Using Transfer Learning of Convolutional Neural Network on Neck Radiographs to Identify Acute Epiglottitis

被引:0
|
作者
Yang-Tse Lin
Ben-Chang Shia
Chia-Jung Chang
Yueh Wu
Jheng-Dao Yang
Jiunn-Horng Kang
机构
[1] Hsinchu Cathay General Hospital,Department of Emergency Medicine
[2] Fu Jen Catholic University,Graduate Institute of Business Administration, College of Management
[3] MacKay Children’s Hospital and Mackay Memorial Hospital,Division of Pediatric Emergency, Department of Pediatrics
[4] Taipei Municipal Wanfang Hospital,Department of Orthopedics
[5] Department of Physical Medicine and Rehabiliation,Graduate Institute of Nanomedicine and Medical Engineering, College of Biomedical Engineering
[6] Taipei Medical University Hospital,Professional Master Program in Artificial Intelligence in Medicine, College of Medicine
[7] Taipei Medical University,undefined
[8] Taipei Medical University,undefined
来源
Journal of Digital Imaging | 2023年 / 36卷
关键词
Artificial intelligence; Emergency medicine; Convolutional neural networks; Transfer learning; Lateral neck radiographs; X-ray; Acute epiglottitis; Medical errors;
D O I
暂无
中图分类号
学科分类号
摘要
Acute epiglottitis (AE) is a life-threatening condition and needs to be recognized timely. Diagnosis of AE with a lateral neck radiograph yields poor reliability and sensitivity. Convolutional neural networks (CNN) are powerful tools to assist the analysis of medical images. This study aimed to develop an artificial intelligence model using CNN-based transfer learning to identify AE in lateral neck radiographs. All cases in this study are from two hospitals, a medical center, and a local teaching hospital in Taiwan. In this retrospective study, we collected 251 lateral neck radiographs of patients with AE and 936 individuals without AE. Neck radiographs obtained from patients without and with AE were used as the input for model transfer learning in a pre-trained CNN including Inception V3, Densenet201, Resnet101, VGG19, and Inception V2 to select the optimal model. We used five-fold cross-validation to estimate the performance of the selected model. The confusion matrix of the final model was analyzed. We found that Inception V3 yielded the best results as the optimal model among all pre-train models. Based on the average value of the fivefold cross-validation, the confusion metrics were obtained: accuracy = 0.92, precision = 0.94, recall = 0.90, and area under the curve (AUC) = 0.96. Using the Inception V3-based model can provide an excellent performance to identify AE based on radiographic images. We suggest using the CNN-based model which can offer a non-invasive, accurate, and fast diagnostic method for AE in the future.
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页码:893 / 901
页数:8
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