作者
Kelly M Sunderland, Derek Beaton, Julia Fraser, Donna Kwan, Paula M McLaughlin, Manuel Montero-Odasso, Alicia J Peltsch, Frederico Pieruccini-Faria, Demetrios J Sahlas, Richard H Swartz, Stephen C Strother, Malcolm A Binns
发表日期
2019/12
期刊
BMC medical research methodology
卷号
19
页码范围
1-16
出版商
BioMed Central
简介
Background
Large and complex studies are now routine, and quality assurance and quality control (QC) procedures ensure reliable results and conclusions. Standard procedures may comprise manual verification and double entry, but these labour-intensive methods often leave errors undetected. Outlier detection uses a data-driven approach to identify patterns exhibited by the majority of the data and highlights data points that deviate from these patterns. Univariate methods consider each variable independently, so observations that appear odd only when two or more variables are considered simultaneously remain undetected. We propose a data quality evaluation process that emphasizes the use of multivariate outlier detection for identifying errors, and show that univariate approaches alone are insufficient. Further, we establish an iterative process that uses multiple multivariate …
引用总数
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