Literature DB >> 16118183

A Markov chain Monte Carlo technique for identification of combinations of allelic variants underlying complex diseases in humans.

Alexander V Favorov1, Timophey V Andreewski, Marina A Sudomoina, Olga O Favorova, Giovanni Parmigiani, Michael F Ochs.   

Abstract

In recent years, the number of studies focusing on the genetic basis of common disorders with a complex mode of inheritance, in which multiple genes of small effect are involved, has been steadily increasing. An improved methodology to identify the cumulative contribution of several polymorphous genes would accelerate our understanding of their importance in disease susceptibility and our ability to develop new treatments. A critical bottleneck is the inability of standard statistical approaches, developed for relatively modest predictor sets, to achieve power in the face of the enormous growth in our knowledge of genomics. The inability is due to the combinatorial complexity arising in searches for multiple interacting genes. Similar "curse of dimensionality" problems have arisen in other fields, and Bayesian statistical approaches coupled to Markov chain Monte Carlo (MCMC) techniques have led to significant improvements in understanding. We present here an algorithm, APSampler, for the exploration of potential combinations of allelic variations positively or negatively associated with a disease or with a phenotype. The algorithm relies on the rank comparison of phenotype for individuals with and without specific patterns (i.e., combinations of allelic variants) isolated in genetic backgrounds matched for the remaining significant patterns. It constructs a Markov chain to sample only potentially significant variants, minimizing the potential of large data sets to overwhelm the search. We tested APSampler on a simulated data set and on a case-control MS (multiple sclerosis) study for ethnic Russians. For the simulated data, the algorithm identified all the phenotype-associated allele combinations coded into the data and, for the MS data, it replicated the previously known findings.

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Year:  2005        PMID: 16118183      PMCID: PMC1456130          DOI: 10.1534/genetics.105.048090

Source DB:  PubMed          Journal:  Genetics        ISSN: 0016-6731            Impact factor:   4.562


  14 in total

1.  dbSNP: the NCBI database of genetic variation.

Authors:  S T Sherry; M H Ward; M Kholodov; J Baker; L Phan; E M Smigielski; K Sirotkin
Journal:  Nucleic Acids Res       Date:  2001-01-01       Impact factor: 16.971

2.  Sequence analysis using logic regression.

Authors:  C Kooperberg; I Ruczinski; M L LeBlanc; L Hsu
Journal:  Genet Epidemiol       Date:  2001       Impact factor: 2.135

Review 3.  Candidate-gene approaches for studying complex genetic traits: practical considerations.

Authors:  Holly K Tabor; Neil J Risch; Richard M Myers
Journal:  Nat Rev Genet       Date:  2002-05       Impact factor: 53.242

4.  Multifactor dimensionality reduction software for detecting gene-gene and gene-environment interactions.

Authors:  Lance W Hahn; Marylyn D Ritchie; Jason H Moore
Journal:  Bioinformatics       Date:  2003-02-12       Impact factor: 6.937

5.  Empirical bayes methods and false discovery rates for microarrays.

Authors:  Bradley Efron; Robert Tibshirani
Journal:  Genet Epidemiol       Date:  2002-06       Impact factor: 2.135

6.  Identifying interacting SNPs using Monte Carlo logic regression.

Authors:  Charles Kooperberg; Ingo Ruczinski
Journal:  Genet Epidemiol       Date:  2005-02       Impact factor: 2.135

7.  A physical map of the human genome.

Authors:  J D McPherson; M Marra; L Hillier; R H Waterston; A Chinwalla; J Wallis; M Sekhon; K Wylie; E R Mardis; R K Wilson; R Fulton; T A Kucaba; C Wagner-McPherson; W B Barbazuk; S G Gregory; S J Humphray; L French; R S Evans; G Bethel; A Whittaker; J L Holden; O T McCann; A Dunham; C Soderlund; C E Scott; D R Bentley; G Schuler; H C Chen; W Jang; E D Green; J R Idol; V V Maduro; K T Montgomery; E Lee; A Miller; S Emerling; R Gibbs; S Scherer; J H Gorrell; E Sodergren; K Clerc-Blankenburg; P Tabor; S Naylor; D Garcia; P J de Jong; J J Catanese; N Nowak; K Osoegawa; S Qin; L Rowen; A Madan; M Dors; L Hood; B Trask; C Friedman; H Massa; V G Cheung; I R Kirsch; T Reid; R Yonescu; J Weissenbach; T Bruls; R Heilig; E Branscomb; A Olsen; N Doggett; J F Cheng; T Hawkins; R M Myers; J Shang; L Ramirez; J Schmutz; O Velasquez; K Dixon; N E Stone; D R Cox; D Haussler; W J Kent; T Furey; S Rogic; S Kennedy; S Jones; A Rosenthal; G Wen; M Schilhabel; G Gloeckner; G Nyakatura; R Siebert; B Schlegelberger; J Korenberg; X N Chen; A Fujiyama; M Hattori; A Toyoda; T Yada; H S Park; Y Sakaki; N Shimizu; S Asakawa; K Kawasaki; T Sasaki; A Shintani; A Shimizu; K Shibuya; J Kudoh; S Minoshima; J Ramser; P Seranski; C Hoff; A Poustka; R Reinhardt; H Lehrach
Journal:  Nature       Date:  2001-02-15       Impact factor: 49.962

8.  The chemokine receptor CCR5 deletion mutation is associated with MS in HLA-DR4-positive Russians.

Authors:  O O Favorova; T V Andreewski; A N Boiko; M A Sudomoina; A D Alekseenkov; O G Kulakova; A V Slanova; E I Gusev
Journal:  Neurology       Date:  2002-11-26       Impact factor: 9.910

9.  Association and linkage of juvenile MS with HLA-DR2(15) in Russians.

Authors:  A N Boiko; E I Gusev; M A Sudomoina; A D Alekseenkov; O G Kulakova; O V Bikova; O I Maslova; M R Guseva; S Y Boiko; M E Guseva; O O Favorova
Journal:  Neurology       Date:  2002-02-26       Impact factor: 9.910

10.  The sequence of the human genome.

Authors:  J C Venter; M D Adams; E W Myers; P W Li; R J Mural; G G Sutton; H O Smith; M Yandell; C A Evans; R A Holt; J D Gocayne; P Amanatides; R M Ballew; D H Huson; J R Wortman; Q Zhang; C D Kodira; X H Zheng; L Chen; M Skupski; G Subramanian; P D Thomas; J Zhang; G L Gabor Miklos; C Nelson; S Broder; A G Clark; J Nadeau; V A McKusick; N Zinder; A J Levine; R J Roberts; M Simon; C Slayman; M Hunkapiller; R Bolanos; A Delcher; I Dew; D Fasulo; M Flanigan; L Florea; A Halpern; S Hannenhalli; S Kravitz; S Levy; C Mobarry; K Reinert; K Remington; J Abu-Threideh; E Beasley; K Biddick; V Bonazzi; R Brandon; M Cargill; I Chandramouliswaran; R Charlab; K Chaturvedi; Z Deng; V Di Francesco; P Dunn; K Eilbeck; C Evangelista; A E Gabrielian; W Gan; W Ge; F Gong; Z Gu; P Guan; T J Heiman; M E Higgins; R R Ji; Z Ke; K A Ketchum; Z Lai; Y Lei; Z Li; J Li; Y Liang; X Lin; F Lu; G V Merkulov; N Milshina; H M Moore; A K Naik; V A Narayan; B Neelam; D Nusskern; D B Rusch; S Salzberg; W Shao; B Shue; J Sun; Z Wang; A Wang; X Wang; J Wang; M Wei; R Wides; C Xiao; C Yan; A Yao; J Ye; M Zhan; W Zhang; H Zhang; Q Zhao; L Zheng; F Zhong; W Zhong; S Zhu; S Zhao; D Gilbert; S Baumhueter; G Spier; C Carter; A Cravchik; T Woodage; F Ali; H An; A Awe; D Baldwin; H Baden; M Barnstead; I Barrow; K Beeson; D Busam; A Carver; A Center; M L Cheng; L Curry; S Danaher; L Davenport; R Desilets; S Dietz; K Dodson; L Doup; S Ferriera; N Garg; A Gluecksmann; B Hart; J Haynes; C Haynes; C Heiner; S Hladun; D Hostin; J Houck; T Howland; C Ibegwam; J Johnson; F Kalush; L Kline; S Koduru; A Love; F Mann; D May; S McCawley; T McIntosh; I McMullen; M Moy; L Moy; B Murphy; K Nelson; C Pfannkoch; E Pratts; V Puri; H Qureshi; M Reardon; R Rodriguez; Y H Rogers; D Romblad; B Ruhfel; R Scott; C Sitter; M Smallwood; E Stewart; R Strong; E Suh; R Thomas; N N Tint; S Tse; C Vech; G Wang; J Wetter; S Williams; M Williams; S Windsor; E Winn-Deen; K Wolfe; J Zaveri; K Zaveri; J F Abril; R Guigó; M J Campbell; K V Sjolander; B Karlak; A Kejariwal; H Mi; B Lazareva; T Hatton; A Narechania; K Diemer; A Muruganujan; N Guo; S Sato; V Bafna; S Istrail; R Lippert; R Schwartz; B Walenz; S Yooseph; D Allen; A Basu; J Baxendale; L Blick; M Caminha; J Carnes-Stine; P Caulk; Y H Chiang; M Coyne; C Dahlke; A Deslattes Mays; M Dombroski; M Donnelly; D Ely; S Esparham; C Fosler; H Gire; S Glanowski; K Glasser; A Glodek; M Gorokhov; K Graham; B Gropman; M Harris; J Heil; S Henderson; J Hoover; D Jennings; C Jordan; J Jordan; J Kasha; L Kagan; C Kraft; A Levitsky; M Lewis; X Liu; J Lopez; D Ma; W Majoros; J McDaniel; S Murphy; M Newman; T Nguyen; N Nguyen; M Nodell; S Pan; J Peck; M Peterson; W Rowe; R Sanders; J Scott; M Simpson; T Smith; A Sprague; T Stockwell; R Turner; E Venter; M Wang; M Wen; D Wu; M Wu; A Xia; A Zandieh; X Zhu
Journal:  Science       Date:  2001-02-16       Impact factor: 47.728

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  23 in total

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Authors:  Timur R Nasibullin; Yanina R Timasheva; Regina I Sadikova; Ilsiyar A Tuktarova; Vera V Erdman; Irina E Nikolaeva; Jan Sabo; Peter Kruzliak; Olga E Mustafina
Journal:  Mol Biol Rep       Date:  2015-12-12       Impact factor: 2.316

2.  Genetic risk factors of arterial hypertension: analysis of ischemic stroke patients from the Yakut ethnic group.

Authors:  M A Sudomoina; T Y Nikolaeva; M G Parfenov; A D Alekseenkov; A V Favorov; A B Gekht; E I Gusev; O O Favorova
Journal:  Dokl Biochem Biophys       Date:  2006 Sep-Oct       Impact factor: 0.788

3.  OnionTree XML: a format to exchange gene-related probabilities.

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4.  Genes of tumor necrosis factors and their receptors and the primary open angle glaucoma in the population of Central Russia.

Authors:  Evgeniya Tikunova; Veronika Ovtcharova; Evgeny Reshetnikov; Volodymyr Dvornyk; Alexey Polonikov; Olga Bushueva; Mikhail Churnosov
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5.  Genetic risk factors for myocardial infarction more clearly manifest for early age of first onset.

Authors:  Boris V Titov; German J Osmak; Natalia A Matveeva; Nino G Kukava; Roman M Shakhnovich; Alexander V Favorov; Mikhail Ya Ruda; Olga O Favorova
Journal:  Mol Biol Rep       Date:  2017-07-06       Impact factor: 2.316

6.  Genetic polymorphisms, their allele combinations and IFN-beta treatment response in Irish multiple sclerosis patients.

Authors:  Catherine O'Doherty; Alexander Favorov; Shirley Heggarty; Colin Graham; Olga Favorova; Michael Ochs; Stanley Hawkins; Michael Hutchinson; Killian O'Rourke; Koen Vandenbroeck
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Review 7.  A review of genome-wide association studies for multiple sclerosis: classical and hypothesis-driven approaches.

Authors:  V V Bashinskaya; O G Kulakova; A N Boyko; A V Favorov; O O Favorova
Journal:  Hum Genet       Date:  2015-09-25       Impact factor: 4.132

8.  CXCL13 polymorphism is associated with essential hypertension in Tatars from Russia.

Authors:  Yanina R Timasheva; Timur R Nasibullin; Ilsiyar A Tuktarova; Vera V Erdman; Olga E Mustafina
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9.  The Relationship Between Chemokine and Chemokine Receptor Genes Polymorphisms and Chronic Obstructive Pulmonary Disease Susceptibility in Tatar Population from Russia: A Case Control Study.

Authors:  Gulnaz F Korytina; Yulia G Aznabaeva; Leysan Z Akhmadishina; Olga V Kochetova; Timur R Nasibullin; Naufal Sh Zagidullin; Shamil Z Zagidullin; Tatyana V Viktorova
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10.  Genetic predictors of sick sinus syndrome.

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Journal:  Mol Biol Rep       Date:  2021-06-30       Impact factor: 2.316

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