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AIOSA: An approach to the automatic identification of obstructive sleep apnea events based on deep learning

机译:AIOS:一种基于深度学习的阻塞性睡眠呼吸暂停事件的自动识别方法

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Obstructive Sleep Apnea Syndrome (OSAS) is the most common sleep-related breathing disorder. It is caused by an increased upper airway resistance during sleep, which determines episodes of partial or complete interruption of airflow. The detection and treatment of OSAS is particularly important in patients who suffered a stroke, because the presence of severe OSAS is associated with higher mortality, worse neurological deficits, worse functional outcome after rehabilitation, and a higher likelihood of uncontrolled hypertension. The gold standard test for diagnosing OSAS is polysomnography (PSG). Unfortunately, performing a PSG in an electrically hostile environment, like a stroke unit, on neurologically impaired patients is a difficult task; moreover, the number of strokes per day vastly outnumbers the availability of polysomnographs and dedicated healthcare professionals. Hence, a simple and automated recognition system to identify OSAS cases among acute stroke patients, relying on routinely recorded vital signs, is highly desirable. The vast majority of the work done so far focuses on data recorded in ideal conditions and highly selected patients, and thus it is hardly exploitable in real-life circumstances, where it would be of actual use. In this paper, we propose a novel convolutional deep learning architecture able to effectively reduce the temporal resolution of raw waveform data, like physiological signals, extracting key features that can be used for further processing. We exploit models based on such an architecture to detect OSAS events in stroke unit recordings obtained from the monitoring of unselected patients. Unlike existing approaches, annotations are performed at one-second granularity, allowing physicians to better interpret the model outcome. Results are considered to be satisfactory by the domain experts. Moreover, through tests run on a widely-used public OSAS dataset, we show that the proposed approach outperforms current state-of-the-art solutions.
机译:阻塞性睡眠呼吸暂停综合征(OSAS)是最常见的睡眠呼吸症。它是由睡眠期间增加的上气道阻力引起的,这决定了部分或完全中断气流的事件。 OSA的检测和治疗在患有中风的患者中尤为重要,因为严重OSA的存在与较高的死亡率有关,恢复后的较差的神经学缺陷,更差的功能结果,以及不受控制的高血压的可能性更高。用于诊断OSAS的金标准测试是多重创新(PSG)。不幸的是,在神经学障碍患者的中风单元中表演PSG,如行程单元,是一项艰巨的任务;此外,每天中风的数量大大超越了多面组和专用医疗保健专业人员的可用性。因此,一种简单而自动识别系统,用于鉴定急性中风患者中的OSAS病例,依赖于常规记录的生命体征,是非常理想的。到目前为止,迄今为止的绝大多数工作侧重于在理想条件和高度选择的患者中记录的数据,因此它在现实情况下几乎无法解释,在那里它将是实际使用的。在本文中,我们提出了一种新的卷积深度学习架构,能够有效地降低原始波形数据的时间分辨率,如生理信号,提取可用于进一步处理的关键特征。我们基于这样的架构利用模型来检测从未选择患者监测获得的笔划单元录制中的OSA事件。与现有方法不同,注释是在一秒的粒度下进行的,允许医生更好地解释模型结果。结果被领域专家认为令人满意。此外,通过测试在广泛使用的公共OSA数据集上运行,我们表明所提出的方法优于最新的最先进的解决方案。

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