aFold - using polynomial uncertainty modelling for differential gene expression estimation from RNA sequencing data.
Wentao YangPhilip RosenstielHinrich SchulenburgPublished in: BMC genomics (2019)
We here present a new transcriptomics analysis tool that includes both a data normalization method and a differential expression analysis approach. The new tool is shown to enhance reliable identification of significant differential expression across distinct data distributions. It outcompetes alternative procedures in case of asymmetrical distributions of up- versus down-regulated genes and also the presence of outliers, all common to real data sets.