Hsiang-Ju Cheng MD, MS, Chung-Yi Li PhD, Cheng-Yu Lin MD, PhD
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The performance of risk scores was assessed by area under the receiver operating characteristic curves (AUCs). In BLRM, body mass index (BMI) ≥27 kg/m<sup>2</sup>, and Snore Outcomes Survey score ≤55 were significant predictors of severe OSA (AUC 0.623). In DTM, mean SpO<sub>2</sub> <96%, average systolic BP ≥135 mmHg, and BMI ≥39 kg/m<sup>2</sup> were observed to effectively differentiate cases of severe OSA (AUC 0.718). The AUC for the predictive models produced by the DTM was higher in older adults than in younger adults (0.807 vs. 0.723) mainly due to differences in clinical predictive features. In conclusion, DTM, using a different set of predictors, seems more effective in identifying severe OSA than BLRM. 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引用次数: 0
摘要
很少有研究采用客观血压(BP)来构建严重阻塞性睡眠呼吸暂停(OSA)的预测模型。本研究采用二元逻辑回归模型(BLRM)和决策树方法(DTM)构建了识别重度 OSA 的预测模型,并比较了两种方法的预测能力。研究共纳入了2016年10月至2019年4月期间在台湾南部一家三甲医院睡眠医学中心接受检查的499名重度OSA成人患者和1421名非重度OSA对照者。OSA 是通过多导睡眠图诊断出来的。收集了血压、人口统计学特征、人体测量、合并症病史和睡眠问卷调查等数据。分别应用 BLRM 和 DTM 来识别严重 OSA 的预测因素。风险评分的性能通过接收者工作特征曲线下面积(AUC)进行评估。在BLRM中,体重指数(BMI)≥27 kg/m2和鼾症结果调查评分≤55分是严重OSA的重要预测指标(AUC为0.623)。在 DTM 中,观察到平均 SpO2 2 能有效区分严重 OSA 病例(AUC 0.718)。DTM 预测模型的 AUC 在老年人中高于年轻人(0.807 对 0.723),这主要是由于临床预测特征的不同。总之,与 BLRM 相比,DTM 使用一组不同的预测因子,在识别严重 OSA 方面似乎更有效。所确定的预测因子的差异表明,有必要为年轻人和老年人分别构建预测模型。
Inclusion of blood pressure parameter increases predictive capability of severe obstructive sleep apnea: A decision tree approach
Few studies included objective blood pressure (BP) to construct the predictive model of severe obstructive sleep apnea (OSA). This study used binary logistic regression model (BLRM) and the decision tree method (DTM) to constructed the predictive models for identifying severe OSA, and to compare the prediction capability between the two methods. Totally 499 adult patients with severe OSA and 1421 non-severe OSA controls examined at the Sleep Medicine Center of a tertiary hospital in southern Taiwan between October 2016 and April 2019 were enrolled. OSA was diagnosed through polysomnography. Data on BP, demographic characteristics, anthropometric measurements, comorbidity histories, and sleep questionnaires were collected. BLRM and DTM were separately applied to identify predictors of severe OSA. The performance of risk scores was assessed by area under the receiver operating characteristic curves (AUCs). In BLRM, body mass index (BMI) ≥27 kg/m2, and Snore Outcomes Survey score ≤55 were significant predictors of severe OSA (AUC 0.623). In DTM, mean SpO2 <96%, average systolic BP ≥135 mmHg, and BMI ≥39 kg/m2 were observed to effectively differentiate cases of severe OSA (AUC 0.718). The AUC for the predictive models produced by the DTM was higher in older adults than in younger adults (0.807 vs. 0.723) mainly due to differences in clinical predictive features. In conclusion, DTM, using a different set of predictors, seems more effective in identifying severe OSA than BLRM. Differences in predictors ascertained demonstrated the necessity for separately constructing predictive models for younger and older adults.
期刊介绍:
The Journal of Clinical Hypertension is a peer-reviewed, monthly publication that serves internists, cardiologists, nephrologists, endocrinologists, hypertension specialists, primary care practitioners, pharmacists and all professionals interested in hypertension by providing objective, up-to-date information and practical recommendations on the full range of clinical aspects of hypertension. Commentaries and columns by experts in the field provide further insights into our original research articles as well as on major articles published elsewhere. Major guidelines for the management of hypertension are also an important feature of the Journal. Through its partnership with the World Hypertension League, JCH will include a new focus on hypertension and public health, including major policy issues, that features research and reviews related to disease characteristics and management at the population level.