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Key techniques research in computer-aided hepatic lesion diagnosis system based on multi-phase CT images

机译:基于多相CT图像的计算机辅助性肝病变诊断系统的关键技术研究

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Computer-aided diagnosis (CAD) of liver diseases as an early non-invasive diagnosis is of great significance. This paper presents an automated diagnostic system for liver disease based on multi-phase CT images. The region of the liver is first extracted from a CT image using improved watershed algorithm. After the registration of liver regions, which uses the SIFT algorithm, the operation of extracting the ROI based on Gabor wavelet transformation would be followed. Besides using image texture metric as the feature vector, we also designed a temporal and sacttergram-based lesion enhancement pattern descriptor to quantify the different lesions. Then, in the designing of classifier module, we convert a 4 classes classifying problem into 3 binary classify problems by using artificial neural network. Finally, we obtained the best classification accuracy of 0.9797, 0.9851 and 0.9753 for normal-abnormal, cyst-otherdisease and carcinoma-haemangioma sub problems respectively.
机译:作为早期非侵入性诊断的肝病计算机辅助诊断(CAD)具有重要意义。本文介绍了基于多相CT图像的肝病自动诊断系统。首先使用改进的流域算法从CT图像中提取肝脏区域。在使用SIFT算法的肝脏区域注册之后,遵循基于GABOR小波变换提取ROI的操作。除了使用图像纹理度量作为特征向量之外,还设计了一种基于时间和基于智障的病变增强模式描述符,以量化不同的病变。然后,在设计分类器模块中,通过使用人工神经网络将4类分类问题转换为3个二进制分类问题。最后,我们可以分别获得0.9797,0.9851和0.9753的最佳分类精度,分别用于正常异常,囊肿 - 其他酶和癌血管瘤亚问题。

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