| Literature DB >> 33750001 |
Alok Jaiswal1, Prson Gautam1, Elina A Pietilä2, Sanna Timonen1,3,4, Nora Nordström1, Yevhen Akimov1, Nina Sipari5, Ziaurrehman Tanoli1, Thomas Fleischer6, Kaisa Lehti2,7,8, Krister Wennerberg1,9, Tero Aittokallio1,6,10,11.
Abstract
Molecular and functional profiling of cancer cell lines is subject to laboratory-specific experimental practices and data analysis protocols. The current challenge therefore is how to make an integrated use of the omics profiles of cancer cell lines for reliable biological discoveries. Here, we carried out a systematic analysis of nine types of data modalities using meta-analysis of 53 omics studies across 12 research laboratories for 2,018 cell lines. To account for a relatively low consistency observed for certain data modalities, we developed a robust data integration approach that identifies reproducible signals shared among multiple data modalities and studies. We demonstrated the power of the integrative analyses by identifying a novel driver gene, ECHDC1, with tumor suppressive role validated both in breast cancer cells and patient tumors. The multi-modal meta-analysis approach also identified synthetic lethal partners of cancer drivers, including a co-dependency of PTEN deficient endometrial cancer cells on RNA helicases.Entities:
Keywords: cancer driver; data integration; multi-omics data; reproducibility; synthetic lethality
Year: 2021 PMID: 33750001 PMCID: PMC7983037 DOI: 10.15252/msb.20209526
Source DB: PubMed Journal: Mol Syst Biol ISSN: 1744-4292 Impact factor: 11.429