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R2GUESS: A graphics processing unit-based R package for bayesian variable selection regression of multivariate responses
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نویسنده
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liquet b. ,bottolo l. ,campanella g. ,richardson s. ,chadeau-hyam m.
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منبع
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journal of statistical software - 2016 - دوره : 69 - شماره : 0
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چکیده
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Technological advances in molecular biology over the past decade have given rise tohigh dimensional and complex datasets offering the possibility to investigate biologicalassociations between a range of genomic features and complex phenotypes. the analysisof this novel type of data generated unprecedented computational challenges which ultimatelyled to the definition and implementation of computationally efficient statisticalmodels that were able to scale to genome-wide data,including bayesian variable selectionapproaches. while extensive methodological work has been carried out in this area,onlyfew methods capable of handling hundreds of thousands of predictors were implementedand distributed. among these we recently proposed guess,a computationally optimize dalgorithm making use of graphics processing unit capabilities,which can accommo date multiple outcomes. in this paper we propose r2guess,an r package wrapping theoriginal c++ source code. in addition to providing a user-friendly interface of the originalcode automating its parametrisation,and data handling,r2guess also incorporatesmany features to explore the data,to extend statistical inferences from the native algorithm(e.g.,effect size estimation,significance assessment),and to visualize outputs fromthe algorithm. we first detail the model and its parametrisation,and describe in detailsits optimised implementation. based on two examples we finally illustrate its statisticalperformances and flexibility. © 2016,american statistical association. all rights reserved.
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کلیدواژه
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Bayesian variable selection; C++; Graphics processing unit; Multivariateregression; OMICs data; R
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آدرس
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laboratoire de mathématiques et de leurs applications,universitéde pau et des pays de l’adour,umr cnrs 5142,pau,france,arc centre of excellence for mathematical and statistical frontiers,queensland university of technology (qut),brisbane, Australia, imperial college london, United Kingdom, imperial college london, United Kingdom, mrc biostatistics unit,cambridge, United Kingdom, department of epidemiology and biostatistics imperial college london,st mary’s hospital,norfolk place,london,w21pg, United Kingdom
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Authors
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