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STOP-Bang 等效模型与阻塞性睡眠呼吸暂停严重程度的预测:与睡眠呼吸暂停低通气指数的多导睡眠图测量的关系。

The STOP-Bang equivalent model and prediction of severity of obstructive sleep apnea: relation to polysomnographic measurements of the apnea/hypopnea index.

机构信息

Intermountain Sleep Disorders Center, LDS Hospital, Salt Lake City, UT 84143, USA.

出版信息

J Clin Sleep Med. 2011 Oct 15;7(5):459-65B. doi: 10.5664/JCSM.1306.

Abstract

BACKGROUND

Various models and questionnaires have been developed for screening specific populations for obstructive sleep apnea (OSA) as defined by the apnea/hypopnea index (AHI); however, almost every method is based upon dichotomizing a population, and none function ideally. We evaluated the possibility of using the STOP-Bang model (SBM) to classify severity of OSA into 4 categories ranging from none to severe.

METHODS

Anthropomorphic data and the presence of snoring, tiredness/sleepiness, observed apneas, and hypertension were collected from 1426 patients who underwent diagnostic polysomnography. Questionnaire data for each patient was converted to the STOP-Bang equivalent with an ordinal rating of 0 to 8. Proportional odds logistic regression analysis was conducted to predict severity of sleep apnea based upon the AHI: none (AHI < 5/h), mild (AHI ≥ 5 to < 15/h), moderate (≥ 15 to < 30/h), and severe (AHI ≥ 30/h).

RESULTS

Linear, curvilinear, and weighted models (R(2) = 0.245, 0.251, and 0.269, respectively) were developed that predicted AHI severity. The linear model showed a progressive increase in the probability of severe (4.4% to 81.9%) and progressive decrease in the probability of none (52.5% to 1.1%). The probability of mild or moderate OSA initially increased from 32.9% and 10.3% respectively (SBM score 0) to 39.3% (SBM score 2) and 31.8% (SBM score 4), after which there was a progressive decrease in probabilities as more patients fell into the severe category.

CONCLUSIONS

The STOP-Bang model may be useful to categorize OSA severity, triage patients for diagnostic evaluation or exclude from harm.

摘要

背景

已经开发出各种模型和问卷,用于根据呼吸暂停/低通气指数(AHI)筛选特定人群中的阻塞性睡眠呼吸暂停(OSA);然而,几乎每种方法都是基于将人群二分,而且没有一种方法能理想地工作。我们评估了使用 STOP-Bang 模型(SBM)将 OSA 严重程度分为 4 类(从无到严重)的可能性。

方法

从 1426 名接受诊断性多导睡眠图检查的患者中收集人体测量数据以及打鼾、疲倦/嗜睡、观察到的呼吸暂停和高血压的存在情况。每位患者的问卷数据转换为 STOP-Bang 等效值,评分范围为 0 至 8。进行比例优势逻辑回归分析,根据 AHI 预测睡眠呼吸暂停的严重程度:无(AHI<5/h)、轻度(AHI≥5 至<15/h)、中度(≥15 至<30/h)和重度(AHI≥30/h)。

结果

建立了线性、曲线和加权模型(R2 分别为 0.245、0.251 和 0.269),预测 AHI 严重程度。线性模型显示严重程度的概率逐渐增加(4.4%至 81.9%),无的概率逐渐降低(52.5%至 1.1%)。轻度或中度 OSA 的概率最初从 32.9%和 10.3%分别增加(SBM 评分为 0)至 39.3%(SBM 评分为 2)和 31.8%(SBM 评分为 4),然后随着更多患者归入严重类别,概率逐渐降低。

结论

STOP-Bang 模型可能有助于分类 OSA 严重程度,对患者进行诊断评估的分诊或排除。

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