Quantile regression for the statistical analysis of immunological data with many non-detects
[摘要] BackgroundImmunological parameters are hard to measure. A well-known problem is the occurrence of values below the detection limit, the non-detects. Non-detects are a nuisance, because classical statistical analyses, like ANOVA and regression, cannot be applied. The more advanced statistical techniques currently available for the analysis of datasets with non-detects can only be used if a small percentage of the data are non-detects.Methods and resultsQuantile regression, a generalization of percentiles to regression models, models the median or higher percentiles and tolerates very high numbers of non-detects. We present a non-technical introduction and illustrate it with an implementation to real data from a clinical trial. We show that by using quantile regression, groups can be compared and that meaningful linear trends can be computed, even if more than half of the data consists of non-detects.ConclusionQuantile regression is a valuable addition to the statistical methods that can be used for the analysis of immunological datasets with non-detects.
[发布日期] 2012-07-07 [发布机构]
[效力级别] [学科分类]
[关键词] Non-detects;Outliers;Robustness;Data analysis;Statistical;Quantile regression;Soluble biological markers;Immunological data [时效性]