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Proteome-wide neuropeptide identification using NeuroPeptide-HMMer (NP-HMMer)

Proteome-wide neuropeptide identification using NeuroPeptide-HMMer (NP-HMMer)
Proteome-wide neuropeptide identification using NeuroPeptide-HMMer (NP-HMMer)
Neuropeptides are essential neuronal signaling molecules that orchestrate animal behavior and physiology via actions within the nervous system and on peripheral tissues. Due to the small size of biologically active mature peptides, their identification on a proteome-wide scale poses a significant challenge using existing bioinformatics tools like BLAST. To address this, we have developed NeuroPeptide-HMMer (NP-HMMer), a hidden Markov model (HMM)-based tool to facilitate neuropeptide discovery, especially in underexplored invertebrates. NP-HMMer utilizes manually curated HMMs for 46 neuropeptide families, enabling rapid and accurate identification of neuropeptides. Validation of NP-HMMer on Drosophila melanogaster, Daphnia pulex, Tribolium castaneum and Tenebrio molitor demonstrated its effectiveness in identifying known neuropeptides across diverse arthropods. Additionally, we showcase the utility of NP-HMMer by discovering novel neuropeptides in Priapulida and Rotifera, identifying 22 and 19 new peptides, respectively. This tool represents a significant advancement in neuropeptide research, offering a robust method for annotating neuropeptides across diverse proteomes and providing insights into the evolutionary conservation of neuropeptide signaling pathways.
bioRxiv
Zandawala, Meet
3c817de0-f1d0-4351-ac76-33dd54bc3c11
Amir, Muhammad Bilal
8b77d0cb-42ee-4d4e-8bd6-e1205c7ac08f
Shin, Joel
41051061-f3c5-49c3-9747-cd23c4c8003d
Yim, Won C.
43999f0a-2036-4b2c-af9b-4e0bdba21017
Guerra, Luis Alfonso Yañez
cbca947b-bbf0-4b91-96b0-4a126e3b94b6
Zandawala, Meet
3c817de0-f1d0-4351-ac76-33dd54bc3c11
Amir, Muhammad Bilal
8b77d0cb-42ee-4d4e-8bd6-e1205c7ac08f
Shin, Joel
41051061-f3c5-49c3-9747-cd23c4c8003d
Yim, Won C.
43999f0a-2036-4b2c-af9b-4e0bdba21017
Guerra, Luis Alfonso Yañez
cbca947b-bbf0-4b91-96b0-4a126e3b94b6

[Unknown type: UNSPECIFIED]

Record type: UNSPECIFIED

Abstract

Neuropeptides are essential neuronal signaling molecules that orchestrate animal behavior and physiology via actions within the nervous system and on peripheral tissues. Due to the small size of biologically active mature peptides, their identification on a proteome-wide scale poses a significant challenge using existing bioinformatics tools like BLAST. To address this, we have developed NeuroPeptide-HMMer (NP-HMMer), a hidden Markov model (HMM)-based tool to facilitate neuropeptide discovery, especially in underexplored invertebrates. NP-HMMer utilizes manually curated HMMs for 46 neuropeptide families, enabling rapid and accurate identification of neuropeptides. Validation of NP-HMMer on Drosophila melanogaster, Daphnia pulex, Tribolium castaneum and Tenebrio molitor demonstrated its effectiveness in identifying known neuropeptides across diverse arthropods. Additionally, we showcase the utility of NP-HMMer by discovering novel neuropeptides in Priapulida and Rotifera, identifying 22 and 19 new peptides, respectively. This tool represents a significant advancement in neuropeptide research, offering a robust method for annotating neuropeptides across diverse proteomes and providing insights into the evolutionary conservation of neuropeptide signaling pathways.

Text
2024.07.20.604414v1.full - Author's Original
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Published date: 23 July 2024

Identifiers

Local EPrints ID: 499937
URI: http://eprints.soton.ac.uk/id/eprint/499937
PURE UUID: f3ae7ef6-b936-4a3e-aa20-34b664c434df
ORCID for Luis Alfonso Yañez Guerra: ORCID iD orcid.org/0000-0002-2523-1310

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Date deposited: 09 Apr 2025 16:32
Last modified: 22 Aug 2025 02:41

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Contributors

Author: Meet Zandawala
Author: Muhammad Bilal Amir
Author: Joel Shin
Author: Won C. Yim
Author: Luis Alfonso Yañez Guerra ORCID iD

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