Marcon Magda, Ciritsis Alexander, Rossi Cristina, Becker Anton S, Berger Nicole, Wurnig Moritz C, Wagner Matthias W, Frauenfelder Thomas, Boss Andreas
Institute of Diagnostic and Interventional Radiology, University Hospital Zurich, Raemistrasse 100, 8091, Zurich, Switzerland.
Eur Radiol Exp. 2019 Nov 1;3(1):44. doi: 10.1186/s41747-019-0121-6.
Our aims were to determine if features derived from texture analysis (TA) can distinguish normal, benign, and malignant tissue on automated breast ultrasound (ABUS); to evaluate whether machine learning (ML) applied to TA can categorise ABUS findings; and to compare ML to the analysis of single texture features for lesion classification.
This ethically approved retrospective pilot study included 54 women with benign (n = 38) and malignant (n = 32) solid breast lesions who underwent ABUS. After manual region of interest placement along the lesions' margin as well as the surrounding fat and glandular breast tissue, 47 texture features (TFs) were calculated for each category. Statistical analysis (ANOVA) and a support vector machine (SVM) algorithm were applied to the texture feature to evaluate the accuracy in distinguishing (i) lesions versus normal tissue and (ii) benign versus malignant lesions.
Skewness and kurtosis were the only TF significantly different among all the four categories (p < 0.000001). In subsets (i) and (ii), a maximum area under the curve of 0.86 (95% confidence interval [CI] 0.82-0.88) for energy and 0.86 (95% CI 0.82-0.89) for entropy were obtained. Using the SVM algorithm, a maximum area under the curve of 0.98 for both subsets was obtained with a maximum accuracy of 94.4% in subset (i) and 90.7% in subset (ii).
TA in combination with ML might represent a useful diagnostic tool in the evaluation of breast imaging findings in ABUS. Applying ML techniques to TFs might be superior compared to the analysis of single TF.
我们的目的是确定纹理分析(TA)得出的特征能否在自动乳腺超声(ABUS)上区分正常、良性和恶性组织;评估应用于TA的机器学习(ML)能否对ABUS检查结果进行分类;并将ML与单个纹理特征分析用于病变分类进行比较。
这项经伦理批准的回顾性试点研究纳入了54例接受ABUS检查的患有良性(n = 38)和恶性(n = 32)实性乳腺病变的女性。在沿着病变边缘以及周围脂肪和乳腺腺组织手动放置感兴趣区域后,为每个类别计算47个纹理特征(TFs)。对纹理特征应用统计分析(方差分析)和支持向量机(SVM)算法,以评估区分(i)病变与正常组织以及(ii)良性与恶性病变的准确性。
偏度和峰度是所有四个类别中唯一有显著差异的TF(p < 0.000001)。在子集(i)和(ii)中,能量的曲线下面积最大值为0.86(95%置信区间[CI] 0.82 - 0.88),熵的曲线下面积最大值为0.86(95%CI 0.82 - 0.89)。使用SVM算法,两个子集的曲线下面积最大值均为0.98,子集(i)的最大准确率为94.4%,子集(ii)的最大准确率为90.7%。
TA与ML相结合可能是评估ABUS乳腺成像结果的一种有用诊断工具。将ML技术应用于TFs可能比单个TF分析更具优势。