0800aafe419bb4a252a0656a75b83e89ef27ec20 hiram Thu May 22 14:20:58 2025 -0700 use standard UCSC format for reference refs #34917 diff --git src/hg/makeDb/trackDb/contrib/tiberius/Tiberius.html src/hg/makeDb/trackDb/contrib/tiberius/Tiberius.html index c8e28060d1c..317a4808d94 100644 --- src/hg/makeDb/trackDb/contrib/tiberius/Tiberius.html +++ src/hg/makeDb/trackDb/contrib/tiberius/Tiberius.html @@ -1,11 +1,23 @@

UCSC Tiberius Track

The protein-coding genes were predicted with Tiberius in ab initio mode. The soft-masked genome was input only. The command was:

tiberius.py --genome genome.fa --out tiberius.gtf

Table with predicted coordinates, protein sequences and coding sequences of all mammals.

Download code and see accuracy statistics on the Tiberius GitHub page.

Tiberius is a deep learning model that combines a HMM layer with other sequence-to-sequence models (convolutional neural networks, LSTM).

Tiberius was trained on 32 mammalian genomes that did not include any Hominidae (see supplements of below preprint).

Contact

Questions should be directed to Lars Gabriel or Mario Stanke.

+

Reference

-Tiberius: End-to-End Deep Learning with an HMM for Gene Prediction. Lars Gabriel, Felix Becker, Katharina J. Hoff and Mario Stanke, Bioinformatics 2024;, https://doi.org/10.1093/bioinformatics/btae685 + +

+Gabriel L, Becker F, Hoff KJ, Stanke M. + +Tiberius: end-to-end deep learning with an HMM for gene prediction. +Bioinformatics. 2024 Nov 28;40(12). +DOI: 10.1093/bioinformatics/btae685; PMID: 39558581; PMC: PMC11645249 +