| Literature DB >> 30010132 |
Adrià Casamitjana1, Paula Petrone2, Alan Tucholka2, Carles Falcon2,3, Stavros Skouras2, José Luis Molinuevo2,4,5, Verónica Vilaplana1, Juan Domingo Gispert2,3.
Abstract
The identification of healthy individuals harboring amyloid pathology represents one important challenge for secondary prevention clinical trials in Alzheimer's disease (AD). Consequently, noninvasive and cost-efficient techniques to detect preclinical AD constitute an unmet need of critical importance. In this manuscript, we apply machine learning to structural MRI (T1 and DTI) of 96 cognitively normal subjects to identify amyloid-positive ones. Models were trained on public ADNI data and validated on an independent local cohort. Used for subject classification in a simulated clinical trial setting, the proposed method is able to save 60% of unnecessary CSF/PET tests and to reduce 47% of the cost of recruitment. This recruitment strategy capitalizes on available MR scans to reduce the overall amount of invasive PET/CSF tests in prevention trials, demonstrating a potential value as a tool for preclinical AD screening. This protocol could foster the development of secondary prevention strategies for AD.Entities:
Keywords: Amyloid pathology; clinical trial; machine learning; preclinical Alzheimer’s disease; screening; secondaryprevention
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Year: 2018 PMID: 30010132 DOI: 10.3233/JAD-180299
Source DB: PubMed Journal: J Alzheimers Dis ISSN: 1387-2877 Impact factor: 4.472