• 1. Department of Military Health Statistics, Naval Medical University, Shanghai 200433, P. R. China;
ZHAO Yanfang, Email: zhyf715@126.com
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Objective To explore the method of constructing time-dependent variables of clinical prognostic model, and to combine marginal structure model with clinical prognostic model to provide a more accurate tool for individualized prognostic assessment of patients. Methods Through data simulation, a training dataset with sample size of 7 000 and a validation dataset with sample size of 3 000 were constructed, and the predictive efficacy of ignoring treatment model, baseline no-treatment model, baseline treatment prediction model and marginal structure prediction model were respectively compared under different follow-up times and different situations. Results At 2 follow-up time points, there was no significant difference between the marginal structure prediction model and the baseline treatment prediction model, but they were higher than the neglected treatment model and the baseline no treatment model. At 5 follow-up time points, the prediction ability of the marginal structure prediction model was significantly higher than that of the other three prediction models. Conclusion In the case of time-dependent treatment in the observational cohort, the change of treatment after baseline should be considered when constructing the clinical prognosis model, otherwise the prediction accuracy of the prognosis model will be reduced.

Citation: QIAN Di, JIN Zhichao, ZHAO Yanfang. Modeling strategies for prognostic models with time-dependent treatment variables. Chinese Journal of Evidence-Based Medicine, 2024, 24(4): 490-496. doi: 10.7507/1672-2531.202310209 Copy