理解生物化学:生命科学统计的基本方面。

IF 5.6 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Essays in biochemistry Pub Date : 2023-10-25 DOI:10.1042/EBC20220211
Donald Reid
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引用次数: 0

摘要

如果生物世界是一回事,那么它是可变的。作为科学家,我们试图测量、量化和解释这种变化的原因。无论我们的研究是探索全球温度、血压、癌症发病率还是酶动力学,我们对此采取的方法都非常相似。这种方法包括定义明确的研究问题,并应用统计学方法有力地回答这些问题。本文将介绍一个将贯穿始终的实际例子,特别是基因变异是否可以解释咖啡消费的变化。我们假设在统计学方面没有什么经验,并通过生物学家可以使用的统计方法,首先用汇总统计描述我们的数据,然后使用统计测试来帮助我们找到研究问题的答案。将使用一般线性模型(GLM)方法,因为这是许多常见的统计测试。我们探索如何可视化和报告结果,同时检查我们分析的假设。我们越能理解统计学并将其应用于生物学问题,我们就越能将结果和未来的研究成果传达给他人。将始终使用流行的统计编程语言R。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Understanding biochemistry: basic aspects of statistics for life sciences.

If the biological world is one thing it is variable. As scientists we seek to measure, quantify and explain the causes of this variation. The approach we take to this is remarkably similar whether our research is exploring global temperature, blood pressure, cancer incidence or enzyme kinetics. This approach involves defining clear research questions and applying statistical methods to answer them robustly. This article will introduce a practical example that will be used throughout, specifically whether genetic variation can explain variation in coffee consumption. We assume little experience with statistics and walk through the statistical approach that biologists can use, firstly by describing our data with summary statistics and then by using statistical tests to help arrive at answers to our research question. A General Linear Model (GLM) approach will be used as this is what many common statistical tests are. We explore how to visualise and report results, while checking the assumptions of our analysis. The better we can understand and apply statistics to biological problems, the better we can communicate results and future research to others. The popular statistical programming language R will be used throughout.

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来源期刊
Essays in biochemistry
Essays in biochemistry 生物-生化与分子生物学
CiteScore
10.50
自引率
0.00%
发文量
105
审稿时长
>12 weeks
期刊介绍: Essays in Biochemistry publishes short, digestible reviews from experts highlighting recent key topics in biochemistry and the molecular biosciences. Written to be accessible for those not yet immersed in the subject, each article is an up-to-date, self-contained summary of the topic. Bridging the gap between the latest research and established textbooks, Essays in Biochemistry will tell you what you need to know to begin exploring the field, as each article includes the top take-home messages as summary points. Each issue of the journal is guest edited by a key opinion leader in the area, and whether you are continuing your studies or moving into a new research area, the Journal gives a complete picture in one place. Essays in Biochemistry is proud to publish Understanding Biochemistry, an essential online resource for post-16 students, teachers and undergraduates. Providing up-to-date overviews of key concepts in biochemistry and the molecular biosciences, the Understanding Biochemistry issues of Essays in Biochemistry are published annually in October.
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