Autor: |
Vaquero-Garcia, Jorge, Aicher, Joseph K., Jewell, San, Gazzara, Matthew R., Radens, Caleb M., Jha, Anupama, Green, Christopher J., Norton, Scorr S., Lahens, Nicholas F., Grant, Gregory R., Barash, Yoseph |
Rok vydání: |
2023 |
DOI: |
10.5281/zenodo.7508313 |
Popis: |
This is a supplementary data set for the publication, the abstract of which follows. The ubiquity of RNA-seq has led to many methods that use RNA-seq data to analyze variations in RNA splicing. However, available methods are not well suited for handling heterogeneous and large datasets. Such datasets scale to thousands of samples across dozens of experimental conditions, exhibit increased variability compared to biological replicates, and involve thousands of unannotated splice variants resulting in increased transcriptome complexity. We describe here a suite of algorithms and tools implemented in the MAJIQ v2 package to address challenges in detection, quantification, and visualization of splicing variations from such datasets. Using both large scale synthetic data and GTEx v8 as benchmark datasets, we demonstrate that the approaches in MAJIQ v2 outperform existing methods. We then apply MAJIQ v2 package to analyze differential splicing across 2,335 samples from 13 brain subregions, demonstrating its ability to offer new insights into brain subregion-specific splicing regulation. |
Databáze: |
OpenAIRE |
Externí odkaz: |
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