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Title
Understanding sequencing data as compositions: an outlook and review
Author(s)
Publication Date
2018-08
Early Online Version
Open Access
Yes
Abstract
<p><b>Motivation: </b>Although seldom acknowledged explicitly, count data generated by sequencing platforms exist as compositions for which the abundance of each component (e.g. gene or transcript) is only coherently interpretable relative to other components within that sample. This property arises from the assay technology itself, whereby the number of counts recorded for each sample is constrained by an arbitrary total sum (i.e. library size). Consequently, sequencing data, as compositional data, exist in a non-Euclidean space that, without normalization or transformation, renders invalid many conventional analyses, including distance measures, correlation coefficients and multivariate statistical models.</p> <p><b>Results:</b> The purpose of this review is to summarize the principles of compositional data analysis (CoDA), provide evidence for why sequencing data are compositional, discuss compositionally valid methods available for analyzing sequencing data, and highlight future directions with regard to this field of study.</p>
Publication Type
Journal Article
Source of Publication
Bioinformatics, 34(16), p. 2870-2878
Publisher
ASFRA B V
Socio-Economic Objective (SEO) 2020
2018-03-28
Place of Publication
The Netherlands
ISSN
0927-4588
File(s) openpublished/UnderstandingCrowley2018JournalArticle.pdf (221.68 KB)
Published Version
Fields of Research (FoR) 2020
Peer Reviewed
Yes
HERDC Category Description
Peer Reviewed
Yes
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