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MRI-based Alzheimer's disease-resemblance atrophy index in the detection of preclinical and prodromal Alzheimer's disease
Aging (Albany NY). 2021 May 25;13(10):13496-13514. doi: 10.18632/aging.203082.
Wanting Liu 1 2, Lisa Wing Chi Au 1 2, Jill Abrigo 3, Yishan Luo 4, Adrian Wong 1 2, Bonnie Yin Ka Lam 1 2, Xiang Fan 1 2, Pauline Wing Lam Kwan 1 2, Hon Wing Ma 1 2, Anthea Yee Tung Ng 1 2, Sirong Chen 5, Eric Yim Lung Leung 5, Chi Lai Ho 5, Simon Ho Man Wong 6, Winnie Cw Chu 3, Ho Ko 1 2 7, Alexander Yuk Lun Lau 1 2, Lin Shi 3 4, Vincent Chung Tong Mok 1 2, Alzheimer’s Disease Neuroimaging Initiative
Abstract:
Alzheimer's Disease-resemblance atrophy index (AD-RAI) is an MRI-based machine learning derived biomarker that was developed to reflect the characteristic brain atrophy associated with AD. Recent study showed that AD-RAI (≥0.5) had the best performance in predicting conversion from mild cognitive impairment (MCI) to dementia and from cognitively unimpaired (CU) to MCI. We aimed to validate the performance of AD-RAI in detecting preclinical and prodromal AD. We recruited 128 subjects (MCI=50, CU=78) from two cohorts: CU-SEEDS and ADNI. Amyloid (A+) and tau (T+) status were confirmed by PET (11C-PIB, 18F-T807) or CSF analysis. We investigated the performance of AD-RAI in detecting preclinical and prodromal AD (i.e. A+T+) among MCI and CU subjects and compared its performance with that of hippocampal measures. AD-RAI achieved the best metrics among all subjects (sensitivity 0.74, specificity 0.91, accuracy 85.94%) and among MCI subjects (sensitivity 0.92, specificity 0.81, accuracy 86.00%) in detecting A+T+ subjects over other measures. Among CU subjects, AD-RAI yielded the best specificity (0.95) and accuracy (85.90%) over other measures, while hippocampal volume achieved a higher sensitivity (0.73) than AD-RAI (0.47) in detecting preclinical AD. These results showed the potential of AD-RAI in the detection of early AD, in particular at the prodromal stage.
PMID: 34091443
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