作者
Shangran Qiu, Matthew I Miller, Prajakta S Joshi, Joyce C Lee, Chonghua Xue, Yunruo Ni, Yuwei Wang, Ileana De Anda-Duran, Phillip H Hwang, Justin A Cramer, Brigid C Dwyer, Honglin Hao, Michelle C Kaku, Sachin Kedar, Peter H Lee, Asim Z Mian, Daniel L Murman, Sarah O’Shea, Aaron B Paul, Marie-Helene Saint-Hilaire, E Alton Sartor, Aneeta R Saxena, Ludy C Shih, Juan E Small, Maximilian J Smith, Arun Swaminathan, Courtney E Takahashi, Olga Taraschenko, Hui You, Jing Yuan, Yan Zhou, Shuhan Zhu, Michael L Alosco, Jesse Mez, Thor D Stein, Kathleen L Poston, Rhoda Au, Vijaya B Kolachalama
发表日期
2022/6/20
期刊
Nature communications
卷号
13
期号
1
页码范围
3404
出版商
Nature Publishing Group UK
简介
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 …
引用总数
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S Qiu, MI Miller, PS Joshi, JC Lee, C Xue, Y Ni, Y Wang… - Nature communications, 2022