Likelihood-based feature representation learning combined with neighborhood information for predicting circRNA miRNA associations

Lu Xiang Guo, Lei Wang, Zhu Hong You, Chang Qing Yu, Meng Lei Hu, Bo Wei Zhao, Yang Li

Research output: Contribution to journalArticlepeer-review

20 Scopus citations

Abstract

Connections between circular RNAs (circRNAs) and microRNAs (miRNAs) assume a pivotal position in the onset, evolution, diagnosis and treatment of diseases and tumors. Selecting the most potential circRNA-related miRNAs and taking advantage of them as the biologicalmarkersordrugtargetscouldbeconducivetodealingwithcomplexhumandiseasesthroughpreventivestrategies,diagnostic procedures and therapeutic approaches.Compared to traditional biological experiments,leveraging computational models to integrate diverse biological data in order to infer potential associations proves to be a more efficient and cost-effective approach. This paper developedamodelofConvolutionalAutoencoderforCircRNA MiRNAAssociations(CA-CMA)prediction.Initially,thismodelmergedthe natural language characteristics of the circRNA and miRNA sequence with the features of circRNA miRNA interactions. Subsequently, it utilized all circRNA miRNA pairs to construct a molecular association network, which was then fine-Tuned by labeled samples to optimize the network parameters. Finally, the prediction outcome is obtained by utilizing the deep neural networks classifier. This model innovatively combines the likelihood objective that preserves the neighborhood through optimization, to learn the continuous feature representation of words and preserve the spatial information of two-dimensional signals. During the process of 5-fold cross-validation, CA-CMA exhibited exceptional performance compared to numerous prior computational approaches, as evidenced by its mean area under the receiver operating characteristic curve of 0.9138 and a minimal SD of 0.0024. Furthermore, recent literature has confirmed the accuracy of 25 out of the top 30 circRNA miRNA pairs identified with the highest CA-CMA scores during case studies. The results of these experiments highlight the robustness and versatility of our model.

Original languageEnglish
Article numberbbae020
JournalBriefings in Bioinformatics
Volume25
Issue number2
DOIs
StatePublished - 1 Mar 2024

Keywords

  • circRNA
  • circRNA miRNA association
  • convolutional autoencoder
  • deep neural net-works
  • miRNA
  • natural language processing

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