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基于估计的治疗效果函数构建治疗选择规则:考虑随机不确定性的不同方法对性能有很大影响。

Constructing treatment selection rules based on an estimated treatment effect function: different approaches to take stochastic uncertainty into account have a substantial effect on performance.

机构信息

Institute of Medical Biometry and Statistics, Section of Health Care Research and Rehabilitation Research, Faculty of Medicine and Medical Center - University of Freiburg, Hebelstr. 11, Freiburg, 79104, Germany.

Department of Orthopaedics and Traumatology, University Hospital Basel, Spitalstr. 21, Basel, CH-4031, Switzerland.

出版信息

BMC Med Res Methodol. 2019 Aug 1;19(1):168. doi: 10.1186/s12874-019-0805-x.

Abstract

BACKGROUND

Today we are often interested in the predictive value of a continuous marker with respect to the expected difference in outcome between a new treatment and a standard treatment. We can investigate this in a randomized control trial, allowing us to assess interactions between treatment and marker and to construct a treatment selection rule. A first step is often to estimate the treatment effect as a function of the marker value. A variety of approaches have been suggested for the second step to define explicitly the rule to select the treatment, varying in the way to take uncertainty into account. Little is known about the merits of the different approaches.

METHODS

Four construction principles for the second step are compared. They are based on the root of the estimated function, on confidence intervals for the root, or on pointwise or simultaneous confidence bands. All of them have been used implicitly or explicitly in the literature. As performance characteristics we consider the probability to select at least some patients, the probability to classify patients with and without a benefit correctly, and the gain in expected outcome at the population level. These characteristics are investigated in a simulation study.

RESULTS

As to be expected confidence interval/band based approaches reduce the risk to select patients who do not benefit from the new treatment, but they tend to overlook patients who can benefit. Simply using positivity of the estimated treatment effect function for selection implies often a larger gain in expected outcome.

CONCLUSIONS

The use of 95% confidence intervals/bands in constructing treatment selection rules is a rather conservative approach. There is a need for better construction principles for treatment selection rules aiming to maximize the gain in expected outcome at the population level. Choosing a confidence level of 80% may be a first step in this direction.

摘要

背景

如今,我们经常对连续标记物在新治疗方法与标准治疗方法之间预期疗效差异的预测价值感兴趣。我们可以在随机对照试验中研究这一点,从而评估治疗方法与标记物之间的相互作用,并构建治疗选择规则。第一步通常是根据标记物值来估计治疗效果。已经提出了多种方法来定义第二步,明确选择治疗方法的规则,这些方法在考虑不确定性的方式上有所不同。对于不同方法的优点,我们知之甚少。

方法

比较了第二步的四种构造原则。它们基于估计函数的根、根的置信区间、或逐点或同时置信带。所有这些方法在文献中都被隐含或显式地使用过。作为性能特征,我们考虑选择至少一些受益患者的概率、正确分类受益和无受益患者的概率,以及人群水平上预期疗效的提高。这些特征在模拟研究中进行了研究。

结果

正如预期的那样,基于置信区间/带的方法减少了选择新治疗方法无获益患者的风险,但它们往往忽略了可以受益的患者。简单地使用估计的治疗效果函数的正值来进行选择通常意味着预期疗效的提高幅度更大。

结论

在构建治疗选择规则时使用 95%置信区间/带是一种相当保守的方法。需要更好的治疗选择规则构建原则,旨在最大限度地提高人群水平的预期疗效提高。选择 80%的置信水平可能是朝这个方向迈出的第一步。

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