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基于临床和计算机断层扫描结果,利用深度学习人工智能预测深部颈部感染患者气管切开术需求——初步数据和一项试点研究

Deep Learning Artificial Intelligence to Predict the Need for Tracheostomy in Patients of Deep Neck Infection Based on Clinical and Computed Tomography Findings-Preliminary Data and a Pilot Study.

作者信息

Chen Shih-Lung, Chin Shy-Chyi, Ho Chia-Ying

机构信息

Department of Otorhinolaryngology and Head and Neck Surgery, Chang Gung Memorial Hospital, Linkou 333, Taiwan.

School of Medicine, Chang Gung University, Taoyuan 333, Taiwan.

出版信息

Diagnostics (Basel). 2022 Aug 12;12(8):1943. doi: 10.3390/diagnostics12081943.

Abstract

Deep neck infection (DNI) can lead to airway obstruction. Rather than intubation, some patients need tracheostomy to secure the airway. However, no study has used deep learning (DL) artificial intelligence (AI) to predict the need for tracheostomy in DNI patients. Thus, the purpose of this study was to develop a DL framework to predict the need for tracheostomy in DNI patients. 392 patients with DNI were enrolled in this study between August 2016 and April 2022; 80% of the patients (n = 317) were randomly assigned to a training group for model validation, and the remaining 20% (n = 75) were assigned to the test group to determine model accuracy. The -nearest neighbor method was applied to analyze the clinical and computed tomography (CT) data of the patients. The predictions of the model with regard to the need for tracheostomy were compared with actual decisions made by clinical experts. No significant differences were observed in clinical or CT parameters between the training group and test groups. The DL model yielded a prediction accuracy of 78.66% (59/75 cases). The sensitivity and specificity values were 62.50% and 80.60%, respectively. We demonstrated a DL framework to predict the need for tracheostomy in DNI patients based on clinical and CT data. The model has potential for clinical application; in particular, it may assist less experienced clinicians to determine whether tracheostomy is necessary in cases of DNI.

摘要

深部颈部感染(DNI)可导致气道梗阻。一些患者需要气管切开术来确保气道安全,而非进行插管。然而,尚无研究使用深度学习(DL)人工智能(AI)来预测DNI患者是否需要气管切开术。因此,本研究的目的是开发一个DL框架,以预测DNI患者是否需要气管切开术。2016年8月至2022年4月期间,392例DNI患者纳入本研究;80%的患者(n = 317)被随机分配到训练组进行模型验证,其余20%(n = 75)被分配到测试组以确定模型准确性。应用最近邻法分析患者的临床和计算机断层扫描(CT)数据。将模型对气管切开术需求的预测与临床专家的实际决策进行比较。训练组和测试组之间在临床或CT参数方面未观察到显著差异。DL模型的预测准确率为78.66%(59/75例)。敏感性和特异性值分别为62.50%和80.60%。我们展示了一个基于临床和CT数据预测DNI患者气管切开术需求的DL框架。该模型具有临床应用潜力;特别是,它可能有助于经验不足的临床医生确定在DNI病例中是否有必要进行气管切开术。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/daa0/9406478/763a6797095e/diagnostics-12-01943-g001.jpg

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