许可考试学习辅助与当代医学研究之间的生物统计学内容不一致。

IF 1.8 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL Family Medicine Pub Date : 2025-02-01 Epub Date: 2024-12-05 DOI:10.22454/FamMed.2024.967125
W Connor Haycox, Dmitry Tumin
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引用次数: 0

摘要

背景和目的:医学实习生表示在解释临床文献中的统计数据方面存在困难。为了阐明教育差异,我们比较了生物医学文献中的统计方法与执照考试学习材料中的生物统计学内容。方法:在本文的文献内容分析中,我们对三种主要医学期刊在2023年发表的72期涉及原始数据分析的文章进行分层随机抽样。我们在文章的方法部分和三个商业许可考试学习资源中详细记录了所有离散统计方法和概念。我们创建了一个统一的离散方法或概念列表来定义总体领域,并将每个方法映射到一个领域,以确定该领域在每个资源或文章中的存在。结果:在273篇期刊文章和3个研究资源的样本中,我们识别出1057个独特的关键词,映射到20个领域。分类数据的统计误差、显著性、功效分析和分组比较是文章中的高频域。总体而言,63%的文章包含了未在任何研究资源中涵盖的领域的方法。结论:医师执照考试准备不能反映当代生物医学研究统计的广度。未来的干预措施应扩大医学生对研究方案和复杂数据操作的理解。
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Misalignment of Biostatistics Content Between Licensing Exam Study Aids and Contemporary Medical Research.

Background and objectives: Medical trainees express difficulty with interpreting statistics in clinical literature. To elucidate educational gaps, we compared statistical methodologies in biomedical literature with biostatistical content in licensing exam study materials.

Methods: In this bibliographic content analysis, we compiled a stratified random sample of articles involving original data analysis published during 2023 in 72 issues of three major medical journals. We recorded all discrete statistical methods and concepts detailed in the methods section of the articles and in three commercial licensing exam study resources. We created a unified list of discrete methods or concepts to define overarching domains and mapped each method to a domain to determine that domain's presence in each resource or article.

Results: In a sample of 273 journal articles and three study resources, we identified 1,057 unique key words mapped onto 20 domains. Statistical error, significance, power analysis, and group comparisons of categorical data were high-frequency domains among the articles. Overall, 63% of articles included methods from domains not covered in any study resource.

Conclusions: Medical licensing exam preparation does not reflect the breadth of contemporary statistics in biomedical research. Future interventions should expand medical students' understanding of research protocols and complex data manipulation.

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来源期刊
Family Medicine
Family Medicine 医学-医学:内科
CiteScore
2.40
自引率
21.10%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Family Medicine, the official journal of the Society of Teachers of Family Medicine, publishes original research, systematic reviews, narrative essays, and policy analyses relevant to the discipline of family medicine, particularly focusing on primary care medical education, health workforce policy, and health services research. Journal content is not limited to educational research from family medicine educators; and we welcome innovative, high-quality contributions from authors in a variety of specialties and academic fields.
期刊最新文献
Anticipating Uncertainty: A New Frontier in Family Medicine Training. Authors' Response to "Anticipating Uncertainty: A New Frontier in Family Medicine Training". Fostering Collaborative Practice Through Interprofessional Education. How Different Are Family Medicine Residents Who Desire Additional Training? Misalignment of Biostatistics Content Between Licensing Exam Study Aids and Contemporary Medical Research.
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