DGDRP:通过传播和学习生物网络重新排序进行药物反应预测的特异性基因选择。

IF 2.8 3区 生物学 Q2 GENETICS & HEREDITY
Frontiers in Genetics Pub Date : 2024-09-20 eCollection Date: 2024-01-01 DOI:10.3389/fgene.2024.1441558
Minwoo Pak, Dongmin Bang, Inyoung Sung, Sun Kim, Sunho Lee
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引用次数: 0

摘要

引言药物反应预测,尤其是细胞活力预测,是一个经过深入研究的研究问题,对个性化医疗具有重要意义。对药物反应预测的深入研究表明,药物是通过靶向特定蛋白质来发挥其作用的,而蛋白质又会以级联方式扰乱相关基因。这种扰动会影响细胞通路和调控网络,最终影响细胞对药物的反应。确定哪些基因受到扰动以及它们之间如何相互作用,可以为了解药物作用机制提供重要信息。因此,预测药物反应的问题可以说是一个双重问题,既涉及药物疗效预测,又涉及药物特异性基因的选择。识别这些药物特异性基因(生物标志物)至关重要,因为它们可以作为药物如何影响生物系统的指标,从而促进药物反应预测和生物标志物的发现:在这项研究中,我们提出了 DGDRP(用于药物反应预测的特异性基因选择),这是一种基于图神经网络(GNN)的模型,它采用了一种新颖的排序-再排序过程来进行药物特异性基因选择。DGDRP 首先使用基于药物靶点信息的路径知识增强网络传播算法对基因进行排序,以确保生物相关性。然后,它根据从 GNN 中学习到的基因和药物靶点嵌入之间的相似性,结合语义关系对基因进行重新排序。这样,我们的模型就能自适应地学习选择有助于药物反应预测的药物机制相关基因。与其他基因选择方法相比,这种综合方法不仅能改善药物反应预测,还能有效发现生物标记物:因此,与其他基因选择方法相比,我们的方法改进了药物反应预测,并与最先进的深度学习模型具有可比性。案例研究通过显示所选基因集与输入药物的作用机制的一致性,进一步支持了我们的方法:总的来说,DGDRP 代表了一种基于深度学习的重新排序策略,为更准确的药物反应预测提供了一个稳健的基因选择框架。DGDRP 的源代码见:https://github.com/minwoopak/heteronet。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DGDRP: drug-specific gene selection for drug response prediction via re-ranking through propagating and learning biological network.

Introduction: Drug response prediction, especially in terms of cell viability prediction, is a well-studied research problem with significant implications for personalized medicine. It enables the identification of the most effective drugs based on individual genetic profiles, aids in selecting potential drug candidates, and helps identify biomarkers that predict drug efficacy and toxicity.A deeper investigation on drug response prediction reveals that drugs exert their effects by targeting specific proteins, which in turn perturb related genes in cascading ways. This perturbation affects cellular pathways and regulatory networks, ultimately influencing the cellular response to the drug. Identifying which genes are perturbed and how they interact can provide critical insights into the mechanisms of drug action. Hence, the problem of predicting drug response can be framed as a dual problem involving both the prediction of drug efficacy and the selection of drug-specific genes. Identifying these drug-specific genes (biomarkers) is crucial because they serve as indicators of how the drug will affect the biological system, thereby facilitating both drug response prediction and biomarker discovery.Methods: In this study, we propose DGDRP (Drug-specific Gene selection for Drug Response Prediction), a graph neural network (GNN)-based model that uses a novel rank-and-re-rank process for drug-specific gene selection. DGDRP first ranks genes using a pathway knowledge-enhanced network propagation algorithm based on drug target information, ensuring biological relevance. It then re-ranks genes based on the similarity between gene and drug target embeddings learned from the GNN, incorporating semantic relationships. Thus, our model adaptively learns to select drug mechanism-associated genes that contribute to drug response prediction. This integrated approach not only improves drug response predictions compared to other gene selection methods but also allows for effective biomarker discovery.Discussion: As a result, our approach demonstrates improved drug response predictions compared to other gene selection methods and demonstrates comparability with state-of-the-art deep learning models. Case studies further support our method by showing alignment of selected gene sets with the mechanisms of action of input drugs.Conclusion: Overall, DGDRP represents a deep learning based re-ranking strategy, offering a robust gene selection framework for more accurate drug response prediction. The source code for DGDRP can be found at: https://github.com/minwoopak/heteronet.

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来源期刊
Frontiers in Genetics
Frontiers in Genetics Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
5.50
自引率
8.10%
发文量
3491
审稿时长
14 weeks
期刊介绍: Frontiers in Genetics publishes rigorously peer-reviewed research on genes and genomes relating to all the domains of life, from humans to plants to livestock and other model organisms. Led by an outstanding Editorial Board of the world’s leading experts, this multidisciplinary, open-access journal is at the forefront of communicating cutting-edge research to researchers, academics, clinicians, policy makers and the public. The study of inheritance and the impact of the genome on various biological processes is well documented. However, the majority of discoveries are still to come. A new era is seeing major developments in the function and variability of the genome, the use of genetic and genomic tools and the analysis of the genetic basis of various biological phenomena.
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