2023
DOI: 10.1088/1361-6560/ad04aa
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Deep learning-based workflow for hip joint morphometric parameter measurement from CT images

Haoyu Zhai,
Jin Huang,
Lei Li
et al.

Abstract: Objective. Precise hip joint morphometry measurement from CT images is crucial for successful preoperative arthroplasty planning and biomechanical simulations. Although deep learning approaches have been applied to clinical bone surgery planning, there is still a lack of relevant research on quantifying hip joint morphometric parameters from CT images. Approach. This paper proposes a deep learning workflow for CT-based hip morphometry measurement. For the first step, a coarse-to-fine deep learning model is des… Show more

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“…These findings above underscore the importance of strictly controlling the quality of pelvic X-rays or employing more precise methods like CT for the postoperative follow-up of THA in DDH patients. With the advancement of artificial intelligence technology in the medical field [ 25 ], it could serve as an effective tool for measuring acetabular cups in postoperative X-ray films, quickly addressing the challenges associated with pelvic positioning and X-ray beam offset during the imaging process.…”
Section: Discussionmentioning
confidence: 99%
“…These findings above underscore the importance of strictly controlling the quality of pelvic X-rays or employing more precise methods like CT for the postoperative follow-up of THA in DDH patients. With the advancement of artificial intelligence technology in the medical field [ 25 ], it could serve as an effective tool for measuring acetabular cups in postoperative X-ray films, quickly addressing the challenges associated with pelvic positioning and X-ray beam offset during the imaging process.…”
Section: Discussionmentioning
confidence: 99%