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Deep Learning Model for Predicting a Peripheral Venous Waveform-based Pulse Pressure Variation
Sponsor: Seoul National University Bundang Hospital
Summary
Pulse pressure variation is a monitoring index that indicates the response to fluid therapy in patients receiving mechanical ventilation, and is used as a reference for patients with unstable hemodynamic conditions. However, it is invasive because it requires arterial puncture to collect it. In a previous study by the investigators, the investigators developed and verified an artificial intelligence model that predicts stroke volume variation, in real time using only the central venous pressure waveform. However, since a large vein such as the jugular vein must be punctured to collect the central venous pressure waveform, it is still invasive, and its clinical utility is low. Therefore, in this study, the investigators collected waveforms from peripheral veins that are less invasive and can be a wide range of applications because all surgical patients have them. The investigators aimed to develop and verify an artificial intelligence model that predicts pulse pressure variation obtained from peripheral venous waveforms .
Official title: Development and Validation of a Peripheral Venous Waveform-based Pulse Pressure Variation Calculating Deep Learning Model
Key Details
Gender
All
Age Range
19 Years - 80 Years
Study Type
OBSERVATIONAL
Enrollment
150
Start Date
2024-12-28
Completion Date
2026-11-28
Last Updated
2024-12-16
Healthy Volunteers
Yes
Conditions
Interventions
peripheral waveform collection
The peripheral venous pressure waveform is collected by connecting a pressure transducer that is currently in use to the placed central venous line. In addition, the pulse pressure variation or stroke volume variation value that can be obtained from the arterial catheter. This extracts the medical records and bio-signal information of the subjects registered through the previously approved 'Establishment of a Bio-signal and Clinical Information Registry for the Development of Patient Monitoring Algorithm' study (B-2202-738-401).
Locations (1)
Seoul National University Bundang Hospital
Seongnam-si, Gyunggi-do, South Korea