Investigating Predictors of Cognitive Decline Using Machine Learning

被引:39
作者
Casanova, Ramon [1 ]
Saldana, Santiago [1 ]
Lutz, Michael W. [2 ]
Plassman, Brenda L. [2 ,3 ]
Kuchibhatla, Maragatha [4 ]
Hayden, Kathleen M. [5 ]
机构
[1] Wake Forest Sch Med, Dept Biostat Sci, Winston Salem, NC 27101 USA
[2] Duke Univ, Dept Neurol, Med Ctr, Durham, NC USA
[3] Duke Univ, Dept Psychiat & Behav Sci, Med Ctr, Durham, NC USA
[4] Duke Univ, Dept Biostat & Bioinformat, Med Ctr, Durham, NC USA
[5] Wake Forest Sch Med, Dept Social Sci & Hlth Policy, Winston Salem, NC 27101 USA
来源
JOURNALS OF GERONTOLOGY SERIES B-PSYCHOLOGICAL SCIENCES AND SOCIAL SCIENCES | 2020年 / 75卷 / 04期
关键词
Cognitive decline; Cognitive trajectories; Machine learning; Random forests; Risk factors; APOLIPOPROTEIN-E EPSILON-4; SOCIOECONOMIC-STATUS; ALZHEIMERS-DISEASE; EDUCATIONAL-ATTAINMENT; VASCULAR RISK; DEMENTIA RISK; OLDER; ASSOCIATION; PEOPLE; ALLELE;
D O I
10.1093/geronb/gby054
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
Objectives: Genetic risks for cognitive decline are not modifiable; however their relative importance compared to modifiable factors is unclear. We used machine learning to evaluate modifiable and genetic risk factors for Alzheimer's disease (AD), to predict cognitive decline. Methods: Health and Retirement Study participants, aged 65-90 years, with DNA and >2 cognitive evaluations, were included (n = 7,142). Predictors included age, body mass index, gender, education, APOE epsilon 4, cardiovascular, hypertension, diabetes, stroke, neighborhood socioeconomic status (NSES), and AD risk genes. Latent class trajectory analyses of cognitive scores determined the form and number of classes. Random Forests (RF) classification investigated predictors of cognitive trajectories. Performance metrics (accuracy, sensitivity, and specificity) were reported. Results: Three classes were identified. Discriminating highest from lowest classes produced the best RF performance: accuracy = 78% (1.0%), sensitivity = 75% (1.0%), and specificity = 81% (1.0%). Top ranked predictors were education, age, gender, stroke, NSES, and diabetes, APOE epsilon(4) carrier status, and body mass index (BMI). When discriminating high from medium classes, top predictors were education, age, gender, stroke, diabetes, NSES, and BMI. When discriminating medium from the low classes, education, NSES, age, diabetes, and stroke were top predictors. Discussion: The combination of latent trajectories and RF classification techniques suggested that nongenetic factors contribute more to cognitive decline than genetic factors. Education was the most relevant predictor for discrimination.
引用
收藏
页码:733 / 742
页数:10
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