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Bone Fracture Detection Using Deep Supervised Learning from Radiological Images: A Paradigm Shift

期刊

DIAGNOSTICS
卷 12, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/diagnostics12102420

关键词

artificial intelligence; bone imaging; computer vision; deep learning; fractures; radiology

资金

  1. Jio Institute CVMI-Computer Vision in Medical Imaging project under the AI for ALL research centre

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Bone diseases are common and can be diagnosed using deep learning to assist radiologists in detecting fractures and diseases. This paper provides an overview of the current application and potential of deep learning in bone imaging, and discusses the challenges and problems faced in this field.
Bone diseases are common and can result in various musculoskeletal conditions (MC). An estimated 1.71 billion patients suffer from musculoskeletal problems worldwide. Apart from musculoskeletal fractures, femoral neck injuries, knee osteoarthritis, and fractures are very common bone diseases, and the rate is expected to double in the next 30 years. Therefore, proper and timely diagnosis and treatment of a fractured patient are crucial. Contrastingly, missed fractures are a common prognosis failure in accidents and emergencies. This causes complications and delays in patients' treatment and care. These days, artificial intelligence (AI) and, more specifically, deep learning (DL) are receiving significant attention to assist radiologists in bone fracture detection. DL can be widely used in medical image analysis. Some studies in traumatology and orthopaedics have shown the use and potential of DL in diagnosing fractures and diseases from radiographs. In this systematic review, we provide an overview of the use of DL in bone imaging to help radiologists to detect various abnormalities, particularly fractures. We have also discussed the challenges and problems faced in the DL-based method, and the future of DL in bone imaging.

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