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요추 특징점 추출을 위한 영역 분할 모델의 성능 비교 분석

A Comparative Performance Analysis of Segmentation Models for Lumbar Key-points Extraction

  • 유승희 (한국한의학연구원 디지털임상연구부) ;
  • 최민호 (한국한의학연구원 디지털임상연구부) ;
  • 장준수 (한국한의학연구원 디지털임상연구부)
  • Seunghee Yoo (Digital Health Research Division, Korea Institute of Oriental Medicine) ;
  • Minho Choi (Digital Health Research Division, Korea Institute of Oriental Medicine) ;
  • Jun-Su Jang (Digital Health Research Division, Korea Institute of Oriental Medicine)
  • 투고 : 2023.09.26
  • 심사 : 2023.10.27
  • 발행 : 2023.10.31

초록

Most of spinal diseases are diagnosed based on the subjective judgment of a specialist, so numerous studies have been conducted to find objectivity by automating the diagnosis process using deep learning. In this paper, we propose a method that combines segmentation and feature extraction, which are frequently used techniques for diagnosing spinal diseases. Four models, U-Net, U-Net++, DeepLabv3+, and M-Net were trained and compared using 1000 X-ray images, and key-points were derived using Douglas-Peucker algorithms. For evaluation, Dice Similarity Coefficient(DSC), Intersection over Union(IoU), precision, recall, and area under precision-recall curve evaluation metrics were used and U-Net++ showed the best performance in all metrics with an average DSC of 0.9724. For the average Euclidean distance between estimated key-points and ground truth, U-Net was the best, followed by U-Net++. However the difference in average distance was about 0.1 pixels, which is not significant. The results suggest that it is possible to extract key-points based on segmentation and that it can be used to accurately diagnose various spinal diseases, including spondylolisthesis, with consistent criteria.

키워드

과제정보

본 연구는 한국한의학연구원의 AI 한의사 개발을 위한 ICT 기반 한의 중점 질환 진단 예측 기술 개발 과제(KSN1823130)의 지원을 받아 수행하였음.

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