Neonatal apnea and hypopnea prediction in infants with Robin sequence with neural additive models for time series.

PLOS digital health Pub Date : 2024-12-13 eCollection Date: 2024-12-01 DOI:10.1371/journal.pdig.0000678
Julius Vetter, Kathleen Lim, Tjeerd M H Dijkstra, Peter A Dargaville, Oliver Kohlbacher, Jakob H Macke, Christian F Poets
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Abstract

Neonatal apneas and hypopneas present a serious risk for healthy infant development. Treating these adverse events requires frequent manual stimulation by skilled personnel, which can lead to alarm fatigue. This study aims to develop and validate an interpretable model that can predict apneas and hypopneas. Automatically predicting these adverse events before they occur would enable the use of methods for automatic intervention. We propose a neural additive model to predict individual occurrences of neonatal apnea and hypopnea and apply it to a physiological dataset from infants with Robin sequence at risk of upper airway obstruction. The dataset will be made publicly available together with this study. Our proposed model allows the prediction of individual apneas and hypopneas, achieving an average AuROC of 0.80 when discriminating segments of polysomnography recordings starting 15 seconds before the onset of apneas and hypopneas from control segments. Its additive nature makes the model inherently interpretable, which allowed insights into how important a given signal modality is for prediction and which patterns in the signal are discriminative. For our problem of predicting apneas and hypopneas in infants with Robin sequence, prior irregularities in breathing-related modalities as well as decreases in SpO2 levels were especially discriminative. Our prediction model presents a step towards an automatic prediction of neonatal apneas and hypopneas in infants at risk for upper airway obstruction. Together with the publicly released dataset, it has the potential to facilitate the development and application of methods for automatic intervention in clinical practice.

利用时间序列神经加法模型预测罗宾序列婴儿的新生儿呼吸暂停和呼吸减弱。
新生儿呼吸暂停和呼吸不足是影响婴儿健康发育的重要因素。治疗这些不良事件需要熟练人员频繁的手动刺激,这可能导致报警疲劳。本研究旨在建立和验证一个可解释的模型,可以预测呼吸暂停和呼吸不足。在这些不良事件发生之前自动预测它们将使使用自动干预的方法成为可能。我们提出了一个神经相加模型来预测新生儿呼吸暂停和低通气的个体发生率,并将其应用于有上气道阻塞风险的Robin序列婴儿的生理数据集。该数据集将与本研究一起公开。我们提出的模型可以预测个体呼吸暂停和呼吸不足,在区分呼吸暂停和呼吸不足发作前15秒开始的多导睡眠图记录片段与对照片段时,平均AuROC为0.80。它的可加性使模型具有固有的可解释性,从而可以深入了解给定信号模态对预测的重要性以及信号中的哪些模式是判别性的。对于我们预测罗宾序列婴儿呼吸暂停和呼吸不足的问题,先前呼吸相关模式的不规则性以及SpO2水平的降低尤其具有歧视性。我们的预测模型向自动预测新生儿呼吸暂停和呼吸不足的婴儿上气道阻塞的风险迈出了一步。与公开发布的数据集一起,它有可能促进临床实践中自动干预方法的开发和应用。
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