Department of ECE, Ngee Ann Polytechnic, Singapore 599489, Singapore.
Comput Methods Programs Biomed. 2012 Aug;107(2):233-41. doi: 10.1016/j.cmpb.2011.10.001. Epub 2011 Nov 4.
Using right equipment and well trained personnel, ultrasound of the neck can detect a large number of non-palpable thyroid nodules. However, this technique often suffers from subjective interpretations and poor accuracy in the differential diagnosis of malignant and benign thyroid lesions. Therefore, we developed an automated identification system based on knowledge representation techniques for characterizing the intra-nodular vascularization of thyroid lesions. Twenty nodules (10 benign and 10 malignant), taken from 3-D high resolution ultrasound (HRUS) images were used for this work. Malignancy was confirmed using fine needle aspiration biopsy and subsequent histological studies. A combination of discrete wavelet transformation (DWT) and texture algorithms were used to extract relevant features from the thyroid images. These features were fed to different configurations of AdaBoost classifier. The performance of these configurations was compared using receiver operating characteristic (ROC) curves. Our results show that the combination of texture features and DWT features presented an accuracy value higher than that reported in the literature. Among the different classifier setups, the perceptron based AdaBoost yielded very good result and the area under the ROC curve was 1 and classification accuracy, sensitivity and specificity were 100%. Finally, we have composed an Integrated Index called thyroid malignancy index (TMI) made up of these DWT and texture features, to facilitate distinguishing and diagnosing benign or malignant nodules using just one index or number. This index would help the clinicians in more quantitative assessment of the thyroid nodules.
使用正确的设备和训练有素的人员,颈部超声可以检测到大量无法触及的甲状腺结节。然而,这种技术常常受到主观解释和恶性与良性甲状腺病变鉴别诊断准确性差的影响。因此,我们开发了一种基于知识表示技术的自动识别系统,用于描述甲状腺病变的内部血管化特征。这项工作使用了 20 个结节(10 个良性和 10 个恶性),这些结节取自三维高分辨率超声(HRUS)图像。通过细针抽吸活检和随后的组织学研究来确认恶性肿瘤。采用离散小波变换(DWT)和纹理算法相结合的方法从甲状腺图像中提取相关特征。这些特征被输入到不同配置的 AdaBoost 分类器中。使用接收器工作特性(ROC)曲线比较这些配置的性能。我们的结果表明,纹理特征和 DWT 特征的组合呈现出比文献中报道的更高的准确性值。在不同的分类器设置中,基于感知器的 AdaBoost 产生了非常好的结果,ROC 曲线下的面积为 1,分类准确率、敏感度和特异性均为 100%。最后,我们组合了一个称为甲状腺恶性指数(TMI)的综合指数,由这些 DWT 和纹理特征组成,以便仅使用一个指数或数字来区分和诊断良性或恶性结节。该指数将帮助临床医生更定量地评估甲状腺结节。