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A novel method to generate dynamic boundary conditions for airway CFD by mapping upper airway movement with non‐rigid registration of dynamic and static MRI

机译:通过映射上呼吸道运动与动态和静态MRI的非刚性配准生成气道CFD动态边界条件的新方法

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Computational fluid dynamics (CFD) simulations of airflow in the human airways have the potential to provide a great deal of information that can aid clinicians in case management and surgical decision making, such as airway resistance, energy expenditure, airflow distribution, heat and moisture transfer, and particle deposition, as well as the change in each of these due to surgical interventions. However, the clinical relevance of CFD simulations has been limited to date, as previous models either did not incorporate neuromuscular motion or any motion at all. Many common airway pathologies, such as obstructive sleep apnea (OSA) and tracheomalacia, involve large movements of the structures surrounding the airway, such as the tongue and soft palate. Airway wall motion may be due to many factors including neuromuscular motion, internal aerodynamic forces, and external forces such as gravity. Therefore, to realistically model these airway diseases, a method is required to derive the airway wall motion, whatever the cause, and apply it as a boundary condition to CFD simulations. This paper presents and validates a novel method of capturing in vivo motion of airway walls from magnetic resonance images with high spatiotemporal resolution, through a novel combination of non-rigid image, surface, and surface-normal-vector registration. Coupled with image-synchronous pneumotachography, this technique provides the necessary boundary conditions for dynamic CFD simulations of breathing, allowing the effect of the airway's complex motion to be calculated for the first time, in both normal subjects and those with conditions such as OSA.
机译:人体气道中气流的计算流体动力学(CFD)模拟有潜力提供大量信息,这些信息可以帮助临床医生进行病例管理和手术决策,例如气道阻力,能量消耗,气流分布,热量和水分传递,颗粒沉积以及由于外科手术而造成的每一种变化。但是,CFD模拟的临床相关性迄今仍受到限制,因为以前的模型要么没有结合神经肌肉运动,要么根本没有结合任何运动。许多常见的气道病理,例如阻塞性睡眠呼吸暂停(OSA)和气管软弱,涉及气道周围结构的大量运动,例如舌头和软pa。气道壁运动可能归因于许多因素,包括神经肌肉运动,内部空气动力和诸如重力的外力。因此,要对这些气道疾病进行实际建模,就需要一种方法来导出气道壁运动,无论其原因如何,并将其作为边界条件应用于CFD模拟。本文提出并验证了一种新方法,该方法通过非刚性图像,表面和表面法向矢量配准的新颖组合,从具有高时空分辨率的磁共振图像中捕获气道壁的体内运动。结合图像同步气速描记术,该技术为动态CFD呼吸模拟提供了必要的边界条件,从而首次计算了正常受试者和OSA等条件下的气道复杂运动的影响。

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