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Decision Support System for Liver Cancer Diagnosis using Focus Features in NSCT Domain

机译:基于NSCT域中的焦点特征的肝癌诊断决策支持系统

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Diagnosis of liver cancer by medical experts using imaging modalities is found to be sub-optimal as different lesions exhibit similar visual appearance in the spatial domain. Thus computer aided diagnostic tools play a significant role in providing a decision support system for radiologists to minimize the risk of false diagnosis. This paper proposes a different feature set using focus operators for classifying different classes of liver cancer. As computation of focus measure involves the local neighborhood of pixel, focus operator is believed to indirectly measure the intricate texture details of the image. This knowledge of focus operator is exploited in NSCT domain to capture the directional components as feature variables replacing the classic texture features. The results in terms of classification accuracy and kappa coefficient proclaim that the focus operators can be employed as feature variables for classification scenario as it outperforms the state-of-the art texture features.
机译:发现医学专家使用成像方式对肝癌的诊断欠佳,因为不同的病变在空间域表现出相似的视觉外观。因此,计算机辅助诊断工具在为放射科医生提供决策支持系统以最小化错误诊断的风险中起着重要作用。本文提出了一种使用焦点算子对肝癌的不同类别进行分类的不同功能集。由于聚焦度量的计算涉及像素的局部邻域,因此据信聚焦算子可以间接测量图像的复杂纹理细节。在NSCT领域中利用了对焦点算子的这种了解,以将方向分量捕获为特征变量,从而替代了经典的纹理特征。在分类精度和卡伯系数方面的结果表明,焦点运算符可以胜过当前最先进的纹理特征,因此可以用作分类方案的特征变量。

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