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. 2024 Nov;38(11):1024-1030;1037.
doi: 10.13201/j.issn.2096-7993.2024.11.006.

[Construction of OSA-related hypertension prediction model based on nomogram]

[Article in Chinese]
Affiliations

[Construction of OSA-related hypertension prediction model based on nomogram]

[Article in Chinese]
Yewen Shi et al. Lin Chuang Er Bi Yan Hou Tou Jing Wai Ke Za Zhi. 2024 Nov.

Abstract

Objective:This study aimed to construct a risk prediction model for obstructive sleep apnea(OSA) related hypertension based on the nomogram, and to explore the independent risk factors for OSA-related hypertension, so as to provide reference for clinical treatment decision-making. Methods:The clinical data of OSA patients diagnosed by polysomnography from October 2019 to December 2021 were collected retrospectively and randomly divided into training sets and validation sets. A total of 1 493 OSA patients with 27 variables were included. The least absolute shrinkage and selection operator(Lasso) logistic regression model was used to select potentially relevant features and establish a nomogram for OSA-related hypertension.The performance and clinical benefits of this nomogram were verified in terms of discrimination, calibration ability and clinical net benefit. Results:Multivariate logistic regression showed that body mass index(BMI), family history of hypertension, lowest oxygen saturation(LSaO2), age and cumulative percentage of total sleep time with oxygen saturation below 90% were independent risk factors for OSA-related hypertension. Lasso logistic regression identified BMI, family history of hypertension, LSaO2 and age as predictive factors for inclusion in the nomogram. The nomogram provided a favorable discrimination, with a C-indexes of 0.835(95% confidence interval[CI ]0.806-0.863) 0.865(95%CI 0.829-0.900) for the training and validation cohort, respectively, and well calibrated. The clinical decision curve analysis displayed that the nomogram was clinically useful. Conclusion:Compared with cumulative percentage of total sleep time with blood oxygen saturation below 90%, LSaO2 may have a greater impact on the incidence of OSA-related hypertension, and the effects of different times and degrees of hypoxia on OSA-related hypertension should be further explored in the future. Apnea hypopnea index involvement is weak in predicting OSA-related hypertension, and the blood oxygen index may be a better predictor variable. Furthermore, we established a risk prediction model for OSA-related hypertension patients using nomogram, and demonstrated that this prediction model was helpful to identify high-risk OSA-related hypertension patients. This model can provide early and individualized diagnosis and treatment plans, protect patients from the serious.

目的:本研究旨在基于列线图方法构建阻塞性睡眠呼吸暂停(obstructive sleep apnea,OSA)相关高血压的风险预测模型,并探讨OSA相关高血压的独立危险因素,为临床治疗决策提供帮助与参考。 方法:本研究回顾性收集2019年10月至2021年12月经多导睡眠监测诊断为OSA患者的临床资料,并将其随机分为训练队列和验证队列。共纳入1 493例OSA患者,及27个变量。最小绝对收缩和选择算子(the least absolute shrinkage and selection operator,Lasso)logistic回归用于选择潜在的相关特征,建立OSA相关高血压的列线图。从区分度、校准能力和临床净收益等方面验证列线图的性能和临床效益。 结果:多因素logistic回归发现身体质量指数(body mass index,BMI)、高血压家族史、最低血氧饱和度(lowest oxygen saturation,LSaO2)、年龄及血氧饱和度小于90%的总睡眠时间百分比是OSA相关高血压的独立危险因素。Lasso logistic回归确定BMI、高血压家族史、LSaO2及年龄作为纳入列线图的预测因素。列线图提供了有利的区分,训练队列和验证队列的C指数分别为0.835(95%CI 0.806~0.863)和0.865(95%CI 0.829~0.900),并且校准良好。临床决策曲线显示列线图在临床上有用。 结论:较血氧饱和度小于90%的总睡眠时间百分比,LSaO2对OSA相关高血压发病的影响可能更大,未来应进一步探讨不同缺氧时间与不同缺氧程度对OSA相关高血压的影响。在OSA相关高血压的预测中,呼吸暂停低通气指数参与度较弱,血氧指标可能会是一个更好的预测变量。此外,本研究使用列线图方法建立了OSA相关高血压患者的风险预测模型,证明了该预测模型有助于识别OSA相关高血压的高危患者。该模型有助于提供早期的、个体化的诊断和治疗方案,保护患者免受OSA相关高血压的严重后果,最大限度地减轻社会负担。.

Keywords: hypertension; nomogram; obstructive sleep apnea; risk factor.

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Conflict of interest statement

The authors of this article and the planning committee members and staff have no relevant financial relationships with commercial interests to disclose.

Figures

图 1
图 1
入组流程图
图 2
图 2
lasso进行特征筛选的过程
图 3
图 3
OSA相关高血压的列线图
图 4
图 4
校准曲线
图 5
图 5
临床决策曲线

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