| Literature DB >> 36104797 |
Guangyu Yang1, Sarven Sabunciyan2, Liliana Florea3,4.
Abstract
Tools for differential splicing detection have failed to provide a comprehensive and consistent view of splicing variation. We present MntJULiP, a novel method for comprehensive and accurate quantification of splicing differences between two or more conditions. MntJULiP detects both changes in intron splicing ratios and changes in absolute splicing levels with high accuracy, and can find classes of variation overlooked by other tools. MntJULiP identifies over 29,000 differentially spliced introns in 1398 GTEx brain samples, including 11,242 novel introns discovered in this dataset. Highly scalable, MntJULiP can process thousands of samples within hours to reveal splicing constituents of phenotypic differentiation.Entities:
Keywords: Alternative splicing; Differential splicing; RNA-seq; Transcriptomics
Mesh:
Year: 2022 PMID: 36104797 PMCID: PMC9472403 DOI: 10.1186/s13059-022-02767-y
Source DB: PubMed Journal: Genome Biol ISSN: 1474-7596 Impact factor: 17.906
Fig. 1Performance evaluation of MntJULiP on simulated and real data. A Comparative evaluation of several methods on 25 control and 25 perturbed simulated RNA-seq data sets. B Venn diagram of methods’ gene-level DSR predictions on 24 healthy and 20 epileptic mice. C Differential splicing at the Zxdc gene locus discovered in the mouse hippocampus data by MntJULiP (DSA); no two introns share an endpoint; therefore, the gene could not have been discovered by other tools. Introns are annotated with the fold change values in the comparison of healthy and epileptic mice. D Venn diagram of DSR genes, and heatmap of DSR introns discovered with MntJULiP in a multi-way comparison of cerebellum, cortex, and lung GTEx RNA-seq samples. Rows were clustered using the Ward distance. E Distribution of program-predicted features by number of comparisons for three methods: (i) union of MntJULiP predicted features from all (21 total) pairwise comparisons, (ii) MntJULiP multi-way predicted features, and (iii) union of LeafCutter predicted features from all (21) pairwise comparisons. F Heatmap of DSR introns discovered from the multi-way comparison of 7-stage taste organoid RNA-seq data. Heatmaps show PSI values of differentially spliced introns. Clustering was performed with the Bray-Curtis distance and simple averaging
Fig. 2Landscape of alternative splicing variation across human brain regions from 1398 GTEx samples. A Dissimilarity matrix showing region-to-region splicing differences determined with MntJULiP (DSR) (p-value<≤0.05, |dpsi|>0.2). Clustering was performed with the Bray-Curtis distance and simple averaging. B Splicing patterns for the 49,186 events were compared between any two brain regions, and events were classified by the difference in the splicing ratios. The 156 × 156 matrix shows the dynamics of splicing events between one tissue and each of the others. The numbers of stable (blue), variable (gold), switch (red), and not present (green) events between any two brain regions are shown along one line