Literature DB >> 19699293

Convergent Random Forest predictor: methodology for predicting drug response from genome-scale data applied to anti-TNF response.

Jadwiga R Bienkowska1, Gul S Dalgin, Franak Batliwalla, Normand Allaire, Ronenn Roubenoff, Peter K Gregersen, John P Carulli.   

Abstract

Biomarker development for prediction of patient response to therapy is one of the goals of molecular profiling of human tissues. Due to the large number of transcripts, relatively limited number of samples, and high variability of data, identification of predictive biomarkers is a challenge for data analysis. Furthermore, many genes may be responsible for drug response differences, but often only a few are sufficient for accurate prediction. Here we present an analysis approach, the Convergent Random Forest (CRF) method, for the identification of highly predictive biomarkers. The aim is to select from genome-wide expression data a small number of non-redundant biomarkers that could be developed into a simple and robust diagnostic tool. Our method combines the Random Forest classifier and gene expression clustering to rank and select a small number of predictive genes. We evaluated the CRF approach by analyzing four different data sets. The first set contains transcript profiles of whole blood from rheumatoid arthritis patients, collected before anti-TNF treatment, and their subsequent response to the therapy. In this set, CRF identified 8 transcripts predicting response to therapy with 89% accuracy. We also applied the CRF to the analysis of three previously published expression data sets. For all sets, we have compared the CRF and recursive support vector machines (RSVM) approaches to feature selection and classification. In all cases the CRF selects much smaller number of features, five to eight genes, while achieving similar or better performance on both training and independent testing sets of data. For both methods performance estimates using cross-validation is similar to performance on independent samples. The method has been implemented in R and is available from the authors upon request: Jadwiga.Bienkowska@biogenidec.com.

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Year:  2009        PMID: 19699293      PMCID: PMC4476397          DOI: 10.1016/j.ygeno.2009.08.008

Source DB:  PubMed          Journal:  Genomics        ISSN: 0888-7543            Impact factor:   5.736


  29 in total

1.  Outcome signature genes in breast cancer: is there a unique set?

Authors:  Liat Ein-Dor; Itai Kela; Gad Getz; David Givol; Eytan Domany
Journal:  Bioinformatics       Date:  2004-08-12       Impact factor: 6.937

2.  Evaluation of DNA microarray results with quantitative gene expression platforms.

Authors:  Roger D Canales; Yuling Luo; James C Willey; Bradley Austermiller; Catalin C Barbacioru; Cecilie Boysen; Kathryn Hunkapiller; Roderick V Jensen; Charles R Knight; Kathleen Y Lee; Yunqing Ma; Botoul Maqsodi; Adam Papallo; Elizabeth Herness Peters; Karen Poulter; Patricia L Ruppel; Raymond R Samaha; Leming Shi; Wen Yang; Lu Zhang; Federico M Goodsaid
Journal:  Nat Biotechnol       Date:  2006-09       Impact factor: 54.908

3.  The MicroArray Quality Control (MAQC) project shows inter- and intraplatform reproducibility of gene expression measurements.

Authors:  Leming Shi; Laura H Reid; Wendell D Jones; Richard Shippy; Janet A Warrington; Shawn C Baker; Patrick J Collins; Francoise de Longueville; Ernest S Kawasaki; Kathleen Y Lee; Yuling Luo; Yongming Andrew Sun; James C Willey; Robert A Setterquist; Gavin M Fischer; Weida Tong; Yvonne P Dragan; David J Dix; Felix W Frueh; Frederico M Goodsaid; Damir Herman; Roderick V Jensen; Charles D Johnson; Edward K Lobenhofer; Raj K Puri; Uwe Schrf; Jean Thierry-Mieg; Charles Wang; Mike Wilson; Paul K Wolber; Lu Zhang; Shashi Amur; Wenjun Bao; Catalin C Barbacioru; Anne Bergstrom Lucas; Vincent Bertholet; Cecilie Boysen; Bud Bromley; Donna Brown; Alan Brunner; Roger Canales; Xiaoxi Megan Cao; Thomas A Cebula; James J Chen; Jing Cheng; Tzu-Ming Chu; Eugene Chudin; John Corson; J Christopher Corton; Lisa J Croner; Christopher Davies; Timothy S Davison; Glenda Delenstarr; Xutao Deng; David Dorris; Aron C Eklund; Xiao-hui Fan; Hong Fang; Stephanie Fulmer-Smentek; James C Fuscoe; Kathryn Gallagher; Weigong Ge; Lei Guo; Xu Guo; Janet Hager; Paul K Haje; Jing Han; Tao Han; Heather C Harbottle; Stephen C Harris; Eli Hatchwell; Craig A Hauser; Susan Hester; Huixiao Hong; Patrick Hurban; Scott A Jackson; Hanlee Ji; Charles R Knight; Winston P Kuo; J Eugene LeClerc; Shawn Levy; Quan-Zhen Li; Chunmei Liu; Ying Liu; Michael J Lombardi; Yunqing Ma; Scott R Magnuson; Botoul Maqsodi; Tim McDaniel; Nan Mei; Ola Myklebost; Baitang Ning; Natalia Novoradovskaya; Michael S Orr; Terry W Osborn; Adam Papallo; Tucker A Patterson; Roger G Perkins; Elizabeth H Peters; Ron Peterson; Kenneth L Philips; P Scott Pine; Lajos Pusztai; Feng Qian; Hongzu Ren; Mitch Rosen; Barry A Rosenzweig; Raymond R Samaha; Mark Schena; Gary P Schroth; Svetlana Shchegrova; Dave D Smith; Frank Staedtler; Zhenqiang Su; Hongmei Sun; Zoltan Szallasi; Zivana Tezak; Danielle Thierry-Mieg; Karol L Thompson; Irina Tikhonova; Yaron Turpaz; Beena Vallanat; Christophe Van; Stephen J Walker; Sue Jane Wang; Yonghong Wang; Russ Wolfinger; Alex Wong; Jie Wu; Chunlin Xiao; Qian Xie; Jun Xu; Wen Yang; Liang Zhang; Sheng Zhong; Yaping Zong; William Slikker
Journal:  Nat Biotechnol       Date:  2006-09       Impact factor: 54.908

4.  Predicting interpretability of metabolome models based on behavior, putative identity, and biological relevance of explanatory signals.

Authors:  David P Enot; Manfred Beckmann; David Overy; John Draper
Journal:  Proc Natl Acad Sci U S A       Date:  2006-09-21       Impact factor: 11.205

5.  Treatment response to a second or third TNF-inhibitor in RA: results from the South Swedish Arthritis Treatment Group Register.

Authors:  J A Karlsson; L E Kristensen; M C Kapetanovic; A Gülfe; T Saxne; P Geborek
Journal:  Rheumatology (Oxford)       Date:  2008-02-27       Impact factor: 7.580

6.  Gene expression profiling predicts clinical outcome of breast cancer.

Authors:  Laura J van 't Veer; Hongyue Dai; Marc J van de Vijver; Yudong D He; Augustinus A M Hart; Mao Mao; Hans L Peterse; Karin van der Kooy; Matthew J Marton; Anke T Witteveen; George J Schreiber; Ron M Kerkhoven; Chris Roberts; Peter S Linsley; René Bernards; Stephen H Friend
Journal:  Nature       Date:  2002-01-31       Impact factor: 49.962

7.  The Disease Activity Score and the EULAR response criteria.

Authors:  J Fransen; P L C M van Riel
Journal:  Clin Exp Rheumatol       Date:  2005 Sep-Oct       Impact factor: 4.473

8.  Histone deacetylase activities are required for innate immune cell control of Th1 but not Th2 effector cell function.

Authors:  Jennifer L Brogdon; Yongyao Xu; Susanne J Szabo; Shaojian An; Francis Buxton; Dalia Cohen; Qian Huang
Journal:  Blood       Date:  2006-09-28       Impact factor: 22.113

9.  Global histone modification patterns predict risk of prostate cancer recurrence.

Authors:  David B Seligson; Steve Horvath; Tao Shi; Hong Yu; Sheila Tze; Michael Grunstein; Siavash K Kurdistani
Journal:  Nature       Date:  2005-06-30       Impact factor: 49.962

10.  Gene expression correlates of clinical prostate cancer behavior.

Authors:  Dinesh Singh; Phillip G Febbo; Kenneth Ross; Donald G Jackson; Judith Manola; Christine Ladd; Pablo Tamayo; Andrew A Renshaw; Anthony V D'Amico; Jerome P Richie; Eric S Lander; Massimo Loda; Philip W Kantoff; Todd R Golub; William R Sellers
Journal:  Cancer Cell       Date:  2002-03       Impact factor: 31.743

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  13 in total

1.  Modular analysis of peripheral blood gene expression in rheumatoid arthritis captures reproducible gene expression changes in tumor necrosis factor responders.

Authors:  Michaela Oswald; Mark E Curran; Sarah L Lamberth; Robert M Townsend; Jennifer D Hamilton; David N Chernoff; John Carulli; Michael J Townsend; Michael E Weinblatt; Marlena Kern; Cassandra M Pond; Annette Lee; Peter K Gregersen
Journal:  Arthritis Rheumatol       Date:  2015-02       Impact factor: 10.995

2.  Causal modeling using network ensemble simulations of genetic and gene expression data predicts genes involved in rheumatoid arthritis.

Authors:  Heming Xing; Paul D McDonagh; Jadwiga Bienkowska; Tanya Cashorali; Karl Runge; Robert E Miller; Dave Decaprio; Bruce Church; Ronenn Roubenoff; Iya G Khalil; John Carulli
Journal:  PLoS Comput Biol       Date:  2011-03-10       Impact factor: 4.475

3.  Pretreatment Prediction of Individual Rheumatoid Arthritis Patients' Response to Anti-Cytokine Therapy Using Serum Cytokine/Chemokine/Soluble Receptor Biomarkers.

Authors:  Kazuko Uno; Kazuyuki Yoshizaki; Mitsuhiro Iwahashi; Jiro Yamana; Seizo Yamana; Miki Tanigawa; Katsumi Yagi
Journal:  PLoS One       Date:  2015-07-15       Impact factor: 3.240

4.  T-cell exhaustion, co-stimulation and clinical outcome in autoimmunity and infection.

Authors:  Eoin F McKinney; James C Lee; David R W Jayne; Paul A Lyons; Kenneth G C Smith
Journal:  Nature       Date:  2015-06-29       Impact factor: 49.962

5.  Pre-treatment whole blood gene expression is associated with 14-week response assessed by dynamic contrast enhanced magnetic resonance imaging in infliximab-treated rheumatoid arthritis patients.

Authors:  Kenzie D MacIsaac; Richard Baumgartner; Jia Kang; Andrey Loboda; Charles Peterfy; Julie DiCarlo; Jonathan Riek; Chan Beals
Journal:  PLoS One       Date:  2014-12-12       Impact factor: 3.240

6.  Molecular profiling of rheumatoid arthritis patients reveals an association between innate and adaptive cell populations and response to anti-tumor necrosis factor.

Authors:  Victor Farutin; Thomas Prod'homme; Kevin McConnell; Nathaniel Washburn; Patrick Halvey; Carol J Etzel; Jamey Guess; Jay Duffner; Kristen Getchell; Robin Meccariello; Bryan Gutierrez; Christopher Honan; Ganlin Zhao; Nicholas A Cilfone; Nur Sibel Gunay; Jan L Hillson; David S DeLuca; Katherine C Saunders; Dimitrios A Pappas; Jeffrey D Greenberg; Joel M Kremer; Anthony M Manning; Leona E Ling; Ishan Capila
Journal:  Arthritis Res Ther       Date:  2019-10-23       Impact factor: 5.156

7.  A Molecular Signature Response Classifier to Predict Inadequate Response to Tumor Necrosis Factor-α Inhibitors: The NETWORK-004 Prospective Observational Study.

Authors:  Stanley Cohen; Alvin F Wells; Jeffrey R Curtis; Rajat Dhar; Theodore Mellors; Lixia Zhang; Johanna B Withers; Alex Jones; Susan D Ghiassian; Mengran Wang; Erin Connolly-Strong; Sarah Rapisardo; Zoran Gatalica; Dimitrios A Pappas; Joel M Kremer; Alif Saleh; Viatcheslav R Akmaev
Journal:  Rheumatol Ther       Date:  2021-06-19

Review 8.  Gene expression analysis in RA: towards personalized medicine.

Authors:  A N Burska; K Roget; M Blits; L Soto Gomez; F van de Loo; L D Hazelwood; C L Verweij; A Rowe; G N Goulielmos; L G M van Baarsen; F Ponchel
Journal:  Pharmacogenomics J       Date:  2014-03-04       Impact factor: 3.550

9.  Comparative genomics of 274 Vibrio cholerae genomes reveals mobile functions structuring three niche dimensions.

Authors:  Bas E Dutilh; Cristiane C Thompson; Ana C P Vicente; Michel A Marin; Clarence Lee; Genivaldo G Z Silva; Robert Schmieder; Bruno G N Andrade; Luciane Chimetto; Daniel Cuevas; Daniel R Garza; Iruka N Okeke; Aaron Oladipo Aboderin; Jessica Spangler; Tristen Ross; Elizabeth A Dinsdale; Fabiano L Thompson; Timothy T Harkins; Robert A Edwards
Journal:  BMC Genomics       Date:  2014-08-05       Impact factor: 3.969

10.  Review and Meta-Analyses of TAAR1 Expression in the Immune System and Cancers.

Authors:  Lisa M Fleischer; Rachana D Somaiya; Gregory M Miller
Journal:  Front Pharmacol       Date:  2018-06-26       Impact factor: 5.810

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