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Machine Learning Models of Polygenic Risk for Enhanced Prediction of Alzheimer Disease Endophenotypes.

Nathaniel B GunterRobel K GebreJonathan Graff-RadfordMichael G HeckmanClifford R JackVal J LoweDavid S KnopmanRonald C PetersenOwen A RossPrashanthi VemuriVijay K Ramanannull null
Published in: Neurology. Genetics (2024)
We found that ML-PRS approaches improved upon standard PRS for prediction of AD endophenotypes, partly related to improved accounting for nonlinear effects of genetic susceptibility alleles. Further adaptations of the ML-PRS framework could help to close the gap of remaining unexplained heritability for AD and therefore facilitate more accurate presymptomatic and early-stage risk stratification for clinical decision-making.
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