Bioinformatics Lab, Department of Computer Science, Cochin University of Science and Technology, Kochi 682022, Kerala, India; Department of Computer Science, College of Engineering, Vadakara, Kozhikkode 673104, Kerala, India.
Bioinformatics Lab, Department of Computer Science, Cochin University of Science and Technology, Kochi 682022, Kerala, India.
Gene. 2020 Dec 15;762:145040. doi: 10.1016/j.gene.2020.145040. Epub 2020 Aug 7.
Circular RNAs (circRNA) are a special kind of covalently closed single-stranded RNA molecules. They have been shown to control and coordinate various biological processes. Recent researches show that circRNAs are closely associated with numerous chronic human diseases. Identification of circRNA-disease associations will contribute towards diagnosing the pathogenesis of diseases. Experimental methods for finding the relation between the diseases and their causal circRNAs are difficult and time-consuming. So computational methods are of critical need for predicting the associations between circRNAs and various human diseases. In this study, we propose an ensemble approach AE-DNN, which relies on autoencoder and deep neural networks to predict new circRNA-disease relationships. We utilized circRNA sequence similarity, disease semantic similarity, and Gaussian interaction profile kernel similarities of circRNAs and diseases for feature construction. The constructed features are fed to a deep autoencoder, and the extracted compact, high-level features are fed to the deep neural network for association prediction. We conducted 5-fold and 10-fold cross-validation experiments to assess the performance; AE-DNN could achieve AUC scores of 0.9392 and 0.9431, respectively. Experimental results and case studies indicate the robustness of our model in circRNA-disease association prediction.
环状 RNA(circRNA)是一种特殊的共价闭环单链 RNA 分子。它们被证明可以控制和协调各种生物过程。最近的研究表明,circRNAs 与许多慢性人类疾病密切相关。识别 circRNA-疾病关联将有助于诊断疾病的发病机制。寻找疾病与其因果 circRNAs 之间关系的实验方法既困难又耗时。因此,计算方法对于预测 circRNAs 与各种人类疾病之间的关联至关重要。在这项研究中,我们提出了一种基于自动编码器和深度神经网络的集成方法 AE-DNN,用于预测新的 circRNA-疾病关系。我们利用 circRNA 序列相似性、疾病语义相似性以及 circRNAs 和疾病的高斯相互作用谱核相似性进行特征构建。构建的特征被输入深度自动编码器,提取的紧凑、高级特征被输入深度神经网络进行关联预测。我们进行了 5 折和 10 折交叉验证实验来评估性能;AE-DNN 分别可以达到 0.9392 和 0.9431 的 AUC 分数。实验结果和案例研究表明,我们的模型在 circRNA-疾病关联预测中具有稳健性。