| Literature DB >> 29804659 |
Milos Brankovic1, Isabella Kardys2, Ewout J Hoorn3, Sara Baart2, Eric Boersma2, Dimitris Rizopoulos4.
Abstract
In nephrology, repeated measures are frequently available (glomerular filtration rate or proteinuria) and linked to adverse outcomes. However, several features of these longitudinal data should be considered before making such inferences. These considerations are discussed, and we describe how joint modeling of repeatedly measured and time-to-event data may help to assess disease dynamics and to derive personalized prognosis. Joint modeling combines linear mixed-effects models and Cox regression model to relate patient-specific trajectory to their prognosis. We describe several aspects of the relationship between time-varying markers and the endpoint of interest that are assessed with real examples to illustrate the aforementioned aspects of the longitudinal data provided. Thus, joint models are valuable statistical tools for study purposes but also may help health care providers in making well-informed dynamic medical decisions.Entities:
Keywords: individualized prognosis; longitudinal study; personalized dynamic risk assessment; repeated-measures design
Mesh:
Year: 2018 PMID: 29804659 DOI: 10.1016/j.kint.2018.04.007
Source DB: PubMed Journal: Kidney Int ISSN: 0085-2538 Impact factor: 10.612