痴呆
神经影像学
可解释性
疾病
神经心理学
认知
医学
认知障碍
人口统计学的
阿尔茨海默病
深度学习
精神科
病理
人工智能
计算机科学
人口学
社会学
作者
Shangran Qiu,Matthew I. Miller,Prajakta Joshi,Joyce C. Lee,Chonghua Xue,Yunruo Ni,Yuwei Wang,Ileana De Anda‐Duran,Phillip H Hwang,Justin Cramer,Brigid Dwyer,Honglin Hao,Michelle Kaku,Sachin Kedar,Peter H. Lee,Asim Mian,Daniel L. Murman,Sarah A. O’Shea,Aaron B. Paul,Marie Saint‐Hilaire
标识
DOI:10.1038/s41467-022-31037-5
摘要
Worldwide, there are nearly 10 million new cases of dementia annually, of which Alzheimer's disease (AD) is the most common. New measures are needed to improve the diagnosis of individuals with cognitive impairment due to various etiologies. Here, we report a deep learning framework that accomplishes multiple diagnostic steps in successive fashion to identify persons with normal cognition (NC), mild cognitive impairment (MCI), AD, and non-AD dementias (nADD). We demonstrate a range of models capable of accepting flexible combinations of routinely collected clinical information, including demographics, medical history, neuropsychological testing, neuroimaging, and functional assessments. We then show that these frameworks compare favorably with the diagnostic accuracy of practicing neurologists and neuroradiologists. Lastly, we apply interpretability methods in computer vision to show that disease-specific patterns detected by our models track distinct patterns of degenerative changes throughout the brain and correspond closely with the presence of neuropathological lesions on autopsy. Our work demonstrates methodologies for validating computational predictions with established standards of medical diagnosis.
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