基于机器学习的老年痴呆患者谵妄风险综合预测模型:危险因素识别。

IF 3.5 3区 医学 Q2 GERIATRICS & GERONTOLOGY
Clinical Interventions in Aging Pub Date : 2025-05-15 eCollection Date: 2025-01-01 DOI:10.2147/CIA.S519366
Qifan Xiao, Shirui Zhou, Bin Tang, Yuqing Zhu
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引用次数: 0

摘要

背景:谵妄叠加痴呆(DSD)是老年痴呆患者的一种严重并发症,以认知波动、注意力不集中和意识改变为特征。由于症状重叠,检测具有挑战性,但它会导致认知能力下降、住院时间延长和死亡率增加。识别关键风险因素并建立准确的预测模型对于及时干预至关重要。本研究旨在建立一个基于机器学习的模型来预测谵妄风险,重点关注重要的预测因素,以帮助临床决策。方法:前瞻性收集636例老年痴呆患者的临床资料。五种机器学习算法——极端梯度增强(XGB)、随机森林(RF)、多层感知器(MLP)、分类增强(CB)和逻辑回归(LR)——被用来构建预测模型。使用SHapley加性解释(SHAP)分析特征重要性,以确定关键危险因素。数据包括人口统计信息、生化参数、合并症、用药史和视觉模拟量表(VAS)评分。结果:最终纳入636例老年痴呆患者,平均年龄78.2±6.3岁,其中187例(29.4%)在住院期间出现谵妄。XGB模型表现最佳,在受试者工作特征曲线下面积最大(0.930),准确率最高(0.870),F1评分最高(0.892),精密度-召回率曲线下面积最高(0.989)。XGB模型的Brier评分为0.08。SHAP方法确定脑血管疾病、镇静药物使用、血红蛋白水平、VAS评分≥4、超氧化物歧化酶、糖尿病、hsCRP、高血压、家族存在和高脂血症是谵妄最重要的危险因素。利用前10个变量构建了紧凑的XGB模型,该模型也具有良好的预测性能。结论:本研究建立了基于机器学习的老年痴呆患者谵妄风险预测模型,其中XGB模型表现最佳。确定的关键危险因素为早期干预提供了见解,有可能改善谵妄的临床管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive Machine Learning-Based Prediction Model for Delirium Risk in Older Patients with Dementia: Risk Factors Identification.

Background: Delirium superimposed on dementia (DSD) is a severe complication in older adults with dementia, marked by fluctuating cognition, inattention, and altered consciousness. Detection is challenging due to symptom overlap, yet it contributes to cognitive decline, prolonged hospitalization, and increased mortality. Identifying key risk factors and developing an accurate prediction model is crucial for timely intervention. This study aimed to establish a machine learning-based model to predict delirium risk, focusing on significant predictors to aid clinical decision-making.

Methods: We prospectively collected clinical data from 636 older dementia patients. Five machine learning algorithms-Extreme Gradient Boosting (XGB), Random Forest (RF), Multilayer Perceptron (MLP), Categorical Boosting (CB), and Logistic Regression (LR)-were used to construct prediction models. Feature importance was analyzed using SHapley Additive exPlanations (SHAP) to identify key risk factors. Data included demographic information, biochemical parameters, comorbidities, medication history, and Visual Analogue Scale (VAS) scores.

Results: The final analysis included 636 older dementia patients, with a mean age of 78.2 ± 6.3 years, of whom 187 (29.4%) developed delirium during hospitalization. The XGB model demonstrated the best performance, achieving the highest area under the receiver operating characteristic curve (0.930), accuracy (0.870), F1 score (0.892), and area under the precision-recall curve (0.989). The Brier score for the XGB model was 0.08. The SHAP method identified cerebrovascular disease, sedative drug use, hemoglobin levels, VAS score ≥4, superoxide dismutase, diabetes, hsCRP, hypertension, family presence, and hyperlipidemia as the most significant risk factors for delirium. The top 10 variables were used to construct a compact XGB model, which also exhibited good predictive performance.

Conclusion: This study developed a machine learning-based prediction model for delirium risk in older dementia patients, with the XGB model demonstrating the best performance. The identified key risk factors provide insights for early intervention, potentially improving delirium management in clinical practice.

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来源期刊
Clinical Interventions in Aging
Clinical Interventions in Aging GERIATRICS & GERONTOLOGY-
CiteScore
6.80
自引率
2.80%
发文量
193
审稿时长
6-12 weeks
期刊介绍: Clinical Interventions in Aging, is an online, peer reviewed, open access journal focusing on concise rapid reporting of original research and reviews in aging. Special attention will be given to papers reporting on actual or potential clinical applications leading to improved prevention or treatment of disease or a greater understanding of pathological processes that result from maladaptive changes in the body associated with aging. This journal is directed at a wide array of scientists, engineers, pharmacists, pharmacologists and clinical specialists wishing to maintain an up to date knowledge of this exciting and emerging field.
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