1 Institute of Biophysics and Informatics, 1st Faculty of Medicine, Charles University, Prague, Czech Republic.
2 International Clinical Research Center, St. Anne's University Hospital, Brno, Czech Republic.
Technol Cancer Res Treat. 2019 Jan 1;18:1533033819830748. doi: 10.1177/1533033819830748.
In recent years, several computer-aided diagnosis systems emerged for the diagnosis of thyroid gland disorders using ultrasound imaging. These systems based on machine learning algorithms may offer a second opinion to radiologists by evaluating a malignancy risk of thyroid tissue, thus increasing the overall diagnostic accuracy of ultrasound imaging. Although current computer-aided diagnosis systems exhibit promising results, their use in clinical practice is limited. One of the main limitations is that the majority of them use direction-dependent features. Our intention has been to design a computer-aided diagnosis system, which will use only direction-independent features, that is, it will not be dependent on the orientation and the inclination angle of the ultrasound probe when acquiring the image. We have, therefore, applied histogram analysis and segmentation-based fractal texture analysis algorithm, which calculates direction-independent features only. In our study, 40 thyroid nodules (20 malignant and 20 benign) were used to extract several features, such as histogram parameters, fractal dimension, and mean brightness value in different grayscale bands (obtained by 2-threshold binary decomposition). The features were then used in support vector machine and random forests classifiers to differentiate nodules into malignant and benign classes. Using leave-one-out cross-validation method, the overall accuracy was 92.42% for random forests and 94.64% for support vector machine. Results show that both methods are useful in practice; however, support vector machine provides better results for this application. Proposed computer-aided diagnosis system can provide support to radiologists in their current diagnosis of thyroid nodules, whereby it can optimize the overall accuracy of ultrasound imaging.
近年来,出现了几种使用超声成像诊断甲状腺疾病的计算机辅助诊断系统。这些基于机器学习算法的系统可以通过评估甲状腺组织的恶性风险,为放射科医生提供第二个意见,从而提高超声成像的整体诊断准确性。尽管当前的计算机辅助诊断系统显示出有前途的结果,但它们在临床实践中的使用受到限制。其中一个主要限制是,它们中的大多数使用的是与方向相关的特征。我们的目的是设计一个仅使用与方向无关的特征的计算机辅助诊断系统,也就是说,在获取图像时,它将不依赖于超声探头的方向和倾斜角度。因此,我们应用了直方图分析和基于分割的分形纹理分析算法,该算法只计算与方向无关的特征。在我们的研究中,使用了 40 个甲状腺结节(20 个恶性和 20 个良性)来提取几个特征,例如直方图参数、分形维数和不同灰度带中的平均亮度值(通过 2-阈值二进制分解获得)。然后,使用支持向量机和随机森林分类器将这些特征用于将结节分为恶性和良性类别。使用留一交叉验证方法,随机森林的总体准确率为 92.42%,支持向量机的总体准确率为 94.64%。结果表明,这两种方法在实践中都很有用;然而,支持向量机为该应用提供了更好的结果。所提出的计算机辅助诊断系统可以为放射科医生在当前甲状腺结节的诊断中提供支持,从而优化超声成像的整体准确性。