딥러닝 모델의 자동 다단계 분류를 활용한 고막의 변화 예측
- Alternative Title
- Automated Multi-class Classification for Prediction of Tympanic Membrane Changes with Deep Learning Models
- Abstract
- Backgrounds and Objective: Evaluating the tympanic membrane (TM) using an otoendoscope is the first and most important step in various clinical fields. Unfortunately, most lesions of TM have more than one diagnostic name. Therefore, we built a database of otoendoscopic images with multiple diseases and investigated the impact of concurrent diseases on the classification performance of deep learning networks.
Study Design :This retrospective study investigated the impact of concurrent diseases in the tympanic membrane on diagnostic performance using multi-class classification. A customized architecture of EfficientNet-B4 was introduced to predict the primary class (otitis media with effusion (OME), chronic otitis media (COM), and 'None' without OME and COM) and secondary classes (attic cholesteatoma, myringitis, otomycosis, and ventilation tube).
Results: Deep-learning classifications accurately predicted the primary class with dice similarity coefficient (DSC) of 95.19%, while misidentification between COM and OME rarely occurred. Among the secondary classes, the diagnosis of attic cholesteatoma and myringitis achieved a DSC of 88.37% and 88.28%, respectively. Although concurrent diseases hampered the prediction performance, there was only a 0.44% probability of inaccurately predicting two or more secondary classes (29/6,630). The inference time per image was 2.594 ms on average.
Conclusion: The algorithm presented in this study demonstrated the ability to accurately predict TM lesions even in situations with multiple concurrent diseases. This finding is expected to contribute to clinical decision- making in the future, providing valuable assistance in managing cases involving complex medical conditions.
- Author(s)
- 최연주
- Issued Date
- 2024
- Awarded Date
- 2024-02
- Type
- Dissertation
- Keyword
- Deep learning models; tympanic membrance; multi-class classification
- URI
- https://oak.ulsan.ac.kr/handle/2021.oak/13171
http://ulsan.dcollection.net/common/orgView/200000728321
- 공개 및 라이선스
-
- 파일 목록
-
Items in Repository are protected by copyright, with all rights reserved, unless otherwise indicated.