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提高抗疟药物疗效试验分析方法:基于长度多态性标记 、 、 和的分子校正。

Improving Methods for Analyzing Antimalarial Drug Efficacy Trials: Molecular Correction Based on Length-Polymorphic Markers , , and .

机构信息

Department of Tropical Disease Biology, Liverpool School of Tropical Medicine, Liverpool, United Kingdom

Metrum Research Group, Tariffville, Connecticut, USA.

出版信息

Antimicrob Agents Chemother. 2019 Aug 23;63(9). doi: 10.1128/AAC.00590-19. Print 2019 Sep.

Abstract

Drug efficacy trials monitor the continued efficacy of front-line drugs against falciparum malaria. Overestimating efficacy results in a country retaining a failing drug as first-line treatment with associated increases in morbidity and mortality, while underestimating drug effectiveness leads to removal of an effective treatment with substantial practical and economic implications. Trials are challenging: they require long durations of follow-up to detect drug failures, and patients are frequently reinfected during that period. Molecular correction based on parasite genotypes distinguishes reinfections from drug failures to ensure the accuracy of failure rate estimates. Several molecular correction "algorithms" have been proposed, but which is most accurate and/or robust remains unknown. We used pharmacological modeling to simulate parasite dynamics and genetic signals that occur in patients enrolled in malaria drug clinical trials. We compared estimates of treatment failure obtained from a selection of proposed molecular correction algorithms against the known "true" failure rate in the model. Our findings are as follows. (i) Molecular correction is essential to avoid substantial overestimates of drug failure rates. (ii) The current WHO-recommended algorithm consistently underestimates the true failure rate. (iii) Newly proposed algorithms produce more accurate failure rate estimates; the most accurate algorithm depends on the choice of drug, trial follow-up length, and transmission intensity. (iv) Long durations of patient follow-up may be counterproductive; large numbers of new infections accumulate and may be misclassified, overestimating drug failure rate. (v) Our model was highly consistent with existing data. The current WHO-recommended method for molecular correction and analysis of clinical trials should be reevaluated and updated.

摘要

药效试验监测一线抗疟药物对恶性疟原虫的持续疗效。高估疗效会导致一个国家保留一种失败的药物作为一线治疗,从而导致发病率和死亡率上升,而低估药物的有效性则会导致一种有效的治疗方法被移除,这会带来实质性的实际和经济影响。试验具有挑战性:它们需要长时间的随访才能检测到药物失效,而在此期间患者经常会再次感染。基于寄生虫基因型的分子校正可区分再感染和药物失效,以确保失效率估计的准确性。已经提出了几种分子校正“算法”,但哪种算法最准确和/或稳健性仍不清楚。我们使用药理学模型模拟了在疟疾药物临床试验中招募的患者中出现的寄生虫动力学和遗传信号。我们比较了从几种建议的分子校正算法中获得的治疗失败估计值与模型中已知的“真实”失败率。我们的发现如下。(i)分子校正对于避免药物失效率的大幅高估是必不可少的。(ii)当前世界卫生组织推荐的算法始终低估了真实的失效率。(iii)新提出的算法产生更准确的失效率估计值;最准确的算法取决于药物选择、试验随访时间和传播强度。(iv)患者随访时间过长可能适得其反;大量新感染的积累可能会被错误分类,从而高估药物失效率。(v)我们的模型与现有数据高度一致。当前世界卫生组织推荐的用于分子校正和临床试验分析的方法应重新评估和更新。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a04a/6709465/c800e316d1a1/AAC.00590-19-f0001.jpg

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