Kent Thomas A, Mandava Pitchaiah
Stroke Outcomes Laboratory, Department of Neurology, Baylor College of Medicine, McNair Campus, 7200 Cambridge St. 9th Floor, MS: BCM609, Houston, TX, 77030, USA.
Michael E. DeBakey VA Medical Center Stroke Program and Center for Translational Research on Inflammatory Diseases, Houston, TX, USA.
Transl Stroke Res. 2016 Aug;7(4):274-83. doi: 10.1007/s12975-016-0463-9. Epub 2016 Mar 28.
High-profile failures in stroke clinical trials have discouraged clinical translation of neuroprotectants. While there are several plausible explanations for these failures, we believe that the fundamental problem is the way clinical and pre-clinical studies are designed and analyzed for heterogeneous disorders such as stroke due to innate biological and methodological variability that current methods cannot capture. Recent efforts to address pre-clinical rigor and design, while important, are unable to account for variability present even in genetically homogenous rodents. Indeed, efforts to minimize variability may lessen the clinical relevance of pre-clinical models. We propose a new approach that recognizes the important role of baseline stroke severity and other factors in influencing outcome. Analogous to clinical trials, we propose reporting baseline factors that influence outcome and then adapting for the pre-clinical setting a method developed for clinical trial analysis where the influence of baseline factors is mathematically modeled and the variance quantified. A new therapy's effectiveness is then evaluated relative to the pooled outcome variance at its own baseline conditions. In this way, an objective threshold for robustness can be established that must be overcome to suggest its effectiveness when expanded to broader populations outside of the controlled environment of the PI's laboratory. The method is model neutral and subsumes sources of variance as reflected in baseline factors such as initial stroke severity. We propose that this new approach deserves consideration for providing an objective method to select agents worthy of the commitment of time and resources in translation to clinical trials.
中风临床试验中备受瞩目的失败案例阻碍了神经保护剂的临床转化。虽然对于这些失败有多种合理的解释,但我们认为根本问题在于,由于当前方法无法捕捉到的内在生物学和方法学变异性,对于中风等异质性疾病的临床和临床前研究在设计和分析方式上存在问题。近期为解决临床前研究的严谨性和设计所做的努力虽然重要,但即使在基因同质的啮齿动物中也无法解释存在的变异性。事实上,尽量减少变异性的努力可能会降低临床前模型的临床相关性。我们提出一种新方法,该方法认识到基线中风严重程度和其他因素在影响结果方面的重要作用。类似于临床试验,我们建议报告影响结果的基线因素,然后将一种为临床试验分析开发的方法应用于临床前环境,在该方法中,对基线因素的影响进行数学建模并对方差进行量化。然后相对于其自身基线条件下的合并结果方差评估新疗法的有效性。通过这种方式,可以建立一个稳健性的客观阈值,当在PI实验室的受控环境之外扩展到更广泛人群时,必须克服该阈值才能表明其有效性。该方法对模型不敏感,并包含了诸如初始中风严重程度等基线因素所反映的方差来源。我们建议这种新方法值得考虑,因为它提供了一种客观方法来选择值得投入时间和资源进行临床试验转化研究的药物。