Data-driven identification of complex disease phenotypes.

Journal: Journal of the Royal Society, Interface
Published Date:

Abstract

Disease interaction in multimorbid patients is relevant to treatment and prognosis, yet poorly understood. In the present work, we combine approaches from network science, machine learning and computational phenotyping to assess interactions between two or more diseases in a transparent way across the full diagnostic spectrum. We demonstrate that health states of hospitalized patients can be better characterized by including higher-order features capturing interactions between than two diseases. We identify a meaningful set of higher-order diagnosis features that account for synergistic disease interactions in a population-wide ( = 9 M) medical claims dataset. We construct a where (higher-order) diagnosis features are linked if they predict similar diagnoses across the whole diagnostic spectrum. The fact that specific diagnoses are generally represented multiple times in the network allows for the identification of putatively different disease phenotypes that may reflect different disease aetiologies. At the example of obesity, we demonstrate the purely data-driven detection of two complex phenotypes of obesity. As indicated by a matched comparison between patients having these phenotypes, we show that these phenotypes show specific characteristics of what has been controversially discussed in the medical literature as metabolically healthy and unhealthy obesity, respectively. The findings also suggest that metabolically healthy patients show some progression towards more unhealthy obesity over time, a finding that is consistent with longitudinal studies indicating a transient nature of metabolically healthy obesity. The disease network is available for exploration at https://disease.network/.

Authors

  • Markus J Strauss
    Complexity Science Hub Vienna, Josefstädter Straße 39, 1080 Wien, Austria.
  • Thomas Niederkrotenthaler
    Unit Suicide Research and Mental Health Promotion, Department of Social and Preventive Medicine, Center for Public Health, Medical University of Vienna, Kinderspitalgasse 15, 1090 Wien, Austria.
  • Stefan Thurner
    Complexity Science Hub Vienna, Josefstädter Straße 39, 1080 Wien, Austria.
  • Alexandra Kautzky-Willer
    Department of Endocrinology and Metabolism, Internal Medicine III, Medical University of Vienna, Spitalgasse 23, 1090 Wien, Austria.
  • Peter Klimek
    Complexity Science Hub Vienna, Josefstädter Straße 39, 1080 Wien, Austria.