Thomas Elaine
Primary Care Sciences Research Centre, Keele University, North Staffordshire, UK.
Musculoskeletal Care. 2005;3(2):102-8. doi: 10.1002/msc.30.
This article is the second in a series of three that will give health care professionals (HCPs) a sound introduction to medical statistics (Thomas, 2004). The objective of research is to find out about the population at large. However, it is generally not possible to study the whole of the population and research questions are addressed in an appropriate study sample. The next crucial step is then to use the information from the sample of individuals to make statements about the wider population of like individuals. This procedure of drawing conclusions about the population, based on study data, is known as inferential statistics. The findings from the study give us the best estimate of what is true for the relevant population, given the sample is representative of the population. It is important to consider how accurate this best estimate is, based on a single sample, when compared to the unknown population figure. Any difference between the observed sample result and the population characteristic is termed the sampling error. This article will cover the two main forms of statistical inference (hypothesis tests and estimation) along with issues that need to be addressed when considering the implications of the study results.
本文是三篇系列文章中的第二篇,将为医疗保健专业人员(HCPs)提供医学统计学的扎实入门知识(托马斯,2004年)。研究的目的是了解整个总体。然而,通常不可能研究总体的全部,研究问题是在适当的研究样本中解决的。接下来至关重要的一步是利用个体样本中的信息对更广泛的同类个体总体进行陈述。基于研究数据对总体得出结论的这个过程称为推断统计学。如果样本代表总体,那么研究结果就能让我们对相关总体的真实情况做出最佳估计。重要的是要考虑,与未知的总体数据相比,基于单个样本得出的这个最佳估计有多准确。观察到的样本结果与总体特征之间的任何差异都称为抽样误差。本文将涵盖统计推断的两种主要形式(假设检验和估计)以及在考虑研究结果的影响时需要解决的问题。