Today's Clinical Lab - News, Editorial and Products for the Clinical Laboratory
Illustration of a human profile against a background of digital zeros and ones representing healthcare data and AI processing.
The researchers compared GPT-4 against traditional machine-learning models such as Bio-Clinical-BERT and XGBoost.
iStock, metamorworks

Can AI Help Improve ER Admission Decisions?

A new study from Mount Sinai used data from than 864,000 emergency room visits to assess GPT-4’s ability to predict hospital admissions

Mount Sinai School of Medicine,Mount Sinai Hospital
Published:May 21, 2024
|2 min read
Register for free to listen to this article
Listen with Speechify
0:00
2:00

New York, NY — May 21, 2024 —Generative artificial intelligence (AI), such as GPT-4, can help predict whether an emergency room patient needs to be admitted to the hospital even with only minimal training on a limited number of records, according to investigators at the Icahn School of Medicine at Mount Sinai. Details of the research were published in the May 21 online issue of the Journal of the American Medical Informatics Association.

In the retrospective study, the researchers analyzed records from seven Mount Sinai Health System hospitals, using both structured data, such as vital signs, and unstructured data, such as nurse triage notes, from more than 864,000 emergency room visits while excluding identifiable patient data. Of these visits, 159,857 (18.5 percent) led to the patient being admitted to the hospital.

The researchers compared GPT-4 against traditional machine-learning models such as Bio-Clinical-BERT for text and XGBoost for structured data in various scenarios, assessing its performance to predict hospital admissions independently and in combination with the traditional methods.

“We were motivated by the need to test whether generative AI, specifically large language models (LLMs) like GPT-4, could improve our ability to predict admissions in high-volume settings such as the Emergency Department,” says co-senior author Eyal Klang, MD, director of the Generative AI Research Program in the Division of Data-Driven and Digital Medicine (D3M) at Icahn Mount Sinai. “Our goal is to enhance clinical decision-making through this technology. We were surprised by how well GPT-4 adapted to the ER setting and provided reasoning for its decisions. This capability of explaining its rationale sets it apart from traditional models and opens up new avenues for AI in medical decision-making.”

While traditional machine-learning models use millions of records for training, LLMs can effectively learn from just a few examples. Moreover, according to the researchers, LLMs can incorporate traditional machine-learning predictions, improving performance.

“Our research suggests that AI could soon support doctors in emergency rooms by making quick, informed decisions about patient admissions. This work opens the door for further innovation in healthcare AI, encouraging the development of models that can reason and learn from limited data, like human experts do,” says co-senior author Girish N. Nadkarni, MD, MPH, and Dr. Arthur M. Fishberg, professor of medicine at Icahn Mount Sinai, director of The Charles Bronfman Institute of Personalized Medicine, and system chief of D3M. “However, while the results are encouraging, the technology is still in a supportive role, enhancing the decision-making process by providing additional insights, not taking over the human component of health care, which remains critical.”

The research team is investigating how to apply LLMs to healthcare systems, with the goal of harmoniously integrating them with traditional machine-learning methods to address complex challenges and decision-making in real-time clinical settings.

“Our study informs how LLMs can be integrated into healthcare operations. The ability to rapidly train LLMs highlights their potential to provide valuable insights even in complex environments like health care,” says Brendan Carr, MD, MA, MS, a study co-author and emergency room physician who is chief executive officer of Mount Sinai Health System. “Our study sets the stage for further research on AI integration in health care across the many domains of diagnostic, treatment, operational, and administrative tasks that require continuous optimization.”

The remaining authors of the paper, all with Icahn Mount Sinai, are Benjamin S. Glicksberg, PhD; Dhaval Patel, BS; Ashwin Sawant, MD; Akhil Vaid, MD; Ganesh Raut, BS; Alexander W. Charney, MD, PhD; Donald Apakama, MD; and Robert Freeman, RN.

The work was supported by the National Heart Lung and Blood Institute NIH grant 5R01HL141841-05.