University of Ibadan, Nigeria (O.J.A., A.P.O., O.M.A, A.G.F., J.O.A., O.S.A, G.I.O., O.S.O., R.O.A., M.O.O.).
Seoul National University, Korea (A.O.).
Hypertension. 2023 Dec;80(12):2581-2590. doi: 10.1161/HYPERTENSIONAHA.122.20572. Epub 2023 Oct 13.
This study aimed to develop a risk-scoring model for hypertension among Africans.
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.
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/m, 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.
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.
本研究旨在为非洲人开发一种高血压风险评分模型。
本研究使用 4413 名无中风的对照者来开发高血压风险评分模型。应用逻辑回归模型对 13 个危险因素进行分析。我们将数据集随机分为 80:20 的训练和测试数据。将与回归模型中高血压显著相关的因素的常数和标准化权重分配给因素,以使用逻辑回归模型在 0 到 1 的范围内建立概率风险评分。评估模型的准确性以估计区分高血压患者的截止评分。
平均年龄为 59.9±13.3 岁,56.0%为高血压患者,有 8 个因素与高血压相关,包括糖尿病、年龄≥65 岁、较高的腰围、(BMI)≥30 kg/m、缺乏正规教育、居住在城市、心血管疾病家族史和血脂异常。Cohen κ 在≥0.28 时最大,两个数据集均采用总分≥0.60 的总概率风险评分来进行高血压风险量化的统计加权。在测试数据集,概率风险评分呈现出良好的表现-受试者工作特征曲线:64%(95%CI,61.0-68.0),敏感性为 55.1%,特异性为 71.5%,阳性预测值为 70.9%,阴性预测值为 55.8%。同样,决策树在训练集的预测准确性为 67.7%(95%CI,66.1-69.3),在测试集的预测准确性为 64.6%(95%CI,61.0-68.0)。
该新型风险评分模型对高血压患者具有良好的鉴别能力,有助于早期识别社区中易患高血压的非洲人,以便进行原发性预防。