| Literature DB >> 31774481 |
Anita Sathyanarayanan1, Rohit Gupta2,3, Erik W Thompson1,4, Dale R Nyholt1, Denis C Bauer5, Shivashankar H Nagaraj1,4.
Abstract
Oncogenesis and cancer can arise as a consequence of a wide range of genomic aberrations including mutations, copy number alterations, expression changes and epigenetic modifications encompassing multiple omics layers. Integrating genomic, transcriptomic, proteomic and epigenomic datasets via multi-omics analysis provides the opportunity to derive a deeper and holistic understanding of the development and progression of cancer. There are two primary approaches to integrating multi-omics data: multi-staged (focused on identifying genes driving cancer) and meta-dimensional (focused on establishing clinically relevant tumour or sample classifications). A number of ready-to-use bioinformatics tools are available to perform both multi-staged and meta-dimensional integration of multi-omics data. In this study, we compared nine different integration tools using real and simulated cancer datasets. The performance of the multi-staged integration tools were assessed at the gene, function and pathway levels, while meta-dimensional integration tools were assessed based on the sample classification performance. Additionally, we discuss the influence of factors such as data representation, sample size, signal and noise on multi-omics data integration. Our results provide current and much needed guidance regarding selection and use of the most appropriate and best performing multi-omics integration tools.Entities:
Keywords: cancer; meta-dimensional integration; multi-omics data; multi-staged integration; tools evaluation
Year: 2020 PMID: 31774481 PMCID: PMC7711266 DOI: 10.1093/bib/bbz121
Source DB: PubMed Journal: Brief Bioinform ISSN: 1467-5463 Impact factor: 11.622