卷积神经网络
人工智能
计算机科学
分割
深度学习
模式识别(心理学)
接收机工作特性
目标检测
中耳炎
中耳
鼓室(建筑)
渗出
图像分割
穿孔
医学
机器学习
放射科
外科
冶金
材料科学
鼓膜切开术
冲孔
门楣
作者
Mohammad Azam Khan,Sung-Kyu Kwon,Jaegul Choo,Seok Min Hong,Suk Ho Kang,Il Ho Park,Sung Kyun Kim,Seok Jin Hong
标识
DOI:10.1016/j.neunet.2020.03.023
摘要
Convolutional neural networks (CNNs), a popular type of deep neural network, have been actively applied to image recognition, object detection, object localization, semantic segmentation, and object instance segmentation. Accordingly, the applicability of deep learning to the analysis of medical images has increased. This paper presents a novel application of state-of-the-art CNN models, such as DenseNet, to the automatic detection of the tympanic membrane (TM) and middle ear (ME) infection. We collected 2,484 oto-endoscopic images (OEIs) and classified them into one of three categories: normal, chronic otitis media (COM) with TM perforation, and otitis media with effusion (OME). Our results indicate that CNN models have significant potential for the automatic recognition of TM and ME infections, demonstrating a competitive accuracy of 95% in classifying TM and middle ear effusion (MEE) from OEIs. In addition to accuracy measurement, our approach achieves nearly perfect measures of 0.99 in terms of the average area under the receiver operating characteristics curve (AUROC). All these results indicate robust performance when recognizing TM and ME effusions in OEIs. Visualization through a class activation mapping (CAM) heatmap demonstrates that our proposed model performs prediction based on the correct region of OEIs. All these outcomes ensure the reliability of our method; hence, the study can aid otolaryngologists and primary care physicians in real-world scenarios.
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