MethodsX (Jan 2020)

A knowledge-driven protocol for prediction of proteins of interest with an emphasis on biosynthetic pathways

  • Adwait G. Joshi,
  • K. Harini,
  • Iyer Meenakshi,
  • K. Mohamed Shafi,
  • Shaik Naseer Pasha,
  • Jarjapu Mahita,
  • Radha Sivarajan Sajeevan,
  • Snehal D. Karpe,
  • Pritha Ghosh,
  • Sathyanarayanan Nitish,
  • A. Gandhimathi,
  • Oommen K. Mathew,
  • Subramanian Hari Prasanna,
  • Manoharan Malini,
  • Eshita Mutt,
  • Mahantesha Naika,
  • Nithin Ravooru,
  • Rajas M. Rao,
  • Prashant N. Shingate,
  • Anshul Sukhwal,
  • Margaret S. Sunitha,
  • Atul K. Upadhyay,
  • Rithvik S. Vinekar,
  • Ramanathan Sowdhamini

Journal volume & issue
Vol. 7
p. 101053

Abstract

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This protocol describes a stepwise process to identify proteins of interest from a query proteome derived from NGS data. We implemented this protocol on Moringa oleifera transcriptome to identify proteins involved in secondary metabolite and vitamin biosynthesis and ion transport. This knowledge-driven protocol identifies proteins using an integrated approach involving sensitive sequence search and evolutionary relationships. We make use of functionally important residues (FIR) specific for the query protein family identified through its homologous sequences and literature. We screen protein hits based on the clustering with true homologues through phylogenetic tree reconstruction complemented with the FIR mapping. The protocol was validated for the protein hits through qRT-PCR and transcriptome quantification. Our protocol demonstrated a higher specificity as compared to other methods, particularly in distinguishing cross-family hits. This protocol was effective in transcriptome data analysis of M. oleifera as described in Pasha et al. • Knowledge-driven protocol to identify secondary metabolite synthesizing protein in a highly specific manner. • Use of functionally important residues for screening of true hits. • Beneficial for metabolite pathway reconstruction in any (species, metagenomics) NGS data.

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