A new end-to-end benchmarking framework unifies synthetic EHR generators for longitudinal ICD codes with standardized training and architecture-agnostic evaluation including bootstrapped confidence intervals.
arXiv preprint arXiv:2504.07566 , year=
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Accelerating Reproducible Research in Synthetic EHR Generation
A new end-to-end benchmarking framework unifies synthetic EHR generators for longitudinal ICD codes with standardized training and architecture-agnostic evaluation including bootstrapped confidence intervals.