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用于预测临床镇痛效果的疼痛人体模型。

Human models of pain for the prediction of clinical analgesia.

作者信息

Lötsch Jörn, Oertel Bruno G, Ultsch Alfred

机构信息

Institute of Clinical Pharmacology, Goethe-University, Frankfurt am Main, Germany; Fraunhofer Project Group Translational Medicine and Pharmacology (IME-TMP), Frankfurt am Main, Germany.

Fraunhofer Project Group Translational Medicine and Pharmacology (IME-TMP), Frankfurt am Main, Germany.

出版信息

Pain. 2014 Oct;155(10):2014-21. doi: 10.1016/j.pain.2014.07.003. Epub 2014 Jul 11.

Abstract

Human experimental pain models are widely used to study drug effects under controlled conditions. However, efforts to improve both animal and human experimental model selection, on the basis of increased understanding of the underlying pathophysiological pain mechanisms, have been disappointing, with poor translation of results to clinical analgesia. We have developed an alternative approach to the selection of suitable pain models that can correctly predict drug efficacy in particular clinical settings. This is based on the analysis of successful or unsuccessful empirical prediction of clinical analgesia using experimental pain models. We analyzed statistically the distribution of published mutual agreements or disagreements between drug efficacy in experimental and clinical pain settings. Significance limits were derived by random permutations of agreements. We found that a limited subset of pain models predicts a large number of clinically relevant pain settings, including efficacy against neuropathic pain for which novel analgesics are particularly needed. Thus, based on empirical evidence of agreement between drugs for their efficacy in experimental and clinical pain settings, it is possible to identify pain models that reliably predict clinical analgesic drug efficacy in cost-effective experimental settings.

摘要

人体实验性疼痛模型被广泛用于在可控条件下研究药物效果。然而,基于对潜在病理生理疼痛机制的深入理解,在改进动物和人体实验模型选择方面所做的努力却令人失望,实验结果在临床镇痛方面的转化效果不佳。我们开发了一种选择合适疼痛模型的替代方法,该方法能够在特定临床环境中正确预测药物疗效。这基于对使用实验性疼痛模型对临床镇痛进行成功或失败的经验性预测的分析。我们对已发表的实验性和临床疼痛环境中药物疗效之间的相互一致性或不一致性分布进行了统计分析。通过对一致性进行随机排列得出显著性界限。我们发现,一小部分疼痛模型能够预测大量临床上相关的疼痛情况,包括对新型镇痛药特别需要的神经性疼痛的疗效。因此,基于药物在实验性和临床疼痛环境中疗效一致性的经验证据,有可能在具有成本效益的实验环境中识别出能够可靠预测临床镇痛药疗效的疼痛模型。

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