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舌下神经刺激器反应与机器学习的关联可识别出负努力依赖模式。

Association of hypoglossal nerve stimulator response with machine learning identified negative effort dependence patterns.

机构信息

Division of Pulmonary, Critical Care and Sleep Medicine, Department of Medicine, Donald and Barbara Zucker School of Medicine at Hofstra-Northwell, 410 Lakeville Road, Suite 107, New Hyde Park, NY, 11042, USA.

EnsoData Research, EnsoData, Madison, WI, USA.

出版信息

Sleep Breath. 2023 May;27(2):519-525. doi: 10.1007/s11325-022-02641-y. Epub 2022 May 27.

Abstract

BACKGROUND

Hypoglossal nerve stimulator (HGNS) is a therapeutic option for moderate to severe obstructive sleep apnea (OSA). Improved patient selection criteria are needed to target those most likely to benefit. We hypothesized that the pattern of negative effort dependence (NED) on inspiratory flow limited waveforms recorded during sleep, which has been correlated with the site of upper airway collapse, would contribute to the prediction of HGNS outcome. We developed a machine learning (ML) algorithm to identify NED patterns in pre-treatment sleep studies. We hypothesized that the predominant NED pattern would differ between HGNS responders and non-responders.

METHODS

An ML algorithm to identify NED patterns on the inspiratory portion of the nasal pressure waveform was derived from 5 development set polysomnograms. The algorithm was applied to pre-treatment sleep studies of subjects who underwent HGNS implantation to determine the percentage of each NED pattern. HGNS response was defined by STAR trial criteria for success (apnea-hypopnea index (AHI) reduced by > 50% and < 20/h) as well as by a change in AHI and oxygenation metrics. The predominant NED pattern in HGNS responders and non-responders was determined. Other variables including demographics and oxygenation metrics were also assessed between responders and non-responders.

RESULTS

Of 45 subjects, 4 were excluded due to technically inadequate polysomnograms. In the remaining 41 subjects, ML accurately distinguished three NED patterns (minimal, non-discontinuous, and discontinuous). The percentage of NED minimal breaths was significantly greater in responders compared with non-responders (p = 0.01) when the response was defined based on STAR trial criteria, change in AHI, and oxygenation metrics.

CONCLUSION

ML can accurately identify NED patterns in pre-treatment sleep studies. There was a statistically significant difference in the predominant NED pattern between HGNS responders and non-responders with a greater NED minimal pattern in responders. Prospective studies incorporating NED patterns into predictive modeling of factors determining HGNS outcomes are needed.

摘要

背景

舌下神经刺激器(HGNS)是治疗中重度阻塞性睡眠呼吸暂停(OSA)的一种选择。需要改进患者选择标准,以针对最有可能受益的患者。我们假设,在睡眠期间记录的吸气流量受限波形上的负努力依赖(NED)模式,该模式与上呼吸道塌陷部位相关,将有助于预测 HGNS 结果。我们开发了一种机器学习(ML)算法来识别治疗前睡眠研究中的 NED 模式。我们假设,HGNS 反应者和非反应者之间的主要 NED 模式会有所不同。

方法

从 5 个发展集多导睡眠图中得出一种用于识别鼻压波形吸气部分 NED 模式的 ML 算法。该算法应用于接受 HGNS 植入的受试者的治疗前睡眠研究,以确定每种 NED 模式的百分比。HGNS 反应定义为 STAR 试验成功标准(呼吸暂停-低通气指数(AHI)降低> 50%且< 20/h)以及 AHI 和氧合度量的变化。确定 HGNS 反应者和非反应者中的主要 NED 模式。还评估了反应者和非反应者之间的其他变量,包括人口统计学和氧合度量。

结果

在 45 名受试者中,有 4 名由于多导睡眠图技术不足而被排除。在其余 41 名受试者中,ML 准确地区分了三种 NED 模式(最小、非连续和连续)。当根据 STAR 试验标准、AHI 变化和氧合度量定义反应时,反应者的 NED 最小呼吸百分比明显大于非反应者(p = 0.01)。

结论

ML 可以准确识别治疗前睡眠研究中的 NED 模式。HGNS 反应者和非反应者之间的主要 NED 模式存在统计学显著差异,反应者的 NED 最小模式更大。需要进行前瞻性研究,将 NED 模式纳入 HGNS 结果的预测模型,以确定决定 HGNS 结果的因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec62/9136201/bf09b3171b48/11325_2022_2641_Fig1_HTML.jpg

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