Lim Hyeong-Seok, Soung Jea Hyen, Bae Kyun-Seop
Department of Clinical Pharmacology and Therapeutics, Asan Medical Center, Ulsan University College of Medicine, Seoul 05505, Republic of Korea.
Center of International Cooperation, Korean Institute of Criminology, Seoul 06764, Republic of Korea.
Transl Clin Pharmacol. 2017 Mar;25(1):5-9. doi: 10.12793/tcp.2017.25.1.5. Epub 2017 Mar 15.
Drunk driving is a serious social problem. We estimated the blood alcohol concentration of a defendant on the request of local prosecutor's office in Korea. Based on the defendant's history, and a previously constructed pharmacokinetic model for alcohol, we estimated the possible alcohol concentration over time during his driving using a Bayesian method implemented in NONMEM®. To ensure generalizability and to take the parameter uncertainty of the alcohol pharmacokinetic models into account, a non-parametric bootstrap with 1,000 replicates was applied to the Bayesian estimations. The current analysis enabled the prediction of the defendant's possible blood alcohol concentrations over time with a 95% prediction interval. The results showed a high probability that the alcohol concentration was ≥ 0.05% during driving. The current estimation of the alcohol concentration during driving by the Bayesian method could be used as scientific evidence during court trials.
酒后驾车是一个严重的社会问题。应韩国当地检察官办公室的要求,我们估算了一名被告的血液酒精浓度。基于被告的过往情况以及先前构建的酒精药代动力学模型,我们使用NONMEM®软件中实现的贝叶斯方法估算了他驾车期间随时间变化的可能酒精浓度。为确保普遍性并考虑酒精药代动力学模型的参数不确定性,对贝叶斯估计应用了1000次重复的非参数自助法。当前分析能够预测被告随时间变化的可能血液酒精浓度,并给出95%的预测区间。结果显示,驾车期间酒精浓度≥0.05%的可能性很高。当前通过贝叶斯方法对驾车期间酒精浓度的估算可在法庭审判中用作科学证据。