Benjamin-Chung Jade, Colford John M, Mertens Andrew, Hubbard Alan E, Arnold Benjamin F
Division of Epidemiology & Biostatistics, University of California, Berkeley, Berkeley, CA, 94720, USA.
Francis I. Proctor Foundation, University of California, San Francisco, San Francisco, CA, 94122, USA.
Gates Open Res. 2020 Jun 17;4:17. doi: 10.12688/gatesopenres.13108.2. eCollection 2020.
Failures to reproduce research findings across scientific disciplines from psychology to physics have garnered increasing attention in recent years. External replication of published findings by outside investigators has emerged as a method to detect errors and bias in the published literature. However, some studies influence policy and practice before external replication efforts can confirm or challenge the original contributions. Uncovering and resolving errors before publication would increase the efficiency of the scientific process by increasing the accuracy of published evidence. Here we summarize the rationale and best practices for internal replication, a process in which multiple independent data analysts replicate an analysis and correct errors prior to publication. We explain how internal replication should reduce errors and bias that arise during data analyses and argue that it will be most effective when coupled with pre-specified hypotheses and analysis plans and performed with data analysts masked to experimental group assignments. By improving the reproducibility of published evidence, internal replication should contribute to more rapid scientific advances.
近年来,从心理学到物理学等各个科学学科中研究结果无法复现的情况日益受到关注。外部研究者对已发表研究结果进行重复验证已成为一种检测已发表文献中错误和偏差的方法。然而,有些研究在外部重复验证工作能够证实或质疑其最初贡献之前就影响了政策和实践。在发表之前发现并解决错误将通过提高已发表证据的准确性来提高科学进程的效率。在此,我们总结了内部重复验证的基本原理和最佳实践方法,内部重复验证是指多个独立数据分析人员在发表之前重复进行分析并纠正错误的过程。我们解释了内部重复验证应如何减少数据分析过程中出现的错误和偏差,并认为当与预先指定的假设和分析计划相结合,并由对实验组分配情况不知情的数据分析人员进行时,内部重复验证将最为有效。通过提高已发表证据的可重复性,内部重复验证应有助于科学更快地取得进展。