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Development and validation of an interpretable deep learning framework for Alzheimer’s disease classification

Authors :
Chonghua Xue
Prajakta S. Joshi
Gary H. Chang
Sanford Auerbach
Cody Karjadi
Rhoda Au
E. Alton Sartor
Shuhan Zhu
Sachin Kedar
Yazan J. Alderazi
Jing Yuan
Matthew I. Miller
Shangran Qiu
Brigid Dwyer
Vijaya B. Kolachalama
Yan Zhou
Arun Swaminathan
Anant S. Joshi
Marie Saint-Hilaire
Michelle Kaku
Xiao Zhou
Source :
Brain
Publication Year :
2020
Publisher :
Oxford University Press (OUP), 2020.

Abstract

Qiu et al. present a novel deep learning strategy to generate high-resolution visualizations of Alzheimer’s disease risk in humans that are highly interpretable and can accurately predict Alzheimer’s disease status. They then test the model by comparing its performance to that of neurologists and neuropathological data.<br />Alzheimer’s disease is the primary cause of dementia worldwide, with an increasing morbidity burden that may outstrip diagnosis and management capacity as the population ages. Current methods integrate patient history, neuropsychological testing and MRI to identify likely cases, yet effective practices remain variably applied and lacking in sensitivity and specificity. Here we report an interpretable deep learning strategy that delineates unique Alzheimer’s disease signatures from multimodal inputs of MRI, age, gender, and Mini-Mental State Examination score. Our framework linked a fully convolutional network, which constructs high resolution maps of disease probability from local brain structure to a multilayer perceptron and generates precise, intuitive visualization of individual Alzheimer’s disease risk en route to accurate diagnosis. The model was trained using clinically diagnosed Alzheimer’s disease and cognitively normal subjects from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset (n = 417) and validated on three independent cohorts: the Australian Imaging, Biomarker and Lifestyle Flagship Study of Ageing (AIBL) (n = 382), the Framingham Heart Study (n = 102), and the National Alzheimer’s Coordinating Center (NACC) (n = 582). Performance of the model that used the multimodal inputs was consistent across datasets, with mean area under curve values of 0.996, 0.974, 0.876 and 0.954 for the ADNI study, AIBL, Framingham Heart Study and NACC datasets, respectively. Moreover, our approach exceeded the diagnostic performance of a multi-institutional team of practicing neurologists (n = 11), and high-risk cerebral regions predicted by the model closely tracked post-mortem histopathological findings. This framework provides a clinically adaptable strategy for using routinely available imaging techniques such as MRI to generate nuanced neuroimaging signatures for Alzheimer’s disease diagnosis, as well as a generalizable approach for linking deep learning to pathophysiological processes in human disease.

Details

ISSN :
14602156 and 00068950
Volume :
143
Database :
OpenAIRE
Journal :
Brain
Accession number :
edsair.doi.dedup.....0909511400baf397a674de7f5d8ee58e
Full Text :
https://doi.org/10.1093/brain/awaa137