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首页> 外文期刊>Antimicrobial agents and chemotherapy. >Frequentist and Bayesian pharmacometric-based approaches to facilitate critically needed new antibiotic development: Overcoming lies, damn lies, and statistics
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Frequentist and Bayesian pharmacometric-based approaches to facilitate critically needed new antibiotic development: Overcoming lies, damn lies, and statistics

机译:基于频率和贝叶斯药理学的方法来促进急需的新抗生素开发:克服谎言,该死的谎言和统计数据

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摘要

Antimicrobial drug development has greatly diminished due to regulatory uncertainty about the magnitude of the antibiotic treatment effect. Herein we evaluate the utility of pharmacometric-based analyses for determining the magnitude of the treatment effect. Frequentist and Bayesian pharmacometric-based logistic regression analyses were conducted by using data from a phase 3 clinical trial of tigecycline-treated patients with hospital-acquired pneumonia (HAP) to evaluate relationships between the probability of microbiological or clinical success and the free-drug area under the concentration-time curve from time zero to 24 h (AUC 0-24)/MIC ratio. By using both the frequentist and Bayesian approaches, the magnitude of the treatment effect was determined using three different methods based on the probability of success at free-drug AUC 0-24/MIC ratios of 0.01 and 25. Differences in point estimates of the treatment effect for microbiological response (method 1) were larger using the frequentist approach than using the Bayesian approach (Bayesian estimate, 0.395; frequentist estimate, 0.637). However, the Bayesian credible intervals were tighter than the frequentist confidence intervals, demonstrating increased certainty with the former approach. The treatment effect determined by taking the difference in the probabilities of success between the upper limit of a 95% interval for the minimal exposure and the lower limit of a 95% interval at the maximal exposure (method 2) was greater for the Bayesian analysis (Bayesian estimate, 0.074; frequentist estimate, 0.004). After utilizing bootstrapping to determine the lower 95% bounds for the treatment effect (method 3), treatment effect estimates were still higher for the Bayesian analysis (Bayesian estimate, 0.301; frequentist estimate, 0.166). These results demonstrate the utility of frequentist and Bayesian pharmacometric-based analyses for the determination of the treatment effect using contemporary trial endpoints. Additionally, as demonstrated by using pharmacokinetic-pharmacodynamic data, the magnitude of the treatment effect for patients with HAP is large.
机译:由于对抗生素治疗效果的大小存在监管不确定性,抗菌药物的开发已大大减少。本文中,我们评估了基于药理学分析的效用,以确定治疗效果的大小。通过使用替加环素治疗的医院获得性肺炎(HAP)患者的3期临床试验的数据,进行了基于频率和贝叶斯药理学的逻辑回归分析,以评估微生物学或临床成功率与自由药物面积之间的关系在从时间0到24 h(AUC 0-24)/ MIC比的浓度-时间曲线下。通过同时使用频频和贝叶斯方法,根据自由药物AUC 0-24 / MIC比为0.01和25时的成功概率,使用三种不同的方法确定治疗效果的大小。治疗点估计值的差异频繁使用的方​​法对微生物反应的影响(方法1)比使用贝叶斯方法更大(贝叶斯估计,0.395;频繁估计,0.637)。但是,贝叶斯可信区间比频繁主义者的置信区间更紧密,这表明前一种方法具有更高的确定性。对于贝叶斯分析,通过将最小暴露的95%区间的上限与最大暴露下的95%区间的下限之间的成功概率之差确定的治疗效果对于贝叶斯分析而言更大(贝叶斯估计为0.074;常客估计为0.004)。在利用自举确定较低的95%的治疗效果界限(方法3)后,贝叶斯分析的治疗效果估计值仍然更高(贝叶斯估计值0.301;频繁估计值0.166)。这些结果证明了使用频频和基于贝叶斯药理学的分析方法来确定使用当代试验终点的治疗效果。另外,如通过使用药代动力学-药效学数据所证明的,对于HAP患者的治疗效果的幅度很大。

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