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Monitoring of large randomised clinical trials: a new approach with Bayesian methods.

机译:大型随机临床试验的监测:贝叶斯方法的新方法。

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BACKGROUND: In judging whether or not to continue enrolling patients into a randomised clinical trial, most data-monitoring and ethics committees (DMECs) rely on the p value for the difference in effect between the study groups. In the 1990s, two randomised controlled trials-one in patients with lung cancer and one in those with head and neck cancer-were instead monitored by Bayesian methods. We assessed the value of this approach in the monitoring of these clinical trials. METHODS: Before the trials opened, participating clinicians were asked their opinions on the expected difference between the study treatment (continuous hyperfractionated accelerated radiotherapy [CHART]) and conventional radiotherapy. These opinions were used to form an "enthusiastic" and a "sceptical" prior distribution. These prior distributions were combined with the trial data at each of the annual DMEC meetings. If, during monitoring, a result in favour of CHART was seen, the DMEC was to decide whether the results were sufficiently convincing to persuade a sceptic that CHART was worthwhile. Conversely, if there was apparently no or little difference, the DMEC was asked whether they thought the results sufficiently convincing to persuade an enthusiast that CHART was not worthwhile. FINDINGS: At each of the annual meetings, the DMEC concluded that there was insufficient evidence to convert either sceptics or enthusiasts, and that the trials should therefore remain open to recruitment. Neither trial was closed to recruitment earlier than planned. However if a conventional (p-value-based) stopping rule had been used, the lung-cancer trial would probably have been stopped. INTERPRETATION: This Bayesian approach to monitoring is simple to implement and straightforward for members of the DMEC to understand. In our opinion, it is more intuitively appealing than conventional approaches.
机译:背景:在判断是否继续招募患者参加随机临床试验时,大多数数据监测和伦理委员会(DMEC)都依赖p值来确定研究组之间的效果差异。在1990年代,改为采用贝叶斯方法监测两项随机对照试验,一项针对肺癌患者,另一项针对头颈癌患者。我们评估了这种方法在监测这些临床试验中的价值。方法:在试验开始之前,要求参与的临床医生就研究治疗(连续超分割加速放射治疗[CHART])与常规放射治疗之间的预期差异提出意见。这些意见被用来形成“热情”和“怀疑”的先验分布。在每个DMEC年度会议上,这些先前的分配与试验数据结合在一起。如果在监测过程中看到有利于CHART的结果,则DMEC将决定该结果是否足以令人信服,以说服怀疑者相信CHART值得。相反,如果两者之间没有明显差异或几乎没有差异,则询问DMEC,他们是否认为结果足够令人信服以说服发烧友CHART不值得。结果:在每个年度会议上,DMEC得出的结论是,没有足够的证据来转换怀疑论者或狂热者,因此试验应继续招募。两项试验均未提前征募完成。但是,如果使用了常规的(基于p值的)停止规则,则可能已经停止了肺癌试验。解释:这种贝叶斯监测方法易于实施,并且对于DMEC成员来说也很容易理解。我们认为,它比常规方法更具直觉吸引力。

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