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一种用于困难气道评估的全自动半监督深度学习模型。

A fully-automatic semi-supervised deep learning model for difficult airway assessment.

作者信息

Wang Guangzhi, Li Chenxi, Tang Fudong, Wang Yangyang, Wu Su, Zhi Hui, Zhang Fan, Wang Meiyun, Zhang Jiaqiang

机构信息

Department of Anesthesiology and Perioperative Medicine, People's Hospital of Zhengzhou University, Henan Provincial People's Hospital, Zhengzhou, Henan, China.

Unmanned System Research Institute, Northwestern Polytechnical University, Xi'an, China.

出版信息

Heliyon. 2023 Apr 22;9(5):e15629. doi: 10.1016/j.heliyon.2023.e15629. eCollection 2023 May.

Abstract

BACKGROUND

Difficult airway conditions represent a substantial challenge for clinicians. Predicting such conditions is essential for subsequent treatment planning, but the reported diagnostic accuracies are still quite low. To overcome these challenges, we developed a rapid, non-invasive, cost-effective, and highly-accurate deep-learning approach to identify difficult airway conditions through photographic image analysis.

METHODS

For each of 1000 patients scheduled for elective surgery under general anesthesia, images were captured from 9 specific and different viewpoints. The collected image set was divided into training and testing subsets in the ratio of 8:2. We used a semi-supervised deep-learning method to train and test an AI model for difficult airway prediction.

RESULTS

We trained our semi-supervised deep-learning model using only 30% of the labeled training samples (with the remaining 70% used without labels). We evaluated the model performance using metrics of accuracy, sensitivity, specificity, F1-score, and the area under the ROC curve (AUC). The numerical values of these four metrics were found to be 90.00%, 89.58%, 90.13%, 81.13%, and 0.9435, respectively. For a fully-supervised learning scheme (with 100% of the labeled training samples used for model training), the corresponding values were 90.50%, 91.67%, 90.13%, 82.25%, and 0.9457, respectively. When three professional anesthesiologists conducted comprehensive evaluation, the corresponding results were 91.00%, 91.67%, 90.79%, 83.26%, and 0.9497, respectively. It can be seen that the semi-supervised deep learning model trained by us with only 30% labeled samples can achieve a comparable effect with the fully supervised learning model, but the sample labeling cost is smaller. Our method can achieve a good balance between performance and cost. At the same time, the results of the semi-supervised model trained with only 30% labeled samples were very close to the performance of human experts.

CONCLUSIONS

To the best of our knowledge, our study is the first one to apply a semi-supervised deep-learning method in order to identify the difficulties of both mask ventilation and intubation. Our AI-based image analysis system can be used as an effective tool to identify patients with difficult airway conditions.

CLINICAL TRIAL REGISTRATION

ChiCTR2100049879 (URL: http://www.chictr.org.cn).

摘要

背景

困难气道情况对临床医生而言是一项重大挑战。预测此类情况对于后续治疗规划至关重要,但报告的诊断准确率仍然相当低。为克服这些挑战,我们开发了一种快速、无创、经济高效且高度准确的深度学习方法,通过照片图像分析来识别困难气道情况。

方法

对于计划接受全身麻醉下择期手术的1000例患者,从9个特定且不同的视角采集图像。收集到的图像集按8:2的比例分为训练子集和测试子集。我们使用半监督深度学习方法来训练和测试用于困难气道预测的人工智能模型。

结果

我们仅使用30%的标记训练样本(其余70%未标记样本也用于训练)来训练半监督深度学习模型。我们使用准确率、灵敏度、特异性、F1分数和ROC曲线下面积(AUC)等指标评估模型性能。发现这四个指标的数值分别为90.00%、89.58%、90.13%、81.13%和0.9435。对于全监督学习方案(使用100%的标记训练样本进行模型训练),相应的值分别为90.50%、91.67%、90.13%、82.25%和0.9457。当三位专业麻醉医生进行综合评估时,相应结果分别为91.00%、91.67%、90.79%、83.26%和0.9497。可以看出,我们仅使用30%标记样本训练的半监督深度学习模型能够达到与全监督学习模型相当的效果,但样本标记成本更小。我们的方法能够在性能和成本之间实现良好平衡。同时,仅使用30%标记样本训练的半监督模型的结果与人类专家的性能非常接近。

结论

据我们所知,我们的研究是首次应用半监督深度学习方法来识别面罩通气和插管困难情况。我们基于人工智能的图像分析系统可作为识别困难气道情况患者的有效工具。

临床试验注册

ChiCTR2100049879(网址:http://www.chictr.org.cn)

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/25cb/10163620/6d2409437d75/gr1.jpg

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