Deep learning multi-classification of middle ear diseases using synthetic tympanic images

被引:0
|
作者
Mizoguchi, Yoshimaru [1 ,2 ]
Ito, Taku [1 ]
Yamada, Masato [2 ]
Tsutsumi, Takeshi [1 ]
机构
[1] Inst Sci Tokyo, Dept Otorhinolaryngol, 1-5-45 Yushima,Bunkyo Ku, Tokyo 1138510, Japan
[2] Tsuchiura Kyodo Gen Hosp, Dept Otolaryngol & Head & Neck Surg, Ibaraki, Japan
关键词
Tympanic membrane findings; otitis media; deep learning; generative adversarial networks; AI; ACUTE OTITIS-MEDIA; MANAGEMENT; DIAGNOSIS; GUIDELINES;
D O I
10.1080/00016489.2024.2448829
中图分类号
R76 [耳鼻咽喉科学];
学科分类号
100213 ;
摘要
BackgroundRecent advances in artificial intelligence have facilitated the automatic diagnosis of middle ear diseases using endoscopic tympanic membrane imaging.AimWe aimed to develop an automated diagnostic system for middle ear diseases by applying deep learning techniques to tympanic membrane images obtained during routine clinical practice.Material and methodsTo augment the training dataset, we explored the use of generative adversarial networks (GANs) to produce high-quality synthetic tympanic images that were subsequently added to the training data. Between 2016 and 2021, we collected 472 endoscopic images representing four tympanic membrane conditions: normal, acute otitis media, otitis media with effusion, and chronic suppurative otitis media. These images were utilized for machine learning based on the InceptionV3 model, which was pretrained on ImageNet. Additionally, 200 synthetic images generated using StyleGAN3 and considered appropriate for each disease category were incorporated for retraining.ResultsThe inclusion of synthetic images alongside real endoscopic images did not significantly improve the diagnostic accuracy compared to training solely with real images. However, when trained solely on synthetic images, the model achieved a diagnostic accuracy of approximately 70%.Conclusions and significanceSynthetic images generated by GANs have potential utility in the development of machine-learning models for medical diagnosis. (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic), (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic) (GAN) (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic), (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).2016 (sic)(sic) 2021 (sic)(sic)(sic), (sic)(sic)(sic)(sic)(sic) 472 (sic)(sic)(sic)(sic)(sic)(sic), (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic): (sic)(sic),(sic)(sic)(sic)(sic)(sic),(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).(sic)(sic)(sic)(sic)(sic)(sic)(sic) InceptionV3 (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic), (sic)(sic)(sic)(sic) ImageNet (sic)(sic)(sic)(sic)(sic)(sic)(sic).(sic)(sic), (sic)(sic) StyleGAN3 (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic) 200 (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic), (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).(sic)(sic), (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic), (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic) 70%.(sic)(sic)(sic)(sic)(sic)(sic)GAN (sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic)(sic).
引用
收藏
页码:134 / 139
页数:6
相关论文
共 50 条
  • [1] Multi-classification of skin diseases for dermoscopy images using deep learning
    Zhou, Hangning
    Xie, Fengying
    Jiang, Zhiguo
    Liu, Jie
    Wang, Shiqi
    Zhu, Chenyu
    2017 IEEE INTERNATIONAL CONFERENCE ON IMAGING SYSTEMS AND TECHNIQUES (IST), 2017, : 542 - 546
  • [2] Rice Diseases Multi-Classification: An Image Resizing Deep Learning Approach
    Gupta, Kamali
    Garg, Atul
    Kukreja, Vinay
    Gupta, Deepali
    2021 INTERNATIONAL CONFERENCE ON DECISION AID SCIENCES AND APPLICATION (DASA), 2021,
  • [3] Diagnosis and multi-classification of lung diseases in CXR images using optimized deep convolutional neural network
    Ashwini, S.
    Arunkumar, J. R.
    Prabu, R. Thandaiah
    Singh, Ngangbam Herojit
    Singh, Ngangbam Phalguni
    SOFT COMPUTING, 2023, 28 (7-8) : 6219 - 6233
  • [4] MULTI-CLASSIFICATION OF RETINAL DISEASES USING A PYRAMIDAL ENSEMBLE DEEP FRAMEWORK
    Akinniyi, Oluwatunmise
    Razzak, Imran
    Rahman, Md Mahmudur
    Sandhu, Harpal
    El-Baz, Ayman
    Khalifa, Fahmi
    2023 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2023, : 1945 - 1949
  • [5] Multi-Classification of Brain Tumor Images Using Deep Neural Network
    Sultan, Hossam H.
    Salem, Nancy M.
    Al-Atabany, Walid
    IEEE ACCESS, 2019, 7 : 69215 - 69225
  • [6] Optimized deep learning network for plant leaf disease segmentation and multi-classification using leaf images
    Chilakalapudi, Malathi
    Jayachandran, Sheela
    NETWORK-COMPUTATION IN NEURAL SYSTEMS, 2024,
  • [7] A multi-stage deep learning network toward multi-classification of polyps in colorectal images
    Chang, Shilong
    Yang, Kun
    Wang, Yucheng
    Sun, Yufeng
    Qi, Chaoyi
    Fan, Wenlong
    Zhang, Ying
    Liu, Shuang
    Gao, Wenshan
    Meng, Jie
    Xue, Linyan
    ALEXANDRIA ENGINEERING JOURNAL, 2025, 119 : 189 - 200
  • [8] Programmed Multi-Classification of Brain Tumor Images Using Deep Neural Network
    Nagaraj, P.
    Muneeswaran, V
    Reddy, L. Veera
    Upendra, P.
    Reddy, M. Vishnu Vardhan
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON INTELLIGENT COMPUTING AND CONTROL SYSTEMS (ICICCS 2020), 2020, : 865 - 870
  • [9] Breast Cancer Multi-classification from Histopathological Images with Structured Deep Learning Model
    Zhongyi Han
    Benzheng Wei
    Yuanjie Zheng
    Yilong Yin
    Kejian Li
    Shuo Li
    Scientific Reports, 7
  • [10] Multi-Classification Segmentation Method of Gastric Cancer Pathological Images Based on Deep Learning
    Zhou, Hehu
    Pan, Jingshan
    Na, Li
    Ding, Qingyan
    Zhou, Chengjun
    Du, Wantong
    Proceedings of 2024 lEEE International Conference on Advanced Information, Mechanical Engineering, Robotics and Automation, AIMERA 2024, 2024, : 186 - 191