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Predicting circRNA-disease associations using deep generative adversarial network based on multi-source fusion information

机译:基于多源融合信息的深度生成对抗网络预测circRNA-疾病关联

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Circular RNA (circRNA) is a kind of novel discovered non-coding RNA molecule with a closed loop structure, which plays a critical regulatory role in human diseases. Identifying the association between circRNAs and diseases has important potential value for the diagnosis and treatment of complex human diseases. Although biological experiments can more accurately identify the association between circRNAs and diseases, they are usually blind and limited by small scale and high cost. Therefore, there is an urgent need for efficient and feasible computational methods to predict the potential circRNA-disease associations on a large scale, so as to provide the most promising candidate for biological experiments. In this paper, we propose a novel computational method based on the deep Generative Adversarial Network (GAN) algorithm combined with the multi-source similarity information to predict the circRNA-disease associations. Firstly, we fuse the multi-source information of disease semantic similarity, disease and circRNA Gaussian interaction profile kernel similarity, and then use GAN to extract the hidden features of fusion information objectively and effectively in the way of confrontation learning, and finally send them to Logistic Model Tree (LMT) classifier for accurate prediction. The 5-fold cross-validation experiment of the proposed model achieved 89.2% accuracy with 89.4% precision at the AUC of 90.6% on the CIRCR2Disease dataset. Compared with the state-of-the-art SVM classifier and other feature extraction methods, the proposed model shows strong competitiveness. In addition, the predicted results of this model are supported by the biological experiments, and 9 of the top 15 circRNA-disease associations with the highest scores were confirmed by recently published literature. These promising results indicate that the proposed model is an effective tool for predicting circRNA-disease associations and can provide reliable candidates for biological experiments.
机译:环状RNA(circRNA)是一种发现的具有闭环结构的新型非编码RNA分子,在人类疾病中起着至关重要的调节作用。鉴定circRNA与疾病之间的关联对于诊断和治疗复杂的人类疾病具有重要的潜在价值。尽管生物学实验可以更准确地识别circRNA与疾病之间的关联,但它们通常是盲目的且受规模小和成本高的限制。因此,迫切需要一种高效可行的计算方法来大规模预测潜在的circRNA-疾病关联,从而为生物学实验提供最有希望的候选者。在本文中,我们提出了一种基于深度生成对抗网络(GAN)算法并结合多源相似性信息来预测circRNA-疾病关联的新颖计算方法。首先,我们融合疾病语义相似性,疾病和circRNA高斯相互作用谱内核相似性的多源信息,然后使用GAN以对抗学习的方式客观有效地提取融合信息的隐藏特征,最后将它们发送给逻辑模型树(LMT)分类器,可进行准确的预测。在CIRCR2Disease数据集上,所提出模型的5倍交叉验证实验以80.6%的AUC达到89.2%的准确度,而89.4%的准确度。与最新的SVM分类器和其他特征提取方法相比,该模型显示出强大的竞争力。此外,该模型的预测结果得到生物学实验的支持,最近发表的文献证实了得分最高的15个circRNA-疾病关联中的9个。这些有希望的结果表明,所提出的模型是预测circRNA-疾病关联的有效工具,可以为生物学实验提供可靠的候选者。

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