首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Variable selection in high-dimensional multivariate binary data with application to the analysis of microbial community DNA fingerprints.
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Variable selection in high-dimensional multivariate binary data with application to the analysis of microbial community DNA fingerprints.

机译:高维多元二进制数据中的变量选择及其在微生物群落DNA指纹分析中的应用。

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摘要

In order to understand the relevance of microbial communities on crop productivity, the identification and characterization of the rhizosphere soil microbial community is necessary. Characteristic profiles of the microbial communities are obtained by denaturing gradient gel electrophoresis (DGGE) of polymerase chain reaction (PCR) amplified 16S rDNA from soil extracted DNA. These characteristic profiles, commonly called community DNA fingerprints, can be represented in the form of high-dimensional binary vectors. We address the problem of modeling and variable selection in high-dimensional multivariate binary data and present an application of our methodology in the context of a controlled agricultural experiment.
机译:为了了解微生物群落对作物生产力的相关性,有必要对根际土壤微生物群落进行鉴定和表征。通过从土壤提取的DNA中聚合酶链反应(PCR)扩增的16S rDNA的变性梯度凝胶电泳(DGGE)变性获得微生物群落的特征图。这些特征档案,通常称为社区DNA指纹,可以以高维二进制载体的形式表示。我们解决了高维多元二进制数据中的建模和变量选择问题,并提出了我们的方法在受控农业试验中的应用。

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