DGCPPISP: a PPI site prediction model based on dynamic graph convolutional network and two-stage transfer learning.

IF 2.9 3区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS
Zijian Feng, Weihong Huang, Haohao Li, Hancan Zhu, Yanlei Kang, Zhong Li
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引用次数: 0

Abstract

Background: Proteins play a pivotal role in the diverse array of biological processes, making the precise prediction of protein-protein interaction (PPI) sites critical to numerous disciplines including biology, medicine and pharmacy. While deep learning methods have progressively been implemented for the prediction of PPI sites within proteins, the task of enhancing their predictive performance remains an arduous challenge.

Results: In this paper, we propose a novel PPI site prediction model (DGCPPISP) based on a dynamic graph convolutional neural network and a two-stage transfer learning strategy. Initially, we implement the transfer learning from dual perspectives, namely feature input and model training that serve to supply efficacious prior knowledge for our model. Subsequently, we construct a network designed for the second stage of training, which is built on the foundation of dynamic graph convolution.

Conclusions: To evaluate its effectiveness, the performance of the DGCPPISP model is scrutinized using two benchmark datasets. The ensuing results demonstrate that DGCPPISP outshines competing methods in terms of performance. Specifically, DGCPPISP surpasses the second-best method, EGRET, by margins of 5.9%, 10.1%, and 13.3% for F1-measure, AUPRC, and MCC metrics respectively on Dset_186_72_PDB164. Similarly, on Dset_331, it eclipses the performance of the runner-up method, HN-PPISP, by 14.5%, 19.8%, and 29.9% respectively.

DGCPPISP:基于动态图卷积网络和两阶段迁移学习的 PPI 位点预测模型。
背景:蛋白质在各种生物过程中发挥着举足轻重的作用,因此精确预测蛋白质相互作用(PPI)位点对生物学、医学和药学等众多学科至关重要。虽然深度学习方法已逐步用于预测蛋白质中的 PPI 位点,但提高其预测性能仍是一项艰巨的任务:本文提出了一种基于动态图卷积神经网络和两阶段迁移学习策略的新型 PPI 位点预测模型(DGCPPISP)。首先,我们从两个角度实施迁移学习,即特征输入和模型训练,为我们的模型提供有效的先验知识。随后,我们构建了一个专为第二阶段训练设计的网络,该网络建立在动态图卷积的基础上:为了评估 DGCPPISP 模型的有效性,我们使用两个基准数据集对其性能进行了仔细研究。随后的结果表明,DGCPPISP 在性能方面优于其他竞争方法。具体来说,在 Dset_186_72_PDB164 上,DGCPPISP 在 F1-measure、AUPRC 和 MCC 指标上分别以 5.9%、10.1% 和 13.3% 的优势超过了排名第二的 EGRET 方法。同样,在 Dset_331 上,它的性能分别比亚军方法 HN-PPISP 高出 14.5%、19.8% 和 29.9%。
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来源期刊
BMC Bioinformatics
BMC Bioinformatics 生物-生化研究方法
CiteScore
5.70
自引率
3.30%
发文量
506
审稿时长
4.3 months
期刊介绍: BMC Bioinformatics is an open access, peer-reviewed journal that considers articles on all aspects of the development, testing and novel application of computational and statistical methods for the modeling and analysis of all kinds of biological data, as well as other areas of computational biology. BMC Bioinformatics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.
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