4.7 Article

Identification of Comprehensive Metabotypes Associated with Cardiometabolic Diseases in the Population-Based KORA Study

Journal

MOLECULAR NUTRITION & FOOD RESEARCH
Volume 62, Issue 16, Pages -

Publisher

WILEY
DOI: 10.1002/mnfr.201800117

Keywords

cardiometabolic disease; cluster analysis; enable-Cluster; metabolic phenotype; metabotype

Funding

  1. Helmholtz Zentrum Munchen - German Research Center for Environmental Health
  2. German Federal Ministry of Education and Research (BMBF)
  3. State of Bavaria
  4. Munich Center of Health Sciences (MC-Health), Ludwig-Maximilians-Universitat, as part of LMUinnovativ
  5. Ministry of Culture and Science of the State of North Rhine-Westphalia
  6. German Federal Ministry of Health
  7. German Ministry for Education and Research (BMBF) [FK 01EA1409E]
  8. enable Cluster

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Scope: Metabotyping describes the grouping of metabolically similar individuals. We aimed to identify valid metabotypes in a large cohort for targeted dietary intervention, for example, for disease prevention. Methods and results: We grouped 1729 adults aged 32-77 years of the German population-based KORA F4 study (2006-2008) using k-means cluster analysis based on 34 biochemical and anthropometric parameters. We identified three metabolically distinct clusters showing significantly different biochemical parameter concentrations. Cardiometabolic disease status was determined at baseline in the F4 study and at the 7 year follow-up termed FF4 (2013/2014) to compare disease prevalence and incidence between clusters. Cluster 3 showed the most unfavorable marker profile with the highest prevalence of cardiometabolic diseases. Also, disease incidence was higher in cluster 3 compared to clusters 2 and 1, respectively, for hypertension (41.2%/25.3%/18.2%), type 2 diabetes (28.3%/5.1%/2.0%), hyperuricemia/gout (10.8%/2.3%/0.7%), dyslipidemia (19.2%/18.3%/5.6%), all metabolic (54.5%/36.8%/19.7%), and all cardiovascular (6.3%/5.5%/2.3%) diseases together. Conclusion: Cluster analysis based on an extensive set of biochemical and anthropometric parameters allows the identification of comprehensive metabotypes that were distinctly different in cardiometabolic disease occurrence. As a next step, targeted dietary strategies should be developed with the goal of preventing diseases, especially in cluster 3.

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