Hugon J
BF Systèmes, Technopole de la Mer, La Seyne sur Mer, France.
Undersea Hyperb Med. 2014 Nov-Dec;41(6):531-56.
INTRODUCTION/BACKGROUND: For more than a century, several types of mathematical models have been proposed to describe tissue desaturation mechanisms in order to limit decompression sickness. These models are statistically assessed by DCS cases, and, over time, have gradually included bubble formation biophysics. This paper proposes to review this evolution and discuss its limitations.
This review is organized around the comparison of decompression model biophysical criteria and theoretical foundations. Then, the DCS-predictive capability was analyzed to assess whether it could be improved by combining different approaches.
Most of the operational decompression models have a neo-Haldanian form. Nevertheless, bubble modeling has been gaining popularity, and the circulating bubble amount has become a major output. By merging both views, it seems possible to build a relevant global decompression model that intends to simulate bubble production while predicting DCS risks for all types of exposures and decompression profiles.
A statistical approach combining both DCS and bubble detection databases has to be developed to calibrate a global decompression model. Doppler ultrasound and DCS data are essential: i. to make correlation and validation phases reliable; ii. to adjust biophysical criteria to fit at best the observed bubble kinetics; and iii. to build a relevant risk function.
引言/背景:一个多世纪以来,人们提出了几种数学模型来描述组织去饱和机制,以限制减压病的发生。这些模型通过减压病病例进行统计学评估,并且随着时间的推移,逐渐纳入了气泡形成生物物理学。本文旨在回顾这一演变过程并讨论其局限性。
本综述围绕减压模型生物物理标准和理论基础的比较展开。然后,分析了减压病预测能力,以评估是否可以通过结合不同方法来改进它。
大多数实用的减压模型具有新哈代形式。然而,气泡建模越来越受欢迎,循环气泡量已成为主要输出。通过融合这两种观点,似乎有可能构建一个相关的全局减压模型,该模型旨在模拟气泡产生,同时预测所有类型暴露和减压方案下的减压病风险。
必须开发一种结合减压病和气泡检测数据库的统计方法来校准全局减压模型。多普勒超声和减压病数据至关重要:i. 使相关性和验证阶段可靠;ii. 调整生物物理标准以最佳拟合观察到的气泡动力学;iii. 构建相关的风险函数。