4.7 Article

A machine learning framework based on multi-source feature fusion for circRNA-disease association prediction

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 23, Issue 5, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbac388

Keywords

circRNA; circRNA-disease association; deep learning; circRNA sequences; disease ontology

Funding

  1. [62172355,61702444]
  2. [underGrantReferences61722212]

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In this study, a machine learning framework called MLCDA is proposed for predicting the associations between circRNAs and diseases. By effectively integrating multiple heterogeneous information sources, MLCDA successfully captures and accurately predicts their potential associations.
Circular RNAs (circRNAs) are involved in the regulatory mechanisms of multiple complex diseases, and the identification of their associations is critical to the diagnosis and treatment of diseases. In recent years, many computational methods have been designed to predict circRNA-disease associations. However, most of the existing methods rely on single correlation data. Here, we propose a machine learning framework for circRNA-disease association prediction, called MLCDA, which effectively fuses multiple sources of heterogeneous information including circRNA sequences and disease ontology. Comprehensive evaluation in the gold standard dataset showed that MLCDA can successfully capture the complex relationships between circRNAs and diseases and accurately predict their potential associations. In addition, the results of case studies on real data show that MLCDA significantly outperforms other existing methods. MLCDA can serve as a useful tool for circRNA-disease association prediction, providing mechanistic insights for disease research and thus facilitating the progress of disease treatment.

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