SMART RÉA

Predicting the depth of anesthesia is a challenge for anesthesiologists because brain variables are difficult to measure.

A lack of anesthesia exposes the patient to awakening during surgery; conversely, an excess of anesthesia increases the risk of postoperative cardiac and neurological complications. A precise optimization of the depth of anesthesia must therefore be sought, in particular for fragile, elderly or co-morbid patients. Our system takes into account the data from the usual monitoring of patients and by integrating them at a high frequency during general anesthesia, allows to deduce the depth of anesthesia. In an alternative model, we propose to add the analysis results of an EEG channel to the model to significantly increase the accuracy of the prediction.

 

Applications

  • Anesthesia Follow up
  • Multimodal monitoring (HR, MeanBP, RR, EEG)
  • Depth of anesthesia
  • Perioperative optimization
  • Resuscitation sedation

 

Competitive advantages

  • Prediction of the depth of anesthesia without taking into account cerebral variables
  • Prediction based on 4 variables usually monitored during general anesthesia
  • Optimization of the depth of anesthesia
  • Gradual increase of the database to continuously improve the performance of the model

 

Intellectual property

  • Patent Pending, December 2019

 

Keywords

Machine Learning - Predictive algorithm - Individual medicine Depth of anesthesia - Multimodal monitoring - General anesthesia

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