动态dta:使用动态描述符和图表示的药物-靶标结合亲和力预测。

IF 3.9 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Dan Luo, Jinyu Zhou, Le Xu, Sisi Yuan, Xuan Lin
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引用次数: 0

摘要

动机:预测药物-靶标结合亲和力(DTA)对于确定药物发现中的潜在治疗候选者至关重要。然而,大多数现有模型严重依赖于静态蛋白质结构,往往忽略了蛋白质的动态特性,这对于捕获有利于蛋白质结合相互作用的构象灵活性至关重要。方法:我们引入了DynamicDTA,这是一个创新的深度学习框架,结合了静态和动态蛋白质特征来增强DTA预测。提出的DynamicDTA采用三种类型的输入,包括药物序列、蛋白质序列和动态描述符。生成药物序列的分子图,并通过图卷积网络进行处理,而蛋白质序列则使用扩张卷积进行编码。动态描述符,如均方根波动,是通过多层感知器处理的。这些嵌入特征使用交叉注意与静态蛋白质特征融合,并将张量融合网络集成所有三种模式用于DTA预测。结果:在三个数据集上进行的大量实验表明,与七种最先进的基线方法相比,DynamicDTA在e RMSE得分方面至少提高了3.4%。此外,预测人类免疫缺陷病毒1型的新药和可视化对接复合物进一步证明了DynamicDTA的可靠性和生物学相关性。可用性和实现:源代码是公开的,可以在https://github.com/shmily-ld/DynamicDTA上访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DynamicDTA: Drug-Target Binding Affinity Prediction Using Dynamic Descriptors and Graph Representation.

Motivation: Predicting drug-target binding affinity (DTA) is essential for identifying potential therapeutic candidates in drug discovery. However, most existing models rely heavily on static protein structures, often overlooking the dynamic nature of proteins, which is crucial for capturing conformational flexibility that will be beneficial for protein binding interactions.

Methods: We introduce DynamicDTA, an innovative deep learning framework that incorporates static and dynamic protein features to enhance DTA prediction. The proposed DynamicDTA takes three types of inputs, including drug sequence, protein sequence, and dynamic descriptors. A molecular graph representation of the drug sequence is generated and subsequently processed through graph convolutional network, while the protein sequence is encoded using dilated convolutions. Dynamic descriptors, such as root mean square fluctuation, are processed through a multi-layer perceptron. These embedding features are fused with static protein features using cross-attention, and a tensor fusion network integrates all three modalities for DTA prediction.

Results: Extensive experiments on three datasets demonstrate that DynamicDTA achieves by at least 3.4% improvement in e RMSE score with comparison to seven state-of-the-art baseline methods. Additionally, predicting novel drugs for Human Immunodeficiency Virus Type 1 and visualizing the docking complexes further demonstrates the reliability and biological relevance of DynamicDTA.

Availability and implementation: The source code is publicly available and can be accessed at https://github.com/shmily-ld/DynamicDTA .

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来源期刊
Interdisciplinary Sciences: Computational Life Sciences
Interdisciplinary Sciences: Computational Life Sciences MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
8.60
自引率
4.20%
发文量
55
期刊介绍: Interdisciplinary Sciences--Computational Life Sciences aims to cover the most recent and outstanding developments in interdisciplinary areas of sciences, especially focusing on computational life sciences, an area that is enjoying rapid development at the forefront of scientific research and technology. The journal publishes original papers of significant general interest covering recent research and developments. Articles will be published rapidly by taking full advantage of internet technology for online submission and peer-reviewing of manuscripts, and then by publishing OnlineFirstTM through SpringerLink even before the issue is built or sent to the printer. The editorial board consists of many leading scientists with international reputation, among others, Luc Montagnier (UNESCO, France), Dennis Salahub (University of Calgary, Canada), Weitao Yang (Duke University, USA). Prof. Dongqing Wei at the Shanghai Jiatong University is appointed as the editor-in-chief; he made important contributions in bioinformatics and computational physics and is best known for his ground-breaking works on the theory of ferroelectric liquids. With the help from a team of associate editors and the editorial board, an international journal with sound reputation shall be created.
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