Abstract
Developmental Dysplasia of the Hip (DDH) is a pathological condition commonly occurring during the growth phase of infants. It acts as one of the factors that can disrupt an infant’s growth and trigger potential complications. Therefore, it is critically important to detect and treat this condition early. The traditional diagnostic methods for DDH involve palpation techniques and diagnosis methods based on the detection of keypoints in the hip joint using X-ray or ultrasound imaging. However, there exist limitations in objectivity and productivity during keypoint detection in the hip joint. This study proposes a deep learning model-based keypoint detection method using X-ray and ultrasound imaging and analyzes the performance of keypoint detection using various deep learning models. Additionally, the study introduces and evaluates various data augmentation techniques to compensate the lack of medical data. This research demonstrated the highest keypoint detection performance when applying the residual network 152 (ResNet152) model with simple & complex augmentation techniques, with average Object Keypoint Similarity (OKS) of approximately 95.33 % and 81.21 % in X-ray and ultrasound images, respectively. These results demonstrate that the application of deep learning models to ultrasound and X-ray images to detect the keypoints in the hip joint could enhance the objectivity and productivity in DDH diagnosis.
Translated title of the contribution | A comparative study on keypoint detection for developmental dysplasia of hip diagnosis using deep learning models in X-ray and ultrasound images |
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Original language | Korean |
Pages (from-to) | 460-468 |
Number of pages | 9 |
Journal | Journal of the Acoustical Society of Korea |
Volume | 42 |
Issue number | 5 |
DOIs | |
State | Published - 2023 |
Bibliographical note
Publisher Copyright:Copyright©2023 The Acoustical Society of Korea.
Keywords
- Deep-learning
- Developmental Dysplasia of Hip (DDH)
- Keypoint detection
- Ultrasound
- X-ray