Predictive modeling of preoperative acute heart failure in older adults with hypertension: a dual perspective of SHAP values and interaction analysis.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Qili Yu, Zhiyong Hou, Zhiqian Wang
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Abstract

Background: In older adults with hypertension, hip fractures accompanied by preoperative acute heart failure significantly elevate surgical risks and adverse outcomes, necessitating timely identification and management to improve patient outcomes.

Research objective: This study aims to enhance the early recognition of acute heart failure in older hypertensive adults prior to hip fracture surgery by developing a predictive model using logistic regression (LR) and machine learning methods, optimizing preoperative assessment and management.

Methods: Employing a retrospective study design, we analyzed hypertensive older adults who underwent hip fracture surgery at Hebei Medical University Third Hospital from January 2018 to December 2022. Predictive models were constructed using LASSO regression and multivariable logistic regression, evaluated via nomogram charts. Five additional machine learning methods were utilized, with variable importance assessed using SHAP values and the impact of key variables evaluated through multivariate correlation analysis and interaction effects.

Results: The study included 1,370 patients. LASSO regression selected 18 key variables, including sex, age, coronary heart disease, pulmonary infection, ventricular arrhythmias, acute myocardial infarction, and anemia. The logistic regression model demonstrated robust performance with an AUC of 0.753. Although other models outperformed it in sensitivity and F1 score, logistic regression's discriminative ability was significant for clinical decision-making. The Gradient Boosting Machine model, notable for a sensitivity of 95.2%, indicated substantial capability in identifying patients at risk, crucial for reducing missed diagnoses.

Conclusion: We developed and compared efficacy of predictive models using logistic regression and machine learning, interpreting them with SHAP values and analyzing key variable interactions. This offers a scientific basis for assessing preoperative heart failure risk in older adults with hypertension and hip fractures, providing significant guidance for individualized treatment strategies and underscoring the value of applying machine learning in clinical settings.

高血压老年人术前急性心力衰竭的预测模型:SHAP 值和交互分析的双重视角。
背景:在患有高血压的老年人中,髋部骨折伴有术前急性心力衰竭会显著增加手术风险和不良预后,因此需要及时识别和管理以改善患者预后:本研究旨在利用逻辑回归(LR)和机器学习方法建立一个预测模型,优化术前评估和管理,从而提高老年高血压患者在髋部骨折手术前急性心力衰竭的早期识别率:采用回顾性研究设计,我们分析了2018年1月至2022年12月在河北医科大学第三医院接受髋部骨折手术的高血压老年人。使用 LASSO 回归和多变量逻辑回归构建了预测模型,并通过提名图进行评估。另外还采用了五种机器学习方法,使用SHAP值评估变量的重要性,并通过多变量相关分析和交互效应评估关键变量的影响:研究纳入了 1,370 名患者。LASSO回归选择了18个关键变量,包括性别、年龄、冠心病、肺部感染、室性心律失常、急性心肌梗死和贫血。逻辑回归模型的 AUC 为 0.753,表现强劲。虽然其他模型在灵敏度和 F1 分数方面优于该模型,但逻辑回归的判别能力对临床决策具有重要意义。梯度提升机模型的灵敏度高达 95.2%,表明该模型在识别高危患者方面具有很强的能力,这对减少漏诊至关重要:我们利用逻辑回归和机器学习开发并比较了预测模型的功效,并结合 SHAP 值对其进行了解释,还分析了关键变量之间的相互作用。这为评估患有高血压和髋部骨折的老年人术前心衰风险提供了科学依据,为个体化治疗策略提供了重要指导,并强调了机器学习在临床环境中的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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