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比较多重比较:选择最佳多重比较检验的实用指南。

Comparing multiple comparisons: practical guidance for choosing the best multiple comparisons test.

作者信息

Midway Stephen, Robertson Matthew, Flinn Shane, Kaller Michael

机构信息

Department of Oceanography and Coastal Sciences, Louisiana State University, Baton Rouge, LA, United States of America.

Centre for Fisheries Ecosystems Research, Fisheries and Marine Institute of Memorial University of Newfoundland, St. John's, Newfoundland and Labrador, Canada.

出版信息

PeerJ. 2020 Dec 4;8:e10387. doi: 10.7717/peerj.10387. eCollection 2020.

Abstract

Multiple comparisons tests (MCTs) include the statistical tests used to compare groups (treatments) often following a significant effect reported in one of many types of linear models. Due to a variety of data and statistical considerations, several dozen MCTs have been developed over the decades, with tests ranging from very similar to each other to very different from each other. Many scientific disciplines use MCTs, including >40,000 reports of their use in ecological journals in the last 60 years. Despite the ubiquity and utility of MCTs, several issues remain in terms of their correct use and reporting. In this study, we evaluated 17 different MCTs. We first reviewed the published literature for recommendations on their correct use. Second, we created a simulation that evaluated the performance of nine common MCTs. The tests examined in the simulation were those that often overlapped in usage, meaning the selection of the test based on fit to the data is not unique and that the simulations could inform the selection of one or more tests when a researcher has choices. Based on the literature review and recommendations: planned comparisons are overwhelmingly recommended over unplanned comparisons, for planned non-parametric comparisons the Mann-Whitney-Wilcoxon test is recommended, Scheffé's test is recommended for any linear combination of (unplanned) means, Tukey's HSD and the Bonferroni or the Dunn-Sidak tests are recommended for pairwise comparisons of groups, and that many other tests exist for particular types of data. All code and data used to generate this paper are available at: https://github.com/stevemidway/MultipleComparisons.

摘要

多重比较检验(MCTs)包括用于比较组(处理)的统计检验,通常是在多种线性模型之一报告有显著效应之后进行。由于各种数据和统计方面的考虑,在过去几十年中已经开发了几十种MCTs,这些检验从彼此非常相似到彼此非常不同。许多科学学科都使用MCTs,在过去60年中,生态学期刊上有超过40000篇关于其使用的报告。尽管MCTs无处不在且实用,但在其正确使用和报告方面仍存在一些问题。在本研究中,我们评估了17种不同的MCTs。我们首先查阅已发表的文献,以获取关于其正确使用的建议。其次,我们创建了一个模拟,评估了九种常见MCTs的性能。模拟中检验的是那些在使用中经常重叠的检验,这意味着基于与数据的拟合来选择检验并非唯一,并且当研究人员有选择时,模拟可以为选择一种或多种检验提供参考。基于文献综述和建议:强烈推荐计划比较而非非计划比较,对于计划的非参数比较,推荐使用曼-惠特尼-威尔科克森检验,对于(非计划的)均值的任何线性组合,推荐使用谢费检验,对于组间成对比较,推荐使用图基的HSD检验以及邦费罗尼或邓恩-西达克检验,并且针对特定类型的数据还存在许多其他检验。用于生成本文的所有代码和数据可在以下网址获取:https://github.com/stevemidway/MultipleComparisons

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/972d/7720730/0257efd6335e/peerj-08-10387-g001.jpg

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