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缓慢但肯定的是,贝叶斯思想彻底改变了医学研究

Slowly but surely, Bayesian ideas revolutionize medical research
课程网址: http://videolectures.net/isba2012_berry_bayesian_ideas/  
主讲教师: Peter Mueller, Donald A. Berry
开课单位: 德克萨斯大学
开课时间: 2012-08-22
课程语种: 英语
中文简介:
贝叶斯理论优雅直观。但优雅在实际环境中可能没什么价值。 20世纪后半叶的“贝叶斯革命”与生物统计学家无关。他们正在以另一种方式忙着改变世界,他们既不需要也不想要更多的方法论。随机对照试验(RCT)于20世纪40年代出现,它将医学研究从一门艺术转变为一门科学,生物统计学家指导了这一过程。为了使贝叶斯人的声誉更加糟糕,我们似乎是反随机化和医学研究人员fearedwe想让他们回到黑暗时代。临床实验的标准方法是频繁的,这有利有弊。一个缺点是统计推断的单位是整个实验。因此,RCT基本保持不变。它仍然是医学研究的黄金标准,但它可以使研究变得非常缓慢。并且它不适合当今的“个性化医疗”方法,确定哪些类型的患者从哪种疗法中受益。在本演示中,我将记录在此期间贝叶斯视角在医学研究中的使用增加。一个重要的利基关注自适应设计。我将描述各种方法,其中大多数采用随机化,并且都采用贝叶斯更新。经常分析累积的试验结果,可以根据试验的总体主题修改试验的未来课程。可以有许多治疗臂。包括组合疗法使得能够学习如何相互作用以及它们与个体患者特有的疾病的生物标志物相互作用的方式。我将举一个贝叶斯适应性生物标志物驱动试验在辅助性乳腺癌中的例子(称为I SPY 2)。目标是有效地识别同时考虑的各种药剂和组合的生物标志物特征。纵向建模起着至关重要的作用。尽管贝叶斯方法为设计信息性和有效的临床试验提供了重要工具,但我还是试图不要过于突然地改变事物。特别是,我们可以通过使用模拟评估误报率和统计功效来保持根深蒂固的频繁传统的传统。这个故事中最激动人心的方面是在未来利用贝叶斯思想建立更有效的研究设计和开发治疗相关过程的潜力,基于现有的坚实基础。
课程简介: Bayesian theory is elegant and intuitive. But elegance may have little value in practical settings. The “Bayesian Revolution” of the last half of the 20th century was irrelevant for biostatisticians. They were busy changing the world in another way, and they neither needed nor wanted more methodology than they already had. The randomized controlled trial (RCT) came into existence in the 1940s and it changed medical research from an art into a science, with biostatisticians guiding the process. To make matters worse for the reputation of Bayesians, we seemed to be anti-randomization, and medical researchers feared we wanted to return them to the dark ages. The standard approach to clinical experimentation is frequentist, which has advantages and disadvantages. One disadvantage is that unit of statistical inference is the entire experiment. As a consequence, the RCT has remained largely unchanged. It is still the gold standard of medical research, but it can make research ponderously slow. And it is not ideally suited for the “personalized medicine” approach of today, identifying which types of patients benefit from which therapies. In this presentation I’ll chronicle the increased use of the Bayesian perspective in medical research over this period. An important niche regards adaptive design. I’ll describe a variety of approaches, most of which employ randomization, and all employ Bayesian updating. Accumulating trial results are analyzed frequently with the possibility of modifying the trial’s future course based on the overall theme of the trial. It is possible to have many treatment arms. Including combination therapies enables learning howtreatments interact with each other aswell as the way they interact with biomarkers of disease that are specific to individual patients. I will give an example (called I-SPY 2) of a Bayesian adaptive biomarker-driven trial in neoadjuvant breast cancer. The goal is to efficiently identify biomarker signatures for a variety of agents and combinations being considered simultaneously. Longitudinal modeling plays a vital role. Although the Bayesian approach supplies important tools for designing informative and efficient clinical trials, I’ve learned to not try to change things too abruptly. In particular, we can stay rooted in the well established frequentist tradition by evaluating false-positive rates and statistical power using simulation. The most exciting aspect of this story is the potential for utilizing Bayesian ideas in the future to build ever more efficient study designs and associated processes for developing therapies, based on the existing solid foundation.
关 键 词: 贝叶斯理论; 反随机化; 医学研究
课程来源: 视频讲座网
最后编审: 2020-06-08:yumf
阅读次数: 66