Analysing multiple types of molecular profiles simultaneously: connecting the needles in the haystack
Ren\'ee Menezes, Leila Mohammadi, Jelle Goeman, Judith Boer

TL;DR
This paper introduces a flexible, efficient statistical framework for analyzing the combined effects of multiple molecular profiles on gene expression, enhancing the detection of biologically relevant associations in cancer genomics.
Contribution
It extends existing models to incorporate various molecular data types simultaneously, improving robustness and power in identifying gene regulation mechanisms.
Findings
Identified gene expression regulation mechanisms involving copy number and methylation.
Detected different molecular effects in different cancer samples.
Demonstrated the method's applicability to various high-dimensional molecular data.
Abstract
It has been shown that a random-effects framework can be used to test the association between a gene's expression level and the number of DNA copies of a set of genes. This gene-set modelling framework was later applied to find associations between mRNA expression and microRNA expression, by defining the gene sets using target prediction information. Here, we extend the model introduced by Menezes et al (2009) to consider the effect of not just copy number, but also of other molecular profiles such as methylation changes and loss-of-heterozigosity (LOH), on gene expression levels. We will consider again sets of measurements, to improve robustness of results and increase the power to find associations. Our approach can be used genome-wide to find associations, yields a test to help separate true associations from noise and can include confounders. We apply our method to colon and to…
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Taxonomy
TopicsGene expression and cancer classification · Bioinformatics and Genomic Networks · Genomics and Chromatin Dynamics
