AI Article Synopsis

  • * It highlights the importance of combining similarity scores of gene ontology terms to identify candidate genes, utilizing machine learning for classification and network analysis.
  • * The study validates its findings through a case study on glomerular diseases, focusing on specific tissues and their gene expression patterns.

Article Abstract

The results of gene expression analysis based on -value can be extracted and sorted by their absolute statistical significance and then applied to multiple similarity scores of their gene ontology (GO) terms to promote the combination and adjustment of these scores as essential predictive tasks for understanding biological/clinical pathways. The latter allows the possibility to assess whether certain aspects of gene function may be associated with other varieties of genes, to evaluate regulation, and to link them into networks that prioritize candidate genes for classification by applying machine learning techniques. We then detect significant genetic interactions based on our algorithm to validate the results. Finally, based on specifically selected tissues according to their normalized gene expression and frequencies of occurrence from their different biological and clinical inputs, a reported classification of genes under the subject category has validated the abstract (glomerular diseases) as a case study.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10603191PMC
http://dx.doi.org/10.3389/fgene.2023.1215232DOI Listing

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