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利多卡因两室贝叶斯预测方法的临床评估

Clinical assessment of a two-compartment Bayesian forecasting method for lidocaine.

作者信息

Beach C L, Farringer J A, Peck C C, Crawford M H, Ludden T M, Clementi W A

机构信息

Department of Pharmacology, University of Texas Health Science Center, San Antonio.

出版信息

Ther Drug Monit. 1988;10(1):74-9.

PMID:3376185
Abstract

The predictive performance of a two-compartment Bayesian forecasting method for lidocaine (L) was evaluated concurrently with lidocaine therapy in 46 hospitalized patients; 14 of these patients presented with congestive heart failure (CHF). Using an HP-85 microcomputer, demographic and dose-concentration information obtained during continuous lidocaine therapy was used to forecast subsequent lidocaine concentrations. One lidocaine concentration was obtained within each of the three intervals following initiation of lidocaine infusions: I1 (1-6 h), I2 (6-12 h), and I3 (greater than 12 h). Patients were categorized into 4 groups: (a) short-term infusions (less than 24 h) without CHF, (b) short-term infusions with CHF, (c) long-term infusions (greater than 24 h) without CHF, and (d) long-term infusions with CHF. The mean prediction errors (range -0.60-0.27) included zero (95% confidence limits) in all groups and suggested no bias. Forecasts of the I3 lidocaine concentrations were consistently more precise [lower mean absolute errors (MAE) and root mean squared errors] using the lidocaine concentration obtained during the 6-12-h interval (I2) than when the lidocaine concentration obtained at the earlier interval (I1) was used. The MAE was reduced by 20-40% when a single lidocaine concentration obtained during I2 was used as compared to I1. Precision was only slightly improved with the use of two lidocaine concentrations. We conclude that this Bayesian algorithm is unbiased and delivers acceptable precision in forecasting lidocaine concentrations.

摘要

在46例住院患者中,对利多卡因(L)的两室贝叶斯预测方法的预测性能与利多卡因治疗同时进行了评估;其中14例患者患有充血性心力衰竭(CHF)。使用HP - 85微型计算机,在持续利多卡因治疗期间获得的人口统计学和剂量 - 浓度信息被用于预测后续的利多卡因浓度。在开始输注利多卡因后的三个时间段内,每个时间段均获取一次利多卡因浓度:I1(1 - 6小时)、I2(6 - 12小时)和I3(大于12小时)。患者被分为4组:(a)无CHF的短期输注(小于24小时),(b)有CHF的短期输注,(c)无CHF的长期输注(大于24小时),以及(d)有CHF的长期输注。平均预测误差(范围为 - 0.60 - 0.27)在所有组中均包含零(95%置信限),表明无偏差。使用在6 - 12小时时间段(I2)内获得的利多卡因浓度预测I3利多卡因浓度,比使用较早时间段(I1)获得的利多卡因浓度时,始终更精确[平均绝对误差(MAE)和均方根误差更低]。与I1相比,当使用I2期间获得的单个利多卡因浓度时,MAE降低了20 - 40%。使用两个利多卡因浓度时,精度仅略有提高。我们得出结论,这种贝叶斯算法无偏差,在预测利多卡因浓度方面具有可接受的精度。

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