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Development of an Artificial Intelligence Model for Predicting Intraoperative Changes in Cardiac Output Using Capnography During General Anesthesia
Conventional monitoring of cardiac output requires an invasive procedure and an additional device, which can lead to increased risk and cost. Investigators developed an artificial intelligence algorithm to predict intraoperative changes in cardiac output using capnography in patients undergoing surgery under general anesthesia.
Anesthesiologists strive to maintain adequate cardiac output during surgery. However, conventional monitoring of cardiac output requires an invasive procedure (risk) and an additional device (cost). Because most surgeries are performed without any invasive monitors, anesthesiologists must manage the patients without cardiac output information. However, modern anesthesia machines usually provide capnography, and continuous capnography monitoring can help estimate changes in cardiac output. Therefore, investigators aim to develop an artificial intelligence algorithm to predict intraoperative changes in cardiac output using capnography in patients undergoing surgery under general anesthesia. Investigators train a model using capnography data (5-minute duration) related to a 20% or greater decrease in cardiac output during the same period. The developed model can provide an alarm for a decrease in cardiac output based on the change in capnography.
Age
19 - 75 years
Sex
ALL
Healthy Volunteers
No
Samsung Medical Center
Seoul, South Korea
Start Date
July 3, 2025
Primary Completion Date
December 31, 2025
Completion Date
December 31, 2025
Last Updated
July 18, 2025
2,005
ESTIMATED participants
No Intervention: Observational Cohort
OTHER
Lead Sponsor
Samsung Medical Center
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