ProkDBP:更精确地鉴定原核生物 DNA 结合蛋白。

IF 4.5 3区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Protein Science Pub Date : 2024-06-01 DOI:10.1002/pro.5015
Upendra Kumar Pradhan, Prabina Kumar Meher, Sanchita Naha, Ritwika Das, Ajit Gupta, Rajender Parsad
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引用次数: 0

摘要

原核生物 DNA 结合蛋白(DBPs)在管理基因调控、DNA 复制和各种细胞功能方面发挥着关键作用。预测原核生物 DBPs 的精确计算模型在加速发现新型蛋白质、加深对原核生物生物学的了解以及促进开发针对潜在疾病干预的疗法方面有着巨大的前景。然而,现有的通用预测模型在预测原核生物 DBPs 时往往表现出较低的准确性。为了弥补这一不足,我们引入了 ProkDBP--一种用于预测原核生物 DBPs 的机器学习驱动的新型计算模型。在预测过程中,我们共使用了九种浅层学习算法和五种深度学习模型,其中浅层学习模型的性能指标高于深度学习模型。轻梯度提升机(LGBM)与通过随机森林变量重要度量(RF-VIM)选择的进化重要特征相结合,获得了最高的五倍交叉验证准确率。在评估的 14 个机器学习模型中,该模型的 auROC(0.9534)和 auPRC(0.9575)最高。此外,ProkDBP 在独立数据集上也表现出了不俗的性能,显示出更高的 auROC(0.9332)和 auPRC(0.9371)值。值得注意的是,在与现有的几个前沿模型进行比较时,ProkDBP 显示出了更高的预测准确性。此外,为了提高可访问性和可用性,ProkDBP (https://iasri-sg.icar.gov.in/prokdbp/) 作为在线预测工具提供给感兴趣的用户免费使用。该工具是一项重大贡献,它增强了准确、高效预测原核生物 DBPs 的资源库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ProkDBP: Toward more precise identification of prokaryotic DNA binding proteins.

Prokaryotic DNA binding proteins (DBPs) play pivotal roles in governing gene regulation, DNA replication, and various cellular functions. Accurate computational models for predicting prokaryotic DBPs hold immense promise in accelerating the discovery of novel proteins, fostering a deeper understanding of prokaryotic biology, and facilitating the development of therapeutics targeting for potential disease interventions. However, existing generic prediction models often exhibit lower accuracy in predicting prokaryotic DBPs. To address this gap, we introduce ProkDBP, a novel machine learning-driven computational model for prediction of prokaryotic DBPs. For prediction, a total of nine shallow learning algorithms and five deep learning models were utilized, with the shallow learning models demonstrating higher performance metrics compared to their deep learning counterparts. The light gradient boosting machine (LGBM), coupled with evolutionarily significant features selected via random forest variable importance measure (RF-VIM) yielded the highest five-fold cross-validation accuracy. The model achieved the highest auROC (0.9534) and auPRC (0.9575) among the 14 machine learning models evaluated. Additionally, ProkDBP demonstrated substantial performance with an independent dataset, exhibiting higher values of auROC (0.9332) and auPRC (0.9371). Notably, when benchmarked against several cutting-edge existing models, ProkDBP showcased superior predictive accuracy. Furthermore, to promote accessibility and usability, ProkDBP (https://iasri-sg.icar.gov.in/prokdbp/) is available as an online prediction tool, enabling free access to interested users. This tool stands as a significant contribution, enhancing the repertoire of resources for accurate and efficient prediction of prokaryotic DBPs.

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来源期刊
Protein Science
Protein Science 生物-生化与分子生物学
CiteScore
12.40
自引率
1.20%
发文量
246
审稿时长
1 months
期刊介绍: Protein Science, the flagship journal of The Protein Society, is a publication that focuses on advancing fundamental knowledge in the field of protein molecules. The journal welcomes original reports and review articles that contribute to our understanding of protein function, structure, folding, design, and evolution. Additionally, Protein Science encourages papers that explore the applications of protein science in various areas such as therapeutics, protein-based biomaterials, bionanotechnology, synthetic biology, and bioelectronics. The journal accepts manuscript submissions in any suitable format for review, with the requirement of converting the manuscript to journal-style format only upon acceptance for publication. Protein Science is indexed and abstracted in numerous databases, including the Agricultural & Environmental Science Database (ProQuest), Biological Science Database (ProQuest), CAS: Chemical Abstracts Service (ACS), Embase (Elsevier), Health & Medical Collection (ProQuest), Health Research Premium Collection (ProQuest), Materials Science & Engineering Database (ProQuest), MEDLINE/PubMed (NLM), Natural Science Collection (ProQuest), and SciTech Premium Collection (ProQuest).
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