AI Article Synopsis

  • Understanding the link between short nucleolar RNA (snoRNA) and diseases is essential for improving disease detection and treatments, but traditional research methods are often expensive and not easily scalable.
  • This study introduces IGCNSDA, an innovative graph convolutional network that uses deep learning to predict snoRNA-disease associations in a more interpretable way than existing 'black-box' models.
  • IGCNSDA aggregates information from similar snoRNAs and diseases using a unique subgraph generation algorithm, showing superior performance in predictions while providing insights into the association mechanisms, and the resources are available for public use.

Article Abstract

Accurately delineating the connection between short nucleolar RNA (snoRNA) and disease is crucial for advancing disease detection and treatment. While traditional biological experimental methods are effective, they are labor-intensive, costly and lack scalability. With the ongoing progress in computer technology, an increasing number of deep learning techniques are being employed to predict snoRNA-disease associations. Nevertheless, the majority of these methods are black-box models, lacking interpretability and the capability to elucidate the snoRNA-disease association mechanism. In this study, we introduce IGCNSDA, an innovative and interpretable graph convolutional network (GCN) approach tailored for the efficient inference of snoRNA-disease associations. IGCNSDA leverages the GCN framework to extract node feature representations of snoRNAs and diseases from the bipartite snoRNA-disease graph. SnoRNAs with high similarity are more likely to be linked to analogous diseases, and vice versa. To facilitate this process, we introduce a subgraph generation algorithm that effectively groups similar snoRNAs and their associated diseases into cohesive subgraphs. Subsequently, we aggregate information from neighboring nodes within these subgraphs, iteratively updating the embeddings of snoRNAs and diseases. The experimental results demonstrate that IGCNSDA outperforms the most recent, highly relevant methods. Additionally, our interpretability analysis provides compelling evidence that IGCNSDA adeptly captures the underlying similarity between snoRNAs and diseases, thus affording researchers enhanced insights into the snoRNA-disease association mechanism. Furthermore, we present illustrative case studies that demonstrate the utility of IGCNSDA as a valuable tool for efficiently predicting potential snoRNA-disease associations. The dataset and source code for IGCNSDA are openly accessible at: https://github.com/altriavin/IGCNSDA.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11033953PMC
http://dx.doi.org/10.1093/bib/bbae179DOI Listing

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