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Genetic program activity delineates risk, relapse, and therapy responsiveness in Multiple Myeloma

Matthew A. Wall, Serdar Turkarslan, Wei-Ju Wu, Samuel A. Danziger, David J. Reiss, Mike J. Mason, Andrew P. Dervan, Matthew W.B. Trotter, Douglas Bassett, Robert M. Hershberg, Adrián López García de Lomana, Alexander V. Ratushny, Nitin S. Baliga
doi: https://doi.org/10.1101/2020.04.01.012351
Matthew A. Wall
1Institute for Systems Biology, Seattle WA, USA
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Serdar Turkarslan
1Institute for Systems Biology, Seattle WA, USA
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Wei-Ju Wu
1Institute for Systems Biology, Seattle WA, USA
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Samuel A. Danziger
2Bristol-Myers Squibb, Summit, NJ, USA
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David J. Reiss
2Bristol-Myers Squibb, Summit, NJ, USA
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Mike J. Mason
3Sage Bionetworks, Seattle WA, USA
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Andrew P. Dervan
2Bristol-Myers Squibb, Summit, NJ, USA
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Matthew W.B. Trotter
4Celgene Institute for Translational Research Europe (CITRE), a Bristol-Myers Squibb Company, Summit, NJ
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Douglas Bassett
2Bristol-Myers Squibb, Summit, NJ, USA
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Robert M. Hershberg
5Formerly Celgene Corporation, Seattle, WA, USA
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Adrián López García de Lomana
1Institute for Systems Biology, Seattle WA, USA
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  • For correspondence: nitin.baliga@isbscience.org
Alexander V. Ratushny
2Bristol-Myers Squibb, Summit, NJ, USA
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  • For correspondence: nitin.baliga@isbscience.org
Nitin S. Baliga
1Institute for Systems Biology, Seattle WA, USA
6University of Washington, Departments of Biology, Microbiology, and Molecular Engineering Sciences, Seattle WA, USA
7Lawrence Berkeley National Labs, Berkeley CA, USA
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  • For correspondence: nitin.baliga@isbscience.org
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Abstract

Despite recent advancements in the treatment of multiple myeloma (MM), nearly all patients ultimately relapse and many become refractory to their previous therapies. Although many therapies exist with diverse mechanisms of action, it is not yet clear how the differences in MM biology across patients impacts the likelihood of success for existing therapies and those in the pipeline. Therefore, we not only need the ability to predict which patients are at high risk for disease progression, but also a means to understand the mechanisms underlying their risk. We hypothesized that knowledge of the biological networks that give rise to MM, specifically the transcriptional regulatory network (TRN) and the mechanisms by which mutations impact gene regulation, would enable improved predictions of disease progression and actionable insights for treatment. Here we present a method to infer TRNs from multi-omics data and apply it to the generation of a MM TRN that links chromosomal abnormalities and somatic mutations to downstream effects on gene expression via perturbation of transcriptional regulators. We find that 141 genetic programs underlie the disease and that the activity profile of these programs fall into one of 25 distinct transcriptional states. These transcriptional signatures prove to be more predictive of outcomes than do mutations and reveal plausible mechanisms for relapse, including the establishment of an immuno-suppressive microenvironment. Moreover, we observe subtype-specific vulnerabilities to interventions with existing drugs and motivate the development of new targeted therapies that appear especially promising for relapsed refractory MM.

Footnotes

  • mwall{at}isbscience.org, serdar.turkarslan{at}isbscience.org, wei-ju.wu{at}isbscience.org, sdanziger{at}celgene.com, dreiss{at}celgene.com, michael.mason{at}sagebase.org, adervan{at}celgene.com, mtrotter{at}celgene.com, dbassett{at}celgene.com, rhershberg{at}celgene.com, adrian.lopezgarciadelomana{at}isbscience.org, aratushny{at}celgene.com, nitin.baliga{at}isbscience.org

  • https://github.com/MattWallScientist/miner3

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-ND 4.0 International license.
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Genetic program activity delineates risk, relapse, and therapy responsiveness in Multiple Myeloma
Matthew A. Wall, Serdar Turkarslan, Wei-Ju Wu, Samuel A. Danziger, David J. Reiss, Mike J. Mason, Andrew P. Dervan, Matthew W.B. Trotter, Douglas Bassett, Robert M. Hershberg, Adrián López García de Lomana, Alexander V. Ratushny, Nitin S. Baliga
bioRxiv 2020.04.01.012351; doi: https://doi.org/10.1101/2020.04.01.012351
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Genetic program activity delineates risk, relapse, and therapy responsiveness in Multiple Myeloma
Matthew A. Wall, Serdar Turkarslan, Wei-Ju Wu, Samuel A. Danziger, David J. Reiss, Mike J. Mason, Andrew P. Dervan, Matthew W.B. Trotter, Douglas Bassett, Robert M. Hershberg, Adrián López García de Lomana, Alexander V. Ratushny, Nitin S. Baliga
bioRxiv 2020.04.01.012351; doi: https://doi.org/10.1101/2020.04.01.012351

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