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Active Not RecruitingNCT06617403

Pre-operative Characteristics for Prediction of Supraglottic Airway Failure Using Machine Learning (ERICA)

Can Pre-operative Characteristics Predict Failure of Supraglottic Airway to Tracheal Tube? A Machine Learning Algorithm (ERICA)

Status
Active Not Recruiting
Phase
Study type
Observational
Enrollment
44,000 (actual)
Sponsor
University Hospital Ulm · Academic / Other
Sex
All
Age
18 Years
Healthy volunteers
Not accepted

Summary

Supraglottic airway devices (SGA) are a safe and well-established technique for airway management. Nowadays, up to 60% of general anaesthetics performed in European countries use SGA. In 0.2-4.7% SGA fail and require conversion to tracheal tubes. The ERICA study will use artificial intelligence methods to develop a model that can predict the risk of an unplanned SGA conversion based on pre-operative characteristics available during the premedication visit.

Detailed description

An intraoperative change of procedure not only leads to time delays but also time delays, but also involves measures that are stressful for the patient, such as deepening the anaesthesia and manipulating the airway again. Therefore, the objective of ERICA is to develop a machine learning algorithm based on preoperative information 1) that can accurately predict the risk of an unplanned SGA conversion and 2) identifies characteristics leading to conversion from SGA to tracheal tube. I. Developing the model • The final dataset will be split in a training, testing, and validation cohort. Five models will be created to predict intraoperative conversion from SGA to tracheal tube including generalized linear models (GLM), deep learning, distributed random forest (DRF), xgboost and gradient boosting machine (GBM). Then, a stacked ensemble model will be constructed through combination of the five models. Finally, the best artificial intelligence model will be chosen. II. Identify characteristics leading to the airway conversion and categorisation. * Intraoperative changes of the patient's position can alter the risk of conversion, therefore operations with positional changes should be considered * Identify patient- and procedure-dependent characteristics that lead to conversion from SGA to tracheal tube and their importance.

Conditions

Interventions

TypeNameDescription
OTHERnonnon

Timeline

Start date
2022-12-01
Primary completion
2024-11-30
Completion
2024-12-31
First posted
2024-09-27
Last updated
2024-09-27

Locations

2 sites across 1 country: Germany

Source: ClinicalTrials.gov record NCT06617403. Inclusion in this directory is not an endorsement.