Henan Provincial People's Hospital, Zhengzhou, Henan, China.
Zhengzhou University People's Hospital, Zhengzhou, Henan, China.
Eur Radiol. 2021 Jul;31(7):4576-4586. doi: 10.1007/s00330-020-07562-6. Epub 2021 Jan 14.
To investigate the application of machine learning-based ultrasound radiomics in preoperative classification of primary and metastatic liver cancer.
Data of 114 consecutive histopathologically confirmed patients with liver cancer from January 2018 to November 2019 were retrospectively analyzed. All patients underwent liver ultrasonography within 1 week before hepatectomy or fine-needle biopsy. The liver lesions were manually segmented by two experts using ITK-SNAP software. Seven categories of radiomics features, including first-order, two-dimensional shape, gray-level co-occurrence matrices, gray-level run-length matrix, gray-level size-zone matrix, neighboring gray tone difference matrix, and gray-level dependence matrix, were extracted on the Pyradiomics platform. Fourteen filters were applied to the original images, and derived images were obtained. Then, the dimensions of radiomics features were reduced by least absolute shrinkage and selection operator (Lasso) method. Finally, k-nearest neighbor (KNN), logistic regression (LR), multilayer perceptron (MLP), random forest (RF), and support vector machine (SVM) were employed to distinguish primary liver cancer from metastatic liver cancer by a fivefold cross-validation strategy. The performance of the established model was mainly evaluated by the area under the receiver operating characteristic (ROC) curve (AUC) and accuracy.
One thousand four hundred nine radiomics features were extracted from the original images and/or derived images for each patient. The mentioned five machine learning classifiers were able to differentiate primary liver cancer from metastatic liver cancer. LR outperformed other classifiers, with the accuracy of 0.843 ± 0.078 (AUC, 0.816 ± 0.088; sensitivity, 0.768 ± 0.232; specificity, 0.880 ± 0.117).
Machine learning-based ultrasound radiomics features are able to non-invasively distinguish primary liver tumors from metastatic liver tumors.
• Ultrasound-based radiomics was initially used for preoperative classification of primary versus metastatic liver cancer. • Multiple machine learning-based algorithms with cross-validation strategy were applied to extract machine learning-based ultrasound radiomics features. • Distinction between primary and metastatic tumors was obtained with a sensitivity of 0.768 and a specificity of 0.880.
探究基于机器学习的超声放射组学在原发性和转移性肝癌术前分类中的应用。
回顾性分析 2018 年 1 月至 2019 年 11 月间 114 例经组织病理学证实的肝癌连续患者的数据。所有患者在肝切除术或细针活检前 1 周内均接受肝脏超声检查。两位专家使用 ITK-SNAP 软件手动对肝脏病变进行分割。在 Pyradiomics 平台上提取包括一阶、二维形状、灰度共生矩阵、灰度游程长度矩阵、灰度大小区矩阵、相邻灰度差矩阵和灰度依赖矩阵在内的 7 类放射组学特征。对原始图像应用 14 种滤波器,得到衍生图像。然后,通过最小绝对值收缩和选择算子(Lasso)方法降低放射组学特征的维度。最后,采用 k 近邻(KNN)、逻辑回归(LR)、多层感知机(MLP)、随机森林(RF)和支持向量机(SVM)五种分类器通过五重交叉验证策略对原发性肝癌和转移性肝癌进行区分。通过受试者工作特征(ROC)曲线下面积(AUC)和准确率来评价模型的性能。
每位患者的原始图像和/或衍生图像中提取了 1409 个放射组学特征。所提到的五种机器学习分类器能够区分原发性肝癌和转移性肝癌。LR 优于其他分类器,准确率为 0.843±0.078(AUC 为 0.816±0.088;灵敏度为 0.768±0.232;特异性为 0.880±0.117)。
基于机器学习的超声放射组学特征可无创地区分原发性肝肿瘤和转移性肝肿瘤。
基于超声的放射组学最初用于原发性与转移性肝癌的术前分类。
应用多种具有交叉验证策略的基于机器学习的算法提取基于机器学习的超声放射组学特征。
原发性和转移性肿瘤的鉴别准确率为 0.768,特异性为 0.880。