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基于图注意力堆叠自编码器微生物-药物关联预测OA

Prediction of microbe-drug association based on graph attention stacked autoencoder

中文摘要英文摘要

传统方法发掘微生物与药物新关联主要通过生物实验完成,耗费时间且开销极大.基于此,提出基于图注意力堆叠自编码器微生物与药物关联预测方法GATSAE.建立微生物与药物异构网络,丰富关联信息;通过图卷积网络(GCN)提取多层潜在特征,得到微生物和药物的卷积融合矩阵;采用改进的堆叠自编码器学习有意义的高阶相似特征的无监督低维表示,在堆叠自编码器的基础上追加图卷积和注意力机制,进一步优化高阶特征信息的提取;将低维特征与关联特征串联,使用多层感知机(MLP)对最终的微生物-药物进行评分预测.通过效能评估,GATSAE方法的受试者工作特征曲线下面积(AUROC)及精确率-召回率曲线下面积(AUPR)分别达到 0.961 9和 0.957 7,优于经典的机器学习方法和常见的深度学习方法.案例研究表明,GATSAE方法能够准确预测到与SARS-CoV-2、大肠杆菌相关的候选药物,以及与阿司匹林相关的候选微生物.

A graph attention stacking autoencoder approach for predicting the association between microorganisms and drugs,known as GATSAE,is proposed in response to the conventional method of finding new associations between microorganisms and drugs,which is primarily accomplished through biological experiments,which is highly costly and time-consuming.Firstly,establish a heterogeneous network of microorganisms and drugs to enrich the associated information.Secondly,the convolutional fusion matrix of microorganisms and drugs is obtained by extracting multi-layer latent features through graph convolutional network(GCN).Once again,an improved stacked autoencoder is used to learn unsupervised low dimensional representations of meaningful high-order similar features.Graph convolution and attention mechanisms are added to the stacked autoencoder to further optimize the extraction of high-order feature information.Finally,the low-dimensional features are concatenated with associated features,and a multi-layer perceptron(MLP)is used to score and predict the final microbial drug.According to performance evaluation,GATSAE subjects'area under the receiver operating characteristic curve(AUROC)and area under the precision-recall curve(AUPR)were 0.961 9 and 0.957 7,respectively.These results are better than those of popular deep learning techniques and traditional machine learning techniques.Case studies have shown that GATSAE can accurately predict candidate drugs related to SARS-CoV-2 and Escherichia coli,as well as candidate microorganisms related to aspirin.

王波;何洋;杜晓昕;张剑飞;徐靖然;贾娜

齐齐哈尔大学 计算机与控制工程学院,齐齐哈尔 161006||齐齐哈尔大学 黑龙江省大数据网络安全检测分析重点实验室,齐齐哈尔 161006齐齐哈尔大学 计算机与控制工程学院,齐齐哈尔 161006齐齐哈尔大学 计算机与控制工程学院,齐齐哈尔 161006||齐齐哈尔大学 黑龙江省大数据网络安全检测分析重点实验室,齐齐哈尔 161006齐齐哈尔大学 计算机与控制工程学院,齐齐哈尔 161006||齐齐哈尔大学 黑龙江省大数据网络安全检测分析重点实验室,齐齐哈尔 161006齐齐哈尔大学 计算机与控制工程学院,齐齐哈尔 161006齐齐哈尔大学 计算机与控制工程学院,齐齐哈尔 161006

信息技术与安全科学

微生物与药物关联预测堆叠自编码器注意力机制图卷积网络多层感知机

microbes and drugscorrelation predictionstacked autoencoderattention mechanismgraph convolutional networkmulti-layer perceptron

《北京航空航天大学学报》 2026 (1)

61-72,12

黑龙江省省属高等学校基本科研业务费国自然培育一般项目(145409324) General Program for National Natural Science Foundation Cultivation under the Basic Research Fund for Provincial Universities in Heilongjiang(145409324)

10.13700/j.bh.1001-5965.2023.0730

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