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Flexible co-data learning for high-dimensional prediction.

Authors :
van Nee MM
Wessels LFA
van de Wiel MA
Source :
Statistics in medicine [Stat Med] 2021 Nov 20; Vol. 40 (26), pp. 5910-5925. Date of Electronic Publication: 2021 Aug 26.
Publication Year :
2021

Abstract

Clinical research often focuses on complex traits in which many variables play a role in mechanisms driving, or curing, diseases. Clinical prediction is hard when data is high-dimensional, but additional information, like domain knowledge and previously published studies, may be helpful to improve predictions. Such complementary data, or co-data, provide information on the covariates, such as genomic location or P-values from external studies. We use multiple and various co-data to define possibly overlapping or hierarchically structured groups of covariates. These are then used to estimate adaptive multi-group ridge penalties for generalized linear and Cox models. Available group adaptive methods primarily target for settings with few groups, and therefore likely overfit for non-informative, correlated or many groups, and do not account for known structure on group level. To handle these issues, our method combines empirical Bayes estimation of the hyperparameters with an extra level of flexible shrinkage. This renders a uniquely flexible framework as any type of shrinkage can be used on the group level. We describe various types of co-data and propose suitable forms of hypershrinkage. The method is very versatile, as it allows for integration and weighting of multiple co-data sets, inclusion of unpenalized covariates and posterior variable selection. For three cancer genomics applications we demonstrate improvements compared to other models in terms of performance, variable selection stability and validation.<br /> (© 2021 The Authors. Statistics in Medicine published by John Wiley & Sons Ltd.)

Details

Language :
English
ISSN :
1097-0258
Volume :
40
Issue :
26
Database :
MEDLINE
Journal :
Statistics in medicine
Publication Type :
Academic Journal
Accession number :
34438466
Full Text :
https://doi.org/10.1002/sim.9162