Yu Qin, Jiang Tao, Zhou Aiyun, Zhang Lili, Zhang Cheng, Xu Pan
Department of Ultrasonography, The First Affiliated Hospital of Nanchang University, Nanchang, Jiangxi, 330006, China.
Eur Arch Otorhinolaryngol. 2017 Jul;274(7):2891-2897. doi: 10.1007/s00405-017-4562-3. Epub 2017 Apr 7.
The objective of this study is to evaluate the diagnostic value of combination of artificial neural networks (ANN) and support vector machine (SVM)-based CAD systems in differentiating malignant from benign thyroid nodes with gray-scale ultrasound images. Two morphological and 65 texture features extracted from regions of interest in 610 2D-ultrasound thyroid node images from 543 patients (207 malignant, 403 benign) were used to develop the ANN and SVM models. Tenfold cross validation evaluated their performance; the best models showed accuracy of 99% for ANN and 100% for SVM. From 50 thyroid node ultrasound images from 45 prospectively enrolled patients, the ANN model showed sensitivity, specificity, positive and negative predictive values, Youden index, and accuracy of 88.24, 90.91, 83.33, 93.75, 79.14, and 90.00%, respectively, the SVM model 76.47, 90.91, 81.25, 88.24, 67.38, and 86.00%, respectively, and in combination 100.00, 87.88, 80.95, 100.00, 87.88, and 92.00%, respectively. Both ANN and SVM had high value in classifying thyroid nodes. In combination, the sensitivity increased but specificity decreased. This combination might provide a second opinion for radiologists dealing with difficult to diagnose thyroid node ultrasound images.
本研究的目的是评估基于人工神经网络(ANN)和支持向量机(SVM)的计算机辅助诊断(CAD)系统相结合,利用灰阶超声图像鉴别甲状腺良恶性结节的诊断价值。从543例患者(207例恶性,403例良性)的610幅二维超声甲状腺结节图像的感兴趣区域中提取了两种形态学特征和65种纹理特征,用于建立ANN和SVM模型。采用十折交叉验证评估其性能;最佳模型显示ANN的准确率为99%,SVM的准确率为100%。在45例前瞻性入组患者的50幅甲状腺结节超声图像中,ANN模型的敏感性、特异性、阳性和阴性预测值、约登指数及准确率分别为88.24%、90.91%、83.33%、93.75%、79.14%和90.00%,SVM模型分别为76.47%、90.91%、81.25%、88.24%、67.38%和86.00%,两者联合时分别为100.00%、87.88%、80.95%、100.00%、87.88%和92.00%。ANN和SVM在甲状腺结节分类中均具有较高价值。联合使用时,敏感性增加但特异性降低。这种联合可为处理难以诊断的甲状腺结节超声图像的放射科医生提供第二种诊断意见。