The Hypotension Prediction Index (HPI) machine-learning algorithm combined with personalized treatment guidance is being evaluated in a randomized clinical trial to determine if it reduces the time-weighted average of intraoperative hypotension.
RCT (n=100)
Computer-generated permutated block randomization (1:1)
Single-blind
No
Intraoperative hypotension during non-cardiac surgery (n=100)
Hypotension Prediction Index (HPI) machine-learning algorithm with personalized treatment guidance vs Standard care (HemoSphere monitor connected but fully covered)
Time-weighted average (TWA) in hypotension during surgery
BACKGROUND: Intraoperative hypotension is associated with increased morbidity and mortality. Current treatment is mostly reactive. The Hypotension Prediction Index (HPI) algorithm is able to predict hypotension minutes before the blood pressure actually decreases. Internal and external validation of this algorithm has shown good sensitivity and specificity. We hypothesize that the use of this algorithm in combination with a personalized treatment protocol will reduce the time weighted average (TWA) in hypotension during surgery spent in hypotension intraoperatively. METHODS/DESIGN: We aim to include 100 adult patients undergoing non-cardiac surgery with an anticipated duration of more than 2 h, necessitating the use of an arterial line, and an intraoperatively targeted mean arterial pressure (MAP) of > 65 mmHg. This study is divided into two parts; in phase A baseline TWA data from 40 patients will be collected prospectively. A device (HemoSphere) with HPI software will be connected but fully covered. Phase B is designed as a single-center, randomized controlled trial were 60 patients will be randomized with computer-generated blocks of four, six or eight, with an allocation ratio of 1:1. In the intervention arm the HemoSphere with HPI will be used to guide treatment; in the control arm the HemoSphere with HPI software will be connected but fully covered. The primary outcome is the TWA in hypotension during surgery. DISCUSSION: The aim of this trial is to explore whether the use of a machine-learning algorithm intraoperatively can result in less hypotension. To test this, the treating anesthesiologist will need to change treatment behavior from reactive to proactive. TRIAL REGISTRATION: This trial has been registered with the NIH, U.S. National Library of Medicine at ClinicalTrials.gov, ID: NCT03376347 . The trial was submitted on 4 November 2017 and accepted for registration on 18 December 2017.
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Marije Wijnberge
Centre for the Study of the Economies of Africa
Jimmy Schenk
Amsterdam University Medical Centers
Lotte E. Terwindt
Apple (Israel)
Trials
University of Amsterdam
Amsterdam UMC Location University of Amsterdam
University of Twente
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Wijnberge et al. (Fri,) conducted a rct in Intraoperative hypotension during non-cardiac surgery (n=100). Hypotension Prediction Index (HPI) machine-learning algorithm with personalized treatment guidance vs. Standard care (HemoSphere monitor connected but fully covered) was evaluated on Time-weighted average (TWA) in hypotension during surgery. The Hypotension Prediction Index (HPI) machine-learning algorithm combined with personalized treatment guidance is being evaluated in a randomized clinical trial to determine if it reduces the time-weighted average of intraoperative hypotension.
synapsesocial.com/papers/6a0ec3b6218372ada647b546 — DOI: https://doi.org/10.1186/s13063-019-3637-4
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