Статья

LAMPA, LArge Multidomain Protein Annotator, and its application to RNA virus polyproteins

A. Gulyaeva, A. Sigorskih, E. Ocheredko, D. Samborskiy, A. Gorbalenya,
2020

MOTIVATION: To facilitate accurate estimation of statistical significance of sequence similarity in profile-profile searches, queries should ideally correspond to protein domains. For multidomain proteins, using domains as queries depends on delineation of domain borders, which may be unknown. Thus, proteins are commonly used as queries that complicate establishing homology for similarities close to cutoff levels of statistical significance. RESULTS: In this article, we describe an iterative approach, called LAMPA, LArge Multidomain Protein Annotator, that resolves the above conundrum by gradual expansion of hit coverage of multidomain proteins through re-evaluating statistical significance of hit similarity using ever smaller queries defined at each iteration. LAMPA employs TMHMM and HHsearch for recognition of transmembrane regions and homology, respectively. We used Pfam database for annotating 2985 multidomain proteins (polyproteins) composed of >1000 amino acid residues, which dominate proteomes of RNA viruses. Under strict cutoffs, LAMPA outperformed HHsearch-mediated runs using intact polyproteins as queries by three measures: number of and coverage by identified homologous regions, and number of hit Pfam profiles. Compared to HHsearch, LAMPA identified 507 extra homologous regions in 14.4% of polyproteins. This Pfam-based annotation of RNA virus polyproteins by LAMPA was also superior to RefSeq expert annotation by two measures, region number and annotated length, for 69.3% of RNA virus polyprotein entries. We rationalized the obtained results based on dependencies of HHsearch hit statistical significance for local alignment similarity score from lengths and diversities of query-target pairs in computational experiments. AVAILABILITY AND IMPLEMENTATION: LAMPA 1.0.0 R package is placed at github (https://github.com/Gorbalenya-Lab/LAMPA). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

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  • 1. Version of Record от 2020-01-31

Метаданные

Об авторах
  • A. Gulyaeva
    Departments of Medical Microbiology, Leiden University Medical Center, RC, Leiden, The Netherlands
  • A. Sigorskih
    Faculty of Bioengineering and Bioinformatics, Lomonosov Moscow State University, Moscow, Russia
  • E. Ocheredko
    Faculty of Bioengineering and Bioinformatics, Lomonosov Moscow State University, Moscow, Russia
  • D. Samborskiy
    Belozersky Institute of Physico-Chemical Biology, Lomonosov Moscow State University, Moscow, Russia
  • A. Gorbalenya
    Departments of Medical Microbiology, Leiden University Medical Center, RC, Leiden, The Netherlands, Biomedical Data Sciences, Leiden University Medical Center, RC, Leiden, The Netherlands, Faculty of Bioengineering and Bioinformatics, Lomonosov Moscow State University, Moscow, Russia, Belozersky Institute of Physico-Chemical Biology, Lomonosov Moscow State University, Moscow, Russia
Название журнала
  • Bioinformatics
Том
  • 36
Выпуск
  • 9
Страницы
  • 2731-2739
Издатель
  • Oxford University Press (OUP)
Тип документа
  • journal article
Тип лицензии Creative Commons
  • CC BY
Правовой статус документа
  • Свободная лицензия
Источник
  • dimensions