Session | ||
Pseudo-observations
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Presentations | ||
1:45pm - 2:05pm
Bootstrap-based inference for Pseudo-value regression models 1TU Dortmund University, Germany; 2Otto von Guericke University Magdeburg, Germany; 3Research Center Trustworthy Data Science and Security, Germany; 4Department of Public Health - Department of Biostatistics, Aarhus University, Denmark Generalized estimating equations (GEE) are a popular method to model the effects of covariates on various estimands, which only rely on the specification of a functional relationship without the need of restrictive distributional assumptions. References 2:05pm - 2:25pm
Implications of Pseudo-Observations in Prognostic Modelling: Addressing Left Truncation. Biostatistics Research Group, Department of Population Health Sciences, University of Leicester Background: In many time-to-event prognostic models, the Cox model is used, commonly assuming constant covariate effects over the full follow-up period (1). However, when interest is in fact in estimating prognosis at specific future timepoints after diagnosis, then Pseudo-Observations (POs), introduced by Andersen et al., can be used to directly model covariate effects on survival at the timepoint of interest (2). We aim to utilize POs in prognostic modelling for specified time points when the objective is to provide an up-to-date estimate of long-term survival, which is typically solved with period analysis. In this approach, only risk times and events within a defined recent period window inform survival estimates, providing more up-to-date predictions than standard full-cohort approaches, which may underestimate survival as prognosis improve over time (3). However, defining this period window introduces left-truncated data, as individuals enter the study after a specified calendar time point. This complicates analysis because late-entry individuals receive POs without contributing to the Kaplan-Meier (K-M) estimate at the time of interest, potentially distorting survival probabilities (4). This study aims to refine POs for better alignment with K-M estimates in left-truncated scenarios, enhancing prognostic accuracy and fully incorporating both right-censored and left-truncated data, resulting in updated survival estimates within period window analysis. Methods: We demonstrate this approach with a prognostic model using historical data for colon cancer patients aged 18-99, diagnosed between 1975 and 1994. A stratified approach to POs is introduced to address left truncation in prognostic modelling. First, POs are calculated without delayed entry to build a model categorizing individuals into risk groups based on covariates. A period window then introduces delayed entry, and POs are recalculated within each risk group, averaged, and compared with K-M estimates for agreement. Once consistency is established, the new POs are used to update the baseline of the prognostic model in period analysis. We compare a range of choices for how many risk groups are necessary to achieve good agreement. Results and Discussion: This approach demonstrates that average PO estimates within risk groups align closely with K-M estimates, supporting the use of stratified POs in prognostic models with period window analysis and left truncation. Updated POs can refine the baseline of prognostic models, helping account for survival improvements over time. However, a more general method, independent of predefined risk groups or model, remains necessary. Alternative methods like inverse probability of censoring weighting, offer an alternative approach. |