Parker E C, Survanshi S S, Massell P B, Weathersby P K
Naval Medical Research Institute, Bethesda, Maryland 20889-5607, USA.
J Appl Physiol (1985). 1998 Mar;84(3):1096-102. doi: 10.1152/jappl.1998.84.3.1096.
Probabilistic models of human decompression sickness (DCS) have been successful in describing DCS risk observed across a wide variety of N2-O2 dives but have failed to account for the observed DCS incidence in dives with high PO2 during decompression. Our most successful previous model, calibrated with 3,322 N2-O2 dives, predicts only 40% of the observed incidence in dives with 100% O2 breathing during decompression. We added 1,013 O2 decompression dives to the calibration data. Fitting the prior model to this expanded data set resulted in only a modest improvement in DCS prediction of O2 data. Therefore, two O2-specific modifications were proposed: PO2-based alteration of inert gas kinetics (model 1) and PO2 contribution to total inert gas (model 2). Both modifications statistically significantly improved the fit, and each predicts 90% of the observed DCS incidence in O2 dives. The success of models 1 and 2 in improving prediction of DCS occurrence suggests that elevated PO2 levels contribute to DCS risk, although less than the equivalent amount of N2. Both models allow rational optimization of O2 use in accelerating decompression procedures.
人类减压病(DCS)的概率模型已成功描述了在各种N₂ - O₂潜水过程中观察到的DCS风险,但未能解释在减压过程中高PO₂潜水时观察到的DCS发病率。我们之前最成功的模型,用3322次N₂ - O₂潜水进行校准,只能预测在减压过程中进行100% O₂呼吸的潜水中40%的观察发病率。我们在校准数据中增加了1013次O₂减压潜水。将先前的模型应用于这个扩展数据集,对O₂数据的DCS预测仅略有改善。因此,我们提出了两种针对O₂的修改:基于PO₂改变惰性气体动力学(模型1)和PO₂对总惰性气体的贡献(模型2)。这两种修改在统计学上都显著改善了拟合效果,并且每种修改都能预测O₂潜水中90%的观察到的DCS发病率。模型1和模型2在改善DCS发生预测方面的成功表明,升高的PO₂水平会增加DCS风险,尽管比等量的N₂影响小。这两种模型都有助于合理优化O₂在加速减压程序中的使用。