基于深度学习的面部分析预测困难喉镜检查:一项可行性研究。

Deep learning-based facial analysis for predicting difficult videolaryngoscopy: a feasibility study.

机构信息

Department of Anaesthesiology, Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

State Key Laboratory of Ocean Engineering, School of Naval Architecture, Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai, China.

出版信息

Anaesthesia. 2024 Apr;79(4):399-409. doi: 10.1111/anae.16194. Epub 2023 Dec 13.

Abstract

While videolaryngoscopy has resulted in better overall success rates of tracheal intubation, airway assessment is still an important prerequisite for safe airway management. This study aimed to create an artificial intelligence model to identify difficult videolaryngoscopy using a neural network. Baseline characteristics, medical history, bedside examination and seven facial images were included as predictor variables. ResNet-18 was introduced to recognise images and extract features. Different machine learning algorithms were utilised to develop predictive models. A videolaryngoscopy view of Cormack-Lehane grade of 1 or 2 was classified as 'non-difficult', while grade 3 or 4 was classified as 'difficult'. A total of 5849 patients were included, of whom 5335 had non-difficult and 514 had difficult videolaryngoscopy. The facial model (only including facial images) using the Light Gradient Boosting Machine algorithm showed the highest area under the curve (95%CI) of 0.779 (0.733-0.825) with a sensitivity (95%CI) of 0.757 (0.650-0.845) and specificity (95%CI) of 0.721 (0.626-0.794) in the test set. Compared with bedside examination and multivariate scores (El-Ganzouri and Wilson), the facial model had significantly higher predictive performance (p < 0.001). Artificial intelligence-based facial analysis is a feasible technique for predicting difficulty during videolaryngoscopy, and the model developed using neural networks has higher predictive performance than traditional methods.

摘要

虽然视频喉镜的使用提高了气管插管的总体成功率,但气道评估仍然是安全气道管理的重要前提。本研究旨在创建一种人工智能模型,通过神经网络识别困难的视频喉镜。将基线特征、病史、床边检查和 7 张面部图像作为预测变量。引入 ResNet-18 识别图像并提取特征。使用不同的机器学习算法开发预测模型。将 Cormack-Lehane 分级为 1 级或 2 级的视频喉镜视图分类为“非困难”,而分级为 3 级或 4 级的则分类为“困难”。共纳入 5849 例患者,其中 5335 例为非困难视频喉镜,514 例为困难视频喉镜。使用 Light Gradient Boosting Machine 算法的面部模型(仅包括面部图像)显示出最高的曲线下面积(95%CI)为 0.779(0.733-0.825),在测试集中的灵敏度(95%CI)为 0.757(0.650-0.845)和特异性(95%CI)为 0.721(0.626-0.794)。与床边检查和多变量评分(El-Ganzouri 和 Wilson)相比,面部模型具有更高的预测性能(p<0.001)。基于人工智能的面部分析是预测视频喉镜困难的一种可行技术,使用神经网络开发的模型比传统方法具有更高的预测性能。

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