Cargando…
An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types
Cancer cells harbor molecular alterations at all levels of information processing. Genomic/epigenomic and transcriptomic alterations are inter-related between genes, within and across cancer types and may affect clinical phenotypes. Despite the abundant prior studies of integrating cancer multi-omic...
Autores principales: | , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9931374/ https://www.ncbi.nlm.nih.gov/pubmed/36812605 http://dx.doi.org/10.1371/journal.pdig.0000151 |
_version_ | 1784889235479724032 |
---|---|
author | Tiong, Khong-Loon Sintupisut, Nardnisa Lin, Min-Chin Cheng, Chih-Hung Woolston, Andrew Lin, Chih-Hsu Ho, Mirrian Lin, Yu-Wei Padakanti, Sridevi Yeang, Chen-Hsiang |
author_facet | Tiong, Khong-Loon Sintupisut, Nardnisa Lin, Min-Chin Cheng, Chih-Hung Woolston, Andrew Lin, Chih-Hsu Ho, Mirrian Lin, Yu-Wei Padakanti, Sridevi Yeang, Chen-Hsiang |
author_sort | Tiong, Khong-Loon |
collection | PubMed |
description | Cancer cells harbor molecular alterations at all levels of information processing. Genomic/epigenomic and transcriptomic alterations are inter-related between genes, within and across cancer types and may affect clinical phenotypes. Despite the abundant prior studies of integrating cancer multi-omics data, none of them organizes these associations in a hierarchical structure and validates the discoveries in extensive external data. We infer this Integrated Hierarchical Association Structure (IHAS) from the complete data of The Cancer Genome Atlas (TCGA) and compile a compendium of cancer multi-omics associations. Intriguingly, diverse alterations on genomes/epigenomes from multiple cancer types impact transcriptions of 18 Gene Groups. Half of them are further reduced to three Meta Gene Groups enriched with (1) immune and inflammatory responses, (2) embryonic development and neurogenesis, (3) cell cycle process and DNA repair. Over 80% of the clinical/molecular phenotypes reported in TCGA are aligned with the combinatorial expressions of Meta Gene Groups, Gene Groups, and other IHAS subunits. Furthermore, IHAS derived from TCGA is validated in more than 300 external datasets including multi-omics measurements and cellular responses upon drug treatments and gene perturbations in tumors, cancer cell lines, and normal tissues. To sum up, IHAS stratifies patients in terms of molecular signatures of its subunits, selects targeted genes or drugs for precision cancer therapy, and demonstrates that associations between survival times and transcriptional biomarkers may vary with cancer types. These rich information is critical for diagnosis and treatments of cancers. |
format | Online Article Text |
id | pubmed-9931374 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-99313742023-02-16 An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types Tiong, Khong-Loon Sintupisut, Nardnisa Lin, Min-Chin Cheng, Chih-Hung Woolston, Andrew Lin, Chih-Hsu Ho, Mirrian Lin, Yu-Wei Padakanti, Sridevi Yeang, Chen-Hsiang PLOS Digit Health Research Article Cancer cells harbor molecular alterations at all levels of information processing. Genomic/epigenomic and transcriptomic alterations are inter-related between genes, within and across cancer types and may affect clinical phenotypes. Despite the abundant prior studies of integrating cancer multi-omics data, none of them organizes these associations in a hierarchical structure and validates the discoveries in extensive external data. We infer this Integrated Hierarchical Association Structure (IHAS) from the complete data of The Cancer Genome Atlas (TCGA) and compile a compendium of cancer multi-omics associations. Intriguingly, diverse alterations on genomes/epigenomes from multiple cancer types impact transcriptions of 18 Gene Groups. Half of them are further reduced to three Meta Gene Groups enriched with (1) immune and inflammatory responses, (2) embryonic development and neurogenesis, (3) cell cycle process and DNA repair. Over 80% of the clinical/molecular phenotypes reported in TCGA are aligned with the combinatorial expressions of Meta Gene Groups, Gene Groups, and other IHAS subunits. Furthermore, IHAS derived from TCGA is validated in more than 300 external datasets including multi-omics measurements and cellular responses upon drug treatments and gene perturbations in tumors, cancer cell lines, and normal tissues. To sum up, IHAS stratifies patients in terms of molecular signatures of its subunits, selects targeted genes or drugs for precision cancer therapy, and demonstrates that associations between survival times and transcriptional biomarkers may vary with cancer types. These rich information is critical for diagnosis and treatments of cancers. Public Library of Science 2022-12-20 /pmc/articles/PMC9931374/ /pubmed/36812605 http://dx.doi.org/10.1371/journal.pdig.0000151 Text en © 2022 Tiong et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
spellingShingle | Research Article Tiong, Khong-Loon Sintupisut, Nardnisa Lin, Min-Chin Cheng, Chih-Hung Woolston, Andrew Lin, Chih-Hsu Ho, Mirrian Lin, Yu-Wei Padakanti, Sridevi Yeang, Chen-Hsiang An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
title | An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
title_full | An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
title_fullStr | An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
title_full_unstemmed | An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
title_short | An integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
title_sort | integrated analysis of the cancer genome atlas data discovers a hierarchical association structure across thirty three cancer types |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9931374/ https://www.ncbi.nlm.nih.gov/pubmed/36812605 http://dx.doi.org/10.1371/journal.pdig.0000151 |
work_keys_str_mv | AT tiongkhongloon anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT sintupisutnardnisa anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT linminchin anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT chengchihhung anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT woolstonandrew anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT linchihhsu anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT homirrian anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT linyuwei anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT padakantisridevi anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT yeangchenhsiang anintegratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT tiongkhongloon integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT sintupisutnardnisa integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT linminchin integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT chengchihhung integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT woolstonandrew integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT linchihhsu integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT homirrian integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT linyuwei integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT padakantisridevi integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes AT yeangchenhsiang integratedanalysisofthecancergenomeatlasdatadiscoversahierarchicalassociationstructureacrossthirtythreecancertypes |