Walter S D, Irwig L
Department of Clinical Epidemiology and Biostatistics, McMaster University, Hamilton, Ontario, Canada.
Stat Med. 2001 Mar 30;20(6):893-906. doi: 10.1002/sim.707.
The number needed to treat (NNT) index has been proposed as a clinically useful measure to assess the results of randomized trials and other clinical studies. In its usual form, NNT indicates the expected number of patients who must be treated with an experimental therapy in order to prevent one adverse event, compared to the expected event rates under the control therapy. It can be formulated as a function of the proportions of patients who respond to treatment by more than a certain amount, the clinically important difference. We may also wish to evaluate two group studies comparing treatment and control responses, and to consider net benefit from treatment (by also allowing for individuals who deteriorate as well as those who respond positively). In this paper, we investigate the effect on NNT caused by measurement errors in continuous outcome measures. Such errors can lead to bias in the estimated proportions of subjects with clinically important responses, and hence bias the associated values of NNT. General expressions for the bias are derived, and enumerated for typical scenarios. For many situations, reliability of 80 per cent or more in the observations is required to restrict the bias to tolerable levels.
需治疗人数(NNT)指数已被提议作为一种临床有用的指标,用于评估随机试验和其他临床研究的结果。以其通常形式,NNT表示与对照疗法下的预期事件发生率相比,必须接受实验性疗法治疗多少患者才能预防一次不良事件。它可以表示为对治疗反应超过一定量(即临床重要差异)的患者比例的函数。我们可能还希望评估比较治疗和对照反应的两组研究,并考虑治疗的净效益(同时考虑病情恶化的个体以及反应良好的个体)。在本文中,我们研究连续结果测量中的测量误差对NNT的影响。此类误差可能导致具有临床重要反应的受试者估计比例出现偏差,从而使NNT的相关值产生偏差。推导了偏差的一般表达式,并列举了典型情况。在许多情况下,需要观测值的可靠性达到80%或更高,才能将偏差限制在可容忍的水平。