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DeepNeuropePred: A robust and universal tool to predict cleavage sites from neuropeptide precursors by protein language model. | LitMetric

DeepNeuropePred: A robust and universal tool to predict cleavage sites from neuropeptide precursors by protein language model.

Comput Struct Biotechnol J

Institute of Medical Artificial Intelligence, Binzhou Medical University, Yantai, Shandong 264003, China.

Published: December 2024

AI Article Synopsis

  • Neuropeptides are crucial for various biological functions like growth, learning, and metabolism, but predicting their cleavage sites from precursor proteins has faced limitations due to the use of small datasets and simplistic models.
  • A new deep learning method called DeepNeuropePred has been developed, combining a pre-trained language model with Convolutional Neural Networks, to predict neuropeptide cleavage sites more accurately.
  • DeepNeuropePred outperformed existing models on an independent dataset, achieving a notable AUC score of 0.916, and is accessible through a dedicated web server for researchers.

Article Abstract

Neuropeptides play critical roles in many biological processes such as growth, learning, memory, metabolism, and neuronal differentiation. A few approaches have been reported for predicting neuropeptides that are cleaved from precursor protein sequences. However, these models for cleavage site prediction of precursors were developed using a limited number of neuropeptide precursor datasets and simple precursors representation models. In addition, a universal method for predicting neuropeptide cleavage sites that can be applied to all species is still lacking. In this paper, we proposed a novel deep learning method called DeepNeuropePred, using a combination of pre-trained language model and Convolutional Neural Networks for feature extraction and predicting the neuropeptide cleavage sites from precursors. To demonstrate the model's effectiveness and robustness, we evaluated the performance of DeepNeuropePred and four models from the NeuroPred server in the independent dataset and our model achieved the highest AUC score (0.916), which are 6.9%, 7.8%, 8.8%, and 10.9% higher than Mammalian (0.857), insects (0.850), Mollusc (0.842) and Motif (0.826), respectively. For the convenience of researchers, we provide a web server (http://isyslab.info/NeuroPepV2/deepNeuropePred.jsp).

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10764246PMC
http://dx.doi.org/10.1016/j.csbj.2023.12.004DOI Listing

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