一种用于肝细胞癌ct图像处理的计算机辅助系统

W. Hsu, J. Yeh, Yi-Chung Chang, M. Lo, Yi-Hsien Lin
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引用次数: 4

摘要

非增强CT的低噪比(CNR)有时在临床实践中难以观察到。为了辅助临床诊断,介绍了一种计算机辅助非增强CT图像处理的肝细胞癌(HCC)检测方法。本研究利用随机共振(SR)滤波器,通过调整局部阈值范围并加入随机噪声来增强感兴趣区域(ROI)。对原始图像和增强图像进行了增强测量或改进测量(EME)的定量测量。原始图像EME值均值和标准差为2.652±2.167,增强图像EME值均值和标准差为6.260±1.206。然后k-均值聚类方法发挥基于最接近均值的聚类分析的作用进行局部分割。用于确定每个增强图像上簇的数量的诊断检查对于获得更好的结果非常重要。实际上,对于增强图像的数据集,K = 10更为合适。最后,图像融合过程涉及两组数据,增强和后处理的增强和聚类信息,以提供相关信息。使用T = 0.45作为应用于聚类和增强图像的阈值,消除了更强的像素强度。通过这些处理,可以提取出未增强的信息,作为临床诊断的参考信息。处理后的图像很好地分离出HCC。我们的研究结果表明,利用计算机辅助图像处理CT图像可能有助于检测HCC。
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A computer aided for image processing of computed tomography in hepatocellular carcinoma
Low contrast to noise ratio (CNR) of unenhanced computed tomography (CT) is sometimes hard to visualize by the clinical practice. In order to assist the clinical diagnosis, a computer aided for unenhanced CT image processing is introduced in detection of hepatocellular carcinoma (HCC). This study utilized the stochastic resonance (SR) filter by adjusting localized threshold range with adding random noise for enhancing the region of interest (ROI). The quantitative measurement by using the measure of enhancement or measure of improvement (EME) is applied on the series of original and enhanced images. The value of mean and standard deviation of EME values is 2.652 ± 2.167 for the original images and 6.260 ± 1.206 for enhanced images. Then k-mean clustering method played the role based on the cluster analysis with the nearest mean for the local segmentation. The diagnostic check for determining the number of clusters on each enhanced images is important for getting a better result. In fact, K = 10 is more appropriate for the data sets of enhanced images. Finally, the image fusion process is involved two sets of data, enhanced and post-processed of enhanced and clustering information, to provide relevant information. Using the T = 0.45 as the threshold value applied on clustering and enhanced images eliminates the stronger intensity of pixels. Though those processes, the unenhanced information could be extracted out as the reference information for the clinical diagnosis. HCC was well isolated on processed images. Our results demonstrated the utilization of the computer aided for image processing of CT images might help to detect the HCC.
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