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위 내시경 이미지 품질에 따른 병변 검출 모델의 성능 비교 연구A Performance Comparison Study of Lesion Detection Model according to Gastroscopy Image Quality

Other Titles
A Performance Comparison Study of Lesion Detection Model according to Gastroscopy Image Quality
Authors
이율희김영재김광기
Issue Date
Apr-2023
Publisher
대한의용생체공학회
Keywords
Gastroscopy; Image quality assessment algorithm; Deep learning; RetinaNet; Lesion detection
Citation
의공학회지, v.44, no.2, pp.118 - 124
Journal Title
의공학회지
Volume
44
Number
2
Start Page
118
End Page
124
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/87899
ISSN
1229-0807
Abstract
Many recent studies have reported that the quality of input learning data was vital to the detection of regions of interest. However, due to a lack of research on the quality of learning data on lesion detetcting using gas- troscopy, we aimed to quantify the impact of quality difference in endoscopic images to lesion detection models using Image Quality Assessment (IQA) algorithms. Through IQA methods such as BRISQUE (Blind/Referenceless Image Spatial Quality Evaluation), Laplacian Score, and PSNR (Peak Signal-To-Noise) algorithm on 430 sheets of high qual- ity data (HQD) and 430 sheets of low quality data (PQD), we showed that there were significant differences between high and low quality images in lesion detecting through BRISQUE and Laplacian scores (p<0.05). The PSNR value showed 10.62±1.76 dB on average, illustrating the lower lesion detection performance of PQD than HQD. In addi- tion, F1-Score of HQD showed higher detection performance at 77.42±3.36% while F1-Score of PQD showed 66.82±9.07%. Through this study, we hope to contribute to future gastroscopy lesion detection assistance systems that involve IQA algorithms by emphasizing the importance of using high quality data over lower quality data.
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