神经影像学
疾病
医学
认知
认知功能衰退
载脂蛋白E
阿尔茨海默病神经影像学倡议
正电子发射断层摄影术
神经科学
生物信息学
内科学
基因检测
磁共振成像
金标准(测试)
心理学
阿尔茨海默病
模式治疗法
病理
认知障碍
肿瘤科
分类器(UML)
心脏病学
生物标志物
淀粉样蛋白(真菌学)
遗传模型
风险评估
作者
Yichen Wang,Haojie Chen,Yuxin Cheng,YaoXin Xie,Yuyan Cheng,Shiyun Zhao,Yidong Jiang,Tianyu Bai,Yanxi Huo,Kexin Wang,Mingkai Zhang,Weijie Huang,Guozheng Feng,Ying Han,Ni Shu
出处
期刊:NeuroImage
[Elsevier BV]
日期:2025-10-23
卷期号:322: 121550-121550
被引量:3
标识
DOI:10.1016/j.neuroimage.2025.121550
摘要
• Noninvasive prediction of cerebral Aβ(amyloid-β) is possible with plasma biomarkers and brain MRI. • Genetic risk information further improves predictive performance. • Polygenic risk score adds predictive power beyond APOE gene alone. Alzheimer’s disease (AD), the most prevalent neurodegenerative disorder, is marked by the accumulation of amyloid-β (Aβ) plaques. Although cerebral Aβ positron emission tomography (Aβ-PET) remains the gold standard for assessing cerebral Aβ burden, its clinical utility is hindered by cost, radiation exposure, and limited availability. Plasma biomarkers have emerged as promising, non‑invasive indicators of Aβ pathology, yet they do not incorporate individual genetic risk or neuroanatomical context. To address this gap, we developed a multimodal machine‑learning framework that integrates plasma biomarkers, MRI‑derived brain structural features (regional volumes, cortical thickness, cortical area and structural connectivity), and genetic risk profiles to predict cerebral Aβ burden. This approach was evaluated in 150 participants from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) and 101 participants from a domestic Chinese Sino Longitudinal Study of Cognitive Decline (SILCODE). Incorporating multimodal features substantially improved predictive performance: the baseline model using plasma and clinical variables alone achieved an R 2 of 0.56, whereas integrating neuroimaging and genetic information increased accuracy (R 2 = 0.63 with apolipoprotein E genotypes and R 2 = 0.64 with polygenic risk scores). Furthermore, a multiclass classifier trained on the same multimodal features achieved robust discrimination of cognitive status, with area‑under‑the‑curve values of 0.87 for normal controls, 0.76 for mild cognitive impairment, and 0.95 for AD dementia. These findings highlight the value of combining plasma, imaging, and genetic data to non-invasively estimate cerebral Aβ burden, offering a potential alternative to PET imaging for early AD risk assessment.
科研通智能强力驱动
Strongly Powered by AbleSci AI