DRGAT: Predicting Drug Responses Via Diffusion-Based Graph Attention Network.

IF 1.4 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS
Emre Sefer
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引用次数: 0

Abstract

Accurately predicting drug response depending on a patient's genomic profile is critical for advancing personalized medicine. Deep learning approaches rise and especially the rise of graph neural networks leveraging large-scale omics datasets have been a key driver of research in this area. However, these biological datasets, which are typically high dimensional but have small sample sizes, present challenges such as overfitting and poor generalization in predictive models. As a complicating matter, gene expression (GE) data must capture complex inter-gene relationships, exacerbating these issues. In this article, we tackle these challenges by introducing a drug response prediction method, called drug response graph attention network (DRGAT), which combines a denoising diffusion implicit model for data augmentation with a recently introduced graph attention network (GAT) with high-order neighbor propagation (HO-GATs) prediction module. Our proposed approach achieved almost 5% improvement in the area under receiver operating characteristic curve compared with state-of-the-art models for the many studied drugs, indicating our method's reasonable generalization capabilities. Moreover, our experiments confirm the potential of diffusion-based generative models, a core component of our method, to mitigate the inherent limitations of omics datasets by effectively augmenting GE data.

基于扩散的图注意网络预测药物反应。
根据患者的基因组谱准确预测药物反应对于推进个性化医疗至关重要。深度学习方法的兴起,特别是利用大规模组学数据集的图神经网络的兴起,已经成为该领域研究的关键驱动力。然而,这些生物数据集通常是高维的,但样本量小,在预测模型中存在过拟合和泛化差等挑战。作为一个复杂的问题,基因表达(GE)数据必须捕捉复杂的基因间关系,加剧了这些问题。在本文中,我们通过引入一种药物反应预测方法来解决这些挑战,称为药物反应图注意网络(DRGAT),该方法将用于数据增强的去噪扩散隐式模型与最近引入的具有高阶邻居传播(HO-GATs)预测模块的图注意网络(GAT)相结合。与许多研究药物的最先进模型相比,我们提出的方法在受试者工作特征曲线下的面积提高了近5%,表明我们的方法具有合理的泛化能力。此外,我们的实验证实了基于扩散的生成模型的潜力,这是我们方法的核心组成部分,可以通过有效地增强GE数据来减轻组学数据集的固有局限性。
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 Computational Biology
Journal of Computational Biology 生物-计算机:跨学科应用
CiteScore
3.60
自引率
5.90%
发文量
113
审稿时长
6-12 weeks
期刊介绍: Journal of Computational Biology is the leading peer-reviewed journal in computational biology and bioinformatics, publishing in-depth statistical, mathematical, and computational analysis of methods, as well as their practical impact. Available only online, this is an essential journal for scientists and students who want to keep abreast of developments in bioinformatics. Journal of Computational Biology coverage includes: -Genomics -Mathematical modeling and simulation -Distributed and parallel biological computing -Designing biological databases -Pattern matching and pattern detection -Linking disparate databases and data -New tools for computational biology -Relational and object-oriented database technology for bioinformatics -Biological expert system design and use -Reasoning by analogy, hypothesis formation, and testing by machine -Management of biological databases
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