Scientific Reports (Jan 2023)

Intercorrelated variability in blood and hemodynamic biomarkers reveals physiological network in hemodialysis patients

  • Yuichi Nakazato,
  • Masahiro Shimoyama,
  • Alan A. Cohen,
  • Akihisa Watanabe,
  • Hiroaki Kobayashi,
  • Hirofumi Shimoyama,
  • Hiromi Shimoyama

DOI
https://doi.org/10.1038/s41598-023-28345-1
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 13

Abstract

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Abstract Increased intra-individual variability of a variety of biomarkers is generally associated with poor health and reflects physiological dysregulation. Correlations among these biomarker variabilities should then represent interactions among heterogeneous biomarker regulatory systems. Herein, in an attempt to elucidate the network structure of physiological systems, we probed the inter-variability correlations of 22 biomarkers. Time series data on 19 blood-based and 3 hemodynamic biomarkers were collected over a one-year period for 334 hemodialysis patients, and their variabilities were evaluated by coefficients of variation. The network diagram exhibited six clusters in the physiological systems, corresponding to the regulatory domains for metabolism, inflammation, circulation, liver, salt, and protein. These domains were captured as latent factors in exploratory and confirmatory factor analyses (CFA). The 6-factor CFA model indicates that dysregulation in each of the domains manifests itself as increased variability in a specific set of biomarkers. Comparison of a diabetic and non-diabetic group within the cohort by multi-group CFA revealed that the diabetic cohort showed reduced capacities in the metabolism and salt domains and higher variabilities of the biomarkers belonging to these domains. The variability-based network analysis visualizes the concept of homeostasis and could be a valuable tool for exploring both healthy and pathological conditions.