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首页> 外文期刊>Journal of Statistical Software >R2GUESS: A Graphics Processing Unit-Based R Package for Bayesian Variable Selection Regression of Multivariate Responses
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R2GUESS: A Graphics Processing Unit-Based R Package for Bayesian Variable Selection Regression of Multivariate Responses

机译:R2GUESS:基于图形处理单元的R包,用于多元响应的贝叶斯变量选择回归

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Technological advances in molecular biology over the past decade have given rise to high dimensional and complex datasets offering the possibility to investigate biological associations between a range of genomic features and complex phenotypes. The analysis of this novel type of data generated unprecedented computational challenges which ultimately led to the definition and implementation of computationally efficient statistical models that were able to scale to genome-wide data, including Bayesian variable selection approaches. While extensive methodological work has been carried out in this area, only few methods capable of handling hundreds of thousands of predictors were implemented and distributed. Among these we recently proposed GUESS, a computationally optimised algorithm making use of graphics processing unit capabilities, which can accommodate multiple outcomes. In this paper we propose R2GUESS, an R package wrapping the original C++ source code. In addition to providing a user-friendly interface of the original code automating its parametrisation, and data handling, R2GUESS also incorporates many features to explore the data, to extend statistical inferences from the native algorithm (e.g., effect size estimation, significance assessment), and to visualize outputs from the algorithm. We first detail the model and its parametrisation, and describe in details its optimised implementation. Based on two examples we finally illustrate its statistical performances and flexibility.
机译:在过去的十年中,分子生物学的技术进步已经产生了高维和复杂的数据集,为研究一系列基因组特征和复杂表型之间的生物学联系提供了可能性。对这种新型数据的分析产生了前所未有的计算挑战,最终导致了计算效率高的统计模型的定义和实现,该模型能够扩展到全基因组数据,包括贝叶斯变量选择方法。尽管在该领域已进行了广泛的方法学工作,但只有极少数能够处理成千上万个预测变量的方法得以实现和分发。其中,我们最近提出了GUESS,这是一种利用图形处理单元功能进行计算优化的算法,可以容纳多个结果。在本文中,我们提出了R2GUESS,这是一个包装原始C ++源代码的R包。除了提供用户代码友好的界面以自动执行原始代码的参数设置和数据处理外,R2GUESS还整合了许多功能来探索数据,以扩展来自本机算法的统计推断(例如,效果大小估计,重要性评估),并可视化算法的输出。我们首先详细描述模型及其参数化,然后详细描述其优化实现。基于两个示例,我们最终说明其统计性能和灵活性。

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