IGNITE: Individualized GeNeration of Imputations in Time-series Electronic health records
Ghadeer O. Ghosheh, Jin Li, Tingting Zhu

TL;DR
IGNITE is a deep learning model that generates personalized, realistic imputations for missing values in time-series electronic health records, improving data quality for personalized medicine.
Contribution
The paper introduces IGNITE, a novel conditional dual-variational autoencoder with attention and a personalized missingness mask for improved EHR data imputation and synthesis.
Findings
IGNITE outperforms existing methods in missing data reconstruction.
The model effectively generates realistic synthetic EHR data.
IGNITE enhances personalized medicine applications.
Abstract
Electronic Health Records present a valuable modality for driving personalized medicine, where treatment is tailored to fit individual-level differences. For this purpose, many data-driven machine learning and statistical models rely on the wealth of longitudinal EHRs to study patients' physiological and treatment effects. However, longitudinal EHRs tend to be sparse and highly missing, where missingness could also be informative and reflect the underlying patient's health status. Therefore, the success of data-driven models for personalized medicine highly depends on how the EHR data is represented from physiological data, treatments, and the missing values in the data. To this end, we propose a novel deep-learning model that learns the underlying patient dynamics over time across multivariate data to generate personalized realistic values conditioning on an individual's demographic…
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Taxonomy
TopicsMachine Learning in Healthcare · Mental Health Research Topics
