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Statistically Non-significant Papers in Environmental Health Studies included more Outcome Variables

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摘要 Objective The number of analyzed outcome variables is important in the statistical analysis and interpretation of research findings. This study investigated published papers in the field of environmental health studies. We aimed to examine whether differences in the number of reported outcome variables exist between papers with non-significant findings compared to those with significant findings. Articles on the maternal exposure to mercury and child development were used as examples. Methods Articles published between 1995 and 2013 focusing on the relationships between maternal exposure to mercury and child development were collected from Medline and Scopus. Results Of 87 extracted papers, 73 used statistical significance testing and 38(43.7%) of these reported 'non-significant'(P〉0.05) findings. The median number of child development outcome variables in papers reporting 'significant'(n=35) and 'non-significant'(n=38) results was 4 versus 7, respectively(Mann-Whitney test P-value=0.014). An elevated number of outcome variables was especially found in papers reporting non-significant associations between maternal mercury and outcomes when mercury was the only analyzed exposure variable. Conclusion Authors often report analyzed health outcome variables based on their P-values rather than on stated primary research questions. Such a practice probably skews the research evidence. Objective The number of analyzed outcome variables is important in the statistical analysis and interpretation of research findings. This study investigated published papers in the field of environmental health studies. We aimed to examine whether differences in the number of reported outcome variables exist between papers with non-significant findings compared to those with significant findings. Articles on the maternal exposure to mercury and child development were used as examples. Methods Articles published between 1995 and 2013 focusing on the relationships between maternal exposure to mercury and child development were collected from Medline and Scopus. Results Of 87 extracted papers, 73 used statistical significance testing and 38(43.7%) of these reported 'non-significant'(P〉0.05) findings. The median number of child development outcome variables in papers reporting 'significant'(n=35) and 'non-significant'(n=38) results was 4 versus 7, respectively(Mann-Whitney test P-value=0.014). An elevated number of outcome variables was especially found in papers reporting non-significant associations between maternal mercury and outcomes when mercury was the only analyzed exposure variable. Conclusion Authors often report analyzed health outcome variables based on their P-values rather than on stated primary research questions. Such a practice probably skews the research evidence.
出处 《Biomedical and Environmental Sciences》 SCIE CAS CSCD 2015年第9期666-673,共8页 生物医学与环境科学(英文版)
基金 funding from the European Community's Seventh Framework Programme FP7/2007-2013-Environment(including Climate Change)FP7-ENV-2008-1-under grant agreement number 226534-Arc Risk
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