面向人工智能的医疗术前气道评估

Qinjie Lin, Chin-Boon Chng, J. Too, Jinshuo Zhang, Haobing Liu, T. Foong, Will Loh, C. Chui
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引用次数: 0

摘要

对于需要全身麻醉的手术,气道管理是必不可少的。阻碍正确插管的气道困难可能是致命的。因此,术前气道评估由临床医生进行,以确定插管的难易程度以及识别气道困难的患者。为了改进这一过程,可以使用人工智能(AI)方法来预测这种困难的气道情况,以便提前做好适当的准备。然而,由于医疗保健法规要求的人工智能模型需要可解释性,因此不能使用与大多数数据驱动的人工智能方法最有效的典型黑箱模型。因此,在目前的工作中,已经建立了一个机器学习模型来预测临床医生目前使用的特定医学面部标志。这些包括眼睛、颏部、甲状腺切迹、胸骨上切迹、前额、耳屏和耳根。该模型基于卷积神经网络和一种实用的面部地标检测概念。此外,还利用了k-fold交叉验证采样和adabelef优化器。模型预测结果对特征预测准确,测试损失稳定性好,始终保持在0.01以下。因此,目前的模型可以在气道评估中对困难气道进行有意义的诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Artificial Intelligence-enabled Medical Pre-operative Airway Assessment
For surgeries which require general anesthesia, airway management is imperative. Difficult airway, which inhibits proper intubation, can be fatal. As such, pre-operative airway assessments are conducted by clinicians to determine the ease of intubation as well as to identify patients with difficult airway. To improve the process, artificial intelligence (AI) methods can be employed to predict such difficult airway situations so that suitable preparations can be made beforehand. However, due to the need for explainability of AI models required by healthcare regulations, typical black box models which work best with most data-driven AI methods cannot be used. Therefore, in the current work, a machine learning model has been established to predict the specific medical facial landmarks that are currently used by clinicians. These include the eyes, mentum, thyroid notch, suprasternal notch, forehead, tragus and radix. The model is based on convolutional neural network and a practical facial landmark detector concept. Furthermore, k-fold cross-validation sampling and the Adabelief optimizer have been utilized. The model prediction results display accurate prediction of the features, with the testing loss exhibiting good stability and maintaining well below 0.01 throughout. Attributed to that, the current model can lead to meaningful diagnosis of difficult airway during airway assessments.
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