克服生态学、进化论和行为学中连续变量分类的陷阱。

IF 3.8 1区 生物学 Q1 BIOLOGY
Roxanne S Beltran, Corey E Tarwater
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引用次数: 0

摘要

生物研究中的许多变量--从体型到生活史时间再到环境特征--都是连续测量的(例如体重,以千克为单位),但却以分类的形式进行分析(例如大与小),这可能会降低统计能力并改变解释。我们对六种流行的生态学、进化论和行为学期刊上的 72 篇最新论文进行了小型回顾,以量化分类的普遍程度。然后,我们总结了常见的分类指标,并模拟了一个数据集,利用常见变量和现实例子来证明分类的弊端。我们发现,对连续变量进行分类的情况很普遍(占所审论文的 31%)。我们还强调,预测变量可以而且应该持续收集和分析。最后,我们就如何在整个科研过程中保持变量的连续性提出了建议。这些内容共同构成了一份可操作的指南,只需不使用连续变量,就能提高统计能力并促进大型综合研究。克服对连续变量进行分类的误区将使生态学家、伦理学家和进化生物学家能够继续对自然过程做出值得信赖的结论,并预测它们对气候变化和其他环境背景的反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overcoming the pitfalls of categorizing continuous variables in ecology, evolution and behaviour.

Many variables in biological research-from body size to life-history timing to environmental characteristics-are measured continuously (e.g. body mass in kilograms) but analysed as categories (e.g. large versus small), which can lower statistical power and change interpretation. We conducted a mini-review of 72 recent publications in six popular ecology, evolution and behaviour journals to quantify the prevalence of categorization. We then summarized commonly categorized metrics and simulated a dataset to demonstrate the drawbacks of categorization using common variables and realistic examples. We show that categorizing continuous variables is common (31% of publications reviewed). We also underscore that predictor variables can and should be collected and analysed continuously. Finally, we provide recommendations on how to keep variables continuous throughout the entire scientific process. Together, these pieces comprise an actionable guide to increasing statistical power and facilitating large synthesis studies by simply leaving continuous variables alone. Overcoming the pitfalls of categorizing continuous variables will allow ecologists, ethologists and evolutionary biologists to continue making trustworthy conclusions about natural processes, along with predictions about their responses to climate change and other environmental contexts.

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来源期刊
CiteScore
7.90
自引率
4.30%
发文量
502
审稿时长
1 months
期刊介绍: Proceedings B is the Royal Society’s flagship biological research journal, accepting original articles and reviews of outstanding scientific importance and broad general interest. The main criteria for acceptance are that a study is novel, and has general significance to biologists. Articles published cover a wide range of areas within the biological sciences, many have relevance to organisms and the environments in which they live. The scope includes, but is not limited to, ecology, evolution, behavior, health and disease epidemiology, neuroscience and cognition, behavioral genetics, development, biomechanics, paleontology, comparative biology, molecular ecology and evolution, and global change biology.
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