判别式
背景(考古学)
病变
特征(语言学)
人工智能
计算机科学
Boosting(机器学习)
模式识别(心理学)
医学
病理
生物
语言学
哲学
古生物学
作者
Lisha Guo,Bo Peng,Jianjun Lei,Xu Zhang,Jun Zhao,Qingming Huang
标识
DOI:10.1109/tim.2025.3527484
摘要
Spinal diseases typically cause serious consequences such as limited mobility and nerve damage, making accurate diagnosis clinically important for effective treatment. X-ray imaging plays a crucial role in diagnosing spinal diseases, so effectively detecting spinal lesions from X-ray images is of practical value. Considering that spinal lesions typically occur in the spine region and commonly lead to changes in the structural relationships among vertebrae, this paper proposes a novel edge-guided and context-aggregated network (EGCA-Net) for spinal lesion detection. In particular, an edge-guided spine feature enhancement module is proposed to enhance the spine features with the guidance of the spine edge maps, thus obtaining discriminative spine features. Additionally, a context-aggregated structural relationship reasoning module is designed to obtain refined features of potential lesion regions by exploring the correlation between the potential lesion and context regions. With the designed edge-guided spine feature enhancement and context-aggregated structural relationship reasoning modules, the proposed EGCA-Net effectively explores the properties of spinal lesions, thus boosting spinal lesion detection performance. Experiments on the public spine X-ray dataset have validated the effectiveness of the proposed EGCA-Net.
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