An innovative model for predicting coronary heart disease using TyG-index: A machine learning-based cohort study
Seyed Reza Mirjalili,
Sepideh Soltani,
Zahra HeidaryMeibodi
et al.
Abstract:Background
Various coronary heart disease (CHD) predictive models have been developed for predicting CHD incidence, but none of them has optimal predictive value. Although these models consider diabetes as an important CHD risk factor, they did not consider insulin resistance or Triglyceride.
Methods
Two-thousand participants of a community-based Iranian population, aged 20–74 years, were investigated with a mean follow-up of 9.9 years (range: 7.6 to 12.2). The association between TyG-index (a logarithmised … Show more
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