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首页> 外文期刊>Annals of the American Thoracic Society >Cost minimization using an artificial neural network sleep apnea prediction tool for sleep studies
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Cost minimization using an artificial neural network sleep apnea prediction tool for sleep studies

机译:使用人工神经网络睡眠呼吸暂停预测工具进行成本最小化以进行睡眠研究

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Rationale: More than a million polysomnograms (PSGs) are performed annually in the United States to diagnose obstructive sleep apnea (OSA). Third-party payers now advocate a home sleep test (HST), rather than an in-laboratory PSG, as the diagnostic study for OSA regardless of clinical probability, but the economic benefit of this approach is not known. Objectives: We determined the diagnostic performance of OSA prediction tools including the newly developed OSUNet, based on an artificial neural network, and performed a cost-minimization analysis when the prediction tools are used to identify patients who should undergo HST. Methods: The OSUNet was trained to predict the presence of OSA in a derivation group of patients who underwent an in-laboratory PSG (n = 383). Validation group 1 consisted of in-laboratory PSG patients (n = 149). The network was trained further in 33 patients who underwent HST and then was validated in a separate group of 100 HST patients (validation group 2). Likelihood ratios (LRs) were compared with two previously published prediction tools. The total costs from the use of the three prediction tools and the third-party approach within a clinical algorithm were compared. Measurements and Main Results: The OSUNet had a higher 1LR in all groups compared with the STOP-BANG and the modified neck circumference (MNC) prediction tools. The 1LRs for STOP-BANG, MNC, and OSUNet in validation group 1 were 1.1 (1.0-1.2), 1.3 (1.1- 1.5), and 2.1 (1.4-3.1); and in validation group 2 they were 1.4 (1.1-1.7), 1.7 (1.3- 2.2), and 3.4 (1.8-6.1), respectively. With an OSA prevalence less than 52%, the use of all three clinical prediction tools resulted in cost savings compared with the third-party approach. Conclusions: The routine requirement of an HST to diagnose OSA regardless of clinical probability is more costly compared with the use of OSA clinical prediction tools that identify patients who should undergo this procedure when OSA is expected to be present in less than half of the population. With OSA prevalence less than 40%, the OSUNet offers the greatest savings, which are substantial when the number of sleep studies done annually is considered.
机译:基本原理:在美国,每年进行超过一百万次的多导睡眠图(PSG)诊断阻塞性睡眠呼吸暂停(OSA)。第三方付款者现在提倡使用家庭睡眠测试(HST)而不是实验室内PSG作为OSA的诊断研究,而不论其临床可能性如何,但这种方法的经济效益尚不清楚。目的:我们基于人工神经网络确定了包括新开发的OSUNet在内的OSA预测工具的诊断性能,并在将预测工具用于识别应接受HST治疗的患者时进行了成本最小化分析。方法:对OSUNet进行了培训,以预测接受实验室PSG(n = 383)的派生患者中OSA的存在。验证组1由实验室内PSG患者组成(n = 149)。该网络在33名接受过HST的患者中接受了进一步培训,然后在另一组100例HST患者中进行了验证(验证组2)。将可能性比(LRs)与两个先前发布的预测工具进行了比较。比较了使用三种预测工具和临床算法中第三方方法产生的总成本。测量和主要结果:与STOP-BANG和改良的颈围(MNC)预测工具相比,OSUNet在所有组中的1LR均更高。验证组1中STOP-BANG,MNC和OSUNet的1LR为1.1(1.0-1.2),1.3(1.1- 1.5)和2.1(1.4-3.1);在验证组2中分别为1.4(1.1-1.7),1.7(1.3- 2.2)和3.4(1.8-6.1)。 OSA患病率低于52%,与第三方方法相比,使用所有三种临床预测工具均可以节省成本。结论:与使用OSA临床预测工具相比,HST诊断OSA的常规要求比使用OSA临床预测工具的成本更高,该工具可以在预期OSA出现在一半以下的人群中时识别应该接受此程序的患者。 OSA患病率不到40%,因此OSUNet节省最多,考虑到每年进行的睡眠研究数量,这是可观的。

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