An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study
Mirjalili SR, Soltani S, Heidari Meybodi Z, Marques-Vidal P, Krämer A, Sarebanhassanabadi M (2023)
Cardiovascular Diabetology 22(1): 200.
Zeitschriftenaufsatz
| Veröffentlicht | Englisch
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Autor*in
Mirjalili, Seyed Reza;
Soltani, Sepideh;
Heidari Meybodi, Zahra;
Marques-Vidal, Pedro;
Krämer, AlexanderUniBi ;
Sarebanhassanabadi, Mohammadtaghi
Einrichtung
Abstract / Bemerkung
BACKGROUND: Various predictive models have been developed for predicting the incidence of coronary heart disease (CHD), but none of them has had optimal predictive value. Although these models consider diabetes as an important CHD risk factor, they do not consider insulin resistance or triglyceride (TG). The unsatisfactory performance of these prediction models may be attributed to the ignoring of these factors despite their proven effects on CHD. We decided to modify standard CHD predictive models through machine learning to determine whether the triglyceride-glucose index (TyG-index, a logarithmized combination of fasting blood sugar (FBS) and TG that demonstrates insulin resistance) functions better than diabetes as a CHD predictor.; METHODS: Two-thousand participants of a community-based Iranian population, aged 20-74years, were investigated with a mean follow-up of 9.9years (range: 7.6-12.2). The association between the TyG-index and CHD was investigated using multivariate Cox proportional hazard models. By selecting common components of previously validated CHD risk scores, we developed machine learning models for predicting CHD. The TyG-index was substituted for diabetes in CHD prediction models. All components of machine learning models were explained in terms of how they affect CHD prediction. CHD-predicting TyG-index cut-off points were calculated.; RESULTS: The incidence of CHD was 14.5%. Compared to the lowest quartile of the TyG-index, the fourth quartile had a fully adjusted hazard ratio of 2.32 (confidence interval [CI] 1.16-4.68, p-trend 0.04). A TyG-index>8.42 had the highest negative predictive value for CHD. The TyG-index-based support vector machine (SVM) performed significantly better than diabetes-based SVM for predicting CHD. The TyG-index was not only more important than diabetes in predicting CHD; it was the most important factor after age in machine learning models.; CONCLUSION: We recommend using the TyG-index in clinical practice and predictive models to identify individuals at risk of developing CHD and to aid in its prevention. © 2023. BioMed Central Ltd., part of Springer Nature.
Erscheinungsjahr
2023
Zeitschriftentitel
Cardiovascular Diabetology
Band
22
Ausgabe
1
Art.-Nr.
200
eISSN
1475-2840
Page URI
https://pub.uni-bielefeld.de/record/2981620
Zitieren
Mirjalili SR, Soltani S, Heidari Meybodi Z, Marques-Vidal P, Krämer A, Sarebanhassanabadi M. An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study. Cardiovascular Diabetology. 2023;22(1): 200.
Mirjalili, S. R., Soltani, S., Heidari Meybodi, Z., Marques-Vidal, P., Krämer, A., & Sarebanhassanabadi, M. (2023). An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study. Cardiovascular Diabetology, 22(1), 200. https://doi.org/10.1186/s12933-023-01939-9
Mirjalili, Seyed Reza, Soltani, Sepideh, Heidari Meybodi, Zahra, Marques-Vidal, Pedro, Krämer, Alexander, and Sarebanhassanabadi, Mohammadtaghi. 2023. “An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study”. Cardiovascular Diabetology 22 (1): 200.
Mirjalili, S. R., Soltani, S., Heidari Meybodi, Z., Marques-Vidal, P., Krämer, A., and Sarebanhassanabadi, M. (2023). An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study. Cardiovascular Diabetology 22:200.
Mirjalili, S.R., et al., 2023. An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study. Cardiovascular Diabetology, 22(1): 200.
S.R. Mirjalili, et al., “An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study”, Cardiovascular Diabetology, vol. 22, 2023, : 200.
Mirjalili, S.R., Soltani, S., Heidari Meybodi, Z., Marques-Vidal, P., Krämer, A., Sarebanhassanabadi, M.: An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study. Cardiovascular Diabetology. 22, : 200 (2023).
Mirjalili, Seyed Reza, Soltani, Sepideh, Heidari Meybodi, Zahra, Marques-Vidal, Pedro, Krämer, Alexander, and Sarebanhassanabadi, Mohammadtaghi. “An innovative model for predicting coronary heart disease using triglyceride-glucose index: a machine learning-based cohort study”. Cardiovascular Diabetology 22.1 (2023): 200.
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