Tree models for assessing covariate-dependent method agreement with an application to physical activity measurements
Permanent lenke
https://hdl.handle.net/10037/36096Dato
2025-01-03Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
Method comparison studies assess agreement between different measurement methods. In the present
work, we are interested in comparing physical activity measurements using two different accelerometers.
However, a potential issue arises with the popular Bland–Altman analysis, as it assumes that differences
between measurements are identically distributed across all observational units. In the case of the physical
activity measurements, agreement might depend on sex, height, weight, or age of the person wearing the
accelerometers, among others. To capture this potential dependency, we introduce the concept of
conditional method agreement, which defines subgroups with heterogeneous agreement in dependence of
covariates. We propose several tree-based models that can detect such a dependency and incorporate it
into the model by splitting the data into subgroups, showing that the agreement of the activity
measurements is conditional on the participant’s age. Simulation studies also showed that all models were
able to detect subgroups with high accuracy as the sample size increased. We call the proposed modelling
approach conditional method agreement trees and make them publicly available through the R package coat.
Forlag
Oxford University PressSitering
Karapetyan, Zeileis, Henriksen, Hapfelmeier. Tree models for assessing covariate-dependent method agreement with an application to physical activity measurements. The Journal of the Royal Statistical Society, Series C (Applied Statistics). 2024Metadata
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