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Data Structure and Related Methods for Pooled Meta-Analysis

机译:汇总荟萃分析的数据结构和相关方法

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Some questions in statistics can only be answered with a multi period setup (e.g. longitudinal studies). A widely used approach is called meta-analysis. This paper uses the variant pooled meta-analysis and shows data structures and methods for performing such an analysis.rnPooled meta-analysis requires concatenating the primary data sets. If variables have different specifications over periods, then this concatenation is difficult. Therefore a data structure for describing the variables from different periods or studies and their codes is necessary. Methods for generating data sets complete these data structures.rnThe shown data structure is founded on a description of each real variable. This description includes original question, coding and specification, range, measurement unit, categories and dependencies between the variables.rnThe related method analyzes the dependencies between the variables and is able to generate a data set for further analysis which holds the data from selected variables from selected periods. Constraint violations such as missing value codes or values outside specification can be recognized. The shown algorithm allows easier handling of variables in complex data structures for pooled meta-analysis.
机译:统计学中的某些问题只能通过多周期设置来回答(例如纵向研究)。一种广泛使用的方法称为荟萃分析。本文使用变体汇总元分析,并显示了执行此类分析的数据结构和方法。汇总元分析需要连接主要数据集。如果变量在一段时间内具有不同的规格,则此串联很困难。因此,需要一个用于描述来自不同时期或研究的变量及其代码的数据结构。生成数据集的方法完善了这些数据结构。所显示的数据结构是基于对每个实变量的描述。该描述包括原始问题,编码和规范,范围,度量单位,变量之间的类别和相关性。rn相关方法分析变量之间的相关性并能够生成数据集以进行进一步分析,该数据集包含来自选定变量的数据选择的时期。可以识别出约束冲突,例如缺少值代码或超出规范的值。所示算法可以更轻松地处理复杂数据结构中的变量,以进行汇总的荟萃分析。

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