用可解释机器学习预测阿尔茨海默病。

IF 2.2 4区 医学 Q3 CLINICAL NEUROLOGY
Dementia and Geriatric Cognitive Disorders Pub Date : 2023-01-01 Epub Date: 2023-07-21 DOI:10.1159/000531819
Maoni Jia, Yafei Wu, Chaoyi Xiang, Ya Fang
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引用次数: 1

摘要

引言:本研究旨在开发用于预测阿尔茨海默病(AD)的新型机器学习模型,并确定有针对性预防的关键因素。方法:我们纳入了1219、863和482名年龄在60岁以上的参与者,他们只有社会人口统计学、社会人口统计学和自我报告的健康状况,包括前两者以及阿尔茨海默病神经成像倡议(ADNI)数据库中的血液生物标志物信息。构建了机器学习模型,用于预测上述三种人群的AD风险。模型性能通过辨别、校准和临床实用性进行评估。应用SHapley加性预测(SHAP)来确定最优模型的关键预测因子。结果:三个群体的平均年龄分别为73.49岁、74.52岁和74.29岁。具有社会人口统计信息的模型和同时具有社会人口和自我报告健康信息的模型表现出适度的表现。对于具有社会人口统计学、自我报告的健康和血液生物标志物信息的模型,它们的总体性能显著改善,特别是逻辑回归表现最好,AUC值为0.818。ptau蛋白和血浆神经丝光照的血液生物标志物、年龄、血液tau蛋白和教育水平是前五大重要预测因素。此外,牛磺酸、肌苷、黄嘌呤、婚姻状况和谷氨酰胺对AD的预测也有重要意义。结论:可解释机器学习在筛查高危AD个体方面显示出前景,并可以进一步确定有针对性预防的关键预测因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Alzheimer's Disease with Interpretable Machine Learning.

Introduction: This study aimed to develop novel machine learning models for predicting Alzheimer's disease (AD) and identify key factors for targeted prevention.

Methods: We included 1,219, 863, and 482 participants aged 60+ years with only sociodemographic, both sociodemographic and self-reported health, both the former two and blood biomarkers information from Alzheimer's Disease Neuroimaging Initiative (ADNI) database. Machine learning models were constructed for predicting the risk of AD for the above three populations. Model performance was evaluated by discrimination, calibration, and clinical usefulness. SHapley Additive exPlanation (SHAP) was applied to identify key predictors of optimal models.

Results: The mean age was 73.49, 74.52, and 74.29 years for the three populations, respectively. Models with sociodemographic information and models with both sociodemographic and self-reported health information showed modest performance. For models with sociodemographic, self-reported health, and blood biomarker information, their overall performance improved substantially, specifically, logistic regression performed best, with an AUC value of 0.818. Blood biomarkers of ptau protein and plasma neurofilament light, age, blood tau protein, and education level were top five significant predictors. In addition, taurine, inosine, xanthine, marital status, and L.Glutamine also showed importance to AD prediction.

Conclusion: Interpretable machine learning showed promise in screening high-risk AD individual and could further identify key predictors for targeted prevention.

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来源期刊
CiteScore
4.70
自引率
0.00%
发文量
46
审稿时长
2 months
期刊介绍: As a unique forum devoted exclusively to the study of cognitive dysfunction, ''Dementia and Geriatric Cognitive Disorders'' concentrates on Alzheimer’s and Parkinson’s disease, Huntington’s chorea and other neurodegenerative diseases. The journal draws from diverse related research disciplines such as psychogeriatrics, neuropsychology, clinical neurology, morphology, physiology, genetic molecular biology, pathology, biochemistry, immunology, pharmacology and pharmaceutics. Strong emphasis is placed on the publication of research findings from animal studies which are complemented by clinical and therapeutic experience to give an overall appreciation of the field.
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