Risk Assessment Score and Chi-Square Automatic Interaction Detection Algorithm for Hypertension among Africans: Models from the SIREN Study

  • Osahon J. Asowata
  • , Akinkunmi Paul Okekunle
  • , Onoja M. Akpa
  • , Adekunle Gregory Fakunle
  • , Joshua O. Akinyemi
  • , Morenikeji Adeyoyin Komolafe
  • , Fred Stephen Sarfo
  • , Albert K. Akpalu
  • , Reginald Obiako
  • , Kolawole W. Wahab
  • , Godwin O. Osaigbovo(osawaru)
  • , Lukman F. Owolabi
  • , Carolyn M. Jenkins
  • , Benedict Nii Laryea Calys-Tagoe
  • , Oyedunni Sola Arulogun
  • , Godwin I. Ogbole
  • , Okechukwu Samuel Ogah
  • , Appiah T. Lambert
  • , Philip Oluleke Ibinaiye
  • , Philip B. Adebayo
  • Arti Singh, Sunday Adebori Adeniyi, Yaw B. Mensah, Ruth Y. Laryea, Olayemi Balogun, Innocent Ijezie Chukwuonye, Rufus O. Akinyemi, Bruce Ovbiagele, Mayowa Ojo Owolabi

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)

Abstract

BACKGROUND: This study aimed to develop a risk-scoring model for hypertension among Africans. METHODS: In this study, 4413 stroke-free controls were used to develop the risk-scoring model for hypertension. Logistic regression models were applied to 13 risk factors. We randomly split the dataset into training and testing data at a ratio of 80:20. Constant and standardized weights were assigned to factors significantly associated with hypertension in the regression model to develop a probability risk score on a scale of 0 to 1 using a logistic regression model. The model accuracy was assessed to estimate the cutoff score for discriminating hypertensives. RESULTS: Mean age was 59.9±13.3 years, 56.0% were hypertensives, and 8 factors, including diabetes, age ≥65 years, higher waist circumference, (BMI) ≥30 kg/m2, lack of formal education, living in urban residence, family history of cardiovascular diseases, and dyslipidemia use were associated with hypertension. Cohen κ was maximal at ≥0.28, and a total probability risk score of ≥0.60 was adopted for both statistical weighting for risk quantification of hypertension in both datasets. The probability risk score presented a good performance - receiver operating characteristic: 64% (95% CI, 61.0-68.0), a sensitivity of 55.1%, specificity of 71.5%, positive predicted value of 70.9%, and negative predicted value of 55.8%, in the test dataset. Similarly, decision tree had a predictive accuracy of 67.7% (95% CI, 66.1-69.3) for the training set and 64.6% (95% CI, 61.0-68.0) for the testing dataset. CONCLUSIONS: The novel risk-scoring model discriminated hypertensives with good accuracy and will be helpful in the early identification of community-based Africans vulnerable to hypertension for its primary prevention.

Original languageEnglish
Pages (from-to)2581-2590
Number of pages10
JournalHypertension
Volume80
Issue number12
DOIs
Publication statusPublished - 1 Dec 2023

Keywords

  • blood pressure
  • body mass index
  • hypertension
  • machine learning
  • risk assessment

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