Nonlinear association between visceral fat metabolism score and heart failure: insights from LightGBM modeling and SHAP-Driven feature interpretation in NHANES.
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引用次数: 0
Abstract
Objective: Using 2005-2018 NHANES data, this study examined the association between the visceral fat metabolism score (METS-VF) and heart failure (HF) prevalence in U.S. adults, leveraging machine learning (LightGBM/XGBoost) and SHAP for classfication performance evaluation and feature interpretation.
Methods: After excluding missing data, 30,704 participants were analyzed via survey-weighted statistics, restricted cubic splines (RCS), stratified analyses, and multivariate logistic regression. Ensemble models were compared for HF classification, with SHAP quantifying feature importance.
Results: HF patients exhibited higher METS-VF (7.35 ± 0.53 vs. 6.79 ± 0.72, P < 0.001) and worse cardiometabolic profiles. Multivariate adjustment revealed a 2.249-fold increased HF prevalence per 1-unit METS-VF increase (95% CI: 1.503-3.366, P < 0.001), with a nonlinear threshold effect (inflection point = 7.151; OR = 3.321, 95% CI: 3.464-8.494 for METS-VF ≥ 7.151). Obesity (BMI ≥ 30 kg/m²) amplified the association (OR = 5.857). LightGBM outperformed logistic regression in classification (AUC = 0.964 vs. 0.907), with SHAP identifying METS-VF as the top contributor (importance weight = 18.6%), surpassing hypertension (10.8%) and coronary artery disease (11.7%). Correlations validated METS-VF as a composite index of visceral adiposity and metabolic dysfunction (waist circumference r = 0.43, high-density lipoprotein cholesterol r = - 0.38, all P < 0.001).
Conclusion: METS-VF is independently and nonlinearly associated with HF prevalence, particularly in obese individuals. Machine learning enhances predictive accuracy by capturing complex interactions, while SHAP-based interpretability establishes METS-VF as a key biomarker integrating metabolic-adipose abnormalities, offering a novel target for personalized HF prevention.
目的:本研究利用2005-2018年NHANES数据,研究了美国成年人内脏脂肪代谢评分(METS-VF)与心力衰竭(HF)患病率之间的关系,利用机器学习(LightGBM/XGBoost)和SHAP进行分类性能评估和特征解释。方法:剔除缺失数据后,对30,704名参与者进行调查加权统计、限制性三次样条(RCS)、分层分析和多因素logistic回归分析。对集合模型进行高频分类比较,其中SHAP量化特征重要性。结果:HF患者表现出更高的METS-VF(7.35±0.53 vs. 6.79±0.72,P)结论:METS-VF与HF患病率独立且非线性相关,特别是在肥胖个体中。机器学习通过捕获复杂的相互作用来提高预测的准确性,而基于shap的可解释性使METS-VF成为整合代谢脂肪异常的关键生物标志物,为个性化HF预防提供了新的靶点。
期刊介绍:
BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.