Longitudinal healthcare analytics for disease management: Empirical demonstration for low back pain
作者:
Highlights:
• Disease management should adjust care to the expected course of diseases.
• For this, we develop an interpretable short-term prediction model.
• We derive a cross-sectional ARMA time series model.
• The model estimates generalize to patient cohorts (rather than one time series).
• Evaluation based on 52-week longitudinal study for low back pain
摘要
Clinician guidelines recommend health management to tailor the form of care to the expected course of diseases. Hence, in order to decide upon a suitable treatment plan, health professionals benefit from decision support, i.e., predictions about how a disease is to evolve. In clinical practice, such a prediction model requires interpretability. Interpretability, however, is often precluded by complex dynamic models that would be capable of capturing the intrapersonal variability of disease trajectories. Therefore, we develop a cross-sectional ARMA model that allows for inference of the expected course of symptoms. Distinct from traditional time series models, it generalizes to cross-sectional settings and thus patient cohorts (i.e., it is estimated to multiple instead of single disease trajectories). Our model is evaluated according to a longitudinal 52-week study involving 928 patients with low back pain. It achieves a favorable prediction performance while maintaining interpretability. In sum, we provide decision support by informing health professionals about whether symptoms will have the tendency to stabilize or continue to be severe.
论文关键词:Healthcare analytics,Disease management,Longitudinal monitoring,Time series analysis,Cohort data,Low back pain
论文评审过程:Received 14 June 2019, Revised 19 February 2020, Accepted 20 February 2020, Available online 10 March 2020, Version of Record 29 March 2020.
论文官网地址:https://doi.org/10.1016/j.dss.2020.113271