Prediction of Endotracheal Tube Depth by Using Deep Convolutional Neural Networks
- Conditions
- IntubationMachine Learning
- Interventions
- Diagnostic Test: Deep convolutional neural networks analysis
- Registration Number
- NCT05085743
- Lead Sponsor
- Chang Gung Memorial Hospital
- Brief Summary
Malposition of an endotracheal tube (ETT) may lead to a great disaster. Developing a handy way to predict the proper depth of ETT fixation is in need. Deep convolutional neural networks (DCNNs) are proven to perform well on chest radiographs analysis. The investigators hypothesize that DCNNs can also evaluate pre-intubation chest radiographs to predict suitable ETT depth and no related studies are found. The authors evaluated the ability of DCNNs to analyze pre-intubation chest radiographs along with patients' data to predict the proper depth of ETT fixation before intubation.
- Detailed Description
This was a retrospective, IRB-approved study using chest radiographs images obtained from Picture Archive and Communication System (PACS) at Chang Gung Memorial Hospital, Linkou branch, Taiwan.
A total of 595 de-identified patients' chest radiographs was obtained for this study. The inclusion criteria for this study are patients 18 years or older who were orotracheal intubated within November 2019 to October 2020 and had taken chest radiographs before and immediately after the intubation (\<24 hours). Both pre-intubation and post-intubation chest radiographs of a same patient were obtained. Clinical data including age, sex, body height, body weight, depth of ETT fixation were also recorded. All ETT tip to carina distance was manually measured by a same anesthesiologist from post-intubation films and documented. Lip to carina length of each patient can be calculated by adding ETT fixation depth and ETT tip to carina distance.
Pre-intubation chest radiographs (n=595) along with clinical data including age, sex, body height, body weight, and measured lip to carina length are collected for model building. For this study, 476/595 (80%) of those were used for training and 119/595 (20%) for validation randomly selected by AI model. In training process, images and related clinical data along with the measured lip to carina length are fed into and used to fit out AI model. Then, in validation process, the investigators evaluate the model accuracy and efficacy of predicting the lip to carina length with images and clinical data of those unforeseen cases.
Recruitment & Eligibility
- Status
- COMPLETED
- Sex
- All
- Target Recruitment
- 595
- 18 years or older
- orotracheal intubated within November 2019 to October 2020
- had taken chest radiographs before and within 24hr after intubation
- Bad chest radiographs quality that patients' carina can not be recognized
- Patient with bronchial insertions found in post-intubation films
- Nasal intubation
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Arm && Interventions
Group Intervention Description Validation Deep convolutional neural networks analysis We evaluate the model accuracy and efficacy of predicting the lip to carina length with images and clinical data of those unforeseen cases in the validation group. Training Deep convolutional neural networks analysis Images and related clinical data along with the measured lip to carina length of the training group are fed into and used to fit out deep convolutional neural networks model.
- Primary Outcome Measures
Name Time Method The lip to carina length predicted by AI model 1 minute after DCNNs analysis The mean absolute error of AI-predicted length in comparison with measured length is used to evaluate AI performance
- Secondary Outcome Measures
Name Time Method Rate of endotracheal tube malpositioning according to AI model recommendation 1 minute after DCNNs analysis Endotracheal tube malpositioning is used to elevate the safty of AI recommendation.
Trial Locations
- Locations (1)
Chang Gung Memorial Hospital, Linkou branch
🇨🇳Taoyuan, Guishan Township, Taiwan