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首页> 外文期刊>Journal of Biomechanics >Study of pulse transit time oscillations during obstructive sleep apnoea by using a distributed model.
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Study of pulse transit time oscillations during obstructive sleep apnoea by using a distributed model.

机译:使用分布式模型研究阻塞性睡眠呼吸暂停期间的脉冲传播时间振荡。

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摘要

The study of arterial compliance is useful in understanding the geometrical and mechanical properties of a systemic arterial tree. Numerous mathematical models have shown their potential in relating the physical phenomena in the arterial tree to properties of the wall itself. However, limited model is available that describes the pulse transit time (PTT) oscillations of a sleeping child during tidal breathing and obstructive sleep apnoea (OSA). Data from 20 children (17 male; aged 6.4+/-4.1yr) whom were recruited for overnight polysomnography (PSG) were used. A modified windkessel model with related physiological parameters was utilised to describe PTT fluctuations due to the cardiovascular system during sleep. Verification with the recorded PSG data showed similar trends with the model for both types of respiratory events. For tidal breathing, undamped PTT oscillations of 3.89s were predicted by the model while actual data yielded a mean value of 3.72+/-0.79s. Conversely, under-damping PTT responses were expected based on the model for OSA. The model estimated a Q factor of 4.23 and actual mean data were 3.86+/-0.64. Hence, the findings herein suggest that the proposed model has the potential to illustrate tidal breathing and OSA events in sleeping children.
机译:动脉顺应性的研究有助于理解全身性动脉树的几何和机械特性。许多数学模型已经显示出它们在将动脉树中的物理现象与墙体本身的属性相关联方面的潜力。但是,有限的模型可用来描述在呼气呼吸和阻塞性睡眠呼吸暂停(OSA)期间熟睡的孩子的脉搏传播时间(PTT)振荡。使用20名儿童(17名男性; 6.4 +/- 4.1岁)的数据,他们被募集进行过夜多导睡眠监测(PSG)。修改后的具有相关生理参数的风帆模型被用来描述睡眠中心血管系统引起的PTT波动。对于两种类型的呼吸事件,使用记录的PSG数据进行的验证显示出与该模型相似的趋势。对于潮汐呼吸,模型预测了3.89s的无阻尼PTT振荡,而实际数据的平均值为3.72 +/- 0.79s。相反,基于OSA模型,预计PTT响应会衰减。该模型估计的Q因子为4.23,实际平均数据为3.86 +/- 0.64。因此,本文的发现表明所提出的模型具有说明睡着的儿童中的潮气和OSA事件的潜力。

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