生物统计学中常见的解释错误

Q3 Medicine
Elsa Vazquez Arreola, Kyle M. Irimata, Jeffrey R. Wilson
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引用次数: 1

摘要

我们希望调查什么?虽然这可能是研究中的一个常见问题,但它并不总是有直接的答案。本文回顾了数据驱动的收集方法、提出的问题和回答的问题,以及可能得出的无数不同结论。我们根据独立与相关观察、双变量与条件关联、关系与外推、单一隶属关系与多重隶属关系建模来研究问题答案的差异。不管问题是什么,这些差异通常不是由于所谓的坏数据或坏模型;他们通常是由于调查人员误解了给出的答案。最重要的是,如果不了解数据结构、大小和代表性,就无法提出问题并获得答案。简单地说,我去商店买了一套衣服并不意味着这套衣服适合这个活动。获得的答案可能不是回答感兴趣的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Common errors of interpretation in biostatistics
What do we wish to investigate? While this may be a common question in research, it does not always come with straightforward answers. This article reviews data-driven methods of collection, questions asked and questions answered, and the myriad of different conclusions that may result. We examine differences in answers to questions based on independent versus correlated observations, bivariate versus conditional associations, relations versus extrapolation, and single membership versus multiple membership modeling. Regardless of the issue, these differences are usually not due to so-called bad data or due to bad models; they are usually due to the investigators misinterpreting the answers that were given. Most importantly, one cannot ask a question and obtain an answer without understanding the data structure, its size and its representativeness. Simply stated, the fact that I went to the store and bought an outfit does not mean the outfit is appropriate for the event. The answers obtained may not be answering the question of interest.
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来源期刊
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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