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Overview Of Biostatistics Used In Clinical Research

机译:临床研究中使用的生物统计学概述

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Purpose. A brief overview is given of the types of statistical tests that are available to analyze pharmacy research data. Summary. The most important aspect of selecting the correct statistical test is defining the types of variables being analyzed. Variables that are controlled or determined by the researcher are referred to as independent variables. Dependent variables are those that are observed and are out of the researcher's control. There are two types of random error that exist with inferential statistics: rejecting a null hypothesis (H_o) when it is true and failing to reject H_o when it is false. There are two primary ways to interpret the significance of results from an inferential statistical test: (1) creation of a confidence interval and determination of whether a value falls within the interval and (2) calculation of a ratio and determination of whether the resultant value exceeds an established critical value. Student's rtest is one of the simplest inferential tests and can be used to illustrate both the confidence intervalrnand the ratio approaches to evaluating sample data. The p value indicates the amount of error that can exist if the researcher chooses to reject H_o. Parametric tests require two additional assumptions in order to be applied correctly. Some examples of these include the two-sample t test and the paired f test. Nonparametric tests are designed for small sample sizes and are easy to calculate. These tests use the median as the measure of center. Some examples of nonparametric tests include the chi-square test and the Fisher exact test. Other statistical tests that are available to help the pharmacist researcher include equivalency testing, survival statistics, and noninferiority studies. Conclusion. Selection of the proper statistical test depends on the type and number of variables and whether parametric conditions are met.
机译:目的。简要概述了可用于分析药房研究数据的统计测试的类型。摘要。选择正确的统计检验的最重要方面是定义要分析的变量的类型。研究人员控制或确定的变量称为自变量。因变量是那些被观察到且不受研究人员控制的变量。推论统计数据存在两种类型的随机错误:如果为空假设(H_o)为真,则拒绝它;如果为假,则拒绝H_o。有两种主要的方法来解释推论统计检验的结果的重要性:(1)创建置信区间并确定值是否落在区间内;(2)计算比率并确定结果值是否超过既定的临界值。学生测验是最简单的推论测验之一,可用于说明置信区间和比率评估样本数据的方法。 p值表示如果研究人员选择拒绝H_o,则可能存在的错误量。参数测试需要另外两个假设才能正确应用。其中的一些示例包括两次抽样t检验和配对f检验。非参数检验是为小样本量设计的,易于计算。这些测试使用中位数作为中心的度量。非参数检验的一些示例包括卡方检验和Fisher精确检验。可用来帮助药剂师研究人员使用的其他统计检验包括等效检验,生存统计和非劣效性研究。结论。选择适当的统计检验取决于变量的类型和数量以及是否满足参数条件。

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