基于结构相似性和Max规则的图像融合肺结节检测

R. Mohanapriya, P. Venkatesan
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引用次数: 4

摘要

肺中不受控制的细胞是导致肺癌的主要原因,肺癌会降低呼吸能力。在本研究中,利用计算机断层扫描(CT)和正电子发射断层扫描(PET)肺图像的结构相似性进行融合。与单独的CT和PET肺部图像相比,融合图像具有更多的信息,有助于放射科医生快速做出决定。首先,将CT和PET图像以重叠的方式划分为预定义大小的块。计算各块CT和PET之间的结构相似度进行融合。采用结构相似性和MAX规则相结合的方法进行图像融合。如果CT和PET块之间的结构相似性大于特定阈值,则应用MAX规则;否则使用CT图像中的像素强度。采用简单的阈值分割方法从融合图像中检测肺结节。定性分析表明,融合方法提供了更多的信息,准确检测肺结节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMAGE FUSION BASED LUNG NODULE DETECTION USING STRUCTURAL SIMILARITY AND MAX RULE
The uncontrollable cells in the lungs are the main cause of lung cancer that reduces the ability to breathe. In this study, fusion of Computed Tomography (CT) lung image and Positron Emission Tomography (PET) lung image using their structural similarity is presented. The fused image has more information compared to individual CT and PET lung images which helps radiologists to make decision quickly. Initially, the CT and PET images are divided into blocks of predefined size in an overlapping manner. The structural similarity between each block of CT and PET are computed for fusion. Image fusion is performed using a combination of structural similarity and MAX rule. If the structural similarity between CT and PET block is greater than a particular threshold, the MAX rule is applied; otherwise the pixel intensities in CT image are used. A simple thresholding approach is employed to detect the lung nodule from the fused image. The qualitative analyses show that the fusion approach provides more information with accurate detection of lung nodules.
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