A Novel Bayesian Outlier Score Based on the Negative Binomial Distribution for Detecting Aberrantly Expressed Genes in RNA-Seq Gene Expression Count Data
<p>The Negative Binomial distribution (NBD) is used for modeling many types of count data, including gene expression counts obtained by RNA sequencing technologies (RNA-Seq). Finding outliers in this type of data has been shown in recent research to help in identifying rare genetic disorders i...
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| Main Author: | Edin Salkovic (16891479) (author) |
|---|---|
| Other Authors: | Halima Bensmail (10400) (author) |
| Published: |
2021
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