TY - JOUR
T1 - A Multiple-Model Generalisation of Updating Clinical Prediction Models
AU - Martin, Glen
AU - Mamas, Mamas
AU - Peek, Niels
AU - Buchan, Iain
AU - Sperrin, Matthew
N1 - Funding Information:
Medical Research Council, Grant/Award Number: MR/K006665/1
Funding Information:
We would like to acknowledge the National Institute for Cardiovascular Outcomes Research (NICOR) for providing the UK TAVI registry extract for this study. This work was funded by the Medical Research Council (MR/K006665/1).
Publisher Copyright:
© 2017 The Authors. Statistics in Medicine published by John Wiley & Sons Ltd.
PY - 2018/4/15
Y1 - 2018/4/15
N2 - There is growing interest in developing clinical prediction models (CPMs) to aid local healthcare decision-making. Frequently, these CPMs are developed in isolation across different populations, with repetitive de novo derivation a common modelling strategy. However, this fails to utilise all available information and does not respond to changes in health processes through time and space. Alternatively, model updating techniques have previously been proposed that adjust an existing CPM to suit the new population, but these techniques are restricted to a single model. Therefore, we aimed to develop a generalised method for updating and aggregating multiple CPMs. The proposed “hybrid method” re-calibrates multiple CPMs using stacked regression while concurrently revising specific covariates using individual participant data (IPD) under a penalised likelihood. The performance of the hybrid method was compared with existing methods in a clinical example of mortality risk prediction after transcatheter aortic valve implantation, and in two simulation studies. The simulation studies explored the effect of sample size and between-population-heterogeneity on the method, with each representing a situation of having multiple distinct CPMs and one set of IPD. When the sample size of the IPD was small, stacked regression and the hybrid method had comparable but highest performance across modelling methods. Conversely, in large IPD samples, development of a new model and the hybrid method gave the highest performance. Hence, the proposed strategy can inform the choice between utilising existing CPMs or developing a model de novo, thereby incorporating IPD, existing research and prior (clinical) knowledge into the modelling strategy.
AB - There is growing interest in developing clinical prediction models (CPMs) to aid local healthcare decision-making. Frequently, these CPMs are developed in isolation across different populations, with repetitive de novo derivation a common modelling strategy. However, this fails to utilise all available information and does not respond to changes in health processes through time and space. Alternatively, model updating techniques have previously been proposed that adjust an existing CPM to suit the new population, but these techniques are restricted to a single model. Therefore, we aimed to develop a generalised method for updating and aggregating multiple CPMs. The proposed “hybrid method” re-calibrates multiple CPMs using stacked regression while concurrently revising specific covariates using individual participant data (IPD) under a penalised likelihood. The performance of the hybrid method was compared with existing methods in a clinical example of mortality risk prediction after transcatheter aortic valve implantation, and in two simulation studies. The simulation studies explored the effect of sample size and between-population-heterogeneity on the method, with each representing a situation of having multiple distinct CPMs and one set of IPD. When the sample size of the IPD was small, stacked regression and the hybrid method had comparable but highest performance across modelling methods. Conversely, in large IPD samples, development of a new model and the hybrid method gave the highest performance. Hence, the proposed strategy can inform the choice between utilising existing CPMs or developing a model de novo, thereby incorporating IPD, existing research and prior (clinical) knowledge into the modelling strategy.
KW - clinical prediction models
KW - logistic regression
KW - model aggregation
KW - model updating
KW - stacked regression
KW - validation
UR - http://www.scopus.com/inward/record.url?scp=85038096886&partnerID=8YFLogxK
UR - http://www.mendeley.com/research/multiplemodel-generalisation-updating-clinical-prediction-models
U2 - 10.1002/sim.7586
DO - 10.1002/sim.7586
M3 - Article
C2 - 29250812
SN - 0277-6715
VL - 37
SP - 1343
EP - 1358
JO - Statistics in medicine
JF - Statistics in medicine
IS - 8
ER -