Simplified Sample Size Formulas for Detecting a Medically Important Effect.

IF 0.9 Q4 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Indian Journal of Community Medicine Pub Date : 2024-05-01 Epub Date: 2024-05-24 DOI:10.4103/ijcm.ijcm_787_23
Abhaya Indrayan, Aman Mishra, Binukumar Bhaskarapillai
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引用次数: 0

Abstract

The sample size is just about the most common question in the minds of many medical researchers. This size determines the reliability of the results and helps to detect a medically important effect when present. Some studies miss an important effect due to inappropriate sample size. Many postgraduate students and established researchers often contact a statistician to help them determine an appropriate sample size for their study. More than 80 formulas are available to calculate sample size for different settings and the choice requires some expertise. Their use is even more difficult because most exact formulas are quite complex. An added difficulty is that different books, software, and websites use different formulas for the same problem. Such discrepancy in the published formulas confounds a biostatistician also. The objective of this communication is to present uniformly looking formulas for many situations together at one place in their simple but correct form, along with the setting where they are applicable. This will help in choosing an appropriate formula for the kind of research one is proposing to do and use it with confidence. This communication is restricted to the sample size required to detect a medically important effect when present - known to the statisticians as the test of hypothesis situation. Such a collection is not available anywhere, not even in any book. The sample size formulas for estimation are different and not discussed here.

检测重要医学效应的简化样本量公式。
样本量是许多医学研究人员心中最常见的问题。样本量决定了研究结果的可靠性,并有助于发现医学上的重要效应。有些研究由于样本量不当而错过了重要效应。许多研究生和资深研究人员经常会联系统计学家,请他们帮助自己确定研究的适当样本量。目前有 80 多个公式可用于计算不同环境下的样本量,选择这些公式需要一定的专业知识。由于大多数精确公式都相当复杂,因此使用起来更加困难。此外,不同的书籍、软件和网站对同一问题使用不同的公式,这也增加了使用的难度。已出版公式中的这种差异也让生物统计学家感到困惑。这篇通讯的目的是以简单而正确的形式,将多种情况下的统一公式集中在一起,并附上适用的环境。这将有助于人们根据自己打算进行的研究类型选择合适的公式并放心使用。本次交流仅限于检测医学上的重要效应所需的样本量--统计学家称之为假设检验情况。任何地方,甚至任何书籍中都没有这样的数据集。用于估算的样本量公式与此不同,在此不做讨论。
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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来源期刊
Indian Journal of Community Medicine
Indian Journal of Community Medicine PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
1.30
自引率
0.00%
发文量
85
审稿时长
49 weeks
期刊介绍: The Indian Journal of Community Medicine (IJCM, ISSN 0970-0218), is the official organ & the only official journal of the Indian Association of Preventive and Social Medicine (IAPSM). It is a peer-reviewed journal which is published Quarterly. The journal publishes original research articles, focusing on family health care, epidemiology, biostatistics, public health administration, health care delivery, national health problems, medical anthropology and social medicine, invited annotations and comments, invited papers on recent advances, clinical and epidemiological diagnosis and management; editorial correspondence and book reviews.
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