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Generation and analysis of a mouse multi-tissue genome annotation atlas

Adams, M. S., Vollmers, C.

biorxiv · 2024

Abstract

Generating an accurate and complete genome annotation for an organism is complex because the cells within each tissue can express a unique set of transcript isoforms from a unique set of genes. A comprehensive genome annotation should contain information on what tissues express what transcript isoforms at what level. This tissue-level isoform information can then inform a wide range of research questions as well as experiment designs. Long-read sequencing technology combined with advanced full-length cDNA library preparation methods has now achieved throughput and accuracy where generating these types of annotations is achievable. Here, we show this by generating a genome annotation of the mouse (Mus musculus). We used the nanopore-based R2C2 long-read sequencing method to generate 64 million highly accurate full length cDNA consensus reads - averaging 5.4 million reads per tissue for a dozen tissues. Using the Mandalorion tool we processed these reads to generate the Tissue-level Atlas of Mouse Isoforms (TAMI - available at https://genome.ucsc.edu/s/vollmers/TAMI) which we believe will be a valuable complement to conventional, manually curated reference genome annotations.

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Provenance

Source
bioRxiv
DOI
10.1101/2024.01.31.578267
Canonical
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2026-05-31 MST

Cite this

APA
S., A.M., &amp; C., V. (2024). Generation and analysis of a mouse multi-tissue genome annotation atlas. <em>biorxiv</em>. https://doi.org/10.1101/2024.01.31.578267
Vancouver
S. AM, C. V. Generation and analysis of a mouse multi-tissue genome annotation atlas. biorxiv. 2024. doi:10.1101/2024.01.31.578267.
BibTeX
@unpublished{adams2024Genera, title = {Generation and analysis of a mouse multi-tissue genome annotation atlas}, author = {Adams, M. S. and Vollmers, C.}, journal = {biorxiv}, year = {2024}, doi = {10.1101/2024.01.31.578267}, }

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