Trends in the conduct and reporting of clinical prediction model development and validation: a systematic review

Author:

Yang CynthiaORCID,Kors Jan A.ORCID,Ioannou Solomon,John Luis H.,Markus Aniek F.ORCID,Rekkas AlexandrosORCID,de Ridder Maria A.J.ORCID,Seinen Tom M.ORCID,Williams Ross D.ORCID,Rijnbeek Peter R.ORCID

Abstract

ABSTRACTObjectivesThis systematic review aims to provide further insights into the conduct and reporting of clinical prediction model development and validation over time. We focus on assessing the reporting of information necessary to enable external validation by other investigators.Materials and MethodsWe searched Embase, Medline, Web-of-Science, Cochrane Library and Google Scholar to identify studies that developed one or more multivariable prognostic prediction models using electronic health record (EHR) data published in the period 2009-2019.ResultsWe identified 422 studies that developed a total of 579 clinical prediction models using EHR data. We observed a steep increase over the years in the number of developed models. The percentage of models externally validated in the same paper remained at around 10%. Throughout 2009-2019, for both the target population and the outcome definitions, code lists were provided for less than 20% of the models. For about half of the models that were developed using regression analysis, the final model was not completely presented.DiscussionOverall, we observed limited improvement over time in the conduct and reporting of clinical prediction model development and validation. In particular, the prediction problem definition was often not clearly reported, and the final model was often not completely presented.ConclusionImprovement in the reporting of information necessary to enable external validation by other investigators is still urgently needed to increase clinical adoption of developed models.

Publisher

Cold Spring Harbor Laboratory

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