CodAn: predictive models for precise identification of coding regions in eukaryotic transcripts
Autor
Afiliação Butantan
Afiliação externa
Tipo de documento
Article
Idioma
English
Direitos de acesso
Open access
Licença de uso
CC BY
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Métricas
Resumo em inglês
Motivation
Characterization of the coding sequences (CDSs) is an essential step in transcriptome annotation. Incorrect identification of CDSs can lead to the prediction of non-existent proteins that can eventually compromise knowledge if databases are populated with similar incorrect predictions made in different genomes. Also, the correct identification of CDSs is important for the characterization of the untranslated regions (UTRs), which are known to be important regulators of the mRNA translation process. Considering this, we present CodAn (Coding sequence Annotator), a new approach to predict confident CDS and UTR regions in full or partial transcriptome sequences in eukaryote species.
Results
Our analysis revealed that CodAn performs confident predictions on full-length and partial transcripts with the strand sense of the CDS known or unknown. The comparative analysis showed that CodAn presents better overall performance than other approaches, mainly when considering the correct identification of the full CDS (i.e. correct identification of the start and stop codons). In this sense, CodAn is the best tool to be used in projects involving transcriptomic data.
Availability
CodAn is freely available at https://github.com/pedronachtigall/CodAn.
Referência
Nachtigall PG, Kashiwabara AY, Durham AM. CodAn: predictive models for precise identification of coding regions in eukaryotic transcripts. Brief. Bioinform. 2021 May;22(3):1–11. doi:10.1093/bib/bbaa045.
URL permanente para citação desta referência
https://repositorio.butantan.gov.br/handle/butantan/4057
URL
https://doi.org/10.1093/bib/bbaa045
Sobre o periódico
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Agência de fomento
Data de publicação
2021
Arquivos neste item
Este item está licenciada sob uma Licença Creative Commons