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Non-contact monitoring of respiration in the neonatal intensive care unit

机译:新生儿重症监护病房中呼吸的非接触监测

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An abnormal respiratory rhythm is an early indicator of physiological deterioration. It is of critical importance in the clinical management of critically-ill or premature infants, for whom apnoea of prematurity is a major concern. Nevertheless, respiratory signals are still largely disregarded in neonatal intensive care units due to the high prevalence of noise and high false alarm rates in conventional monitoring. To address this, we present a novel method for the extraction of respiration from camera-based measurements taken from the top-view of an incubator. A total of 107 events from 30 neonatal admissions were annotated by three clinical reviewers as either true cessations of breathing (physiologically relevant) or false (artefact-related). The events were divided into two independent groups for training and validation and our algorithm was trained to classify true cessations. We achieved a good classification performance with 9 out of 10 cessations and 7 out of 10 artefactual events correctly identified in the training set, and with 7 out of 10 cessations and 34 out of 44 artefactual events correctly identified in the out-of-sample test set. A reduction in false alarm rate of 77.3% was achieved.
机译:异常呼吸节律是生理恶化的早期指标。在危险性或早产儿的临床管理中至关重要,对其的早产儿的呼吸暂停是一个主要问题。然而,由于传统监测中的噪声和高误报率的高普及率高,呼吸信号仍然在新生儿重症监护单元中仍然忽略。为了解决这一点,我们提出了一种从培养箱的顶视图取出的基于相机的测量来提取呼吸的新方法。三个临床评论者共注释了来自30个新生儿录取的107个事件,作为呼吸(生理相关)或假(有关的人工制品)的真正停止。该事件分为两个独立组,用于培训和验证,我们的算法训练,以对真正的停止进行分类。我们实现了良好的分类表现,其中10个停止中有9个,在培训集中正确识别的10个内部事件中有7个,其中10个停止中有7个,其中34个在样本试验中正确识别了44个假设事件中的34个。放。达到了77.3%的误报率的降低。

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