DySurv: dynamic deep learning model for survival analysis with conditional variational inference.
Machine learning applications for longitudinal electronic health records often forecast the risk of events at fixed time points, whereas survival analysis achieves dynamic risk prediction by estimating time-to-event distributions. Here, we propose a novel conditional variational autoencoder-based method, DySurv, which uses a combination of static and longitudinal measurements from electronic health records to estimate the individual risk of death dynamically.
Author(s): Mesinovic, Munib, Watkinson, Peter, Zhu, Tingting
DOI: 10.1093/jamia/ocae271