Literature DB >> 31015209

A parsimonious 3-gene signature predicts clinical outcomes in an acute myeloid leukemia multicohort study.

Sarah Wagner1, Jayakumar Vadakekolathu1, Sarah K Tasian2, Heidi Altmann3, Martin Bornhäuser3, A Graham Pockley1, Graham R Ball1, Sergio Rutella1.   

Abstract

Acute myeloid leukemia (AML) is a genetically heterogeneous hematological malignancy with variable responses to chemotherapy. Although recurring cytogenetic abnormalities and gene mutations are important predictors of outcome, 50% to 70% of AMLs harbor normal or risk-indeterminate karyotypes. Therefore, identifying more effective biomarkers predictive of treatment success and failure is essential for informing tailored therapeutic decisions. We applied an artificial neural network (ANN)-based machine learning approach to a publicly available data set for a discovery cohort of 593 adults with nonpromyelocytic AML. ANN analysis identified a parsimonious 3-gene expression signature comprising CALCRL, CD109, and LSP1, which was predictive of event-free survival (EFS) and overall survival (OS). We computed a prognostic index (PI) using normalized gene-expression levels and β-values from subsequently created Cox proportional hazards models, coupled with clinically established prognosticators. Our 3-gene PI separated the adult patients in each European LeukemiaNet cytogenetic risk category into subgroups with different survival probabilities and identified patients with very high-risk features, such as those with a high PI and either FLT3 internal tandem duplication or nonmutated nucleophosmin 1. The PI remained significantly associated with poor EFS and OS after adjusting for established prognosticators, and its ability to stratify survival was validated in 3 independent adult cohorts (n = 905 subjects) and 1 cohort of childhood AML (n = 145 subjects). Further in silico analyses established that AML was the only tumor type among 39 distinct malignancies for which the concomitant upregulation of CALCRL, CD109, and LSP1 predicted survival. Therefore, our ANN-derived 3-gene signature refines the accuracy of patient stratification and the potential to significantly improve outcome prediction.
© 2019 by The American Society of Hematology.

Entities:  

Year:  2019        PMID: 31015209      PMCID: PMC6482359          DOI: 10.1182/bloodadvances.2018030726

Source DB:  PubMed          Journal:  Blood Adv        ISSN: 2473-9529


  49 in total

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9.  MLL-AF9 Expression in Hematopoietic Stem Cells Drives a Highly Invasive AML Expressing EMT-Related Genes Linked to Poor Outcome.

Authors:  Vaia Stavropoulou; Susanne Kaspar; Laurent Brault; Mathijs A Sanders; Sabine Juge; Stefano Morettini; Alexandar Tzankov; Michelina Iacovino; I-Jun Lau; Thomas A Milne; Hélène Royo; Michael Kyba; Peter J M Valk; Antoine H F M Peters; Juerg Schwaller
Journal:  Cancer Cell       Date:  2016-06-23       Impact factor: 31.743

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Authors:  Jeffrey W Tyner; Cristina E Tognon; Daniel Bottomly; Beth Wilmot; Stephen E Kurtz; Samantha L Savage; Nicola Long; Anna Reister Schultz; Elie Traer; Melissa Abel; Anupriya Agarwal; Aurora Blucher; Uma Borate; Jade Bryant; Russell Burke; Amy Carlos; Richie Carpenter; Joseph Carroll; Bill H Chang; Cody Coblentz; Amanda d'Almeida; Rachel Cook; Alexey Danilov; Kim-Hien T Dao; Michie Degnin; Deirdre Devine; James Dibb; David K Edwards; Christopher A Eide; Isabel English; Jason Glover; Rachel Henson; Hibery Ho; Abdusebur Jemal; Kara Johnson; Ryan Johnson; Brian Junio; Andy Kaempf; Jessica Leonard; Chenwei Lin; Selina Qiuying Liu; Pierrette Lo; Marc M Loriaux; Samuel Luty; Tara Macey; Jason MacManiman; Jacqueline Martinez; Motomi Mori; Dylan Nelson; Ceilidh Nichols; Jill Peters; Justin Ramsdill; Angela Rofelty; Robert Schuff; Robert Searles; Erik Segerdell; Rebecca L Smith; Stephen E Spurgeon; Tyler Sweeney; Aashis Thapa; Corinne Visser; Jake Wagner; Kevin Watanabe-Smith; Kristen Werth; Joelle Wolf; Libbey White; Amy Yates; Haijiao Zhang; Christopher R Cogle; Robert H Collins; Denise C Connolly; Michael W Deininger; Leylah Drusbosky; Christopher S Hourigan; Craig T Jordan; Patricia Kropf; Tara L Lin; Micaela E Martinez; Bruno C Medeiros; Rachel R Pallapati; Daniel A Pollyea; Ronan T Swords; Justin M Watts; Scott J Weir; David L Wiest; Ryan M Winters; Shannon K McWeeney; Brian J Druker
Journal:  Nature       Date:  2018-10-17       Impact factor: 49.962

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  17 in total

1.  Immune landscapes predict chemotherapy resistance and immunotherapy response in acute myeloid leukemia.

Authors:  Jayakumar Vadakekolathu; Mark D Minden; Tressa Hood; Sarah E Church; Stephen Reeder; Heidi Altmann; Amy H Sullivan; Elena J Viboch; Tasleema Patel; Narmin Ibrahimova; Sarah E Warren; Andrea Arruda; Yan Liang; Thomas H Smith; Gemma A Foulds; Michael D Bailey; James Gowen-MacDonald; John Muth; Marc Schmitz; Alessandra Cesano; A Graham Pockley; Peter J M Valk; Bob Löwenberg; Martin Bornhäuser; Sarah K Tasian; Michael P Rettig; Jan K Davidson-Moncada; John F DiPersio; Sergio Rutella
Journal:  Sci Transl Med       Date:  2020-06-03       Impact factor: 17.956

2.  CD34+ acute myeloid leukemia cells with low levels of reactive oxygen species show increased expression of stemness genes and can be targeted by the BCL2 inhibitor venetoclax.

Authors:  Katharina Mattes; Mylène Gerritsen; Hendrik Folkerts; Marjan Geugien; Fiona A van den Heuvel; Arthur Flohr Svendsen; Guoqiang Yi; Joost H A Martens; Edo Vellenga
Journal:  Haematologica       Date:  2019-11-14       Impact factor: 9.941

Review 3.  Application of machine learning in the management of acute myeloid leukemia: current practice and future prospects.

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4.  A six-gene prognostic signature for both adult and pediatric acute myeloid leukemia identified with machine learning.

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5.  A cellular hierarchy framework for understanding heterogeneity and predicting drug response in acute myeloid leukemia.

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6.  TP53 abnormalities correlate with immune infiltration and associate with response to flotetuzumab immunotherapy in AML.

Authors:  Jayakumar Vadakekolathu; Catherine Lai; Stephen Reeder; Sarah E Church; Tressa Hood; Anbarasu Lourdusamy; Michael P Rettig; Ibrahim Aldoss; Anjali S Advani; John Godwin; Matthew J Wieduwilt; Martha Arellano; John Muth; Tung On Yau; Farhad Ravandi; Kendra Sweet; Heidi Altmann; Gemma A Foulds; Friedrich Stölzel; Jan Moritz Middeke; Marilena Ciciarello; Antonio Curti; Peter J M Valk; Bob Löwenberg; Ivana Gojo; Martin Bornhäuser; John F DiPersio; Jan K Davidson-Moncada; Sergio Rutella
Journal:  Blood Adv       Date:  2020-10-27

7.  Requirement for LIM kinases in acute myeloid leukemia.

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Journal:  Leukemia       Date:  2020-06-26       Impact factor: 11.528

8.  CALCRL Gene is a Suitable Prognostic Factor in AML/ETO+ AML Patients.

Authors:  Rongrong Wang; Miao Li; Yujia Bai; Yang Jiao; Xiaofei Qi
Journal:  J Oncol       Date:  2022-03-16       Impact factor: 4.375

9.  Survival prognostic factors in patients with acute myeloid leukemia using machine learning techniques.

Authors:  Keyvan Karami; Mahboubeh Akbari; Mohammad-Taher Moradi; Bijan Soleymani; Hossein Fallahi
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Review 10.  How artificial intelligence might disrupt diagnostics in hematology in the near future.

Authors:  Wencke Walter; Claudia Haferlach; Niroshan Nadarajah; Ines Schmidts; Constanze Kühn; Wolfgang Kern; Torsten Haferlach
Journal:  Oncogene       Date:  2021-06-08       Impact factor: 9.867

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