因果-ARG:注释抗生素耐药基因特性的因果指导框架

IF 4.4 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Bioinformatics Pub Date : 2024-04-01 DOI:10.1093/bioinformatics/btae180
Weizhong Zhao, Junze Wu, Xingpeng Jiang, Tingting He, Xiaohua Hu
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引用次数: 0

摘要

摘要 动机 抗生素耐药性危机已成为公共卫生面临的首要挑战之一,它导致用于治疗细菌感染的抗生素的有效性降低。识别抗生素耐药性基因(ARGs)的特性是缓解这一问题的重要途径。尽管针对这一任务提出了许多方法,但这些方法大多只专注于预测抗生素类别,而忽略了 ARGs 的其他重要特性。此外,现有的同时预测 ARGs 多种属性的方法未能考虑到这些属性之间的因果关系,从而限制了预测性能。结果 在本研究中,我们提出了一种因果关系指导下的 ARGs 属性注释框架,其中利用因果推理进行表征学习。更具体地说,决定 ARGs 属性的隐藏生物模式由高斯混合模型来描述,而因果表征学习过程则用于推导隐藏特征。此外,还构建了不同属性之间的因果图,以捕捉 ARGs 属性之间的因果关系,并将其整合到注释 ARGs 属性的任务中。在真实世界数据集上的实验结果证明了所提出的框架在注释 ARGs 属性任务中的有效性。可用性和实现 数据和源代码可在 GitHub 上获取:https://github.com/David-WZhao/CausalARG。
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Causal-ARG: a causality-guided framework for annotating properties of antibiotic resistance genes
Abstract Motivation The crisis of antibiotic resistance, which causes antibiotics used to treat bacterial infections to become less effective, has emerged as one of the foremost challenges to public health. Identifying the properties of antibiotic resistance genes (ARGs) is an essential way to mitigate this issue. Although numerous methods have been proposed for this task, most of these approaches concentrate solely on predicting antibiotic class, disregarding other important properties of ARGs. In addition, existing methods for simultaneously predicting multiple properties of ARGs fail to account for the causal relationships among these properties, limiting the predictive performance. Results In this study, we propose a causality-guided framework for annotating properties of ARGs, in which causal inference is utilized for representation learning. More specifically, the hidden biological patterns determining the properties of ARGs are described by a Gaussian Mixture Model, and procedure of causal representation learning is used to derive the hidden features. In addition, a causal graph among different properties is constructed to capture the causal relationships among properties of ARGs, which is integrated into the task of annotating properties of ARGs. The experimental results on a real-world dataset demonstrate the effectiveness of the proposed framework on the task of annotating properties of ARGs. Availability and implementation The data and source codes are available in GitHub at https://github.com/David-WZhao/CausalARG.
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来源期刊
Bioinformatics
Bioinformatics 生物-生化研究方法
CiteScore
11.20
自引率
5.20%
发文量
753
审稿时长
2.1 months
期刊介绍: The leading journal in its field, Bioinformatics publishes the highest quality scientific papers and review articles of interest to academic and industrial researchers. Its main focus is on new developments in genome bioinformatics and computational biology. Two distinct sections within the journal - Discovery Notes and Application Notes- focus on shorter papers; the former reporting biologically interesting discoveries using computational methods, the latter exploring the applications used for experiments.
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