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A Joint Computational Respiratory Neural Network-Biomechanical Model for Breathing and Airway Defensive Behaviors

机译:呼吸和气道防御行为的联合计算呼吸神经网络-生物力学模型

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摘要

Data-driven computational neural network models have been used to study mechanisms for generating the motor patterns for breathing and breathing related behaviors such as coughing. These models have commonly been evaluated in open loop conditions or with feedback of lung volume simply represented as a filtered version of phrenic motor output. Limitations of these approaches preclude assessment of the influence of mechanical properties of the musculoskeletal system and motivated development of a biomechanical model of the respiratory muscles, airway, and lungs using published measures from human subjects. Here we describe the model and some aspects of its behavior when linked to a computational brainstem respiratory network model for breathing and airway defensive behavior composed of discrete “integrate and fire” populations. The network incorporated multiple circuit paths and operations for tuning inspiratory drive suggested by prior work. Results from neuromechanical system simulations included generation of a eupneic-like breathing pattern and the observation that increased respiratory drive and operating volume result in higher peak flow rates during cough, even when the expiratory drive is unchanged, or when the expiratory abdominal pressure is unchanged. Sequential elimination of the model’s sources of inspiratory drive during cough also suggested a role for disinhibitory regulation via tonic expiratory neurons, a result that was subsequently supported by an analysis of in vivo data. Comparisons with antecedent models, discrepancies with experimental results, and some model limitations are noted.
机译:数据驱动的计算神经网络模型已用于研究产生用于呼吸的运动模式以及与呼吸有关的行为(例如咳嗽)的机制。这些模型通常在开环条件下进行评估,或者通过简单表示为运动输出的过滤形式的肺容量反馈进行评估。这些方法的局限性使得无法评估肌肉骨骼系统的机械性能的影响,并无法使用已公开发表的人类受试者的测量值来积极开发呼吸肌肉,气道和肺的生物力学模型。在此,我们描述了该模型及其行为的某些方面,这些行为与由离散的“整合和射击”人群组成的用于呼吸和气道防御行为的计算性脑干呼吸网络模型链接时。该网络包含多个电路路径和操作,以调整先前工作建议的吸气驱动。神经机械系统仿真的结果包括产生类似神经质的呼吸模式,并且观察到即使在呼气驱动未改变或呼气腹压不变的情况下,增加的呼吸驱动力和操作量也会导致咳嗽期间更高的峰值流速。咳嗽过程中顺序消除模型的吸气驱动源也暗示了通过强直性呼气神经元进行抑制性调节的作用,这一结果随后得到体内数据分析的支持。注意与先前模型的比较,与实验结果的差异以及一些模型局限性。

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