可解释的机器学习模型在社区居住的老年人脆弱前风险评估。

Chenlin Du, Zeyu Zhang, Baoqin Liu, Zijian Cao, Nan Jiang, Zongjiu Zhang
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引用次数: 0

摘要

背景:老年人的虚弱与风险增加和生活质量降低有关。脆弱前期是脆弱之前的一种状态,是可以干预的,但其决定因素和评估是具有挑战性的。本研究旨在开发和验证一个可解释的机器学习模型,用于社区居住老年人的脆弱性前风险评估。方法:研究对象为3141名来自中国健康与退休纵向研究的60岁及以上成年人。体质脆弱表型量表的一个或两个标准表征了体质脆弱前期。我们从7个维度中提取了80个不同的特征来评估脆弱性前的风险。在80%的样本上使用递归特征消除和stack - catboost蒸馏模块构建模型,并在单独的20%保留数据集上进行验证。结果:该研究使用了2508名社区居住老年人的数据(平均年龄67.24岁[范围60-96岁];1215例(48.44%)女性)建立虚弱前风险评估模型。我们选择了57个预测特征,并建立了一个经过提炼的CatBoost模型,该模型在20%的holdout数据集上获得了最高的判别率(AUROC: 0.7560 [95% CI: 0.7169, 0.7928])。生活城市、BMI和呼气流量峰值(PEF)是导致脆弱前风险的三个最重要因素。物理和环境因素是影响最大的两个特征维度。结论:利用最先进的机器学习技术和解释方法,开发了一个准确且可解释的脆弱性前风险评估框架。我们的框架包含了广泛的特征和决定因素,允许对脆弱前风险进行全面而细致的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Explainable machine learning model for pre-frailty risk assessment in community-dwelling older adults

Explainable machine learning model for pre-frailty risk assessment in community-dwelling older adults

Background

Frailty in older adults is linked to increased risks and lower quality of life. Pre-frailty, a condition preceding frailty, is intervenable, but its determinants and assessment are challenging. This study aims to develop and validate an explainable machine learning model for pre-frailty risk assessment among community-dwelling older adults.

Methods

The study included 3141 adults aged 60 or above from the China Health and Retirement Longitudinal Study. Pre-frailty was characterized by one or two criteria from the physical frailty phenotype scale. We extracted 80 distinct features across seven dimensions to evaluate pre-frailty risk. A model was constructed using recursive feature elimination and a stacking-CatBoost distillation module on 80% of the sample and validated on a separate 20% holdout data set.

Results

The study used data from 2508 community-dwelling older adults (mean age, 67.24 years [range, 60–96]; 1215 [48.44%] females) to develop a pre-frailty risk assessment model. We selected 57 predictive features and built a distilled CatBoost model, which achieved the highest discrimination (AUROC: 0.7560 [95% CI: 0.7169, 0.7928]) on the 20% holdout data set. The living city, BMI, and peak expiratory flow (PEF) were the three most significant contributors to pre-frailty risk. Physical and environmental factors were the top 2 impactful feature dimensions.

Conclusions

An accurate and interpretable pre-frailty risk assessment framework using state-of-the-art machine learning techniques and explanation methods has been developed. Our framework incorporates a wide range of features and determinants, allowing for a comprehensive and nuanced understanding of pre-frailty risk.

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