Three-Dimensional Structure of Human Epididymis Protein 4 (HE4): A Protein Modelling of an Ovarian Cancer Biomarker Through In Silico Approach

Q4 Agricultural and Biological Sciences
Nur Nadiah Abdul Rashid, Mohd Hamzah Mohd Nasir, Nurasyikin Hamzah, Che Muhammad Khairul Hisyam Ismail, Siti Aishah Sufira Nor Hishamuddin, I. Suffian, Azzmer Azzar Abdul Hamid
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引用次数: 0

Abstract

The Human Epididymis Protein 4 (HE4) biomarker has been extensively investigated for its potential in diagnosing ovarian cancer (OC). For the application of diagnostic techniques and drug delivery, it is crucial to understand the protein tertiary structure. However, the Protein Data Bank (PDB) does not currently contain the three-dimensional (3D) structure of HE4. Therefore, an in silico analysis was conducted to model the HE4 protein using AlphaFold, I-TASSER, and Robetta servers, with the sequence retrieved from UniProt (ID: Q14508). These three servers employed deep learning algorithms, threading templates, and de novo methods, respectively. Subsequently, Molecular Dynamics (MD) simulation using the GROMACS software package improved each 3D structure model, resulting in optimized and refined structures: RF1, RF2, and RF3. PROCHECK and ERRAT programs were employed to assess the structure quality. The Ramachandran plots from PROCHECK indicated that 100% of residues were within the allowed regions for all servers except for I-TASSER. For the refined structures, RF1 and RF3, all residues were concentrated within the allowed regions. According to the ERRAT program, the RF1 model exhibited the highest overall quality factor of 97.701, followed by RF3 and AlphaFold models with scores of 94.643 and 93.750, respectively. After these validations, RF1 emerged as the most accurately predicted 3D structure of HE4 and has one tunnel identified by CAVER 3.0 tool that facilitates the transportation of small particles to the active site, supported by FTsite and PrankWeb binding site predictions. This model holds potential for various computational studies, including the development of OC diagnostic kits. It will enhance our comprehension of the interactions between the protein and other biomolecules.
人类附睾蛋白 4 (HE4) 的三维结构:通过硅学方法建立卵巢癌生物标志物的蛋白质模型
人类附睾蛋白 4(HE4)生物标志物在诊断卵巢癌(OC)方面的潜力已得到广泛研究。要应用诊断技术和给药技术,了解蛋白质的三级结构至关重要。然而,蛋白质数据库(PDB)目前并不包含 HE4 的三维(3D)结构。因此,我们使用 AlphaFold、I-TASSER 和 Robetta 服务器,利用从 UniProt(ID:Q14508)检索到的序列,对 HE4 蛋白质进行了硅学分析建模。这三个服务器分别采用了深度学习算法、穿线模板和全新方法。随后,使用 GROMACS 软件包进行分子动力学(MD)模拟,改进了每个三维结构模型,从而得到了优化和完善的结构:RF1、RF2 和 RF3。PROCHECK 和 ERRAT 程序用于评估结构质量。PROCHECK 的拉马钱德兰图显示,除 I-TASSER 外,所有服务器中 100%的残基都在允许区域内。对于 RF1 和 RF3 的精炼结构,所有残基都集中在允许区域内。根据ERRAT程序,RF1模型的总体质量因子最高,为97.701,其次是RF3和AlphaFold模型,分别为94.643和93.750分。经过这些验证后,RF1 成为预测最准确的 HE4 三维结构,它有一个由 CAVER 3.0 工具确定的隧道,有助于将小颗粒运送到活性位点,并得到了 FTsite 和 PrankWeb 结合位点预测的支持。该模型可用于各种计算研究,包括开发 OC 诊断试剂盒。它将增强我们对蛋白质与其他生物大分子之间相互作用的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Tropical Life Science
Journal of Tropical Life Science Environmental Science-Ecology
CiteScore
1.00
自引率
0.00%
发文量
46
审稿时长
12 weeks
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