d4262bca1e7f48775cd45562ff7e8a77dae739b1
gperez2
  Wed Apr 24 11:41:11 2024 -0700
Combining the two abSplice.ra and html files for hg38 and hg19, refs #33251

diff --git src/hg/makeDb/trackDb/human/hg19/abSplice.html src/hg/makeDb/trackDb/human/hg19/abSplice.html
deleted file mode 100644
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--- src/hg/makeDb/trackDb/human/hg19/abSplice.html
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-<h2>Description</h2>
-<p>
-</p>
-<p>
-AbSplice is a method that predicts aberrant splicing across human tissues, as described in Wagner, 
-Çelik et al., 2023. This track displays precomputed AbSplice scores for all possible single-nucleotide 
-variants genome-wide. The scores represent the probability that a given variant causes aberrant 
-splicing in a given tissue.
-<a target="_blank" href="https://github.com/gagneurlab/absplice/tree/master"> AbSplice </a> scores 
-can be computed from VCF files and are based on quantitative tissue-specific splice site annotations
-(<a target="_blank" href="https://github.com/gagneurlab/splicemap">SpliceMaps</a>).
-While SpliceMaps can be generated for any tissue of interest from a cohort of RNA-seq samples, this 
-track includes 49 tissues available from the 
-<a target="_blank" href="https://www.gtexportal.org/home/">Genotype-Tissue Expression (GTEx) dataset</a>. 
-</p>
-
-<h2>Display Conventions</h2>
-<p>
-The AbSplice score is a probability estimate of how likely aberrant splicing of some sort takes 
-place in a given tissue. 
-The authors <a target="_blank" href="https://github.com/gagneurlab/absplice?tab=readme-ov-file#output">suggest</a> 
-three cutoffs which are represented by color in the track.
-
-<ul>
-<li><b><font color="#FF0000">High (red)</font></b> - <b>
-An AbSplice score over 0.2</b> indicates a high likelihood of aberrant splicing in at least one tissue.</li>
-<li><b><font color="#FF8000">Medium (orange)</font></b> - <b>
-A score between 0.05 and 0.2 </b> indicates a medium likelihood.</li>
-<li><b><font color="#0000FF">Low (blue)</font></b> - <b>
-A score between 0.01 and 0.05 </b> indicates a low likelihood.</li>
-</ul>
-Scores below 0.01 are not displayed
-</p>
-<p>
-Mouseover on items shows the gene name, maximum score, and tissues that had this score. Clicking on 
-any item brings up a table with scores for all 48 GTEX tissues.
-</p>
-
-<h2>Data Access</h2>
-The raw data can be explored interactively with the
-<a href="https://genome.ucsc.edu/cgi-bin/hgTables">Table Browser</a> or the
-<a href="https://genome.ucsc.edu/cgi-bin/hgIntegrator">Data Integrator</a>. 
-For automated analysis, the data may be queried from our
-<a href="https://genome.ucsc.edu/goldenPath/help/api.html">REST API</a>. <br>
-Please refer to our
-<a href="https://groups.google.com/a/soe.ucsc.edu/forum/#!forum/genome">mailing list archives</a> 
-for questions, or our
-<a href="https://genome.ucsc.edu/FAQ/FAQdownloads.html#downloads36">Data Access FAQ</a> 
-for more information.
-<p>AbSplice scores are also available at the 
-<a target="_blank" href="https://zenodo.org/records/10776853/files/AbSplice_DNA_hg38_snvs_high_scores.zip?download=1">public repository</a> 
-created by the authors. 
-
-<h2>Methods</h2>
-<p>
-Data was converted from the file
-(<a href="https://zenodo.org/records/10776853/files/AbSplice_DNA_hg19_snvs_high_scores.zip"
-target="_blank">AbSplice_DNA_hg19_snvs_high_scores.zip</a>) provided by the authors at
-<a href="https://zenodo.org/records/7871809" target="_blank">zenodo.org</a>. Files in the
-score_cutoff=0.01 directory were concatenated. To convert the data to bigBed format, scores and
-their tissues were selected from the AbSplice_DNA fields and maximum scores, and then calculated using a
-<a a target="_blank"  href="https://github.com/ucscGenomeBrowser/kent/tree/master/src/hg/makeDb/outside/abSplice/AbSplice.hg19.makedoc">
-custom Python script</a>.
-</p>
-
-<h2>Credits</h2>
-<p> Thanks to Nils Wagner for helpful comments and suggestions.</p>
-
-<h2>References</h2>
-<p>
-Wagner N, &#199;elik MH, H&#246;lzlwimmer FR, Mertes C, Prokisch H, Y&#233;pez VA, Gagneur J.
-<a href="https://doi.org/10.1038/s41588-023-01373-3" target="_blank">
-Aberrant splicing prediction across human tissues</a>.
-<em>Nat Genet</em>. 2023 May;55(5):861-870.
-PMID: <a href="https://www.ncbi.nlm.nih.gov/pubmed/37142848" target="_blank">37142848</a>
-</p>