Deep learning enhanced transmembranous electromyography in the diagnosis of sleep apnea.

IF 2.4 4区 医学 Q3 NEUROSCIENCES BMC Neuroscience Pub Date : 2024-12-31 DOI:10.1186/s12868-024-00913-9
Ross Mandeville, Hooman Sedghamiz, Perry Mansfield, Geoffrey Sheean, Chris Studer, Derrick Cordice, Ghodsieh Ghanbari, Atul Malhotra, Shamim Nemati, Jejo Koola
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Abstract

Obstructive sleep apnea (OSA) is widespread, under-recognized, and under-treated, impacting the health and quality of life for millions. The current gold standard for sleep apnea testing is based on the in-lab sleep study, which is costly, cumbersome, not readily available and represents a well-known roadblock to managing this huge societal burden. Assessment of neuromuscular function involved in the upper airway using electromyography (EMG) has shown potential to characterize and diagnose sleep apnea, while the development of transmembranous electromyography (tmEMG), a painless surface probe, has made this opportunity practical and highly feasible. However, experience and ability to interpret electrical signals from the upper airway are scarce, and much of the pertinent information within the signal is likely difficult to detect visually. To overcome this issue, we explored the use of transformers, a deep learning (DL) model architecture with attention mechanisms, to model tmEMG data and distinguish between electromyographic signals from a cohort of control, neurogenic, and sleep apnea patients. Our approach involved three strategies to train a generalizable model on a relatively small dataset including, (1) transfer learning using an audio spectral transformer (AST), (2) the use of 6,000 simulated EMG recordings, converted to spectrograms and using standard backpropagation for fine-tuning, and (3) application of regularization to prevent overfitting and enhance generalizability. This DL approach was tested using 177 transoral EMG recordings from a prior study's database that included six healthy controls, five moderate to severe OSA patients, and five amyotrophic lateral sclerosis (ALS) patients with evidence of bulbar involvement (neurogenic injury). Sensitivity and specificity for classifying neurogenic cases from controls were 98% and 73%, respectively, while classifying OSA from controls were 88% and 64%, respectively. Notably, by averaging the predicted probabilities of each segment for individual patients, the model correctly classified up to 82% of control and OSA patients. These results not only suggest a potential to diagnose OSA patients accurately, but also to identify OSA endotypes that involve neuromuscular pathology, which has major implications for clinical management, patient outcomes, and research.

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深度学习增强跨膜肌电图在睡眠呼吸暂停诊断中的应用。
阻塞性睡眠呼吸暂停(OSA)广泛存在,但未得到充分认识和治疗,影响着数百万人的健康和生活质量。目前睡眠呼吸暂停测试的黄金标准是基于实验室睡眠研究,这是昂贵的,繁琐的,不易获得的,代表了一个众所周知的障碍,以管理这一巨大的社会负担。使用肌电图(EMG)评估涉及上呼吸道的神经肌肉功能已显示出表征和诊断睡眠呼吸暂停的潜力,而跨膜肌电图(tmEMG)的发展,一种无痛的表面探针,使这一机会变得实用和高度可行。然而,解释来自上气道的电信号的经验和能力是稀缺的,并且信号中的许多相关信息可能难以通过视觉检测到。为了克服这个问题,我们探索了变压器的使用,变压器是一种具有注意机制的深度学习(DL)模型架构,用于模拟tmEMG数据,并区分来自对照组、神经源性和睡眠呼吸暂停患者的肌电信号。我们的方法涉及三种策略来在相对较小的数据集上训练可泛化模型,包括:(1)使用音频频谱转换器(AST)进行迁移学习,(2)使用6,000个模拟肌电记录,转换为频谱图并使用标准反向传播进行微调,以及(3)应用正则化来防止过拟合并增强泛化性。该方法使用177个经口肌电图记录进行了测试,这些记录来自先前的研究数据库,其中包括6名健康对照者、5名中重度OSA患者和5名有证据表明球受累(神经源性损伤)的肌萎缩侧索硬化症(ALS)患者。从对照组中区分神经源性病例的敏感性和特异性分别为98%和73%,而从对照组中区分OSA的敏感性和特异性分别为88%和64%。值得注意的是,通过对单个患者的每个部分的预测概率进行平均,该模型正确分类了高达82%的对照组和OSA患者。这些结果不仅提示了准确诊断OSA患者的潜力,而且还提示了识别涉及神经肌肉病理的OSA内型,这对临床管理、患者预后和研究具有重要意义。
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来源期刊
BMC Neuroscience
BMC Neuroscience 医学-神经科学
CiteScore
3.90
自引率
0.00%
发文量
64
审稿时长
16 months
期刊介绍: BMC Neuroscience is an open access, peer-reviewed journal that considers articles on all aspects of neuroscience, welcoming studies that provide insight into the molecular, cellular, developmental, genetic and genomic, systems, network, cognitive and behavioral aspects of nervous system function in both health and disease. Both experimental and theoretical studies are within scope, as are studies that describe methodological approaches to monitoring or manipulating nervous system function.
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