자궁경부 영상에서의 라디오믹스 기반 판독 불가 영상 분류 알고리즘 연구A Radiomics-based Unread Cervical Imaging Classification Algorithm
- Other Titles
- A Radiomics-based Unread Cervical Imaging Classification Algorithm
- Authors
- 김고은; 김영재; 주웅; 남계현; 김수녕; 김광기
- Issue Date
- Oct-2021
- Publisher
- 대한의용생체공학회
- Keywords
- Cervical cancer; Radiomics; Laplacian variance; Euclidean distance; ResNet-50
- Citation
- 의공학회지, v.42, no.5, pp.241 - 249
- Journal Title
- 의공학회지
- Volume
- 42
- Number
- 5
- Start Page
- 241
- End Page
- 249
- URI
- https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/82617
- ISSN
- 1229-0807
- Abstract
- Recently, artificial intelligence for diagnosis system of obstetric diseases have been actively studied. Arti- ficial intelligence diagnostic assist systems, which support medical diagnosis benefits of efficiency and accuracy, may experience problems of poor learning accuracy and reliability when inappropriate images are the model's input data. For this reason, before learning, We proposed an algorithm to exclude unread cervical imaging. 2,000 images of read cervical imaging and 257 images of unread cervical imaging were used for this study. Experiments were conducted based on the statistical method Radiomics to extract feature values of the entire images for classification of unread images from the entire images and to obtain a range of read threshold values. The degree to which brightness, blur, and cervical regions were photographed adequately in the image was determined as classification indicators. We com- pared the classification performance by learning read cervical imaging classified by the algorithm proposed in this paper and unread cervical imaging for deep learning classification model. We evaluate the classification accuracy for unread Cervical imaging of the algorithm by comparing the performance. Images for the algorithm showed higher accuracy of 91.6% on average. It is expected that the algorithm proposed in this paper will improve reliability by effec- tively excluding unread cervical imaging and ultimately reducing errors in artificial intelligence diagnosis.
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