Rare disease knowledge enrichment through a data-driven approach

BMC Med Inform Decis Mak. 2019 Feb 14;19(1):32. doi: 10.1186/s12911-019-0752-9.

Abstract

Background: Existing resources to assist the diagnosis of rare diseases are usually curated from the literature that can be limited for clinical use. It often takes substantial effort before the suspicion of a rare disease is even raised to utilize those resources. The primary goal of this study was to apply a data-driven approach to enrich existing rare disease resources by mining phenotype-disease associations from electronic medical record (EMR).

Methods: We first applied association rule mining algorithms on EMR to extract significant phenotype-disease associations and enriched existing rare disease resources (Human Phenotype Ontology and Orphanet (HPO-Orphanet)). We generated phenotype-disease bipartite graphs for HPO-Orphanet, EMR, and enriched knowledge base HPO-Orphanet + and conducted a case study on Hodgkin lymphoma to compare performance on differential diagnosis among these three graphs.

Results: We used disease-disease similarity generated by the eRAM, an existing rare disease encyclopedia, as a gold standard to compare the three graphs with sensitivity and specificity as (0.17, 0.36, 0.46) and (0.52, 0.47, 0.51) for three graphs respectively. We also compared the top 15 diseases generated by the HPO-Orphanet + graph with eRAM and another clinical diagnostic tool, the Phenomizer.

Conclusions: Per our evaluation results, our approach was able to enrich existing rare disease knowledge resources with phenotype-disease associations from EMR and thus support rare disease differential diagnosis.

Keywords: Data-driven approach; Differential diagnosis; Knowledge enrichment; Rare disease.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Algorithms*
  • Data Mining*
  • Electronic Health Records*
  • Humans
  • Knowledge Bases*
  • Phenotype
  • Rare Diseases* / diagnosis