Combining clinical and molecular data in regression prediction models: insights from a simulation study

Author:

De Bin Riccardo1,Boulesteix Anne-Laure2,Benner Axel3,Becker Natalia3,Sauerbrei Willi4

Affiliation:

1. Department of Mathematics, University of Oslo, Norway

2. Institute for Medical Information Processing, Biometry and Epidemiology, University of Munich, Germany

3. Division of Biostatistics, German Cancer Research Centre of Heidelberg, Germany

4. Institute of Medical Biometry and Statistics, University of Freiburg, Germany

Abstract

Abstract Data integration, i.e. the use of different sources of information for data analysis, is becoming one of the most important topics in modern statistics. Especially in, but not limited to, biomedical applications, a relevant issue is the combination of low-dimensional (e.g. clinical data) and high-dimensional (e.g. molecular data such as gene expressions) data sources in a prediction model. Not only the different characteristics of the data, but also the complex correlation structure within and between the two data sources, pose challenging issues. In this paper, we investigate these issues via simulations, providing some useful insight into strategies to combine low- and high-dimensional data in a regression prediction model. In particular, we focus on the effect of the correlation structure on the results, while accounting for the influence of our specific choices in the design of the simulation study.

Funder

German Research Foundation

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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