Sirota Miroslav, Juanchich Marie, Kostopoulou Olga, Hanak Robert
School of Medicine, King's College London, UK (MS, OK).
Kingston Business School, Kingston University London, UK (MJ)
Med Decis Making. 2014 May;34(4):419-29. doi: 10.1177/0272989X13514776. Epub 2013 Dec 5.
Accurate perception of medical probabilities communicated to patients is a cornerstone of informed decision making. People, however, are prone to biases in probability perception. Recently, Pighin and others extended the list of such biases with evidence that "1-in-X" ratios (e.g., "1 in 12") led to greater perceived probability and worry about health outcomes than "N-in-X*N" ratios (e.g., "10 in 120"). Subsequently, the recommendation was to avoid using "1-in-X" ratios when communicating probabilistic information to patients. To warrant such a recommendation, we conducted 5 well-powered replications and synthesized the available data. We found that 3 out of the 5 replications yielded statistically nonsignificant findings. In addition, our results showed that the "1-in-X" effect was not moderated by numeracy, cognitive reflection, age, or gender. To quantify the evidence for the effect, we conducted a Bayes factor meta-analysis and a traditional meta-analysis of our 5 studies and those of Pighin and others (11 comparisons, N = 1131). The meta-analytical Bayes factor, which allowed assessment of the evidence for the null hypothesis, was very low, providing decisive evidence to support the existence of the "1-in-X" effect. The traditional meta-analysis showed that the overall effect was significant (Hedges' g = 0.42, 95% CI 0.29-0.54). Overall, we provide decisive evidence for the existence of the "1-in-X" effect but suggest that it is smaller than previously estimated. Theoretical and practical implications are discussed.
准确地向患者传达医学概率认知是明智决策的基石。然而,人们在概率认知上容易出现偏差。最近,皮金等人扩展了此类偏差的清单,有证据表明,“X分之一”的比例(例如,“12分之一”)比“X*N分之N”的比例(例如,“120分之10”)会导致更高的感知概率和对健康结果的担忧。随后,建议在向患者传达概率信息时避免使用“X分之一”的比例。为了证实这一建议,我们进行了5次功效强大的重复实验并综合了现有数据。我们发现,5次重复实验中有3次产生了统计学上不显著的结果。此外,我们的结果表明,“X分之一”效应不受算术能力、认知反思、年龄或性别的影响。为了量化该效应的证据,我们对我们的5项研究以及皮金等人的研究(11项比较,N = 1131)进行了贝叶斯因子元分析和传统元分析。元分析贝叶斯因子允许评估零假设的证据,其值非常低,为支持“X分之一”效应的存在提供了决定性证据。传统元分析表明,总体效应显著(赫奇斯g值 = 0.42,95%置信区间0.29 - 0.54)。总体而言,我们为“X分之一”效应的存在提供了决定性证据,但表明其比先前估计的要小。我们还讨论了理论和实际意义。