Sundaresan Ashwath, Yuta Toshinori, Hann Christopher E, Chase J Geoffrey, Shaw Geoffrey M
Center for BioEngineering, Department of Mechanical Engineering, University of Canterbury, Private Bag 4800, Christchurch, New Zealand.
Comput Methods Programs Biomed. 2009 Aug;95(2):166-80. doi: 10.1016/j.cmpb.2009.02.008. Epub 2009 Mar 26.
A majority of patients admitted to the Intensive Care Unit (ICU) require some form of respiratory support. In the case of Acute Respiratory Distress Syndrome (ARDS), the patient often requires full intervention from a mechanical ventilator. ARDS is also associated with mortality rate as high as 70%. Despite many recent studies on ventilator treatment of the disease, there are no well established methods to determine the optimal Positive End-Expiratory Pressure (PEEP) or other critical ventilator settings for individual patients. A model of fundamental lung mechanics is developed based on capturing the recruitment status of lung units. The main objective of this research is to develop a minimal model that is clinically effective in determining PEEP. The model was identified for a variety of different ventilator settings using clinical data. The fitting error was between 0.1% and 4% over the inflation limb and between 0.3% and 13% over the deflation limb at different PEEP settings. The model produces good correlation with clinical data, and is clinically applicable due to the minimal number of patient specific parameters to identify. The ability to use this identified patient specific model to optimize ventilator management is demonstrated by its ability to predict the patient specific response of PEEP changes before clinically applying them. Predictions of recruited lung volume change with change in PEEP have a median absolute error of 1.87% (IQR: 0.93-4.80%; 90% CI: 0.16-11.98%) for inflation and a median of 5.76% (IQR: 2.71-10.50%; 90% CI: 0.43-17.04%) for deflation, across all data sets and PEEP values (N=34predictions). This minimal model thus provides a clinically useful and relatively simple platform for continuous patient specific monitoring of lung unit recruitment for a patient.
大多数入住重症监护病房(ICU)的患者都需要某种形式的呼吸支持。对于急性呼吸窘迫综合征(ARDS)患者,通常需要机械通气进行全面干预。ARDS的死亡率也高达70%。尽管最近有许多关于该疾病通气治疗的研究,但尚无成熟的方法来为个体患者确定最佳呼气末正压(PEEP)或其他关键通气设置。基于捕捉肺单位的复张状态,开发了一种基本肺力学模型。本研究的主要目的是开发一种在确定PEEP方面具有临床有效性的最小模型。该模型使用临床数据针对各种不同的通气设置进行了识别。在不同的PEEP设置下,充气阶段的拟合误差在0.1%至4%之间,放气阶段的拟合误差在0.3%至13%之间。该模型与临床数据具有良好的相关性,并且由于需要识别的患者特定参数数量最少,因此具有临床适用性。通过在临床应用PEEP变化之前能够预测患者的特定反应,证明了使用这种识别出的患者特定模型来优化通气管理的能力。对于所有数据集和PEEP值(N = 34次预测),随着PEEP变化,预测的复张肺容积变化在充气时的中位绝对误差为1.87%(四分位间距:0.93 - 4.80%;90%置信区间:0.16 - 11.98%),放气时的中位绝对误差为5.76%(四分位间距:2.71 - 10.50%;90%置信区间:0.43 - 17.04%)。因此,这种最小模型为对患者肺单位复张进行连续的患者特定监测提供了一个临床有用且相对简单的平台。