Sparse relative risk regression models

Author:

Wit Ernst C1,Augugliaro Luigi2,Pazira Hassan3,González Javier4,Abegaz Fentaw35

Affiliation:

1. Institute of Computational Science, USI, Via Buffi 13, Lugano, Switzerland

2. Department of Economics, Business and Statistics, University of Palermo, Building 13, Viale delle Scienze, Palermo, Italy

3. Bernoulli Institute, University of Groningen, Nijenborg 9, AG Groningen, The Netherlands

4. Amazon Research Cambridge, Poseidon House, Castle Park, Cambridge, UK

5. Department of Pediatrics and Systems Biology Centre for Energy Metabolism and Ageing, University of Groningen, University Medical Center Groningen, AD Groningen, The Netherlands

Abstract

Summary Clinical studies where patients are routinely screened for many genomic features are becoming more routine. In principle, this holds the promise of being able to find genomic signatures for a particular disease. In particular, cancer survival is thought to be closely linked to the genomic constitution of the tumor. Discovering such signatures will be useful in the diagnosis of the patient, may be used for treatment decisions and, perhaps, even the development of new treatments. However, genomic data are typically noisy and high-dimensional, not rarely outstripping the number of patients included in the study. Regularized survival models have been proposed to deal with such scenarios. These methods typically induce sparsity by means of a coincidental match of the geometry of the convex likelihood and a (near) non-convex regularizer. The disadvantages of such methods are that they are typically non-invariant to scale changes of the covariates, they struggle with highly correlated covariates, and they have a practical problem of determining the amount of regularization. In this article, we propose an extension of the differential geometric least angle regression method for sparse inference in relative risk regression models. A software implementation of our method is available on github (https://github.com/LuigiAugugliaro/dgcox).

Funder

EU COST Action

NIH

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,General Medicine,Statistics and Probability

Reference40 articles.

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2. dglars: an R package to estimate sparse generalized linear models;Augugliaro,;Journal of Statistical Software,2014

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4. Covariance analysis of censored survival data;Breslow,;Biometrics,1975

5. Regression models and life-tables;Cox,;Journal of the Royal Statistical Society Series B,1972

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