Integrating Machine Learning and Environmental and Genetic Risk Factors for the Early Detection of Preclinical Alzheimer's Disease.

IF 4.8 2区 医学 Q1 GERIATRICS & GERONTOLOGY
Noor Al-Hammadi, Mahmoud Abouelyazid, David C Brown, Pooja Lalwani, Hannes Devos, David B Carr, Ganesh M Babulal
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引用次数: 0

Abstract

Objective: This study classified preclinical Alzheimer's disease (AD) using cognitive screening, neighborhood deprivation via the Area Deprivation Index (ADI), and sociodemographic and genetic risk factors. Additionally, it compared the predictive accuracy of multiple machine learning algorithms and examined model performance with two bootstrapping procedures.

Methods: Data were drawn from a longitudinal cohort that required participants to be age 65 or older, cognitively normal at baseline, and active drivers, defined as taking at least one trip a week. Naturalistic driving data were collected using a commercial datalogger. Biomarker positivity was determined via amyloid pathology using cerebrospinal fluid and positron emission tomography imaging. ADI was captured based on geocoding latitude and longitude to derive a national ranking for the specific location (home or unique destination). Machine learning algorithms classified preclinical AD. Each individual model's predictive ability was confirmed in a 20% testing dataset with 100 rounds of resampling with and without replacement.

Results: Among 292 participants (n = 2,792 observations), including ADI of trip destinations, participants' home ADI, and frequency of trips to the same ADI led to a slight but notable improvement in predicting preclinical AD. The ensemble model demonstrated superior predictive performance, highlighting the potential of integrating multiple models for early AD detection.

Discussion: Our findings underscore the importance of incorporating socioeconomic and environmental variables, such as neighborhood deprivation, in predicting preclinical AD. Addressing socioeconomic disparities through public health strategies is crucial for mitigating AD risk and enhancing the quality of life for older adults.

整合机器学习与环境和遗传风险因素,早期检测临床前阿尔茨海默病。
目的:本研究采用认知筛查、区域剥夺指数(Area deprivation Index, ADI)邻里剥夺以及社会人口统计学和遗传危险因素对临床前阿尔茨海默病(AD)进行分类。此外,它还比较了多种机器学习算法的预测准确性,并使用两种自举过程检查了模型性能。方法:数据来自纵向队列,要求参与者年龄在65岁或以上,基线认知正常,积极驾驶,定义为每周至少一次旅行。使用商用数据记录器收集自然驾驶数据。通过脑脊液淀粉样蛋白病理和正电子发射断层成像确定生物标志物阳性。ADI是基于地理编码纬度和经度来获取的,以获得特定位置(家或唯一目的地)的全国排名。机器学习算法分类临床前AD。每个模型的预测能力在20%的测试数据集中得到了证实,该数据集进行了100轮有替换和无替换的重新采样。结果:在292名参与者(n = 2792个观察值)中,包括旅行目的地的ADI,参与者家中的ADI以及前往同一ADI的频率导致预测临床前AD的轻微但显著的改善。集成模型显示出优越的预测性能,突出了集成多个模型用于早期AD检测的潜力。讨论:我们的研究结果强调了将社会经济和环境变量(如邻里剥夺)纳入预测临床前AD的重要性。通过公共卫生战略解决社会经济差异对于减轻阿尔茨海默病风险和提高老年人的生活质量至关重要。
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来源期刊
CiteScore
11.60
自引率
8.10%
发文量
178
审稿时长
6-12 weeks
期刊介绍: The Journal of Gerontology: Psychological Sciences publishes articles on development in adulthood and old age that advance the psychological science of aging processes and outcomes. Articles have clear implications for theoretical or methodological innovation in the psychology of aging or contribute significantly to the empirical understanding of psychological processes and aging. Areas of interest include, but are not limited to, attitudes, clinical applications, cognition, education, emotion, health, human factors, interpersonal relations, neuropsychology, perception, personality, physiological psychology, social psychology, and sensation.
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