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Increasing lesion specificity with fusion of manually and automatically segmented liver MR images

机译:通过融合手动和自动分割的肝脏MR图像来提高病变特异性

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In this study, it is aimed to analyze the magnetic resonance (MR) images used in the diagnosis of liver focal lesions using image fusion methods and to help diagnosis by adding automatic segmentation results to the manual segmentation process preferred by experts. For this aim fusions of liver MR images, segmented by a fuzzy method and segmented manually. 120 T1-weighted dynamic contrast-enhanced liver MR images of pre-contrast phase, arterial phase, portal vein phase and late venous phase, taken from 30 different patients, were used. Each phase image is also fused with images segmented by the fuzzy c-means algorithm in the same phase, so that the lesion surfaces and contours are displayed on the segmented image manually. Thus, the significance of the lesion was increased before the information in the MR image in which the liver function information was displayed was lost. The resulting new image contains more useful information for automatic decision systems. The results obtained were evaluated using structural similarity index, peak signal-to-noise ratio and fusion factor quality metrics.
机译:在这项研究中,其目的是分析使用图像融合方法在肝局灶性病变诊断中使用的磁共振图像,并通过将自动分割结果添加到专家首选的手动分割过程中来帮助诊断。为了这个目的,通过模糊方法分割并手动分割的肝脏MR图像的融合。使用了来自30位不同患者的120张T1加权动态对比增强肝脏MR图像,包括造影剂前期,动脉期,门静脉期和晚期静脉期。每个相位图像还与通过模糊c均值算法在同一相位中分割的图像融合在一起,以便将病变表面和轮廓手动显示在分割的图像上。因此,在显示肝功能信息的MR图像中的信息丢失之前,病变的重要性增加。生成的新图像包含用于自动决策系统的更多有用信息。使用结构相似性指数,峰信噪比和融合因子质量指标对获得的结果进行评估。

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