Cargando…

Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods

Difficult laryngoscopy is associated with airway injury, and asphyxia. There are no guidelines or gold standards for detecting difficult laryngoscopy. There are many opinions on which predictors to use to detect difficult laryngoscopy exposure, and no comprehensively unified comparative analysis has...

Descripción completa

Detalles Bibliográficos
Autores principales: Liu, Xiaoxiao, Flanagan, Colin, Fang, Jingchao, Lei, Yiming, McGrath, Launcelot, Wang, Jun, Guo, Xiangyang, Guo, Jiangzhen, McGrath, Harry, Han, Yongzheng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9703450/
https://www.ncbi.nlm.nih.gov/pubmed/36451753
http://dx.doi.org/10.1016/j.heliyon.2022.e11761
_version_ 1784839851175051264
author Liu, Xiaoxiao
Flanagan, Colin
Fang, Jingchao
Lei, Yiming
McGrath, Launcelot
Wang, Jun
Guo, Xiangyang
Guo, Jiangzhen
McGrath, Harry
Han, Yongzheng
author_facet Liu, Xiaoxiao
Flanagan, Colin
Fang, Jingchao
Lei, Yiming
McGrath, Launcelot
Wang, Jun
Guo, Xiangyang
Guo, Jiangzhen
McGrath, Harry
Han, Yongzheng
author_sort Liu, Xiaoxiao
collection PubMed
description Difficult laryngoscopy is associated with airway injury, and asphyxia. There are no guidelines or gold standards for detecting difficult laryngoscopy. There are many opinions on which predictors to use to detect difficult laryngoscopy exposure, and no comprehensively unified comparative analysis has been conducted. The efficacy and accuracy of deep learning (DL)-based models and machine learning (ML)-based models for predicting difficult laryngoscopy need to be evaluated and compared, under the circumstance that the flourishing of deep neural networks (DNN) has increasingly left ML less concentrated and uncreative. For the first time, the performance of difficult laryngoscopy prediction for a dataset of 671 patients, under single index and integrated multiple indicators was consistently verified under seven ML-based models and four DL-based approaches. The top dog was a simple traditional machine learning model, Naïve Bayes, outperforming DL-based models, the best test accuracy is 86.6%, the F1 score is 0.908, and the average precision score is 0.837. Three radiological variables of difficult laryngoscopy were all valuable separately and combinedly and the ranking was presented. There is no significant difference in performance among the three radiological indicators individually (83.06% vs. 83.20% vs. 83.33%) and comprehensively (83.74%), suggesting that anesthesiologists can flexibly choose appropriate measurement indicators according to the actual situation to predict difficult laryngoscopy. Adaptive spatial interaction was imposed to the model to boost the performance of difficult laryngoscopy prediction with preoperative cervical spine X-ray.
format Online
Article
Text
id pubmed-9703450
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-97034502022-11-29 Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods Liu, Xiaoxiao Flanagan, Colin Fang, Jingchao Lei, Yiming McGrath, Launcelot Wang, Jun Guo, Xiangyang Guo, Jiangzhen McGrath, Harry Han, Yongzheng Heliyon Research Article Difficult laryngoscopy is associated with airway injury, and asphyxia. There are no guidelines or gold standards for detecting difficult laryngoscopy. There are many opinions on which predictors to use to detect difficult laryngoscopy exposure, and no comprehensively unified comparative analysis has been conducted. The efficacy and accuracy of deep learning (DL)-based models and machine learning (ML)-based models for predicting difficult laryngoscopy need to be evaluated and compared, under the circumstance that the flourishing of deep neural networks (DNN) has increasingly left ML less concentrated and uncreative. For the first time, the performance of difficult laryngoscopy prediction for a dataset of 671 patients, under single index and integrated multiple indicators was consistently verified under seven ML-based models and four DL-based approaches. The top dog was a simple traditional machine learning model, Naïve Bayes, outperforming DL-based models, the best test accuracy is 86.6%, the F1 score is 0.908, and the average precision score is 0.837. Three radiological variables of difficult laryngoscopy were all valuable separately and combinedly and the ranking was presented. There is no significant difference in performance among the three radiological indicators individually (83.06% vs. 83.20% vs. 83.33%) and comprehensively (83.74%), suggesting that anesthesiologists can flexibly choose appropriate measurement indicators according to the actual situation to predict difficult laryngoscopy. Adaptive spatial interaction was imposed to the model to boost the performance of difficult laryngoscopy prediction with preoperative cervical spine X-ray. Elsevier 2022-11-23 /pmc/articles/PMC9703450/ /pubmed/36451753 http://dx.doi.org/10.1016/j.heliyon.2022.e11761 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Article
Liu, Xiaoxiao
Flanagan, Colin
Fang, Jingchao
Lei, Yiming
McGrath, Launcelot
Wang, Jun
Guo, Xiangyang
Guo, Jiangzhen
McGrath, Harry
Han, Yongzheng
Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
title Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
title_full Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
title_fullStr Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
title_full_unstemmed Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
title_short Comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
title_sort comparative analysis of popular predictors for difficult laryngoscopy using hybrid intelligent detection methods
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9703450/
https://www.ncbi.nlm.nih.gov/pubmed/36451753
http://dx.doi.org/10.1016/j.heliyon.2022.e11761
work_keys_str_mv AT liuxiaoxiao comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT flanagancolin comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT fangjingchao comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT leiyiming comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT mcgrathlauncelot comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT wangjun comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT guoxiangyang comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT guojiangzhen comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT mcgrathharry comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods
AT hanyongzheng comparativeanalysisofpopularpredictorsfordifficultlaryngoscopyusinghybridintelligentdetectionmethods