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Author(s):
Vivek Sriram, Yonghyun Nam, Manu Shivakumar, Anurag Verma, Sang-Hyuk Jung, Seung Mi Lee, Dokyoon Kim
Publish date:
17 December 2021
Journal:
Journal of Personalized Medicine
PubMed ID:
34945853

Abstract

BACKGROUND: Recent studies have found that women with obstetric disorders are at increased risk for a variety of long-term complications. However, the underlying pathophysiology of these connections remains undetermined. A network-based view incorporating knowledge of other diseases and genetic associations will aid our understanding of the role of genetics in pregnancy-related disease complications.

METHODS: We built a disease-disease network (DDN) using UK Biobank (UKBB) summary data from a phenome-wide association study (PheWAS) to elaborate multiple disease associations. We also constructed egocentric DDNs, where each network focuses on a pregnancy-related disorder and its neighboring diseases. We then applied graph-based semi-supervised learning (GSSL) to translate the connections in the egocentric DDNs to pathologic knowledge.

RESULTS: A total of 26 egocentric DDNs were constructed for each pregnancy-related phenotype in the UKBB. Applying GSSL to each DDN, we obtained complication risk scores for additional phenotypes given the pregnancy-related disease of interest. Predictions were validated using co-occurrences derived from UKBB electronic health records. Our proposed method achieved an increase in average area under the receiver operating characteristic curve (AUC) by a factor of 1.35 from 55.0% to 74.4% compared to the use of the full DDN.

CONCLUSION: Egocentric DDNs hold promise as a clinical tool for the network-based identification of potential disease complications for a variety of phenotypes.

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Summary: Pregnancy complications can result in long term complications. The identification who are likely to develop these risks will help clinicians and patients to develop…

Institution:
Seoul National University, Korea (South)

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