TY - JOUR
T1 - Meta-Weighted Gaussian Process Experts for Personalized Forecasting of AD Cognitive Changes
AU - Rudovic, Ognjen
AU - Utsumi, Yuria
AU - Guerrero, Ricardo
AU - Peterson, Kelly
AU - Rueckert, Daniel
AU - Picard, Rosalind W.
N1 - Publisher Copyright:
© 2019 K. Peterson & D. Rueckert.
PY - 2019
Y1 - 2019
N2 - We introduce a novel personalized Gaussian Process Experts (pGPE) model for predicting per-subject ADAS-Cog13 cognitive scores - a significant predictor of Alzheimer's Disease (AD) in the cognitive domain - over the future 6, 12, 18, and 24 months. We start by training a population-level model using multi-modal data from previously seen subjects using a base Gaussian Process (GP) regression. Then, we personalize this model by adapting the base GP sequentially over time to a new (target) subject using domain adaptive GPs, and also by training subject-specific GP. While we show that these models achieve improved performance when selectively applied to the forecasting task (one performs better than the other on different subjects/visits), the average performance per model is suboptimal. To this end, we used the notion of meta learning in the proposed pGPE to design a regression-based weighting of these expert models, where the expert weights are optimized for each subject and his/her future visit. The results on a cohort of subjects from the ADNI dataset show that this newly introduced personalized weighting of the expert models leads to large improvements in accurately forecasting future ADAS-Cog13 scores and their fine-grained changes associated with the AD progression. This approach has potential to help identify at-risk patients early and improve the construction of clinical trials for AD.
AB - We introduce a novel personalized Gaussian Process Experts (pGPE) model for predicting per-subject ADAS-Cog13 cognitive scores - a significant predictor of Alzheimer's Disease (AD) in the cognitive domain - over the future 6, 12, 18, and 24 months. We start by training a population-level model using multi-modal data from previously seen subjects using a base Gaussian Process (GP) regression. Then, we personalize this model by adapting the base GP sequentially over time to a new (target) subject using domain adaptive GPs, and also by training subject-specific GP. While we show that these models achieve improved performance when selectively applied to the forecasting task (one performs better than the other on different subjects/visits), the average performance per model is suboptimal. To this end, we used the notion of meta learning in the proposed pGPE to design a regression-based weighting of these expert models, where the expert weights are optimized for each subject and his/her future visit. The results on a cohort of subjects from the ADNI dataset show that this newly introduced personalized weighting of the expert models leads to large improvements in accurately forecasting future ADAS-Cog13 scores and their fine-grained changes associated with the AD progression. This approach has potential to help identify at-risk patients early and improve the construction of clinical trials for AD.
UR - http://www.scopus.com/inward/record.url?scp=85090746326&partnerID=8YFLogxK
M3 - Conference article
AN - SCOPUS:85090746326
SN - 2640-3498
VL - 106
SP - 181
EP - 196
JO - Proceedings of Machine Learning Research
JF - Proceedings of Machine Learning Research
T2 - 4th Machine Learning for Healthcare Conference, MLHC 2019
Y2 - 9 August 2019 through 10 August 2019
ER -