Literature DB >> 34183722

Genetic program activity delineates risk, relapse, and therapy responsiveness in multiple myeloma.

Matthew A Wall1, Serdar Turkarslan1, Wei-Ju Wu1, Samuel A Danziger2, David J Reiss2, Mike J Mason3, Andrew P Dervan2, Matthew W B Trotter4, Douglas Bassett2, Robert M Hershberg5, Adrián López García de Lomana6, Alexander V Ratushny7, Nitin S Baliga8,9,10.   

Abstract

Despite recent advancements in the treatment of multiple myeloma (MM), nearly all patients ultimately relapse and many become refractory to multiple lines of therapies. 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. Here, we report a transcriptional regulatory network (TRN) for MM inferred from cross-sectional multi-omics data from 881 patients that predicts how 124 chromosomal abnormalities and somatic mutations causally perturb 392 transcription regulators of 8549 genes to manifest in distinct clinical phenotypes and outcomes. We identified 141 genetic programs whose activity profiles stratify patients into 25 distinct transcriptional states and proved to be more predictive of outcomes than did mutations. The coherence of these programs and accuracy of our network-based risk prediction was validated in two independent datasets. We observed subtype-specific vulnerabilities to interventions with existing drugs and revealed plausible mechanisms for relapse, including the establishment of an immunosuppressive microenvironment. Investigation of the t(4;14) clinical subtype using the TRN revealed that 16% of these patients exhibit an extreme-risk combination of genetic programs (median progression-free survival of 5 months) that create a distinct phenotype with targetable genes and pathways.

Entities:  

Year:  2021        PMID: 34183722     DOI: 10.1038/s41698-021-00185-0

Source DB:  PubMed          Journal:  NPJ Precis Oncol        ISSN: 2397-768X


  66 in total

1.  The molecular classification of multiple myeloma.

Authors:  Fenghuang Zhan; Yongsheng Huang; Simona Colla; James P Stewart; Ichiro Hanamura; Sushil Gupta; Joshua Epstein; Shmuel Yaccoby; Jeffrey Sawyer; Bart Burington; Elias Anaissie; Klaus Hollmig; Mauricio Pineda-Roman; Guido Tricot; Frits van Rhee; Ronald Walker; Maurizio Zangari; John Crowley; Bart Barlogie; John D Shaughnessy
Journal:  Blood       Date:  2006-05-25       Impact factor: 22.113

Review 2.  Multiple myeloma.

Authors:  Antonio Palumbo; Kenneth Anderson
Journal:  N Engl J Med       Date:  2011-03-17       Impact factor: 91.245

Review 3.  Genomic complexity of multiple myeloma and its clinical implications.

Authors:  Salomon Manier; Karma Z Salem; Jihye Park; Dan A Landau; Gad Getz; Irene M Ghobrial
Journal:  Nat Rev Clin Oncol       Date:  2016-08-17       Impact factor: 66.675

Review 4.  Epidemiology of multiple myeloma.

Authors:  Nikolaus Becker
Journal:  Recent Results Cancer Res       Date:  2011

Review 5.  Multiple myeloma.

Authors:  Shaji K Kumar; Vincent Rajkumar; Robert A Kyle; Mark van Duin; Pieter Sonneveld; María-Victoria Mateos; Francesca Gay; Kenneth C Anderson
Journal:  Nat Rev Dis Primers       Date:  2017-07-20       Impact factor: 52.329

6.  Inferring regulatory networks from expression data using tree-based methods.

Authors:  Vân Anh Huynh-Thu; Alexandre Irrthum; Louis Wehenkel; Pierre Geurts
Journal:  PLoS One       Date:  2010-09-28       Impact factor: 3.240

7.  Causal Mechanistic Regulatory Network for Glioblastoma Deciphered Using Systems Genetics Network Analysis.

Authors:  Christopher L Plaisier; Sofie O'Brien; Brady Bernard; Sheila Reynolds; Zac Simon; Chad M Toledo; Yu Ding; David J Reiss; Patrick J Paddison; Nitin S Baliga
Journal:  Cell Syst       Date:  2016-07-14       Impact factor: 10.304

8.  The Inferelator: an algorithm for learning parsimonious regulatory networks from systems-biology data sets de novo.

Authors:  Richard Bonneau; David J Reiss; Paul Shannon; Marc Facciotti; Leroy Hood; Nitin S Baliga; Vesteinn Thorsson
Journal:  Genome Biol       Date:  2006-05-10       Impact factor: 13.583

9.  A system-level model for the microbial regulatory genome.

Authors:  Aaron N Brooks; David J Reiss; Antoine Allard; Wei-Ju Wu; Diego M Salvanha; Christopher L Plaisier; Sriram Chandrasekaran; Min Pan; Amardeep Kaur; Nitin S Baliga
Journal:  Mol Syst Biol       Date:  2014-07-15       Impact factor: 11.429

10.  Widespread genetic heterogeneity in multiple myeloma: implications for targeted therapy.

Authors:  Jens G Lohr; Petar Stojanov; Scott L Carter; Peter Cruz-Gordillo; Michael S Lawrence; Daniel Auclair; Carrie Sougnez; Birgit Knoechel; Joshua Gould; Gordon Saksena; Kristian Cibulskis; Aaron McKenna; Michael A Chapman; Ravid Straussman; Joan Levy; Louise M Perkins; Jonathan J Keats; Steven E Schumacher; Mara Rosenberg; Gad Getz; Todd R Golub
Journal:  Cancer Cell       Date:  2014-01-13       Impact factor: 31.743

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  2 in total

Review 1.  Insights into high-risk multiple myeloma from an analysis of the role of PHF19 in cancer.

Authors:  Hussein Ghamlouch; Eileen M Boyle; Patrick Blaney; Yubao Wang; Jinyoung Choi; Louis Williams; Michael Bauer; Daniel Auclair; Benedetto Bruno; Brian A Walker; Faith E Davies; Gareth J Morgan
Journal:  J Exp Clin Cancer Res       Date:  2021-12-02

2.  A single-cell based precision medicine approach using glioblastoma patient-specific models.

Authors:  James H Park; Abdullah H Feroze; Samuel N Emerson; Anca B Mihalas; C Dirk Keene; Patrick J Cimino; Adrian Lopez Garcia de Lomana; Kavya Kannan; Wei-Ju Wu; Serdar Turkarslan; Nitin S Baliga; Anoop P Patel
Journal:  NPJ Precis Oncol       Date:  2022-08-08
  2 in total

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