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首页> 外文期刊>Bioinformatics >Identification of important regressor groups, subgroups and individuals via regularization methods: application to gut microbiome data.
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Identification of important regressor groups, subgroups and individuals via regularization methods: application to gut microbiome data.

机译:通过正则化方法识别重要的回归基因组,亚组和个体:应用于肠道微生物组数据。

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摘要

Motivation: Gut microbiota can be classified at multiple taxonomy levels. Strategies to use changes in microbiota composition to effect health improvements require knowing at which taxonomy level interventions should be aimed. Identifying these important levels is difficult, however, because most statistical methods only consider when the microbiota are classified at one taxonomy level, not multiple. Results: Using L1 and L2 regularizations, we developed a new variable selection method that identifies important features at multiple taxonomy levels. The regularization parameters are chosen by a new, data-adaptive, repeated cross-validation approach, which performed well. In simulation studies, our method outperformed competing methods: it more often selected significant variables, and had small false discovery rates and acceptable false-positive rates. Applying our method to gut microbiota data, we found which taxonomic levels were most altered by specific interventions or physiological status.
机译:动机:肠道菌群可以在多个分类学级别上进行分类。利用微生物群组成的变化来实现健康改善的策略需要知道应该针对哪种分类学级别的干预措施。但是,很难确定这些重要的水平,因为大多数统计方法只考虑将微生物群分类为一个分类级别而不是多个分类级别。结果:使用L 1 和L 2 正则化,我们开发了一种新的变量选择方法,该方法可以识别多个分类法级别的重要特征。通过新的,数据自适应的,重复的交叉验证方法选择正则化参数,该方法效果良好。在模拟研究中,我们的方法胜过竞争方法:它更经常选择重要变量,并且错误发现率和可接受的错误率均较小。将我们的方法应用于肠道菌群数据,我们发现哪些分类标准水平受特定干预或生理状况的影响最大。

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