| Literature DB >> 34870371 |
Ali Ezzati1, Ahmed Abdulkadir2, Clifford R Jack3, Paul M Thompson4, Danielle J Harvey5, Monica Truelove-Hill2, Lasya P Sreepada2, Christos Davatzikos2, Richard B Lipton1,6.
Abstract
We aimed to evaluate the value of ATN biomarker classification system (amyloid beta [A], pathologic tau [T], and neurodegeneration [N]) for predicting conversion from mild cognitive impairment (MCI) to dementia. In a sample of people with MCI (n = 415) we assessed predictive performance of ATN classification using empirical knowledge-based cut-offs for each component of ATN and compared it to two data-driven approaches, logistic regression and RUSBoost machine learning classifiers, which used continuous clinical or biomarker scores. In data-driven approaches, we identified ATN features that distinguish normals from individuals with dementia and used them to classify persons with MCI into dementia-like and normal groups. Both data-driven classification methods performed better than the empirical cut-offs for ATN biomarkers in predicting conversion to dementia. Classifiers that used clinical features performed as well as classifiers that used ATN biomarkers for prediction of progression to dementia. We discuss that data-driven modeling approaches can improve our ability to predict disease progression and might have implications in future clinical trials.Entities:
Keywords: Alzheimer's disease; amyloid; biomarker profile; machine learning; mild cognitive impairment; neurodegeneration; predictive analytics; tau
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Year: 2021 PMID: 34870371 PMCID: PMC8842842 DOI: 10.1002/alz.12491
Source DB: PubMed Journal: Alzheimers Dement ISSN: 1552-5260 Impact factor: 21.566