss measures at 0.460, 0.661, and 0.564, respectively. R values were reported as 0.789, 0.771, and 0.778, respectively. Performance was comparable across all three models, with no significant differences observed. The NAFLD risk score system exhibited exceptional risk detection capabilities with an established cutoff value of 86.

CONCLUSIONS

The study identified sex, BMI, dyslipidemia, hyperuricemia, occupational dust exposure, and ALT as significant risk factors for NAFLD among steelworkers. The traditional logistic regression model proved equally effective as the random forest and XGBoost models in assessing NAFLD risk. The optimal cutoff value for risk assessment was determined to be 86. This study provides clinicians with a visually accessible risk stratification approach to gauge the propensity for NAFLD in steelworkers, thereby aiding early identification and intervention among those at risk.

摘要

背景

非酒精性脂肪性肝病(NAFLD)的全球发病率正在迅速上升,使其成为一个主要的公共卫生挑战,对人口健康有重大影响。鉴于钢铁行业在中国经济结构中的重要地位,该行业拥有大量的劳动力,因此相关的健康问题也越来越受到关注。为钢铁工人建立 NAFLD 风险评估模型有助于对这一人群进行疾病风险分层,从而为保护这一重要人群的健康提供早期干预措施。

方法

使用横断面研究。本研究共纳入了 2017 年 1 月至 9 月间接受职业健康评估的 3328 名钢铁工人。通过腹部超声均匀诊断肝脂肪变性。采用卡方(χ)检验和非条件 logistic 回归分析确定影响因素,模型纳入变量由相关文献确定。构建了包含 logistic 回归、随机森林和 XGBoost 的评估模型,并比较了它们在准确性、曲线下面积(AUC)和 F1 评分方面的效果。随后,基于最优模型建立了 NAFLD 风险评分系统。

结果

研究结果表明,性别、超重、肥胖、高尿酸血症、血脂异常、职业性粉尘暴露和 ALT 是钢铁工人患 NAFLD 的危险因素,相应的比值比(OR,95%置信区间(CI))为 0.672(0.487-0.928)、4.971(3.981-6.207)、16.887(12.99-21.953)、2.124(1.77-2.548)、2.315(1.63-3.288)、1.254(1.014-1.551)和 3.629(2.705-4.869)。三种模型的敏感性分别为 0.607、0.680 和 0.564,而精度分别为 0.708、0.643 和 0.701。AUC 测量值分别为 0.839、0.839 和 0.832,Brier 分数分别为 0.150、0.153 和 0.155,F1 评分结果分别为 0.654、0.661 和 0.625,对数损失分别为 0.460、0.661 和 0.564。R 值分别为 0.789、0.771 和 0.778。三种模型的性能相当,没有显著差异。NAFLD 风险评分系统具有出色的风险检测能力,确定的截断值为 86。

结论

本研究确定了性别、BMI、血脂异常、高尿酸血症、职业性粉尘暴露和 ALT 是钢铁工人患 NAFLD 的重要危险因素。传统的 logistic 回归模型与随机森林和 XGBoost 模型在评估 NAFLD 风险方面同样有效。风险评估的最佳截断值确定为 86。本研究为临床医生提供了一种直观的风险分层方法,用于评估钢铁工人患 NAFLD 的倾向,从而有助于对高危人群进行早期识别和干预。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0cc5/10411019/14991b85c031/12944_2023_1886_Fig1_HTML.jpg

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