Metabolomic and microbiome profiling reveals personalized risk factors for coronary artery disease.
Yeela Talmor-BarkanNoam BarAviv A ShaulNir ShahafAnastasia GodnevaYuval BussiMaya Lotan-PompanAdina WeinbergerAlon ShechterChava Chezar-AzerradZiad ArowYoav HammerKanta ChechiSofia Kirke Forslund-StartcevaSebastien FromentinMarc Emmanuel DumasS Dusko EhrlichOluf PedersenRan KornowskiEran SegalPublished in: Nature medicine (2022)
Complex diseases, such as coronary artery disease (CAD), are often multifactorial, caused by multiple underlying pathological mechanisms. Here, to study the multifactorial nature of CAD, we performed comprehensive clinical and multi-omic profiling, including serum metabolomics and gut microbiome data, for 199 patients with acute coronary syndrome (ACS) recruited from two major Israeli hospitals, and validated these results in a geographically distinct cohort. ACS patients had distinct serum metabolome and gut microbial signatures as compared with control individuals, and were depleted in a previously unknown bacterial species of the Clostridiaceae family. This bacterial species was associated with levels of multiple circulating metabolites in control individuals, several of which have previously been linked to an increased risk of CAD. Metabolic deviations in ACS patients were found to be person specific with respect to their potential genetic or environmental origin, and to correlate with clinical parameters and cardiovascular outcomes. Moreover, metabolic aberrations in ACS patients linked to microbiome and diet were also observed to a lesser extent in control individuals with metabolic impairment, suggesting the involvement of these aberrations in earlier dysmetabolic phases preceding clinically overt CAD. Finally, a metabolomics-based model of body mass index (BMI) trained on the non-ACS cohort predicted higher-than-actual BMI when applied to ACS patients, and the excess BMI predictions independently correlated with both diabetes mellitus (DM) and CAD severity, as defined by the number of vessels involved. These results highlight the utility of the serum metabolome in understanding the basis of risk-factor heterogeneity in CAD.
Keyphrases
- coronary artery disease
- body mass index
- end stage renal disease
- acute coronary syndrome
- chronic kidney disease
- ejection fraction
- prognostic factors
- percutaneous coronary intervention
- risk factors
- machine learning
- cardiovascular events
- mass spectrometry
- coronary artery bypass grafting
- patient reported outcomes
- artificial intelligence
- atrial fibrillation