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Translational and Clinical Pharmacology ; : 5-9, 2017.
Article in English | WPRIM | ID: wpr-196854

ABSTRACT

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.


Subject(s)
Bayes Theorem , Blood Alcohol Content , Driving Under the Influence , Forensic Sciences , Korea , Pharmacology, Clinical , Social Problems , Uncertainty
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