痴呆
认知功能衰退
特征选择
线性判别分析
随机森林
认知
生物标志物
接收机工作特性
人工智能
支持向量机
心理学
疾病
机器学习
医学
计算机科学
内科学
精神科
生物
生物化学
作者
Shu-I Chiu,Ling‐Yun Fan,Chin‐Hsien Lin,Ta‐Fu Chen,Wee Shin Lim,Jyh‐Shing Roger Jang,Ming‐Jang Chiu
标识
DOI:10.1021/acschemneuro.2c00255
摘要
Alzheimer's disease (AD) progresses relentlessly from the preclinical to the dementia stage. The process begins decades before the diagnosis of dementia. Therefore, it is crucial to detect early manifestations to prevent cognitive decline. Recent advances in artificial intelligence help tackle the complex high-dimensional data encountered in clinical decision-making. In total, we recruited 206 subjects, including 69 cognitively unimpaired, 40 subjective cognitive decline (SCD), 34 mild cognitive impairment (MCI), and 63 AD dementia (ADD). We included 3 demographic, 1 clinical, 18 brain-image, and 3 plasma biomarker (Aß1-42, Aß1-40, and tau protein) features. We employed the linear discriminant analysis method for feature extraction to make data more distinguishable after dimension reduction. The sequential forward selection method was used for feature selection to identify the 12 best features for machine learning classifiers. We used both random forest and support vector machine as classifiers. The area under the receiver operative curve (AUROC) was close to 0.9 between diseased (combining ADD and MCI) and the controls. AUROC was higher than 0.85 between SCD and controls, 0.90 between MCI and SCD, and above 0.85 between ADD and MCI. We can differentiate between adjacent phases of the AD spectrum with blood biomarkers and brain MR images with the help of machine learning algorithms.
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