English

Semi-supervised empirical Bayes group-regularized factor regression

Methodology 2024-09-02 v1

Abstract

The features in high dimensional biomedical prediction problems are often well described with lower dimensional manifolds. An example is genes that are organised in smaller functional networks. The outcome can then be described with the factor regression model. A benefit of the factor model is that is allows for straightforward inclusion of unlabeled observations in the estimation of the model, i.e., semi-supervised learning. In addition, the high dimensional features in biomedical prediction problems are often well characterised. Examples are genes, for which annotation is available, and metabolites with pp-values from a previous study available. In this paper, the extra information on the features is included in the prior model for the features. The extra information is weighted and included in the estimation through empirical Bayes, with Variational approximations to speed up the computation. The method is demonstrated in simulations and two applications. One application considers influenza vaccine efficacy prediction based on microarray data. The second application predictions oral cancer metastatsis from RNAseq data.

Keywords

Cite

@article{arxiv.2104.02419,
  title  = {Semi-supervised empirical Bayes group-regularized factor regression},
  author = {Magnus M. Münch and Mark A. van de Wiel and Aad W. van der Vaart and Carel F. W. Peeters},
  journal= {arXiv preprint arXiv:2104.02419},
  year   = {2024}
}

Comments

19 pages, 5 figures, submitted to Biometrical Journal

R2 v1 2026-06-24T00:52:58.465Z