Connect with us

Medtech

Feinstein Institutes AI Researchers Receive $3.1 Million NIH Grant To Develop Hospital Risk and Prevention Tools

Study to help create new clinical support tools to monitor and predict outcomes of in-hospital patients using machine learning and artificial intelligence…

Published

on

This article was originally published by AITHORITY
Feinstein Institutes AI Researchers Receive $3.1 Million NIH Grant To Develop Hospital Risk and Prevention Tools

Study to help create new clinical support tools to monitor and predict outcomes of in-hospital patients using machine learning and artificial intelligence

Hospitalized adult patients whose medical conditions worsen after being admitted, requiring escalation of care, such as transfer to the intensive care unit (ICU) or intervention of a rapid response team, may benefit from monitoring by artificial intelligence (AI). Scientists at The Feinstein Institutes for Medical Research were recently awarded $3.1 million from the National Institutes of Health (NIH) to fund a new study that would harness AI and machine learning (ML) to help doctors and nurses monitor patients in busy medical and surgical wards to identify and prevent deterioration and ultimately improve patient outcomes.

 Latest AiThority Interview Insights : AiThority Interview with Rebecca Clyde, Co-founder and CEO of Botco.ai

“Dr. Zanos’ study will harness the use of artificial intelligence to better inform and deliver care.”

The study team is led by Theodoros Zanos, PhD, associate professor at the Feinstein’s Institute of Health System Science and Institute of Bioelectronic Medicine, and includes Karina Davidson PhD, Michael Oppenheim MD, Alex Makhnevich MD, Beth Friedman RN, and others at the Feinstein Institutes and Northwell Health, New York’s largest health system. The group will develop and implement ML models with the goal of improving the monitoring of patients once they are admitted in order to identify who might undergo a rapid decline to address it sooner.

“Some patients who are admitted for one condition are not explicitly showing symptoms of other concerns, which can lead to their health deteriorating and even dying,” said Dr. Zanos. “This research will leverage vast patient data, new continuous monitoring technologies and AI to identify those often-unidentified risks and subtle early worrisome trends and enable life-saving interventions.”

Dr. Zanos and his team will turn to Northwell’s large, diverse clinical dataset using electronic health records (EHRs) from more than 2.4 million hospitalizations to generate ML predictive models. The clinical support tools will help clinicians and nurses identify in advance patients at risk of deterioration and clinical reasons to enable timely interventions. These tools also will identify those patients who are more stable. The study will collect and leverage patient data using a continuous monitoring (CM) device, the VitalConnect VitalPatch, that will be placed on patients upon admission to the hospital, to develop more accurate prediction models.

“Merging data and technology, researchers and clinicians can work together to develop new tools to improve patient outcomes,” said Kevin J. Tracey, MD, president and CEO of the Feinstein Institutes and Karches Family Distinguished Chair in Medical Research. “Dr. Zanos’ study will harness the use of artificial intelligence to better inform and deliver care.”

Dr. Zanos is a leader in health care AI. His research revolves around developing algorithms that will enable early diagnosis, disease severity assessment, personalization and adaptability of effective therapies. In 2020, he and his lab developed a digital tool that predicts a hospitalized patient’s overnight stability and determines whether they could be left undisturbed overnight to sleep, recover and discharge faster. This vital sign monitoring tool, called “Let Sleeping Patients Lie,” used a vast body of clinical data from the patient visits, including respiratory rate, heart rate, systolic blood pressure, body temperature and age.

Read More about AiThority Interview : AIThority Interview with David Lambert, VP & GM, Strategy & Growth, APAC, Medallia

Last year, Dr. Zanos published in Nature Communications results of a two-and-a-half-year-long study which used 35,000 COVID-19 diverse patients to develop a new digital clinical support tool that accurately predicts a patient’s outcomes and aids in clinical care decision-making.

The Feinstein Institutes continues to invest in the use of technology and artificial intelligence to help improve patient outcomes and bridge health disparities. Most recently, the Feinstein Institutes received a $10 million gift from Scott and Debby Rechler to create the Scott and Debby Rechler Center for Health Outcomes within the Institute of Health System Science.

AiThority Interview Insights: AiThority Interview with Matthew Tillman, Co-Founder and CEO at OpenEnvoy

 [To share your insights with us, please write to sghosh@martechseries.com] 

The post Feinstein Institutes AI Researchers Receive $3.1 Million NIH Grant To Develop Hospital Risk and Prevention Tools appeared first on AiThority.


medicine




aids
artificial intelligence

ehrs
machine learning

Medtech

ETF Talk: AI is ‘Big Generator’

Second nature comes alive Even if you close your eyes We exist through this strange device — Yes, “Big Generator” Artificial intelligence (AI) has…

Continue Reading
Medtech

Apple gets an appeals court win for its Apple Watch

Apple has at least a couple more weeks before it has to worry about another sales ban.

Continue Reading
Medtech

Federal court blocks ban on Apple Watches after Apple appeal

A federal appeals court has temporarily blocked a sweeping import ban on Apple’s latest smartwatches while the patent dispute winds its way through…

Continue Reading

Trending