Literature DB >> 34320000

Machine learning predicts treatment sensitivity in multiple myeloma based on molecular and clinical information coupled with drug response.

Lucas Venezian Povoa1,2,3,4, Carlos Henrique Costa Ribeiro1,2, Israel Tojal da Silva3.   

Abstract

Providing treatment sensitivity stratification at the time of cancer diagnosis allows better allocation of patients to alternative treatment options. Despite many clinical and biological risk markers having been associated with variable survival in cancer, assessing the interplay of these markers through Machine Learning (ML) algorithms still remains to be fully explored. Here, we present a Multi Learning Training approach (MuLT) combining supervised, unsupervised and self-supervised learning algorithms, to examine the predictive value of heterogeneous treatment outcomes for Multiple Myeloma (MM). We show that gene expression values improve the treatment sensitivity prediction and recapitulates genetic abnormalities detected by Fluorescence in situ hybridization (FISH) testing. MuLT performance was assessed by cross-validation experiments, in which it predicted treatment sensitivity with 68.70% of AUC. Finally, simulations showed numerical evidences that in average 17.07% of patients could get better response to a different treatment at the first line.

Entities:  

Year:  2021        PMID: 34320000     DOI: 10.1371/journal.pone.0254596

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  26 in total

Review 1.  Deep learning.

Authors:  Yann LeCun; Yoshua Bengio; Geoffrey Hinton
Journal:  Nature       Date:  2015-05-28       Impact factor: 49.962

2.  Clinical intelligence: New machine learning techniques for predicting clinical drug response.

Authors:  Turki Turki; Jason T L Wang
Journal:  Comput Biol Med       Date:  2019-01-03       Impact factor: 4.589

Review 3.  Current and future biomarkers for risk-stratification and treatment personalisation in multiple myeloma.

Authors:  Giao N Lê; Jonathan Bones; Mark Coyne; Despina Bazou; Paul Dowling; Peter O'Gorman; Anne-Marie Larkin
Journal:  Mol Omics       Date:  2019-02-11

4.  Beta-2-microglobulin is an independent predictor of progression in asymptomatic multiple myeloma.

Authors:  Davide Rossi; Marco Fangazio; Lorenzo De Paoli; Alessia Puma; Paola Riccomagno; Valeria Pinto; Paola Zigrossi; Antonio Ramponi; Guido Monga; Gianluca Gaidano
Journal:  Cancer       Date:  2010-05-01       Impact factor: 6.860

Review 5.  IMWG consensus on risk stratification in multiple myeloma.

Authors:  W J Chng; A Dispenzieri; C-S Chim; R Fonseca; H Goldschmidt; S Lentzsch; N Munshi; A Palumbo; J S Miguel; P Sonneveld; M Cavo; S Usmani; B G M Durie; H Avet-Loiseau
Journal:  Leukemia       Date:  2013-08-26       Impact factor: 11.528

6.  Machine learning predicts individual cancer patient responses to therapeutic drugs with high accuracy.

Authors:  Cai Huang; Evan A Clayton; Lilya V Matyunina; L DeEtte McDonald; Benedict B Benigno; Fredrik Vannberg; John F McDonald
Journal:  Sci Rep       Date:  2018-11-06       Impact factor: 4.379

Review 7.  Machine learning applications in cancer prognosis and prediction.

Authors:  Konstantina Kourou; Themis P Exarchos; Konstantinos P Exarchos; Michalis V Karamouzis; Dimitrios I Fotiadis
Journal:  Comput Struct Biotechnol J       Date:  2014-11-15       Impact factor: 7.271

8.  Multiple Myeloma DREAM Challenge reveals epigenetic regulator PHF19 as marker of aggressive disease.

Authors:  Mike J Mason; Carolina Schinke; Christine L P Eng; Fadi Towfic; Fred Gruber; Andrew Dervan; Douglas Bassett; Jonathan Goke; Brian A Walker; Anjan Thakurta; Justin Guinney; Brian S White; Aditya Pratapa; Yuanfang Guan; Hongjie Chen; Yi Cui; Bailiang Li; Thomas Yu; Elias Chaibub Neto; Konstantinos Mavrommatis; Maria Ortiz; Valeriy Lyzogubov; Kamlesh Bisht; Hongyue Y Dai; Frank Schmitz; Erin Flynt; Samuel A Danziger; Alexander Ratushny; William S Dalton; Hartmut Goldschmidt; Herve Avet-Loiseau; Mehmet Samur; Boris Hayete; Pieter Sonneveld; Kenneth H Shain; Nikhil Munshi; Daniel Auclair; Dirk Hose; Gareth Morgan; Matthew Trotter
Journal:  Leukemia       Date:  2020-02-14       Impact factor: 11.528

9.  Predicting drug response of tumors from integrated genomic profiles by deep neural networks.

Authors:  Yu-Chiao Chiu; Hung-I Harry Chen; Tinghe Zhang; Songyao Zhang; Aparna Gorthi; Li-Ju Wang; Yufei Huang; Yidong Chen
Journal:  BMC Med Genomics       Date:  2019-01-31       Impact factor: 3.063

10.  Lnc-GIHCG promotes cell proliferation and migration in gastric cancer through miR- 1281 adsorption.

Authors:  Guozheng Liu; Zaipeng Jiang; Mingliang Qiao; Fengyong Wang
Journal:  Mol Genet Genomic Med       Date:  2019-05-02       Impact factor: 2.183

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  1 in total

Review 1.  Machine Learning and Deep Learning Applications in Multiple Myeloma Diagnosis, Prognosis, and Treatment Selection.

Authors:  Alessandro Allegra; Alessandro Tonacci; Raffaele Sciaccotta; Sara Genovese; Caterina Musolino; Giovanni Pioggia; Sebastiano Gangemi
Journal:  Cancers (Basel)       Date:  2022-01-25       Impact factor: 6.639

  1 in total

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