Knowledge translation of prediction rules: methods to help health professionals understand their trade-offs.

K Hemming, M Taljaard
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Abstract

Clinical prediction models are developed with the ultimate aim of improving patient outcomes, and are often turned into prediction rules (e.g. classifying people as low/high risk using cut-points of predicted risk) at some point during the development stage. Prediction rules often have reasonable ability to either rule-in or rule-out disease (or another event), but rarely both. When a prediction model is intended to be used as a prediction rule, conveying its performance using the C-statistic, the most commonly reported model performance measure, does not provide information on the magnitude of the trade-offs. Yet, it is important that these trade-offs are clear, for example, to health professionals who might implement the prediction rule. This can be viewed as a form of knowledge translation. When communicating information on trade-offs to patients and the public there is a large body of evidence that indicates natural frequencies are most easily understood, and one particularly well-received way of depicting the natural frequency information is to use population diagrams. There is also evidence that health professionals benefit from information presented in this way.Here we illustrate how the implications of the trade-offs associated with prediction rules can be more readily appreciated when using natural frequencies. We recommend that the reporting of the performance of prediction rules should (1) present information using natural frequencies across a range of cut-points to inform the choice of plausible cut-points and (2) when the prediction rule is recommended for clinical use at a particular cut-point the implications of the trade-offs are communicated using population diagrams. Using two existing prediction rules, we illustrate how these methods offer a means of effectively and transparently communicating essential information about trade-offs associated with prediction rules.

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预测规则的知识翻译:帮助卫生专业人员了解其权衡的方法。
临床预测模型的最终目的是改善患者的预后,并且经常在开发阶段的某个时刻转变为预测规则(例如,使用预测风险的切割点将人们划分为低/高风险)。预测规则通常有合理的能力来排除或排除疾病(或其他事件),但很少两者兼而有之。当打算将预测模型用作预测规则时,使用c统计量(最常报告的模型性能度量)来传达其性能,并不提供有关权衡大小的信息。然而,重要的是,这些权衡是明确的,例如,对于可能实施预测规则的卫生专业人员。这可以看作是知识翻译的一种形式。在向患者和公众传达有关权衡的信息时,有大量证据表明,固有频率是最容易理解的,而描述固有频率信息的一种特别受欢迎的方法是使用人口图。也有证据表明,卫生专业人员从这种方式提供的信息中受益。在这里,我们说明了当使用固有频率时,如何更容易理解与预测规则相关的权衡的含义。我们建议,预测规则的性能报告应该(1)使用跨越一系列切割点的固有频率来提供信息,以告知合理切割点的选择;(2)当预测规则被推荐用于特定切割点的临床使用时,使用总体图来传达权衡的含义。使用两个现有的预测规则,我们说明了这些方法如何提供一种有效和透明地传达与预测规则相关的权衡的基本信息的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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