TL;DR
This paper presents a novel positive-unlabelled learning method to identify new candidate genes related to dietary restriction among aging-related genes, improving accuracy and reducing computational costs.
Contribution
It introduces a two-step PU learning approach that reliably identifies negative examples, enhancing gene prioritization for dietary restriction research.
Findings
Outperforms existing methods in predictive accuracy (p<0.05)
Achieves up to 40% lower computational cost
Identifies 4 new promising DR-related genes with literature support
Abstract
Dietary Restriction (DR) is one of the most popular anti-ageing interventions; recently, Machine Learning (ML) has been explored to identify potential DR-related genes among ageing-related genes, aiming to minimize costly wet lab experiments needed to expand our knowledge on DR. However, to train a model from positive (DR-related) and negative (non-DR-related) examples, the existing ML approach naively labels genes without known DR relation as negative examples, assuming that lack of DR-related annotation for a gene represents evidence of absence of DR-relatedness, rather than absence of evidence. This hinders the reliability of the negative examples (non-DR-related genes) and the method's ability to identify novel DR-related genes. This work introduces a novel gene prioritisation method based on the two-step Positive-Unlabelled (PU) Learning paradigm: using a similarity-based,…
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