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首页> 外文期刊>Journal of Mathematical Biology >Cardiovascular dynamics during head-up tilt assessed via pulsatile and non-pulsatile models
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Cardiovascular dynamics during head-up tilt assessed via pulsatile and non-pulsatile models

机译:通过脉动和非脉动模型进行头枕倾斜期间的心血管动态

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摘要

This study develops non-pulsatile and pulsatile models for the prediction of blood flow and pressure during head-up tilt. This test is used to diagnose potential pathologies within the autonomic control system, which acts to keep the cardiovascular system at homeostasis. We show that mathematical modeling can be used to predict changes in cardiac contractility, vascular resistance, and arterial compliance, quantities that cannot be measured but are useful to assess the system's state. These quantities are predicted as time-varying parameters modeled using piecewise linear splines. Having models with various levels of complexity formulated with a common set of parameters, allows us to combine long-term non-pulsatile simulations with pulsatile simulations on a shorter time-scale. We illustrate results for a representative subject tilted head-up from a supine position to a 60 degrees angle. The tilt is maintained for 5min before the subject is tilted back down. Results show that if volume data is available for all vascular compartments three parameters can be identified, cardiovascular resistance, vascular compliance, and ventricular contractility, whereas if model predictions are made against arterial pressure and cardiac output data alone, only two parameters can be estimated either resistance and contractility or resistance and compliance.
机译:该研究开发了用于预测朝向倾斜期间血流和压力的非脉冲和脉冲模型。该测试用于诊断自主控制系统内的潜在病理,其作用于使心血管系统保持在稳态性。我们表明,数学建模可用于预测心脏收缩性,血管阻力和动脉顺应性的变化,无法测量的量,但可用于评估系统状态。预测这些数量是使用分段线性样条模型建模的时变参数。具有具有常见参数集配制的具有各种复杂程度的模型,允许我们在较短的时间尺度上将长期非脉动模拟与脉动模拟相结合。我们将代表性主题从仰卧位倾斜向上倾斜到60度角的结果。在受试者向下倾斜之前,倾斜保持5分钟。结果表明,如果所有血管隔室都有3个参数,则可以识别,心血管阻力,血管合规性和心室收缩性,但是,如果单独对动脉压和心脏输出数据进行模型预测,则只能估计两个参数抵抗和收缩性或抵抗力和依从性。

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