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首页> 外文期刊>International Journal of Multimedia Information Retrieval >Content?based medical image retrieval of CT images of liver lesions using manifold learning
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Content?based medical image retrieval of CT images of liver lesions using manifold learning

机译:内容?基于肝脏病变CT图像的医学图像检索

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Accurate retrieval of liver CT images can help a specialist to decide on the type of lesion and treatment planning. However, the complex texture of the abnormality and its nonlinear characteristic reduces the recognition rate of a retrieval system. In this paper, we propose how to represent an abnormal region of a liver by individual attributes of a multi-phase CT image. The indexing of a medical image database is represented by a correlation graph distance, which considers nonlinear behavior of the feature space as well. The results showed that the average recall was improved by 7.5% using the proposed feature vector. Concerning a complex scheme for lesion representation and the manifold indexing technique, the recall of the system was increased by twice. The proposed indexing and feature representation prove the potential of our method in content-based medical image retrieval systems.
机译:准确检索肝CT图像可以帮助专家决定病变和治疗计划的类型。 然而,异常的复杂纹理及其非线性特性降低了检索系统的识别率。 在本文中,我们提出了如何通过多相CT图像的个体属性表示肝脏的异常区域。 医学图像数据库的索引由相关图距离表示,其也考虑了特征空间的非线性行为。 结果表明,使用所提出的特征向量,平均召回得到了7.5%的提高。 关于病变表示和歧管索引技术的复杂方案,系统的召回量增加了两次。 所提出的索引和特征表示证明了我们在基于内容的医学图像检索系统中的方法的潜力。

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