Fraunhofer Project Group Translational Medicine and Pharmacology (IME-TMP), Frankfurt am Main, Germany.
Br J Pharmacol. 2013 Feb;168(3):534-53. doi: 10.1111/bph.12023.
The medical impact of pain is such that much effort is being applied to develop novel analgesic drugs directed towards new targets and to investigate the analgesic efficacy of known drugs. Ongoing research requires cost-saving tools to translate basic science knowledge into clinically effective analgesic compounds. In this review we have re-examined the prediction of clinical analgesia by human experimental pain models as a basis for model selection in phase I studies. The overall prediction of analgesic efficacy or failure of a drug correlated well between experimental and clinical settings. However, correct model selection requires more detailed information about which model predicts a particular clinical pain condition. We hypothesized that if an analgesic drug was effective in an experimental pain model and also a specific clinical pain condition, then that model might be predictive for that particular condition and should be selected for development as an analgesic for that condition. The validity of the prediction increases with an increase in the numbers of analgesic drug classes for which this agreement was shown. From available evidence, only five clinical pain conditions were correctly predicted by seven different pain models for at least three different drugs. Most of these models combine a sensitization method. The analysis also identified several models with low impact with respect to their clinical translation. Thus, the presently identified agreements and non-agreements between analgesic effects on experimental and on clinical pain may serve as a solid basis to identify complex sets of human pain models that bridge basic science with clinical pain research.
疼痛对医学的影响很大,因此人们正在努力开发针对新靶点的新型镇痛药物,并研究已知药物的镇痛效果。正在进行的研究需要节省成本的工具,将基础科学知识转化为具有临床疗效的镇痛化合物。在这篇综述中,我们重新检查了人类实验性疼痛模型对临床镇痛的预测,作为 I 期研究中模型选择的基础。药物在实验和临床环境中的镇痛效果或失败的总体预测相关性良好。然而,正确的模型选择需要更详细的信息,即哪种模型可以预测特定的临床疼痛情况。我们假设,如果一种镇痛药物在实验性疼痛模型中有效,并且在特定的临床疼痛情况下也有效,那么该模型可能对该特定情况具有预测性,应该选择该模型来开发针对该情况的镇痛药物。这种预测的有效性随着显示这种一致性的镇痛药物类别数量的增加而增加。根据现有证据,只有五种临床疼痛情况被七种不同的疼痛模型中的至少三种不同药物正确预测。这些模型大多结合了一种敏化方法。分析还确定了一些模型在其临床转化方面的影响较低。因此,目前在实验性疼痛和临床疼痛的镇痛效果之间的一致性和非一致性可能为识别将基础科学与临床疼痛研究联系起来的复杂人类疼痛模型提供坚实的基础。