The influential claim that most published results are false raised concerns about the trustworthiness and integrity of science. Since then, there have been numerous attempts to examine the rate of false-positive results that have failed to settle this question empirically. Here we propose a new way to estimate the false positive risk and apply the method to the results of (randomized) clinical trials in top medical journals. Contrary to claims that most published results are false, we find that the traditional significance criterion of $\alpha = .05$ produces a false positive risk of 13%. Adjusting $\alpha$ to .01 lowers the false positive risk to less than 5%. However, our method does provide clear evidence of publication bias that leads to inflated effect size estimates. These results provide a solid empirical foundation for evaluations of the trustworthiness of medical research.
翻译:有关大多数公布的结果都是虚假的这一有影响力的说法引起了对科学的可信度和完整性的关切。 从那时以来,人们曾多次试图审查虚假的正面结果率,但未能从经验上解决这个问题。 我们在这里提出了一种新的方法来估计虚假的正面风险,并将这种方法应用于高级医学期刊的临床试验(随机化)结果。 与大多数公布的结果都是虚假的说法相反,我们发现传统意义标准$\alpha=0.5美元产生了13 %的虚假积极风险。 将美元调整为.01,将假的正面风险降低到不到5 % 。 然而,我们的方法确实提供了明确的出版物偏差证据,导致效果大小估计的夸大。 这些结果为评估医学研究的可信度提供了坚实的经验基础。