Incorporating repeated measurements into prediction models in the critical care setting: a framework, systematic review and meta-analysis

Publication date

2019-10-26

Authors

Plate, Joost D J
van de Leur, Rutger R.
Leenen, Luke P HORCID 0000-0001-8385-1801ISNI 0000000390070047
Hietbrink, FalcoISNI 0000000388513355
Peelen, Linda M.ISNI 000000039359476X
Eijkemans, Marinus J CISNI 0000000392954719

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Abstract

BACKGROUND: The incorporation of repeated measurements into multivariable prediction research may greatly enhance predictive performance. However, the methodological possibilities vary widely and a structured overview of the possible and utilized approaches lacks. Therefore, we [1] propose a structured framework for these approaches, [2] determine what methods are currently used to incorporate repeated measurements in prediction research in the critical care setting and, where possible, [3] assess the added discriminative value of incorporating repeated measurements. METHODS: The proposed framework consists of three domains: the observation window (static or dynamic), the processing of the raw data (raw data modelling, feature extraction and reduction) and the type of modelling. A systematic review was performed to identify studies which incorporate repeated measurements to predict (e.g. mortality) in the critical care setting. The within-study difference in c-statistics between models with versus without repeated measurements were obtained and pooled in a meta-analysis. RESULTS: From the 2618 studies found, 29 studies incorporated multiple repeated measurements. The annual number of studies with repeated measurements increased from 2.8/year (2000-2005) to 16.0/year (2016-2018). The majority of studies that incorporated repeated measurements for prediction research used a dynamic observation window, and extracted features directly from the data. Differences in c statistics ranged from - 0.048 to 0.217 in favour of models that utilize repeated measurements. CONCLUSIONS: Repeated measurements are increasingly common to predict events in the critical care domain, but their incorporation is lagging. A framework of possible approaches could aid researchers to optimize future prediction models.

Keywords

Health Informatics, Epidemiology, Journal Article

Citation

Plate, J D J, van de Leur, R R, Leenen, L P H, Hietbrink, F, Peelen, L M & Eijkemans, M J C 2019, 'Incorporating repeated measurements into prediction models in the critical care setting : a framework, systematic review and meta-analysis', BMC Medical Research Methodology, vol. 19, no. 1, 199. https://doi.org/10.1186/s12874-019-0847-0