Multiple Imputation Approaches for Epoch-level Accelerometer data in Trials
Clinical trials that investigate interventions on physical activity often use accelerometers to measure step count at a very granular level, often in 5-second epochs. Participants typically wear the accelerometer for a week-long period at baseline, and for one or more week-long follow-up periods aft...
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Zusammenfassung: | Clinical trials that investigate interventions on physical activity often use
accelerometers to measure step count at a very granular level, often in
5-second epochs. Participants typically wear the accelerometer for a week-long
period at baseline, and for one or more week-long follow-up periods after the
intervention. The data is usually aggregated to provide daily or weekly step
counts for the primary analysis. Missing data are common as participants may
not wear the device as per protocol. Approaches to handling missing data in the
literature have largely defined missingness on the day level using a threshold
on daily wear time, which leads to loss of information on the time of day when
data are missing. We propose an approach to identifying and classifying
missingness at the finer epoch-level, and then present two approaches to
handling missingness. Firstly, we present a parametric approach which takes
into account the number of missing epochs per day. Secondly, we describe a
non-parametric approach to Multiple Imputation (MI) where missing periods
during the day are replaced by donor data from the same person where possible,
or data from a different person who is matched on demographic and physical
activity-related variables. Our simulation studies comparing these approaches
in a number of settings show that the non-parametric approach leads to
estimates of the effect of treatment that are least biased while maintaining
small standard errors. We illustrate the application of these different MI
strategies to the analysis of the 2017 PACE-UP Trial. The proposed framework of
classifying missingness and applying MI at the epoch-level is likely to be
applicable to a number of different outcomes and data from other wearable
devices. |
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DOI: | 10.48550/arxiv.2303.17331 |