Discovering comorbid diseases using an inter-disease interactivity network based on biobank-scale PheWAS data

  • Yonghyun Nam
  • , Sang Hyuk Jung
  • , Jae Seung Yun
  • , Vivek Sriram
  • , Pankhuri Singhal
  • , Marta Byrska-Bishop
  • , Anurag Verma
  • , Hyunjung Shin
  • , Woong Yang Park
  • , Hong Hee Won
  • , Dokyoon Kim

Research output: Contribution to journalArticlepeer-review

11 Scopus citations

Abstract

Motivation: Understanding comorbidity is essential for disease prevention, treatment and prognosis. In particular, insight into which pairs of diseases are likely or unlikely to co-occur may help elucidate the potential relationships between complex diseases. Here, we introduce the use of an inter-disease interactivity network to discover/prioritize comorbidities. Specifically, we determine disease associations by accounting for the direction of effects of genetic components shared between diseases, and categorize those associations as synergistic or antagonistic. We further develop a comorbidity scoring algorithm to predict whether diseases are more or less likely to co-occur in the presence of a given index disease. This algorithm can handle networks that incorporate relationships with opposite signs. Results: We finally investigate inter-disease associations among 427 phenotypes in UK Biobank PheWAS data and predict the priority of comorbid diseases. The predicted comorbidities were verified using the UK Biobank inpatient electronic health records. Our findings demonstrate that considering the interaction of phenotype associations might be helpful in better predicting comorbidity.

Original languageEnglish
Article numberbtac822
JournalBioinformatics
Volume39
Issue number1
DOIs
StatePublished - 1 Jan 2023

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