Conditional generation of medical time series for extrapolation to underrepresented populations.
Simon BingAndrea DittadiStefan BauerPatrick SchwabPublished in: PLOS digital health (2022)
The widespread adoption of electronic health records (EHRs) and subsequent increased availability of longitudinal healthcare data has led to significant advances in our understanding of health and disease with direct and immediate impact on the development of new diagnostics and therapeutic treatment options. However, access to EHRs is often restricted due to their perceived sensitive nature and associated legal concerns, and the cohorts therein typically are those seen at a specific hospital or network of hospitals and therefore not representative of the wider population of patients. Here, we present HealthGen, a new approach for the conditional generation of synthetic EHRs that maintains an accurate representation of real patient characteristics, temporal information and missingness patterns. We demonstrate experimentally that HealthGen generates synthetic cohorts that are significantly more faithful to real patient EHRs than the current state-of-the-art, and that augmenting real data sets with conditionally generated cohorts of underrepresented subpopulations of patients can significantly enhance the generalisability of models derived from these data sets to different patient populations. Synthetic conditionally generated EHRs could help increase the accessibility of longitudinal healthcare data sets and improve the generalisability of inferences made from these data sets to underrepresented populations.
Keyphrases
- electronic health record
- healthcare
- end stage renal disease
- big data
- newly diagnosed
- clinical decision support
- ejection fraction
- case report
- prognostic factors
- public health
- cross sectional
- emergency department
- physical activity
- mass spectrometry
- health information
- depressive symptoms
- machine learning
- high resolution
- genetic diversity
- acute care