Costa Eduardo L V, Chaves Caroline N, Gomes Susimeire, Beraldo Marcelo A, Volpe Márcia S, Tucci Mauro R, Schettino Ivany A L, Bohm Stephan H, Carvalho Carlos R R, Tanaka Harki, Lima Raul G, Amato Marcelo B P
Respiratory Intensive Care Unit, University of São Paulo School of Medicine, Brazil.
Crit Care Med. 2008 Apr;36(4):1230-8. doi: 10.1097/CCM.0b013e31816a0380.
Pneumothorax is a frequent complication during mechanical ventilation. Electrical impedance tomography (EIT) is a noninvasive tool that allows real-time imaging of regional ventilation. The purpose of this study was to 1) identify characteristic changes in the EIT signals associated with pneumothoraces; 2) develop and fine-tune an algorithm for their automatic detection; and 3) prospectively evaluate this algorithm for its sensitivity and specificity in detecting pneumothoraces in real time.
Prospective controlled laboratory animal investigation.
Experimental Pulmonology Laboratory of the University of São Paulo.
Thirty-nine anesthetized mechanically ventilated supine pigs (31.0 +/- 3.2 kg, mean +/- SD).
In a first group of 18 animals monitored by EIT, we either injected progressive amounts of air (from 20 to 500 mL) through chest tubes or applied large positive end-expiratory pressure (PEEP) increments to simulate extreme lung overdistension. This first data set was used to calibrate an EIT-based pneumothorax detection algorithm. Subsequently, we evaluated the real-time performance of the detection algorithm in 21 additional animals (with normal or preinjured lungs), submitted to multiple ventilatory interventions or traumatic punctures of the lung.
Primary EIT relative images were acquired online (50 images/sec) and processed according to a few imaging-analysis routines running automatically and in parallel. Pneumothoraces as small as 20 mL could be detected with a sensitivity of 100% and specificity 95% and could be easily distinguished from parenchymal overdistension induced by PEEP or recruiting maneuvers. Their location was correctly identified in all cases, with a total delay of only three respiratory cycles.
We created an EIT-based algorithm capable of detecting early signs of pneumothoraces in high-risk situations, which also identifies its location. It requires that the pneumothorax occurs or enlarges at least minimally during the monitoring period. Such detection was operator-free and in quasi real-time, opening opportunities for improving patient safety during mechanical ventilation.
气胸是机械通气期间常见的并发症。电阻抗断层成像(EIT)是一种可实现区域通气实时成像的非侵入性工具。本研究的目的是:1)识别与气胸相关的EIT信号特征性变化;2)开发并微调用于自动检测气胸的算法;3)前瞻性评估该算法在实时检测气胸中的敏感性和特异性。
前瞻性对照实验动物研究。
圣保罗大学实验肺病学实验室。
39只麻醉状态下机械通气的仰卧位猪(31.0±3.2千克,均值±标准差)。
在由EIT监测的第一组18只动物中,我们通过胸管注入逐渐增加量的空气(从20至500毫升),或应用大幅呼气末正压(PEEP)增量以模拟极端肺过度膨胀。这第一组数据集用于校准基于EIT的气胸检测算法。随后,我们评估了检测算法在另外21只动物(肺正常或预先损伤)中的实时性能,这些动物接受了多种通气干预或肺的创伤性穿刺。
在线获取原始EIT相对图像(每秒50幅图像),并根据一些自动并行运行的成像分析程序进行处理。小至20毫升的气胸可被检测到,敏感性为100%,特异性为95%,并且可轻易与由PEEP或肺复张手法引起的实质过度膨胀区分开来。在所有情况下其位置均能被正确识别,总延迟仅为三个呼吸周期。
我们创建了一种基于EIT的算法,能够在高风险情况下检测气胸的早期迹象,并能识别其位置。它要求气胸在监测期间至少发生或扩大到最小程度。这种检测无需操作人员干预且近乎实时,为改善机械通气期间的患者安全提供了机会。