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Thyroid Nodule Classification Based on Characteristic of Margin using Geometric and Statistical Features

机译:基于边缘特征的几何和统计特征的甲状腺结节分类

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Ultrasound is a digital imaging modality used to assess thyroid nodules. However, ultrasound still has some deficiencies to the result of diagnosis. Ultrasound produce operator dependent result, it means the result of the analysis of ultrasound is highly dependent on the ability, expertise, and skills of the operators who perform the examination. To solve this problem, it is necessary to develop computerization system that can help radiologist in making decisions of diagnosis. This system works by analyzing the characteristics of thyroid nodules. One of these characteristics of margin. Previous research has discussed the classification of margin characteristics to define the diagnosis of thyroid nodules with the classification of two classes: smooth and irregular. This study try to classify the thyroid nodule in three: smooth, ill define, and irregular. To solve the problem, a total of 99 images are used. The proposed method are started with removing the artefacts and noises using adaptive median filtering and speckle reducing bilateral filtering. The result of this step is segmented using active contour and morphological operation to fine the concern area of nodule. Segmented area is used to classify thyroid nodule in three classes using MLP. Experiment result show the performance of method with the accuracy of 90.91%, sensitivity of 90.71%, specificity of 93.46%, PPV of 90.84%, and NPV of 93.49%. These results show that proposed method has good performance to classify thyroid nodule based on characteristics of margin.
机译:超声是一种用于评估甲状腺结节的数字成像方式。但是,超声对诊断结果仍存在一些缺陷。超声产生与操作员有关的结果,这意味着超声分析的结果高度依赖于执行检查的操作员的能力,专业知识和技能。为了解决这个问题,有必要开发能够帮助放射线医师做出诊断决定的计算机化系统。该系统通过分析甲状腺结节的特征起作用。保证金的这些特征之一。先前的研究已经讨论了边缘特征的分类,以定义甲状腺结节的诊断,分为两类:平滑和不规则。这项研究试图将甲状腺结节分为三类:光滑的,不明确的和不规则的。为了解决该问题,总共使用了99张图像。所提出的方法开始于使用自适应中值滤波和斑点减少双边滤波来消除伪影和噪声。使用主动轮廓和形态学操作对这一步骤的结果进行细分,以细化结节的关注区域。分割区域用于使用MLP将甲状腺结节分为三类。实验结果表明该方法的准确度为90.91%,灵敏度为90.71%,特异性为93.46%,PPV为90.84%,NPV为93.49%。这些结果表明,所提出的方法根据边缘特征对甲状腺结节进行分类具有良好的性能。

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