Prediction of Human Papillomavirus-Host Oncoprotein Interactions Using Deep Learning.

IF 2.3 Q3 BIOCHEMICAL RESEARCH METHODS Bioinformatics and Biology Insights Pub Date : 2024-12-10 eCollection Date: 2024-01-01 DOI:10.1177/11779322241304666
Sheila Santa, Samuel Kojo Kwofie, Kwasi Agyenkwa-Mawuli, Osbourne Quaye, Charles A Brown, Emmanuel A Tagoe
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Abstract

Background: Human papillomavirus (HPV) causes disease through complex interactions between viral and host proteins, with the PI3K signaling pathway playing a key role. Proteins like AKT, IQGAP1, and MMP16 are involved in HPV-related cancer development. Traditional methods for studying protein-protein interactions (PPIs) are labor-intensive and time-consuming. Computational models are becoming more popular as they are less labor-intensive and often more efficient. This study aimed to develop a deep learning model to predict interactions between HPV and host proteins.

Method: To achieve this, available HPV and host protein interaction data was retrieved from the protocol of Eckhardt et al and used to train a Recurrent Neural Network algorithm. Training of the model was performed on the SPYDER (scientific python development environment) platform using python libraries; Scikit-learn, Pandas, NumPy, and TensorFlow. The data was split into training, validation, and testing sets in the ratio 7:1:2, respectively. After the training and validation, the model was then used to predict the possible interactions between HPV 31 and 18 E6 and E7, and host oncoproteins AKT, IQGAP1 and MMP16.

Results: The model showed good performance, with an MCC score of 0.7937 and all other metrics above 88%. The model predicted an interaction between E6 and E7 of both HPV types with AKT, while only HPV31 E7 was shown to interact with IQGAP1 and MMP16 with confidence scores of 0.9638 and 0.5793, respectively.

Conclusion: The current model strongly predicted HPVs E6 and E7 interactions with PI3K pathway, and the viral proteins may be involved in AKT activation, driving HPV-associated cancers. This model supports the robust prediction of interactomes for experimental validation.

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利用深度学习预测人乳头瘤病毒-宿主癌蛋白相互作用。
背景:人乳头瘤病毒(HPV)通过病毒与宿主蛋白之间复杂的相互作用导致疾病,其中PI3K信号通路起关键作用。AKT、IQGAP1和MMP16等蛋白参与了hpv相关癌症的发展。研究蛋白质-蛋白质相互作用(PPIs)的传统方法是劳动密集型和耗时的。计算模型正变得越来越受欢迎,因为它们不那么劳动密集,而且通常效率更高。本研究旨在开发一个深度学习模型来预测HPV和宿主蛋白之间的相互作用。方法:为了实现这一点,从Eckhardt等人的协议中检索可用的HPV和宿主蛋白相互作用数据,并用于训练递归神经网络算法。在SPYDER(科学python开发环境)平台上使用python库对模型进行训练;Scikit-learn, Pandas, NumPy和TensorFlow。数据按7:1:2的比例分成训练集、验证集和测试集。经过训练和验证后,该模型用于预测HPV 31和18 E6和E7与宿主癌蛋白AKT、IQGAP1和MMP16之间可能的相互作用。结果:模型表现出良好的性能,MCC得分为0.7937,其他指标均在88%以上。该模型预测两种HPV类型的E6和E7与AKT相互作用,而只有HPV31 E7与IQGAP1和MMP16相互作用,置信分数分别为0.9638和0.5793。结论:目前的模型强有力地预测了hpv E6和E7与PI3K通路的相互作用,病毒蛋白可能参与AKT的激活,驱动hpv相关的癌症。该模型支持对相互作用组的鲁棒预测,用于实验验证。
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来源期刊
Bioinformatics and Biology Insights
Bioinformatics and Biology Insights BIOCHEMICAL RESEARCH METHODS-
CiteScore
6.80
自引率
1.70%
发文量
36
审稿时长
8 weeks
期刊介绍: Bioinformatics and Biology Insights is an open access, peer-reviewed journal that considers articles on bioinformatics methods and their applications which must pertain to biological insights. All papers should be easily amenable to biologists and as such help bridge the gap between theories and applications.
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