Author:
Jenkins David A.,Martin Glen P.,Sperrin Matthew,Riley Richard D.,Debray Thomas P. A.,Collins Gary S.,Peek Niels
Abstract
AbstractClinical prediction models (CPMs) have become fundamental for risk stratification across healthcare. The CPM pipeline (development, validation, deployment, and impact assessment) is commonly viewed as a one-time activity, with model updating rarely considered and done in a somewhat ad hoc manner. This fails to address the fact that the performance of a CPM worsens over time as natural changes in populations and care pathways occur. CPMs need constant surveillance to maintain adequate predictive performance. Rather than reactively updating a developed CPM once evidence of deteriorated performance accumulates, it is possible to proactively adapt CPMs whenever new data becomes available. Approaches for validation then need to be changed accordingly, making validation a continuous rather than a discrete effort. As such, “living” (dynamic) CPMs represent a paradigm shift, where the analytical methods dynamically generate updated versions of a model through time; one then needs to validate the system rather than each subsequent model revision.
Funder
NIHR Greater Manchester Patient Safety Translational Research Centre
Manchester Biomedical Research Centre
NIHR Oxford Biomedical Research Centre
Nederlandse Organisatie voor Wetenschappelijk Onderzoek
Cancer Research UK
Horizon 2020
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,General Mathematics
Cited by
70 articles.
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