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Sequence count data are poorly fit by the negative binomial distribution

Stijn Hawinkel, J. C. W. Rayner, Luc Bijnens, Olivier Thas

2020PLoS ONE44 citationsDOIOpen Access PDF

Abstract

Sequence count data are commonly modelled using the negative binomial (NB) distribution. Several empirical studies, however, have demonstrated that methods based on the NB-assumption do not always succeed in controlling the false discovery rate (FDR) at its nominal level. In this paper, we propose a dedicated statistical goodness of fit test for the NB distribution in regression models and demonstrate that the NB-assumption is violated in many publicly available RNA-Seq and 16S rRNA microbiome datasets. The zero-inflated NB distribution was not found to give a substantially better fit. We also show that the NB-based tests perform worse on the features for which the NB-assumption was violated than on the features for which no significant deviation was detected. This gives an explanation for the poor behaviour of NB-based tests in many published evaluation studies. We conclude that nonparametric tests should be preferred over parametric methods.

Topics & Concepts

Negative binomial distributionCount dataFalse discovery rateStatisticsGoodness of fitNonparametric statisticsBinomial distributionParametric statisticsMathematicsMultinomial distributionBinomial testStatistical hypothesis testingComputer scienceBiologyPoisson distributionGeneticsGeneGene expression and cancer classificationBayesian Methods and Mixture ModelsGenomics and Phylogenetic Studies
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