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Traditional methods for assessing illness severity and predicting in-hospital mortality among critically ill patients require manual, time-consuming, and error-prone calculations that are further hindered by the use of static variable thresholds derived from aggregate patient populations. These coarse frameworks do not capture time-sensitive individual physiological patterns and are not suitable for instantaneous assessment of patients’ acuity trajectories, a critical task for the ICU where conditions often change rapidly. Furthermore, they are ill-suited to capitalize on the emerging availability of streaming electronic health record data. We propose a novel acuity score framework (DeepSOFA) that leverages temporal patient measurements in conjunction with deep learning models to make accurate assessments of a patient’s illness severity at any point during their ICU stay. We compare DeepSOFA with SOFA baseline models using the same predictors and find that at any point during an ICU admission, DeepSOFA yields more accurate predictions of in-hospital mortality.

See our DeepSOFA draft online on ArXiv:
https://arxiv.org/abs/1802.10238

 

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March 15th, 2022

Natural Language Processing: Analyzing Clinical and Mental Health Notes

In contrast to the structured clinical data typically used for administrative purposes, clinical notes are more nuanced and are primarily […]

April 7th, 2021

Dr. Rashidi at ISN Virtual World Congress of Nephrology 2021

Dr. Rashidi will join Dr. Azra Bihorac and Dr. Yoshua Bengio in a discussion titled “How to achieve equitable, inclusive, and ethical AI development and implementation” at ISN Virtual World Congress of Nephrology 2021.

February 4th, 2021

Human Activity Recognition Using Inertial, Physiological and Environmental Sensors

A Comprehensive Survey  Human Activity Recognition Research Paper [link] Nowadays, the aging population is becoming one of the world’s primary […]

June 6th, 2019

NIH Mitchel Max Award- Finalist

Dr. Rashidi is nominated as one of the three finalists for the National Institute of Health (NIH) Mitchel Max Award […]

May 3rd, 2019

HWCOE Excellence Award

Original Article: Link Parisa Rashidi, Ph.D., areceived the HWCOE Excellence Award for Assistant Professors. This award is given to faculty […]

May 3rd, 2019

Provost Excellence Award

Main Article: Link Parisa Rashidi, Ph.D., an assistant professor in the J. Crayton Pruitt Family Department of Biomedical Engineering, has […]

February 25th, 2019

News Coverage in CBS

A first of its kind technology developed here in Gainesville can predict the probability and possible cause of death in […]

February 25th, 2019

News Coverage in Fox13

Artificial intelligence used in the ICU to predict mortality, news story: Watch the video here: link

February 22nd, 2019

News Coverage in Alligator Newspaper

Excerpt from the original story:   UF researchers can now assess and treat a patient’s condition faster than ever before […]

February 19th, 2019

News Coverage in UFHealth News

n a hospital’s intensive care unit, doctors get a cascade of data about each patient’s condition that can be challenging […]