4.6 Article

DEJKMDR: miRNA-disease association prediction method based on graph convolutional network

期刊

FRONTIERS IN MEDICINE
卷 10, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fmed.2023.1234050

关键词

miRNA; miRNA-disease; JK-net; DropEdge; graph convolutional network

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MiRNAs play a crucial role in the study of complex human diseases. Traditional methods are limited by small sample size and high cost, so computational simulations are needed for predicting the correlation between miRNAs and diseases. This paper proposes a GCN-based DEJKMDR model that integrates biomolecular information to predict miRNA-disease associations. The model uses DropEdge and JK-Net to minimize overfitting and combine different domain scopes. Experimental results show that the model achieves higher accuracy and reliability in predicting unknown miRNA-disease relationships.
Numerous studies have shown that miRNAs play a crucial role in the investigation of complex human diseases. Identifying the connection between miRNAs and diseases is crucial for advancing the treatment of complex diseases. However, traditional methods are frequently constrained by the small sample size and high cost, so computational simulations are urgently required to rapidly and accurately forecast the potential correlation between miRNA and disease. In this paper, the DEJKMDR, a graph convolutional network (GCN)-based miRNA-disease association prediction model is proposed. The novelty of this model lies in the fact that DEJKMDR integrates biomolecular information on miRNA and illness, including functional miRNA similarity, disease semantic similarity, and miRNA and disease similarity, according to their Gaussian interaction attribute. In order to minimize overfitting, some edges are randomly destroyed during the training phase after DropEdge has been used to regularize the edges. JK-Net, meanwhile, is employed to combine various domain scopes through the adaptive learning of nodes in various placements. The experimental results demonstrate that this strategy has superior accuracy and dependability than previous algorithms in terms of predicting an unknown miRNA-disease relationship. In a 10-fold cross-validation, the average AUC of DEJKMDR is determined to be 0.9772.

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