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A Network Analysis of Multiple Myeloma Related Gene Signatures

Multiple myeloma (MM) is the second most prevalent hematological cancer. MM is a complex and heterogeneous disease, and thus, it is essential to leverage omics data from large MM cohorts to understand the molecular mechanisms underlying MM tumorigenesis, progression, and drug responses, which may ai...

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Autores principales: Liu, Yu, Yu, Haocheng, Yoo, Seungyeul, Lee, Eunjee, Laganà, Alessandro, Parekh, Samir, Schadt, Eric E., Wang, Li, Zhu, Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827160/
https://www.ncbi.nlm.nih.gov/pubmed/31569720
http://dx.doi.org/10.3390/cancers11101452
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author Liu, Yu
Yu, Haocheng
Yoo, Seungyeul
Lee, Eunjee
Laganà, Alessandro
Parekh, Samir
Schadt, Eric E.
Wang, Li
Zhu, Jun
author_facet Liu, Yu
Yu, Haocheng
Yoo, Seungyeul
Lee, Eunjee
Laganà, Alessandro
Parekh, Samir
Schadt, Eric E.
Wang, Li
Zhu, Jun
author_sort Liu, Yu
collection PubMed
description Multiple myeloma (MM) is the second most prevalent hematological cancer. MM is a complex and heterogeneous disease, and thus, it is essential to leverage omics data from large MM cohorts to understand the molecular mechanisms underlying MM tumorigenesis, progression, and drug responses, which may aid in the development of better treatments. In this study, we analyzed gene expression, copy number variation, and clinical data from the Multiple Myeloma Research Consortium (MMRC) dataset and constructed a multiple myeloma molecular causal network (M3CN). The M3CN was used to unify eight prognostic gene signatures in the literature that shared very few genes between them, resulting in a prognostic subnetwork of the M3CN, consisting of 178 genes that were enriched for genes involved in cell cycle (fold enrichment = 8.4, p value = 6.1 × 10(−26)). The M3CN was further used to characterize immunomodulators and proteasome inhibitors for MM, demonstrating the pleiotropic effects of these drugs, with drug-response signature genes enriched across multiple M3CN subnetworks. Network analyses indicated potential links between these drug-response subnetworks and the prognostic subnetwork. To elucidate the structure of these important MM subnetworks, we identified putative key regulators predicted to modulate the state of these subnetworks. Finally, to assess the predictive power of our network-based models, we stratified MM patients in an independent cohort, the MMRF-CoMMpass study, based on the prognostic subnetwork, and compared the performance of this subnetwork against other signatures in the literature. We show that the M3CN-derived prognostic subnetwork achieved the best separation between different risk groups in terms of log-rank test p-values and hazard ratios. In summary, this work demonstrates the power of a probabilistic causal network approach to understanding molecular mechanisms underlying the different MM signatures.
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spelling pubmed-68271602019-11-18 A Network Analysis of Multiple Myeloma Related Gene Signatures Liu, Yu Yu, Haocheng Yoo, Seungyeul Lee, Eunjee Laganà, Alessandro Parekh, Samir Schadt, Eric E. Wang, Li Zhu, Jun Cancers (Basel) Article Multiple myeloma (MM) is the second most prevalent hematological cancer. MM is a complex and heterogeneous disease, and thus, it is essential to leverage omics data from large MM cohorts to understand the molecular mechanisms underlying MM tumorigenesis, progression, and drug responses, which may aid in the development of better treatments. In this study, we analyzed gene expression, copy number variation, and clinical data from the Multiple Myeloma Research Consortium (MMRC) dataset and constructed a multiple myeloma molecular causal network (M3CN). The M3CN was used to unify eight prognostic gene signatures in the literature that shared very few genes between them, resulting in a prognostic subnetwork of the M3CN, consisting of 178 genes that were enriched for genes involved in cell cycle (fold enrichment = 8.4, p value = 6.1 × 10(−26)). The M3CN was further used to characterize immunomodulators and proteasome inhibitors for MM, demonstrating the pleiotropic effects of these drugs, with drug-response signature genes enriched across multiple M3CN subnetworks. Network analyses indicated potential links between these drug-response subnetworks and the prognostic subnetwork. To elucidate the structure of these important MM subnetworks, we identified putative key regulators predicted to modulate the state of these subnetworks. Finally, to assess the predictive power of our network-based models, we stratified MM patients in an independent cohort, the MMRF-CoMMpass study, based on the prognostic subnetwork, and compared the performance of this subnetwork against other signatures in the literature. We show that the M3CN-derived prognostic subnetwork achieved the best separation between different risk groups in terms of log-rank test p-values and hazard ratios. In summary, this work demonstrates the power of a probabilistic causal network approach to understanding molecular mechanisms underlying the different MM signatures. MDPI 2019-09-27 /pmc/articles/PMC6827160/ /pubmed/31569720 http://dx.doi.org/10.3390/cancers11101452 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Liu, Yu
Yu, Haocheng
Yoo, Seungyeul
Lee, Eunjee
Laganà, Alessandro
Parekh, Samir
Schadt, Eric E.
Wang, Li
Zhu, Jun
A Network Analysis of Multiple Myeloma Related Gene Signatures
title A Network Analysis of Multiple Myeloma Related Gene Signatures
title_full A Network Analysis of Multiple Myeloma Related Gene Signatures
title_fullStr A Network Analysis of Multiple Myeloma Related Gene Signatures
title_full_unstemmed A Network Analysis of Multiple Myeloma Related Gene Signatures
title_short A Network Analysis of Multiple Myeloma Related Gene Signatures
title_sort network analysis of multiple myeloma related gene signatures
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6827160/
https://www.ncbi.nlm.nih.gov/pubmed/31569720
http://dx.doi.org/10.3390/cancers11101452
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