Abstract

Boolean implications (if-then rules) provide a conceptually simple, uniform and highly scalable way to find associations between pairs of random variables. In this paper, we propose to use Boolean implications to find relationships between variables of different data types (mutation, copy number alteration, DNA methylation and gene expression) from the glioblastoma (GBM) and ovarian serous cystadenoma (OV) data sets from The Cancer Genome Atlas (TCGA). We find hundreds of thousands of Boolean implications from these data sets. A direct comparison of the relationships found by Boolean implications and those found by commonly used methods for mining associations show that existing methods would miss relationships found by Boolean implications. Furthermore, many relationships exposed by Boolean implications reflect important aspects of cancer biology. Examples of our findings include cis relationships between copy number alteration, DNA methylation and expression of genes, a new hierarchy of mutations and recurrent copy number alterations, loss-of-heterozygosity of well-known tumor suppressors, and the hypermethylation phenotype associated with IDH1 mutations in GBM. The Boolean implication results used in the paper can be accessed at http://crookneck.stanford.edu/microarray/TCGANetworks/.

Highlights

  • IntroductionLarge-scale cancer genome projects including The Cancer

  • Large-scale cancer genome projects including The CancerGenome Atlas (TCGA) are generating an unprecedented amount of multidimensional data using high-resolution microarray and next-generation sequencing platforms

  • The rest of this section describes the Boolean implications we found in the The Cancer Genome Atlas (TCGA) glioblastoma (GBM) and ovarian serous cystadenoma (OV) data sets and their potential biological significance

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Summary

Introduction

Large-scale cancer genome projects including The Cancer. Genome Atlas (TCGA) (http://cancergenome.nih.gov/) are generating an unprecedented amount of multidimensional data using high-resolution microarray and next-generation sequencing platforms. There are opportunities for mining these data sets that can yield insights that would not be apparent from smaller, less diverse data sets. Obtaining the full value of these data requires the ability to find associations between heterogeneous data types. We propose to use Boolean implications [1] to find pairwise associations in heterogeneous cancer data sets. The distribution of points in a scatterplot of two variables in a Boolean implication is L-shaped instead of linear (Figure 1).

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