Journal of Clinical Medicine (Aug 2023)

Development of a Cardiovascular Disease Risk Prediction Model: A Preliminary Retrospective Cohort Study of a Patient Sample in Saudi Arabia

  • Khaled Alabduljabbar,
  • Mohammed Alkhalifah,
  • Abdulaziz Aldheshe,
  • Abdulelah Bin Shihah,
  • Ahmed Abu-Zaid,
  • Edward B. DeVol,
  • Norah Albedah,
  • Haifa Aldakhil,
  • Balqees Alzayed,
  • Ahmed Mahmoud,
  • Abdullah Alkhenizan

DOI
https://doi.org/10.3390/jcm12155115
Journal volume & issue
Vol. 12, no. 15
p. 5115

Abstract

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Saudi Arabia has an alarmingly high incidence of cardiovascular disease (CVD) and its associated risk factors. To effectively assess CVD risk, it is essential to develop tailored models for diverse regions and ethnicities using local population variables. No CVD risk prediction model has been locally developed. This study aims to develop the first 10-year CVD risk prediction model for Saudi adults aged 18 to 75 years. The electronic health records of Saudi male and female patients aged 18 to 75 years, who were seen in primary care settings between 2002 and 2019, were reviewed retrospectively via the Integrated Clinical Information System (ICIS) database (from January 2002 to February 2019). The Cox regression model was used to identify the risk factors and develop the CVD risk prediction model. Overall, 451 patients were included in this study, with a mean follow-up of 12.05 years. Thirty-five (7.7%) patients developed a CVD event. The following risk factors were included: fasting blood sugar (FBS) and high-density lipoprotein cholesterol (HDL-c), heart failure, antihyperlipidemic therapy, antithrombotic therapy, and antihypertension therapy. The Bayesian information criterion (BIC) score was 314.4. This is the first prediction model developed in Saudi Arabia and the second in any Arab country after the Omani study. We assume that our CVD predication model will have the potential to be used widely after the validation study.

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