AI Article Synopsis

  • Resting ECG is an effective, non-invasive method for evaluating heart electrical activity, with abnormalities linked to clinical biomarkers that may indicate early disease stages, particularly coronary artery disease (CAD).
  • The study analyzed 12-lead ECG data from over 13,000 participants and identified significant associations between ECG traits (like RR, QTc) and various clinical biomarkers, revealing risk factors for conditions like type 2 diabetes and CAD.
  • Machine learning models outperformed traditional regression methods in predicting CAD risk, achieving an impressive area under the curve of 0.84, indicating strong predictive accuracy, with a high odds ratio indicating a significant increase in CAD risk in the top scoring decile.

Article Abstract

Background: Resting electrocardiogram (ECG) is a valuable non-invasive diagnostic tool used in clinical medicine to assess the electrical activity of the heart while the patient is resting. Abnormalities in ECG may be associated with clinical biomarkers and can predict early stages of diseases. In this study, we evaluated the association between ECG traits, clinical biomarkers, and diseases and developed risk scores to predict the risk of developing coronary artery disease (CAD) in the Qatar Biobank.

Methods: This study used 12-lead ECG data from 13,827 participants. The ECG traits used for association analysis were RR, PR, QRS, QTc, PW, and JT. Association analysis using regression models was conducted between ECG variables and serum electrolytes, sugars, lipids, blood pressure (BP), blood and inflammatory biomarkers, and diseases (e.g., type 2 diabetes, CAD, and stroke). ECG-based and clinical risk scores were developed, and their performance was assessed to predict CAD. Classical regression and machine-learning models were used for risk score development.

Results: Significant associations were observed with ECG traits. RR showed the largest number of associations: e.g., positive associations with bicarbonate, chloride, HDL-C, and monocytes, and negative associations with glucose, insulin, neutrophil, calcium, and risk of T2D. QRS was positively associated with phosphorus, bicarbonate, and risk of CAD. Elevated QTc was observed in CAD patients, whereas decreased QTc was correlated with decreased levels of calcium and potassium. Risk scores developed using regression models were outperformed by machine-learning models. The area under the receiver operating curve reached 0.84 using a machine-learning model that contains ECG traits, sugars, lipids, serum electrolytes, and cardiovascular disease risk factors. The odds ratio for the top decile of CAD risk score compared to the remaining deciles was 13.99.

Conclusions: ECG abnormalities were associated with serum electrolytes, sugars, lipids, and blood and inflammatory biomarkers. These abnormalities were also observed in T2D and CAD patients. Risk scores showed great predictive performance in predicting CAD.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10779868PMC
http://dx.doi.org/10.3390/jcm13010276DOI Listing

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