An Interpretable Machine Learning Model for Predicting Mortality Risk in Patients With Hypertension and Heart Failure With Preserved Ejection Fraction

医学 机器学习 人工智能 接收机工作特性 可解释性 随机森林 射血分数保留的心力衰竭 逻辑回归 射血分数 队列 心力衰竭 多层感知器 支持向量机 内科学 特征选择 前瞻性队列研究 血压 试验装置 感知器 死亡率 心脏病学 决策树 结果(博弈论) 队列研究 弗雷明翰风险评分 临床决策支持系统 人工神经网络 临床试验 风险评估 预测建模 Lasso(编程语言) 临床实习 死亡风险 试验预测值 危险分层 重症监护医学 舒张期 曲线下面积 随机梯度下降算法 预加载
作者
Guo Wei,Jing Tian,Yajing Wang,Yanbo Zhang,Qinghua Han
出处
期刊:American Journal of Hypertension [Oxford University Press]
卷期号:38 (10): 864-864
标识
DOI:10.1093/ajh/hpaf086
摘要

Abstract OBJECTIVE To develop an interpretable machine learning model to predict all-cause mortality risk in patients with hypertension and heart failure with preserved ejection fraction (HFpEF). METHODS A prospective cohort of 847 patients diagnosed with hypertension and HFpEF from three tertiary hospitals in Shanxi Province between April 2015 and March 2019 was followed until 1 April 2022. All-cause mortality was used as the outcome event. The cohort was randomly split into training (70%) and testing (30%) sets. The training set was used to construct prediction models, and the testing set was used for performance evaluation. Predictors were selected using the least absolute shrinkage and selection operator (LASSO)-Cox regression. Six machine learning models, including extreme gradient boosting, logistic regression, random forest (RF), decision tree, support vector machine, and multilayer perceptron (MLP), were developed to predict the 3-year all-cause mortality risk. Model performance was evaluated using receiver operating characteristic (ROC) curves, calibration curves, and clinical decision curves. The Shapley additive explanations (SHAP) framework was applied to the simplified optimal model for interpretability analysis, and restricted cubic spline models were used to explore the nonlinear relationships between key predictors and all-cause mortality. RESULTS After a median follow-up of 4.25 (P25, P75 2.86, 6.17) years, 224 patients (26.4%) experienced all-cause mortality. Using the LASSO-Cox regression, 17 predictors were identified from patients’ clinical characteristics, including vital signs, laboratory tests, and imaging results. The RF model achieved the best performance, with an area under the ROC curve (AUC) of 0.823 (95% CI: 0.693–0.950), accuracy of 84.0%, sensitivity of 82.3%, specificity of 83.0%, and an F1 score of 0.810. Calibration and clinical decision curves confirmed the RF model’s good calibration and clinical applicability. SHAP feature importance analysis revealed that age, estimated glomerular filtration rate (eGFR), systolic blood pressure, and body mass index (BMI) were the top 4 factors influencing all-cause mortality in patients with hypertension and HFpEF. Further restricted cubic spline analysis indicated that age > 72 years, eGFR < 72.9 mL/(min·1.73 m2), systolic blood pressure > 136 mm Hg, and BMI > 26.6 kg/m2 were associated with increased all-cause mortality risk. To enhance the clinical applicability of risk warning thresholds, clinically practical thresholds were selected for Cox regression analysis. The results showed that systolic blood pressure > 135 mm Hg (HR = 1.362, 95% CI: 1.020–1.819) and eGFR < 70 mL/(min·1.73 m²) (HR = 1.519, 95% CI: 1.135–2.034) were both significantly associated with an increased risk of all-cause mortality. CONCLUSION The RF-based prediction model can effectively estimate the 3-year all-cause mortality risk in patients with hypertension and HFpEF after discharge. SHAP-based interpretability analysis can provide clear insights for clinical decision-making.

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