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Prediction of difficult tracheal intubation: Time for a paradigm change

机译:困难气管插管的预测:改变范例的时间

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Background: It has been suggested that predicting difficult tracheal intubation is useless because of the poor predictive capacity of individual signs and scores. The authors tested the hypothesis that an accurate prediction of difficult tracheal intubation using simple clinical signs is possible using a computer-assist model. Methods: In a cohort of 1,655 patients, the authors analyzed the predictive properties of each of the main signs (Mallampati score, mouth opening, thyromental distance, and body mass index) to predict difficult tracheal intubation. They built the best score possible using a simple logistic model (SCOREClinic) and compared it with the more recently described score in the literature (SCORENaguib). Then they used a boosted tree analysis to build the best score possible using computer-assisted calculation (SCOREComputer). Results : Difficult tracheal intubation occurred in 101 patients (6.1%). The predictive properties of each sign remain low (maximum area under the receiver operating characteristic curve 0.70). Using receiver operating characteristic curve, the global prediction of the SCORE Clinic (0.74, 95% CI: 0.72-0.76) was greater than that of the SCORENaguib (0.66, 95% CI: 0.60-0.72, P 0.001) but significantly lower than that of the SCOREComputer (0.86, 95% CI: 0.84-0.91, P 0.001). The proportion of patients in the inconclusive zone was 71% using SCORENaguib, 56% using SCOREClinic, and only 32 % using SCOREComputer (all P 0.001). Conclusion: Computer-assisted models using complex interaction between variables enable an accurate prediction of difficult tracheal intubation with a low proportion of patients in the inconclusive zone. An external validation of the model is now required.
机译:背景:由于个体体征和评分的预测能力较差,因此预测困难的气管插管毫无用处。作者检验了以下假设:使用计算机辅助模型可以使用简单的临床体征准确预测困难的气管插管。方法:在一个1,655名患者的队列中,作者分析了每个主要体征(Mallampati评分,张口,胸膜距离和体重指数)的预测特征,以预测困难的气管插管。他们使用简单的逻辑模型(SCOREClinic)建立了最高分数,并将其与文献中最近描述的分数(SCORENaguib)进行了比较。然后,他们使用增强树分析通过计算机辅助计算(SCOREComputer)建立最佳分数。结果:101例患者发生气管插管困难(6.1%)。每个符号的预测特性保持较低(接收器工作特性曲线下方的最大面积为0.70)。使用接收器工作特征曲线,SCORE诊所的整体预测(0.74,95%CI:0.72-0.76)大于SCORENaguib(0.66,95%CI:0.60-0.72,P <0.001),但远低于SCOREComputer的数据(0.86,95%CI:0.84-0.91,P <0.001)。使用SCORENaguib,在不确定区的患者比例为71%,使用SCOREClinic为56%,使用SCOREComputer只有32%(所有P <0.001)。结论:使用变量之间复杂交互作用的计算机辅助模型可以准确预测困难气管插管,不确定区域的患者比例较低。现在需要模型的外部验证。

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