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New approaches and technical considerations in detecting outlier measurements and trajectories in longitudinal children growth data.

Paraskevi MassaraArooj AsrarCeline BourdonMoses NgariCharles Donald George Keown-StonemanJonathon L MaguireCatherine S BirkenJames Alexander BerkleyRobert H J BandsmaElena M Comelli
Published in: BMC medical research methodology (2023)
World Health Organization cut-off-based techniques were shown to perform well in few very particular cases (extreme errors of high intensity), while model-based techniques performed well, especially for moderate errors of low intensity. Clustering-based outlier trajectory detection performed exceptionally well across all types and intensities of errors, indicating a potential strategic change in how outliers in growth data are viewed. Finally, the importance of detecting outliers was shown, given its impact on children growth studies, as demonstrated by comparing results of growth group detection.
Keyphrases
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