Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study

Abstract Background Tracheal intubation is the gold standard for securing the airway, and it is not uncommon to encounter intubation difficulties in intensive care units and emergency rooms. Currently, there is a need for an objective measure to assess intubation difficulties in emergency situations...

Full description

Bibliographic Details
Main Authors: Tatsuya Hayasaka, Kazuharu Kawano, Kazuki Kurihara, Hiroto Suzuki, Masaki Nakane, Kaneyuki Kawamae
Format: Article
Language:English
Published: BMC 2021-05-01
Series:Journal of Intensive Care
Subjects:
AI
Online Access:https://doi.org/10.1186/s40560-021-00551-x
id doaj-b8c78078e3cf4eb7b12a1a1ceb17051b
record_format Article
spelling doaj-b8c78078e3cf4eb7b12a1a1ceb17051b2021-05-09T11:10:27ZengBMCJournal of Intensive Care2052-04922021-05-019111410.1186/s40560-021-00551-xCreation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational studyTatsuya Hayasaka0Kazuharu Kawano1Kazuki Kurihara2Hiroto Suzuki3Masaki Nakane4Kaneyuki Kawamae5Department of Anesthesiology, Yamagata University HospitalDepartment of Medicine, Yamagata University School of MedicineDepartment of Anesthesiology, Yamagata University HospitalCritical Care Center, Yamagata University HospitalDepartment of Emergency and Critical Care Medicine, Yamagata University HospitalDepartment of Anesthesiology, Yamagata University HospitalAbstract Background Tracheal intubation is the gold standard for securing the airway, and it is not uncommon to encounter intubation difficulties in intensive care units and emergency rooms. Currently, there is a need for an objective measure to assess intubation difficulties in emergency situations by physicians, residents, and paramedics who are unfamiliar with tracheal intubation. Artificial intelligence (AI) is currently used in medical imaging owing to advanced performance. We aimed to create an AI model to classify intubation difficulties from the patient’s facial image using a convolutional neural network (CNN), which links the facial image with the actual difficulty of intubation. Methods Patients scheduled for surgery at Yamagata University Hospital between April and August 2020 were enrolled. Patients who underwent surgery with altered facial appearance, surgery with altered range of motion in the neck, or intubation performed by a physician with less than 3 years of anesthesia experience were excluded. Sixteen different facial images were obtained from the patients since the day after surgery. All images were judged as “Easy”/“Difficult” by an anesthesiologist, and an AI classification model was created using deep learning by linking the patient’s facial image and the intubation difficulty. Receiver operating characteristic curves of actual intubation difficulty and AI model were developed, and sensitivity, specificity, and area under the curve (AUC) were calculated; median AUC was used as the result. Class activation heat maps were used to visualize how the AI model classifies intubation difficulties. Results The best AI model for classifying intubation difficulties from 16 different images was generated in the supine-side-closed mouth-base position. The accuracy was 80.5%; sensitivity, 81.8%; specificity, 83.3%; AUC, 0.864; and 95% confidence interval, [0.731-0.969], indicating that the class activation heat map was concentrated around the neck regardless of the background; the AI model recognized facial contours and identified intubation difficulties. Conclusion This is the first study to apply deep learning (CNN) to classify intubation difficulties using an AI model. We could create an AI model with an AUC of 0.864. Our AI model may be useful for tracheal intubation performed by inexperienced medical staff in emergency situations or under general anesthesia.https://doi.org/10.1186/s40560-021-00551-xTracheal intubationIntubation difficultyAIActivation heat map
collection DOAJ
language English
format Article
sources DOAJ
author Tatsuya Hayasaka
Kazuharu Kawano
Kazuki Kurihara
Hiroto Suzuki
Masaki Nakane
Kaneyuki Kawamae
spellingShingle Tatsuya Hayasaka
Kazuharu Kawano
Kazuki Kurihara
Hiroto Suzuki
Masaki Nakane
Kaneyuki Kawamae
Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
Journal of Intensive Care
Tracheal intubation
Intubation difficulty
AI
Activation heat map
author_facet Tatsuya Hayasaka
Kazuharu Kawano
Kazuki Kurihara
Hiroto Suzuki
Masaki Nakane
Kaneyuki Kawamae
author_sort Tatsuya Hayasaka
title Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
title_short Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
title_full Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
title_fullStr Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
title_full_unstemmed Creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
title_sort creation of an artificial intelligence model for intubation difficulty classification by deep learning (convolutional neural network) using face images: an observational study
publisher BMC
series Journal of Intensive Care
issn 2052-0492
publishDate 2021-05-01
description Abstract Background Tracheal intubation is the gold standard for securing the airway, and it is not uncommon to encounter intubation difficulties in intensive care units and emergency rooms. Currently, there is a need for an objective measure to assess intubation difficulties in emergency situations by physicians, residents, and paramedics who are unfamiliar with tracheal intubation. Artificial intelligence (AI) is currently used in medical imaging owing to advanced performance. We aimed to create an AI model to classify intubation difficulties from the patient’s facial image using a convolutional neural network (CNN), which links the facial image with the actual difficulty of intubation. Methods Patients scheduled for surgery at Yamagata University Hospital between April and August 2020 were enrolled. Patients who underwent surgery with altered facial appearance, surgery with altered range of motion in the neck, or intubation performed by a physician with less than 3 years of anesthesia experience were excluded. Sixteen different facial images were obtained from the patients since the day after surgery. All images were judged as “Easy”/“Difficult” by an anesthesiologist, and an AI classification model was created using deep learning by linking the patient’s facial image and the intubation difficulty. Receiver operating characteristic curves of actual intubation difficulty and AI model were developed, and sensitivity, specificity, and area under the curve (AUC) were calculated; median AUC was used as the result. Class activation heat maps were used to visualize how the AI model classifies intubation difficulties. Results The best AI model for classifying intubation difficulties from 16 different images was generated in the supine-side-closed mouth-base position. The accuracy was 80.5%; sensitivity, 81.8%; specificity, 83.3%; AUC, 0.864; and 95% confidence interval, [0.731-0.969], indicating that the class activation heat map was concentrated around the neck regardless of the background; the AI model recognized facial contours and identified intubation difficulties. Conclusion This is the first study to apply deep learning (CNN) to classify intubation difficulties using an AI model. We could create an AI model with an AUC of 0.864. Our AI model may be useful for tracheal intubation performed by inexperienced medical staff in emergency situations or under general anesthesia.
topic Tracheal intubation
Intubation difficulty
AI
Activation heat map
url https://doi.org/10.1186/s40560-021-00551-x
work_keys_str_mv AT tatsuyahayasaka creationofanartificialintelligencemodelforintubationdifficultyclassificationbydeeplearningconvolutionalneuralnetworkusingfaceimagesanobservationalstudy
AT kazuharukawano creationofanartificialintelligencemodelforintubationdifficultyclassificationbydeeplearningconvolutionalneuralnetworkusingfaceimagesanobservationalstudy
AT kazukikurihara creationofanartificialintelligencemodelforintubationdifficultyclassificationbydeeplearningconvolutionalneuralnetworkusingfaceimagesanobservationalstudy
AT hirotosuzuki creationofanartificialintelligencemodelforintubationdifficultyclassificationbydeeplearningconvolutionalneuralnetworkusingfaceimagesanobservationalstudy
AT masakinakane creationofanartificialintelligencemodelforintubationdifficultyclassificationbydeeplearningconvolutionalneuralnetworkusingfaceimagesanobservationalstudy
AT kaneyukikawamae creationofanartificialintelligencemodelforintubationdifficultyclassificationbydeeplearningconvolutionalneuralnetworkusingfaceimagesanobservationalstudy
_version_ 1721454635259002880