Predicting Progression to Dementia Using Auditory Verbal Learning Test in Community-Dwelling Older Adults Based On Machine Learning.

IF 4.4 2区 医学 Q1 GERIATRICS & GERONTOLOGY
Xin-Yan Xie, Lin-Ya Huang, Dan Liu, Gui-Rong Cheng, Fei-Fei Hu, Juan Zhou, Jing-Jing Zhang, Gang-Bin Han, Jing-Wen Geng, Xiao-Chang Liu, Jun-Yi Wang, De-Yang Zeng, Jing Liu, Qian-Qian Nie, Dan Song, Shi-Yue Li, Cheng Cai, Yu-Yang Cui, Lang Xu, Yang-Ming Ou, Xing-Xing Chen, Yan-Ling Zhou, Yu-Shan Chen, Jin-Quan Li, Zhen Wei, Qiong Wu, Yu-Fei Mei, Shao-Jun Song, Wei Tan, Qian-Hua Zhao, Ding Ding, Yan Zeng
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引用次数: 0

Abstract

Background: Primary healthcare institutions find identifying individuals with dementia particularly challenging. This study aimed to develop machine learning models for identifying predictive features of older adults with normal cognition to develop dementia.

Methods: We developed four machine learning models: logistic regression, decision tree, random forest, and gradient-boosted trees, predicting dementia of 1,162 older adults with normal cognition at baseline from the Hubei Memory and Aging Cohort Study. All relevant variables collected were included in the models. The Shanghai Aging Study was selected as a replication cohort (n = 1,370) to validate the performance of models including the key features after a wrapper feature selection technique. Both cohorts adopted comparable diagnostic criteria for dementia to most previous cohort studies.

Results: The random forest model exhibited slightly better predictive power using a series of auditory verbal learning test, education, and follow-up time, as measured by overall accuracy (93%) and an area under the curve (AUC) (mean [standard error]: 088 [0.07]). When assessed in the external validation cohort, its performance was deemed acceptable with an AUC of 0.81 (0.15). Conversely, the logistic regression model showed better results in the external validation set, attaining an AUC of 0.88 (0.20).

Conclusion: Our machine learning framework offers a viable strategy for predicting dementia using only memory tests in primary healthcare settings. This model can track cognitive changes and provide valuable insights for early intervention.

基于机器学习的社区老年人听觉语言学习测试预测痴呆进展
背景:初级卫生保健机构发现识别痴呆症患者尤其具有挑战性。本研究旨在开发机器学习模型,用于识别认知正常的老年人患痴呆症的预测特征。方法:我们开发了四种机器学习模型:逻辑回归、决策树、随机森林和梯度增强树,预测来自湖北记忆与衰老队列研究的1,162名基线认知正常的老年人的痴呆。所有收集到的相关变量都被纳入模型。选择上海老龄化研究作为复制队列(n = 1,370),以验证包装特征选择技术后包含关键特征的模型的性能。这两个队列采用了与以往大多数队列研究相似的痴呆诊断标准。结果:随机森林模型在一系列听觉语言学习测试、教育和随访时间中表现出稍好的预测能力,以总体准确率(93%)和曲线下面积(AUC)(平均值[标准误差]:088[0.07])来衡量。当在外部验证队列中评估时,其性能被认为是可接受的,AUC为0.81(0.15)。相反,逻辑回归模型在外部验证集中表现出更好的结果,AUC为0.88(0.20)。结论:我们的机器学习框架提供了一种可行的策略,仅使用初级医疗机构的记忆测试来预测痴呆症。该模型可以跟踪认知变化,为早期干预提供有价值的见解。
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来源期刊
CiteScore
13.00
自引率
4.20%
发文量
381
审稿时长
26 days
期刊介绍: The American Journal of Geriatric Psychiatry is the leading source of information in the rapidly evolving field of geriatric psychiatry. This esteemed journal features peer-reviewed articles covering topics such as the diagnosis and classification of psychiatric disorders in older adults, epidemiological and biological correlates of mental health in the elderly, and psychopharmacology and other somatic treatments. Published twelve times a year, the journal serves as an authoritative resource for professionals in the field.
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