Development and Validation of a Risk Prediction Model to Estimate the Risk of Stroke Among Hypertensive Patients in University of Gondar Comprehensive Specialized Hospital, Gondar, 2012 to 2022.

IF 2.1 Q3 CLINICAL NEUROLOGY Degenerative neurological and neuromuscular disease Pub Date : 2023-12-14 eCollection Date: 2023-01-01 DOI:10.2147/DNND.S435806
Yazachew Moges Chekol, Mehari Woldemariam Merid, Getayeneh Antehunegn Tesema, Tigabu Kidie Tesfie, Tsion Mulat Tebeje, Negalegn Byadgie Gelaw, Nebiyu Bekele Gebi, Wullo Sisay Seretew
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Abstract

Background: A risk prediction model to predict the risk of stroke has been developed for hypertensive patients. However, the discriminating power is poor, and the predictors are not easily accessible in low-income countries. Therefore, developing a validated risk prediction model to estimate the risk of stroke could help physicians to choose optimal treatment and precisely estimate the risk of stroke.

Objective: This study aims to develop and validate a risk prediction model to estimate the risk of stroke among hypertensive patients at the University of Gondar Comprehensive Specialized Hospital.

Methods: A retrospective follow-up study was conducted among 743 hypertensive patients between September 01/2012 and January 31/2022. The participants were selected using a simple random sampling technique. Model performance was evaluated using discrimination, calibration, and Brier scores. Internal validity and clinical utility were evaluated using bootstrapping and a decision curve analysis.

Results: Incidence of stroke was 31.4 per 1000 person-years (95% CI: 26.0, 37.7). Combinations of six predictors were selected for model development (sex, residence, baseline diastolic blood pressure, comorbidity, diabetes, and uncontrolled hypertension). In multivariable logistic regression, the discriminatory power of the model was 0.973 (95% CI: 0.959, 0.987). Calibration plot illustrated an overlap between the probabilities of the predicted and actual observed risks after 10,000 times bootstrap re-sampling, with a sensitivity of 92.79%, specificity 93.51%, and accuracy of 93.41%. The decision curve analysis demonstrated that the net benefit of the model was better than other intervention strategies, starting from the initial point.

Conclusion: An internally validated, accurate prediction model was developed and visualized in a nomogram. The model is then changed to an offline mobile web-based application to facilitate clinical applicability. The authors recommend that other researchers eternally validate the model.

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开发和验证风险预测模型,以估算贡德尔大学综合专科医院高血压患者的中风风险,2012-2022 年。
背景:针对高血压患者开发了一种预测中风风险的风险预测模型。然而,该模型的判别能力较差,而且在低收入国家不易获得预测指标。因此,开发一个经过验证的风险预测模型来估计中风风险,可帮助医生选择最佳治疗方法并精确估计中风风险:本研究旨在开发并验证一个风险预测模型,以估计贡德尔大学综合专科医院高血压患者的中风风险:在 2012 年 9 月 1 日至 2022 年 1 月 31 日期间,对 743 名高血压患者进行了回顾性随访研究。研究人员采用简单随机抽样技术选出。使用辨别度、校准度和布赖尔评分对模型性能进行评估。采用引导法和决策曲线分析评估了内部有效性和临床实用性:结果:中风发病率为每千人年 31.4 例(95% CI:26.0,37.7)。建立模型时选择了六个预测因素的组合(性别、居住地、基线舒张压、合并症、糖尿病和未控制的高血压)。在多变量逻辑回归中,模型的判别能力为 0.973(95% CI:0.959,0.987)。校准图显示,经过 10,000 次引导重采样后,预测风险概率与实际观察风险概率重叠,灵敏度为 92.79%,特异度为 93.51%,准确度为 93.41%。决策曲线分析表明,从初始点开始,该模型的净效益优于其他干预策略:结论:我们开发了一个经过内部验证的准确预测模型,并将其可视化为一个提名图。随后,该模型被转换为离线移动网络应用程序,以方便临床应用。作者建议其他研究人员对该模型进行永恒验证。
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