Statistical Innovations in Electronic Health Records Data Analysis
Sunday, Aug 4: 4:00 PM - 5:50 PM
1666
Topic-Contributed Paper Session
Oregon Convention Center
Room: CC-B111
Electronic Health Records (EHR) have transformed modern healthcare by providing a wealth of patient information. The analysis of EHR data is instrumental in uncovering valuable insights, guiding medical decisions, and improving patient care. In this session, we bring together experts and researchers at the forefront of statistical innovation in EHR data analysis.
Applied
Yes
Main Sponsor
International Chinese Statistical Association
Co Sponsors
Biometrics Section
Section on Statistical Computing
Presentations
Early identification of autism, ADHD, and other neurodevelopmental conditions is important to ensure children receive appropriate developmental support and thereby optimize long term outcomes. Early correlates of these conditions are documented in the electronic health record (EHR) during routine care, and our previous work has shown that EHR data can be leveraged to predict autism and ADHD likelihood with clinically meaningful accuracy prior to age 1. Much like other EHR-based prediction tasks, this task is challenging due to the high-dimensional, multi-modal, irregularly observed nature of the relevant predictors. Additionally, other challenges are amplified due to the breadth of the target population (all children) and length of time between prediction and outcome (several years). Specifically, there is substantial variability in the quantity and quality of data available for prediction, average follow-up length is much lower than average time to diagnosis, and time to diagnosis is affected by systemic biases associated with the diagnosis process. This talk will explore methods we have developed in response to these challenges, with emphasis on a neural mixture cure model design
Speaker
Dandan Liu, Vanderbilt University Medical Center
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