Abstract

BackgroundDisease populations, clinical practice, and healthcare systems are constantly evolving. This can result in clinical prediction models quickly becoming outdated and less accurate over time. A potential solution is to develop ‘dynamic’ prediction models capable of retaining accuracy by evolving over time in response to observed changes. Our aim was to review the literature in this area to understand the current state-of-the-art in dynamic prediction modelling and identify unresolved methodological challenges.MethodsMEDLINE, Embase and Web of Science were searched for papers which used or developed dynamic clinical prediction models. Information was extracted on methods for model updating, choice of update windows and decay factors and validation of models. We also extracted reported limitations of methods and recommendations for future research.ResultsWe identified eleven papers that discussed seven dynamic clinical prediction modelling methods which split into three categories. The first category uses frequentist methods to update models in discrete steps, the second uses Bayesian methods for continuous updating and the third, based on varying coefficients, explicitly describes the relationship between predictors and outcome variable as a function of calendar time. These methods have been applied to a limited number of healthcare problems, and few empirical comparisons between them have been made.ConclusionDynamic prediction models are not well established but they overcome one of the major issues with static clinical prediction models, calibration drift. However, there are challenges in choosing decay factors and in dealing with sudden changes. The validation of dynamic prediction models is still largely unexplored terrain.

Highlights

  • Healthcare systems have limited resources and their budgets are being reduced [1], while there are increasing numbers of people living with one or more long-term conditions [2, 3]

  • The search was tailored to each database and supplemented with dynamic prediction*.mp. [mp = ti, ab, hw, tn, ot, dm, mf, dv, kw, fx, nm, kf, px, rx, ui, sy]

  • Seven methods were reported across 11 papers which could be used to deal with calibration drift in prediction models

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Summary

Introduction

Healthcare systems have limited resources and their budgets are being reduced [1], while there are increasing numbers of people living with one or more long-term conditions [2, 3]. This can have a negative effect on health outcomes [4], and systems need to be more efficient. Clinical prediction models (CPMs) are used for diagnosis or prediction of future outcomes for individuals [6, 7] and have the potential to be used for decision-making and effective targeting of resources. Clinical practice, and healthcare systems are constantly evolving This can result in clinical prediction models quickly becoming outdated and less accurate over time. Our aim was to review the literature in this area to understand the current state-of-the-art in dynamic prediction modelling and identify unresolved methodological challenges

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