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Fracture Detection in Traumatic Pelvic CT Images

机译:创伤性骨盆CT图像中的骨折检测

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摘要

Fracture detection in pelvic bones is vital for patient diagnostic decisions and treatment planning in traumatic pelvic injuries. Manual detection of bone fracture from computed tomography (CT) images is very challenging due to low resolution of the images and the complex pelvic structures. Automated fracture detection from segmented bones can significantly help physicians analyze pelvic CT images and detect the severity of injuries in a very short period. This paper presents an automated hierarchical algorithm for bone fracture detection in pelvic CT scans using adaptive windowing, boundary tracing, and wavelet transform while incorporating anatomical information. Fracture detection is performed on the basis of the results of prior pelvic bone segmentation via our registered active shape model (RASM). The results are promising and show that the method is capable of detecting fractures accurately.
机译:骨盆骨折检测对于创伤性骨盆损伤的患者诊断决策和治疗计划至关重要。由于图像的低分辨率和复杂的骨盆结构,从计算机断层扫描(CT)图像中手动检测骨折非常具有挑战性。通过分段骨的自动骨折检测可以极大地帮助医生分析骨盆CT图像并在很短的时间内检测出损伤的严重程度。本文提出了一种自动分层算法,用于骨盆CT扫描中的骨折检测,该算法使用自适应窗口,边界跟踪和小波变换,同时结合了解剖信息。通过先前的骨盆骨分割结果,通过我们注册的活动形状模型(RASM)进行骨折检测。结果是有希望的,并且表明该方法能够准确地检测裂缝。

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