Title of article :
Segmented Linear Regression Modelling of Time-Series of Binary Variables in Healthcare
Author/Authors :
Valsamis, Epaminondas Markos Oxford University Hospitals NHS Foundation Trust - Oxford, UK , Husband, Henry Faculty of Mathematics - University of Cambridge - Cambridge, UK , Ka-Wai Chan, Gareth Brighton and Sussex University Hospitals NHS Trust - Brighton, UK
Abstract :
In healthcare, change is usually detected by statistical techniques comparing outcomes before and after an
intervention. A common problem faced by researchers is distinguishing change due to secular trends from change due to an
intervention. Interrupted time-series analysis has been shown to be effective in describing trends in retrospective time-series
and in detecting change, but methods are often biased towards the point of the intervention. Binary outcomes are typically
modelled by logistic regression where the log-odds of the binary event is expressed as a function of covariates such as time,
making model parameters difficult to interpret. )e aim of this study was to present a technique that directly models the
probability of binary events to describe change patterns using linear sections. Methods. We describe a modelling method that
fits progressively more complex linear sections to the time-series of binary variables. Model fitting uses maximum likelihood
optimisation and models are compared for goodness of fit using Akaike’s Information Criterion. )e best model describes the
most likely change scenario. We applied this modelling technique to evaluate hip fracture patient mortality rate for a total of
2777 patients over a 6-year period, before and after the introduction of a dedicated hip fracture unit (HFU) at a Level 1, Major
Trauma Centre. Results. )e proposed modelling technique revealed time-dependent trends that explained how the
implementation of the HFU influenced mortality rate in patients sustaining proximal femoral fragility fractures. )e technique
allowed modelling of the entire time-series without bias to the point of intervention. Modelling the binary variable of interest
directly, as opposed to a transformed variable, improved the interpretability of the results. Conclusion. )e proposed segmented linear regression modelling technique using maximum likelihood estimation can be employed to effectively detect
trends in time-series of binary variables in retrospective studies.
Keywords :
Time-Series , HFU , ITS
Journal title :
Computational and Mathematical Methods in Medicine