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Título
OMICfpp: a fuzzy approach for paired RNA-Seq counts
Autor(es)
Palabras clave
Colorectal cancer
Ordered weight average
Randomization distribution
Clasificación UNESCO
3201.01 Oncología
Fecha de publicación
2019
Editor
BMC Genomics
Citación
Berral-Gonzalez, A., Riffo-Campos, A. & Ayala, G.
(2019). OMICfpp: a fuzzy approach for paired RNA-Seq counts. BMC Genomics 20, 259 https://doi.org/10.1186/s12864-019-5496-5
Resumen
[EN] RNA sequencing is a widely used technology for differential expression analysis. However, the RNA-Seq do not provide accurate absolute measurements and the results can be different for each pipeline used. The major problem in statistical analysis of RNA-Seq and in the omics data in general, is the small sample size with respect to the large number of variables. In addition, experimental design must be taken into account and few tools consider it.
Results: We propose OMICfpp, a method for the statistical analysis of RNA-Seq paired design data. First, we obtain a p-value for each case-control pair using a binomial test. These p-values are aggregated using an ordered weighted average (OWA) with a given orness previously chosen. The aggregated p-value from the original data is compared with the aggregated p-value obtained using the same method applied to random pairs. These new pairs are generated using between-pairs and complete randomization distributions. This randomization p-value is used as a raw p-value to test the differential expression of each gene. The OMICfpp method is evaluated using public data sets of 68 sample pairs from patients with colorectal cancer. We validate our results through bibliographic search of the reported genes and using simulated data set. Furthermore, we compared our results with those obtained by the methods edgeR and DESeq2 for paired samples.
URI
DOI
10.1186/s12864-019-5496-5
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