Ivey Business School, Western University, London, ON, Canada.
Med Decis Making. 2019 Feb;39(2):108-118. doi: 10.1177/0272989X18823757. Epub 2019 Jan 24.
The same test with the same result has different positive predictive values (PPVs) for people with different pretest probability of disease. Representative thinking theory suggests people are unlikely to realize this because they ignore or underweight prior beliefs when given new information (e.g., test results) or due to confusing test sensitivity (probability of positive test given disease) with PPV (probability of disease given positive test). This research examines whether physicians and MBAs intuitively know that PPV following positive mammography for an asymptomatic woman is less than PPV for a symptomatic woman and, if so, whether they correctly perceive the difference.
Sixty general practitioners (GPs) and 84 MBA students were given 2 vignettes of women with abnormal (positive) mammography tests: 1 with prior symptoms (diagnostic test), the other an asymptomatic woman participating in mass screening (screening test). Respondents estimated pretest and posttest probabilities. Sensitivity and specificity were neither provided nor elicited.
Eighty-eight percent of GPs and 46% of MBAs considered base rates and estimated PPV in diagnosis greater than PPV in screening. On average, GPs estimated a 27-point difference and MBAs an 18-point difference, compared to actual of 55 or more points. Ten percent of GPs and 46% of MBAs ignored base rates, incorrectly assessing the 2 PPVs as equal.
Physicians and patients are better at intuitive Bayesian reasoning than is suggested by studies that make test accuracy values readily available to be confused with PPV. However, MBAs and physicians interpret a positive in screening as more similar to a positive in diagnosis than it is, with nearly half of MBAs and some physicians wrongly equating the two. This has implications for overdiagnosis and overtreatment.
对于不同疾病先验概率的人,相同的检测结果具有不同的阳性预测值(PPV)。代表性思维理论表明,人们不太可能意识到这一点,因为当他们接收到新信息(例如,检测结果)时,他们会忽略或低估先验信念,或者由于混淆了检测灵敏度(患病时的阳性检测概率)和 PPV(阳性检测时的患病概率)。本研究检验了医生和 MBA 学生是否直观地知道,对于无症状女性,阳性乳房 X 光检查后的 PPV 小于有症状女性,以及如果是这样,他们是否正确地感知到这种差异。
60 名全科医生(GP)和 84 名 MBA 学生分别收到了 2 个有异常(阳性)乳房 X 光检查结果的女性病例:1 个有先前症状(诊断性检测),另一个是无症状女性参加了大规模筛查(筛查性检测)。受访者估计了先验和后验概率。既没有提供也没有引出检测的敏感性和特异性。
88%的 GP 和 46%的 MBA 认为基础率,并估计了诊断中的 PPV 高于筛查中的 PPV。平均而言,GP 估计的差异为 27 分,MBA 为 18 分,而实际差异为 55 分以上。10%的 GP 和 46%的 MBA 忽略了基础率,错误地认为这两个 PPV 相等。
与那些使检测准确性值易于混淆的 PPV 的研究相比,医生和患者在直观贝叶斯推理方面做得更好。然而,MBA 和医生将筛查中的阳性结果解释为与诊断中的阳性结果更为相似,近一半的 MBA 和一些医生错误地将两者等同起来。这对过度诊断和过度治疗有影响。