Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
8339989 | Methods | 2018 | 8 Pages |
Abstract
Differential gene expression analysis is one of the significant efforts in single cell RNA sequencing (scRNAseq) analysis to discover the specific changes in expression levels of individual cell types. Since scRNAseq exhibits multimodality, large amounts of zero counts, and sparsity, it is different from the traditional bulk RNA sequencing (RNAseq) data. The new challenges of scRNAseq data promote the development of new methods for identifying differentially expressed (DE) genes. In this study, we proposed a new method, SigEMD, that combines a data imputation approach, a logistic regression model and a nonparametric method based on the Earth Mover's Distance, to precisely and efficiently identify DE genes in scRNAseq data. The regression model and data imputation are used to reduce the impact of large amounts of zero counts, and the nonparametric method is used to improve the sensitivity of detecting DE genes from multimodal scRNAseq data. By additionally employing gene interaction network information to adjust the final states of DE genes, we further reduce the false positives of calling DE genes. We used simulated datasets and real datasets to evaluate the detection accuracy of the proposed method and to compare its performance with those of other differential expression analysis methods. Results indicate that the proposed method has an overall powerful performance in terms of precision in detection, sensitivity, and specificity.
Keywords
RNAseqsingle cell RNA sequencingFPRTPMGDRNGSROCCDRCDFEMDFDRAUCCumulative Distribution FunctionRNA sequencingNext generation sequencingMultimodal dataNegative binomialTPRDifferentially expressedtranscript per milliontrue positivefalse positiveData imputationNonparametric modelsarea under curvefalse negativetrue negativefalse discovery rateFalse positive rateTrue positive ratereceiver operating characteristic
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Authors
Tianyu Wang, Sheida Nabavi,