amIcompositional:具有公共转换的高吞吐量数据的组合行为的简单测试

IF 0.6 Q4 STATISTICS & PROBABILITY
G. Gloor
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引用次数: 1

摘要

组合方法开始渗透到微生物组学、基因组学、转录组学和蛋白质组学等高通量生物医学科学领域。然而,非组合方法仍然经常被观察到。在基于相关性的网络分析、基于距离的排序和探索性数据分析以及基于归一化的差分丰度分析中,非组成方法尤其存在问题。在这里,我们描述了aIc R包,这是一个简单的工具,它回答了一个基本问题:在分析高通量生物医学数据时,数据集或归一化是否表现出会扭曲解释的组合伪影?aIc R包包括几种最广泛使用的规范化和过滤方法的选项。R包包括子成分优势性和相干性以及微扰和尺度不变性的测试。探索性分析由R Shiny应用程序提供,对于那些不希望使用R控制台的人来说,这一过程非常简单。这种简单的方法将允许研究小组承认和解释数据分析中潜在的人为因素,从而产生更稳健和可靠的推断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
amIcompositional: Simple Tests for Compositional Behaviour of High Throughput Data with Common Transformations
Compositional approaches are beginning to permeate high throughput biomedical sciences in the areas of microbiome, genomics, transcriptomics and proteomics. Yet non-compositional approaches are still commonly observed. Non-compositional approaches are particularly problematic in network analysis based on correlation, ordination and exploratory data analysis based on distance, and differential abundance analysis based on normalization. Here we describe the aIc R package, a simple tool that answers the fundamental question: does the dataset or normalization exhibit compositional artefacts that will skew interpretations when analyzing high throughput biomedical data? The aIc R package includes options for several of the most widely used normalizations and filtering methods. The R package includes tests for subcompositional dominance and coherence along with perturbation and scale invariance. Exploratory analysis is facilitated by an R Shiny app that makes the process simple for those not wishing to use an R console. This simple approach will allow research groups to acknowledge and account for potential artefacts in data analysis resulting in more robust and reliable inferences.
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来源期刊
Austrian Journal of Statistics
Austrian Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.10
自引率
0.00%
发文量
30
审稿时长
24 weeks
期刊介绍: The Austrian Journal of Statistics is an open-access journal (without any fees) with a long history and is published approximately quarterly by the Austrian Statistical Society. Its general objective is to promote and extend the use of statistical methods in all kind of theoretical and applied disciplines. The Austrian Journal of Statistics is indexed in many data bases, such as Scopus (by Elsevier), Web of Science - ESCI by Clarivate Analytics (formely Thompson & Reuters), DOAJ, Scimago, and many more. The current estimated impact factor (via Publish or Perish) is 0.775, see HERE, or even more indices HERE. Austrian Journal of Statistics ISNN number is 1026597X Original papers and review articles in English will be published in the Austrian Journal of Statistics if judged consistently with these general aims. All papers will be refereed. Special topics sections will appear from time to time. Each section will have as a theme a specialized area of statistical application, theory, or methodology. Technical notes or problems for considerations under Shorter Communications are also invited. A special section is reserved for book reviews.
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