Linking glycemic dysregulation in diabetes to symptoms, comorbidities, and genetics through EHR data mining

Isa Kristina Kirk, Christian Simon, Karina Banasik, Peter Christoffer Holm, Amalie Dahl Haue, Peter Bjødstrup Jensen, Lars Juhl Jensen, Cristina Leal Rodríguez, Mette Krogh Pedersen, Robert Eriksson, Henrik Ullits Andersen, Thomas Almdal, Jette Bork-Jensen, Niels Grarup, Knut Borch-Johnsen, Oluf Pedersen, Flemming Pociot, Torben Hansen, Regine Bergholdt, Peter Rossing*Søren Brunak

*Corresponding author for this work

Research output: Contribution to journalJournal articleResearchpeer-review

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Abstract

Diabetes is a diverse and complex disease, with considerable variation in phenotypic manifestation and severity. This variation hampers the study of etiological differences and reduces the statistical power of analyses of associations to genetics, treatment outcomes, and complications. We address these issues through deep, fine-grained phenotypic stratification of a diabetes cohort. Text mining the electronic health records of 14,017 patients, we matched two controlled vocabularies (ICD-10 and a custom vocabulary developed at the clinical center Steno Diabetes Center Copenhagen) to clinical narratives spanning a 19 year period. The two matched vocabularies comprise over 20,000 medical terms describing symptoms, other diagnoses, and lifestyle factors. The cohort is genetically homogeneous (Caucasian diabetes patients from Denmark) so the resulting stratification is not driven by ethnic differences, but rather by inherently dissimilar progression patterns and lifestyle related risk factors. Using unsupervised Markov clustering, we defined 71 clusters of at least 50 individuals within the diabetes spectrum. The clusters display both distinct and shared longitudinal glycemic dysregulation patterns, temporal co-occurrences of comorbidities, and associations to single nucleotide polymorphisms in or near genes relevant for diabetes comorbidities.

Original languageEnglish
Article numbere44941
JournaleLife
Volume8
Number of pages19
ISSN2050-084X
DOIs
Publication statusPublished - 10. Dec 2019

Keywords

  • comorbidities
  • computational biology
  • diabetes
  • diabetes subtypes
  • EHR
  • epidemiology
  • genotyping
  • global health
  • human
  • systems biology
  • text mining

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