文献阅读总结:生物网络方向的论文

本文是对生物网络方向的已读文献的归纳总结,长期更新

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文章目录

论文1 :Predicting human microbe–disease associations via graph attention networks with inductive matrix completion(通过带非负矩阵补全的图注意力进行预测人类microbe-疾病关联)

论文2:Identifying drug–target interactions based on graph convolutional network and deep neural network(基于图卷积神经网络和深度神经网络预测药物-靶标互作)

论文3:AEMDA: Inferring miRNA-disease associations based on deep autoencoder(基于深度自动编码器预测miRNA-疾病关联)

论文4:Predicting Human Microbe-Drug Associations via Graph Convolutional Network with Conditional Random Field
(基于条件随机场的图卷积网络预测人体微生物-药物关联)

论文5:Predicting microRNA–disease associations from lncRNA–microRNA interactions via Multiview Multitask Learning (通过多视角多任务学习从lncRNA-miRNA互作中预测miRNA-disease关联)

论文6:Predicting drug–disease associations through layer attention graph convolutional network(通过层注意力的图卷积网络预测药物-疾病关联)

论文8:A graph auto-encoder model for miRNA-disease associations prediction(用于miRNA-disease关联预测的图自动编码模型)

论文9:Deep-DRM a computational method for identifying disease-related metabolites based on graph deep learning approaches(Deep-DRM:一种基于图深度学习方法的识别疾病相关代谢物的计算方法)

论文10:Biological network analysis with deep learning(使用深度学习的生物网络分析)

论文11:GAERF: predicting lncRNA-disease associations by graph auto-encoder and random forest(通过图自动编码器和随机森林预测lncRNA-疾病的关联)

论文12:An end-to-end heterogeneous graph representation learning-based framework for drug–target interaction prediction(一种端到端异构图表示学习的基于药物-靶标相互作用预测的框架)

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转载自blog.csdn.net/weixin_43183872/article/details/115187644
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