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首页> 外文期刊>The lancet. Respiratory medicine. >Clinical trials in critical care: can a Bayesian approach enhance clinical and scientific decision making?
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Clinical trials in critical care: can a Bayesian approach enhance clinical and scientific decision making?

机译:临床试验在重大关怀中:贝叶斯方法可以增强临床和科学决策吗?

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Recent Bayesian reanalyses of prominent trials in critical illness have generated controversy by contradicting the initial conclusions based on conventional frequentist analyses. Many clinicians might be sceptical that Bayesian analysis, a philosophical and statistical approach that combines prior beliefs with data to generate probabilities, provides more useful information about clinical trials than the frequentist approach. In this Personal View, we introduce clinicians to the rationale, process, and interpretation of Bayesian analysis through a systematic review and reanalysis of interventional trials in critical illness. In the majority of cases, Bayesian and frequentist analyses agreed. In the remainder, Bayesian analysis identified interventions where benefit was probable despite the absence of statistical significance, where interpretation depended substantially on choice of prior distribution, and where benefit was improbable despite statistical significance. Bayesian analysis in critical care medicine can help to distinguish harm from uncertainty and establish the probability of clinically important benefit for clinicians, policy makers, and patients.
机译:最近对危重病重要试验的贝叶斯再分析与基于传统常客分析的初步结论相矛盾,引发了争议。许多临床医生可能会怀疑,贝叶斯分析是一种哲学和统计学方法,它将先前的信念与数据结合起来,以产生概率,它提供了比常客方法更有用的临床试验信息。在这种个人观点下,我们通过对危重病介入试验的系统回顾和再分析,向临床医生介绍贝叶斯分析的原理、过程和解释。在大多数情况下,贝叶斯分析和常客分析一致。在剩下的研究中,贝叶斯分析确定了干预措施,在这些干预措施中,尽管没有统计显著性,但益处是可能的;在这些干预措施中,解释基本上取决于先验分布的选择;在这些干预措施中,尽管有统计显著性,但益处是不可能的。危重病护理医学中的贝叶斯分析有助于区分危害和不确定性,并为临床医生、决策者和患者确定临床重要益处的概率。

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