The Medical Corps, Israel Defense Forces (IDF), Tel Hashomer, 5262000, Ramat Gan, Israel.
Department of Otolaryngology - Head and Neck Surgery, University of Washington, Seattle, WA, 98195, USA.
Mil Med Res. 2021 Apr 25;8(1):27. doi: 10.1186/s40779-021-00319-2.
Tension pneumothorax is one of the leading causes of preventable death on the battlefield. Current prehospital diagnosis relies on a subjective clinical impression complemented by a manual thoracic and respiratory examination. These techniques are not fully applicable in field conditions and on the battlefield, where situational and environmental factors may impair clinical capabilities. We aimed to assemble a device able to sample, analyze, and classify the unique acoustic signatures of pneumothorax and hemothorax.
Acoustic data was obtained with simultaneous use of two sensitive digital stethoscopes from the chest wall of an ex-vivo porcine model. Twelve second samples of acoustic data were obtained from the in-house assembled digital stethoscope system during mechanical ventilation. The thoracic cavity was injected with increasing volumes of 200, 400, 600, 800, and 1000 ml of air or saline to simulate pneumothorax and hemothorax, respectively. The data was analyzed using a multi-objective genetic algorithm that was used to develop an optimal mathematical detector through the process of artificial evolution, a cutting-edge approach in the artificial intelligence discipline.
The in-house assembled dual digital stethoscope system and developed genetic algorithm achieved an accuracy, sensitivity and specificity ranging from 64 to 100%, 63 to 100%, and 63 to 100%, respectively, in classifying acoustic signal as associated with pneumothorax or hemothorax at fluid injection levels of 400 ml or more, and regardless of background noise.
We present a novel, objective device for rapid diagnosis of potentially lethal thoracic injuries. With further optimization, such a device could provide real-time detection and monitoring of pneumothorax and hemothorax in battlefield conditions.
张力性气胸是战场上可预防死亡的主要原因之一。目前的院前诊断依赖于主观的临床印象,并辅以手动的胸部和呼吸检查。这些技术在现场条件和战场上并不完全适用,因为情况和环境因素可能会影响临床能力。我们的目标是组装一种能够采集、分析和分类气胸和血胸独特声学特征的设备。
使用两个灵敏的数字听诊器同时从体外猪模型的胸壁上获取声学数据。在机械通气过程中,从内部组装的数字听诊器系统中获得 12 秒的声学数据样本。向胸腔内注入 200、400、600、800 和 1000ml 的空气或盐水,分别模拟气胸和血胸。使用多目标遗传算法对数据进行分析,该算法通过人工进化过程用于开发最佳的数学检测器,这是人工智能学科中的一项前沿方法。
内部组装的双数字听诊器系统和开发的遗传算法在对 400ml 或更多液体注入水平的声学信号进行气胸或血胸分类时,其准确性、敏感性和特异性分别在 64%至 100%、63%至 100%和 63%至 100%之间,无论背景噪声如何。
我们提出了一种用于快速诊断潜在致命性胸部损伤的新颖、客观的设备。通过进一步优化,这种设备可以在战场条件下实时检测和监测气胸和血胸。