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Using physiological signals to predict apnea in preterm infants

机译:利用生理信号预测早产儿的呼吸暂停

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Apnea of prematurity, a common developmental disorder in preterm infants, is implicated in long-term neurodevelopmental deficits. Preventative clinical interventions, such as mechanosensory stimulation, would benefit from predictive knowledge of when the patient is at high risk for apnea. In this study, the predictive utility of features derived from breathing rate and heart rate is explored. Specifically, the multiscale correlation structure of interbreath intervals and heartbeat intervals is used to train a patient-specific apnea prediction algorithm. The algorithm's prediction results are significantly better than chance for three of the six patients it is evaluated on. These preliminary studies suggest that features of cardiopulmonary signals can anticipate the occurrence of clinically significant apneas in preterm infants.
机译:早产呼吸暂停是早产儿常见的发育障碍,与长期的神经发育缺陷有关。预防性的临床干预措施,例如机械感觉刺激,将受益于患者何时处于呼吸暂停高风险的预测知识。在这项研究中,探索了从呼吸速率和心率得出的特征的预测效用。具体而言,呼吸间隔和心跳间隔的多尺度相关结构用于训练患者特定的呼吸暂停预测算法。该算法的预测结果明显好于对其进行评估的六位患者中的三位的机会。这些初步研究表明,心肺信号的特征可以预测早产儿临床上显着的呼吸暂停的发生。

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