TY - JOUR
T1 - Explicit inclusion of treatment in prognostic modeling was recommended in observational and randomized settings
AU - Groenwold, Rolf H H
AU - Moons, Karel G M
AU - Pajouheshnia, Romin
AU - Altman, Doug G.
AU - Collins, Gary S.
AU - Debray, Thomas P A
AU - Reitsma, Johannes B.
AU - Riley, Richard D.
AU - Peelen, Linda M.
PY - 2016/10
Y1 - 2016/10
N2 - Objectives: To compare different methods to handle treatment when developing a prognostic model that aims to produce accurate probabilities of the outcome of individuals if left untreated. Study Design and Setting: Simulations were performed based on two normally distributed predictors, a binary outcome, and a binary treatment, mimicking a randomized trial or an observational study. Comparison was made between simply ignoring treatment (SIT), restricting the analytical data set to untreated individuals (AUT), inverse probability weighting (IPW), and explicit modeling of treatment (MT). Methods were compared in terms of predictive performance of the model and the proportion of incorrect treatment decisions. Results: Omitting a genuine predictor of the outcome from the prognostic model decreased model performance, in both an observational study and a randomized trial. In randomized trials, the proportion of incorrect treatment decisions was smaller when applying AUT or MT, compared to SIT and IPW. In observational studies, MT was superior to all other methods regarding the proportion of incorrect treatment decisions. Conclusion: If a prognostic model aims to produce correct probabilities of the outcome in the absence of treatment, ignoring treatments that affect that outcome can lead to suboptimal model performance and incorrect treatment decisions. Explicitly, modeling treatment is recommended.
AB - Objectives: To compare different methods to handle treatment when developing a prognostic model that aims to produce accurate probabilities of the outcome of individuals if left untreated. Study Design and Setting: Simulations were performed based on two normally distributed predictors, a binary outcome, and a binary treatment, mimicking a randomized trial or an observational study. Comparison was made between simply ignoring treatment (SIT), restricting the analytical data set to untreated individuals (AUT), inverse probability weighting (IPW), and explicit modeling of treatment (MT). Methods were compared in terms of predictive performance of the model and the proportion of incorrect treatment decisions. Results: Omitting a genuine predictor of the outcome from the prognostic model decreased model performance, in both an observational study and a randomized trial. In randomized trials, the proportion of incorrect treatment decisions was smaller when applying AUT or MT, compared to SIT and IPW. In observational studies, MT was superior to all other methods regarding the proportion of incorrect treatment decisions. Conclusion: If a prognostic model aims to produce correct probabilities of the outcome in the absence of treatment, ignoring treatments that affect that outcome can lead to suboptimal model performance and incorrect treatment decisions. Explicitly, modeling treatment is recommended.
KW - Prognosis
KW - Models
KW - Statistical
KW - Computer simulation
KW - Decision support techniques
KW - Calibration
UR - http://www.scopus.com/inward/record.url?scp=84964613609&partnerID=8YFLogxK
U2 - 10.1016/j.jclinepi.2016.03.017
DO - 10.1016/j.jclinepi.2016.03.017
M3 - Article
C2 - 27045189
AN - SCOPUS:84964613609
SN - 0895-4356
VL - 78
SP - 90
EP - 100
JO - Journal of Clinical Epidemiology
JF - Journal of Clinical Epidemiology
ER -