QMAIDec 31, 2016

Learning Weighted Association Rules in Human Phenotype Ontology

arXiv:1701.00077v12 citations
Originality Incremental advance
AI Analysis

This work addresses a bioinformatics challenge for improving disease annotation analysis, but it is incremental as it builds on existing association rule methods.

The paper tackled the problem of generating low-information-content association rules in the Human Phenotype Ontology by introducing HPO-Miner, a methodology for extracting weighted association rules, which demonstrated effectiveness in a case study on public datasets.

The Human Phenotype Ontology (HPO) is a structured repository of concepts (HPO Terms) that are associated to one or more diseases. The process of association is referred to as annotation. The relevance and the specificity of both HPO terms and annotations are evaluated by a measure defined as Information Content (IC). The analysis of annotated data is thus an important challenge for bioinformatics. There exist different approaches of analysis. From those, the use of Association Rules (AR) may provide useful knowledge, and it has been used in some applications, e.g. improving the quality of annotations. Nevertheless classical association rules algorithms do not take into account the source of annotation nor the importance yielding to the generation of candidate rules with low IC. This paper presents HPO-Miner (Human Phenotype Ontology-based Weighted Association Rules) a methodology for extracting Weighted Association Rules. HPO-Miner can extract relevant rules from a biological point of view. A case study on using of HPO-Miner on publicly available HPO annotation datasets is used to demonstrate the effectiveness of our methodology.

Foundations

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