4.4 Article

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

Journal

BMC MEDICAL RESEARCH METHODOLOGY
Volume 23, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12874-023-02045-w

Keywords

Growth outliers; Clustering; Growth measurements; Trajectories

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This study assessed the performance of six methods for detecting different types of outliers, proposed two novel methods for outlier trajectory detection, and evaluated the impact of outliers on growth pattern detection. The results showed that model-based outlier detection methods performed best for measurements, especially for low and moderate error intensities. The clustering-based outlier trajectory method performed exceptionally well across all types and intensities of errors. Comparing growth groups with and without outliers demonstrated that outliers can alter group membership.
BackgroundGrowth studies rely on longitudinal measurements, typically represented as trajectories. However, anthropometry is prone to errors that can generate outliers. While various methods are available for detecting outlier measurements, a gold standard has yet to be identified, and there is no established method for outlying trajectories. Thus, outlier types and their effects on growth pattern detection still need to be investigated. This work aimed to assess the performance of six methods at detecting different types of outliers, propose two novel methods for outlier trajectory detection and evaluate how outliers affect growth pattern detection.MethodsWe included 393 healthy infants from The Applied Research Group for Kids (TARGet Kids!) cohort and 1651 children with severe malnutrition from the co-trimoxazole prophylaxis clinical trial. We injected outliers of three types and six intensities and applied four outlier detection methods for measurements (model-based and World Health Organization cut-offs-based) and two for trajectories. We also assessed growth pattern detection before and after outlier injection using time series clustering and latent class mixed models. Error type, intensity, and population affected method performance.ResultsModel-based outlier detection methods performed best for measurements with precision between 5.72-99.89%, especially for low and moderate error intensities. The clustering-based outlier trajectory method had high precision of 14.93-99.12%. Combining methods improved the detection rate to 21.82% in outlier measurements. Finally, when comparing growth groups with and without outliers, the outliers were shown to alter group membership by 57.9 -79.04%.ConclusionsWorld 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.

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