Synthesizing time-series wound prognosis factors from electronic medical records using generative adversarial networks
Farnaz H. Foomani, D. M. Anisuzzaman, Jeffrey Niezgoda, Jonathan, Niezgoda, William Guns, Sandeep Gopalakrishnan, Zeyun Yu

TL;DR
This paper introduces a novel medical GAN that generates synthetic wound prognosis data from limited EMR, improving predictive accuracy for wound healing and aiding clinical decision-making.
Contribution
The study develops a time series GAN capable of producing realistic, labeled EMR data, enhancing wound prognosis models with limited data and temporal information.
Findings
Generated data improved classification accuracy by up to 10%
Achieved high AUC scores indicating strong predictive performance
Demonstrated realistic data generation through multiple evaluation methods
Abstract
Wound prognostic models not only provide an estimate of wound healing time to motivate patients to follow up their treatments but also can help clinicians to decide whether to use a standard care or adjuvant therapies and to assist them with designing clinical trials. However, collecting prognosis factors from Electronic Medical Records (EMR) of patients is challenging due to privacy, sensitivity, and confidentiality. In this study, we developed time series medical generative adversarial networks (GANs) to generate synthetic wound prognosis factors using very limited information collected during routine care in a specialized wound care facility. The generated prognosis variables are used in developing a predictive model for chronic wound healing trajectory. Our novel medical GAN can produce both continuous and categorical features from EMR. Moreover, we applied temporal information to…
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