首页> 外文OA文献 >Implementation of a Non-Linear Autoregressive Model with Modified Gauss-Newton Parameter Identification to Determine Pulmonary Mechanics of Respiratory Patients that are Intermittently Resisting Ventilator Flow Patterns
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Implementation of a Non-Linear Autoregressive Model with Modified Gauss-Newton Parameter Identification to Determine Pulmonary Mechanics of Respiratory Patients that are Intermittently Resisting Ventilator Flow Patterns

机译:修正高斯-牛顿参数辨识的非线性自回归模型的实现,以确定间歇性抵抗呼吸机通气方式的呼吸道患者的肺力学

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摘要

Modelling the respiratory system of intensive care patients can enable individualized mechanical ventilation therapy and reduce ventilator induced lung injuries. However, spontaneous breathing (SB) efforts result in asynchronous pressure waveforms that mask underlying respiratory mechanics. In this study, a nonlinear auto-regressive (NARX) model was identified using a modified Gauss-Newton (GN) approach, and demonstrated on data from one SB patient. The NARX model uses three pressure dependent basis functions to capture respiratory system elastance, and contains a single resistance coefficient and positive end expiratory pressure (PEEP) coefficient. The modified GN method exponentially reduces the contribution of large residuals on the step in the coefficients at each GN iteration. This approach allows the model to effectively ignore the anomaly in the pressure waveform due to SB efforts, while successfullydescribing the shape of normal breathing cycles. This method has the potential to be used in the ICU to more robustly capture patient-specific behaviour, and thus enable clinicians to select optimal ventilator settings and improve patient care
机译:对重症监护患者的呼吸系统进行建模可以实现个性化的机械通气治疗,并减少呼吸机引起的肺损伤。但是,自发呼吸(SB)会导致异步压力波形,从而掩盖潜在的呼吸机制。在这项研究中,使用改进的高斯-牛顿(GN)方法识别了非线性自回归(NARX)模型,并根据一名SB患者的数据进行了证明。 NARX模型使用三个与压力有关的基础函数来捕获呼吸系统弹性,并包含一个阻力系数和呼气末正压(PEEP)系数。改进的GN方法以指数形式减少每次GN迭代中系数对阶跃的大残差贡献。这种方法使模型可以有效地忽略由于SB努力而引起的压力波形异常,同时成功描述正常呼吸周期的形状。这种方法有可能在ICU中使用,以更有效地捕获患者特定的行为,从而使临床医生能够选择最佳的呼吸机设置并改善患者护理

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