Clinical Decision Support System
The PICU data collaborative: A novel, multi-institutional, pediatric critical care dataset.
A web-based tool to perform a values clarification for stroke prevention in patients with atrial fibrillation: Design and preliminary testing study.
Study protocol: Collaboration Oriented Approach to Controlling High Blood Pressure (COACH) in adults - A randomised controlled trial.
New performance measurement framework for realizing patient-centered clinical decision support: Qualitative development study.
CDS Connect- Year 8 Final Report
Artificial Intelligence and Human Factors in Healthcare Quality & Safety
Using a conference model, this study convenes a multidisciplinary group of experts to explore the integration of human factors engineering approaches in the implementation of artificial intelligence in healthcare, providing an opportunity for ongoing collaboration and research to disseminate knowledge and implement best practices that enhance efficiency, prevent provider burnout, and ultimately improve healthcare quality, safety, and value.
Machine-Learning Prediction Model for Personalized Urinary Tract Infection Care in Children
The study will develop and implement a validated machine learning model to optimize voiding cystourethrogram timing and use for diagnosing vesicoureteral reflux (VUR) in children, aiming to reduce the significant health and economic impacts of VUR and recurrent febrile urinary tract infections (fUTIs) by standardizing practices, minimizing unnecessary procedures, and ensuring timely diagnosis for those at highest risk, ultimately seeking to prevent renal injury from fUTIs.
ML-ROVER: Machine Learning to Reduce Laboratory Test Overutilization
The study will develop, validate, implement, and assess the usability of a machine learning based clinical decision support tool designed to reduce laboratory testing overutilization in pediatric intensive care unit patients.
Identifying Sepsis Phenotypes Associated with Antibiotic-Resistant Pathogens Using Large Language Models and Machine Learning
This research uses large language models and machine learning to retrospectively analyze electronic health records of patients with suspected sepsis and identify patterns in treatment outcomes, with the goal of shaping future clinical guidelines that help doctors select the most effective antibiotics for each patient, reduce unnecessary use of broad-spectrum antibiotics, lower the risks of drug resistance, and ultimately improve patient outcomes.
