Department of Medical Ultrasonics, First Affiliated Hospital of Guangxi Medical University, Nanning 530021, Guangxi Zhuang Autonomous Region, People's Republic of China.
GE HealthcareShanghai, People's Republic of China.
Clin Radiol. 2022 Feb;77(2):104-113. doi: 10.1016/j.crad.2021.10.009. Epub 2021 Nov 6.
To establish an ultrasound-based radiomics model through machine learning methods and then to assess the ability of the model to differentiate infected focal liver lesions from malignant mimickers.
A total of 104 patients with infected focal liver lesions and 485 patients with malignant hepatic tumours were included, consisting of hepatocellular carcinoma (HCC), cholangiocarcinoma (CC), combined hepatocellular-cholangiocarcinoma (cHCC-CC), and liver metastasis. Radiomics features were extracted from grey-scale ultrasound images. Feature selection and predictive modelling were carried out by dimensionality reduction methods and classifiers. The diagnostic effect of the prediction mode was assessed by receiver operating characteristic (ROC) curve analysis.
In total, 5,234 radiomics features were extracted from grey-scale ultrasound image of every focal liver lesion. The ultrasound-based radiomics model had a favourable predictive value for differentiating infected focal liver lesions from malignant hepatic tumours, with an area under the curve (AUC) of 0.887 and 0.836 (HCC group), 0.896 and 0.766 (CC group), 0.944 and 0.754 (cHCC-CC group), 0.918 and 0.808 (liver metastasis group), and 0.949 and 0.745 (malignant hepatic tumour group) for the training set and validation set, respectively.
Ultrasound-based radiomics is helpful in differentiating infected focal liver lesions from malignant mimickers and has the potential for use as a supplement to conventional grey-scale ultrasound and contrast-enhanced ultrasound (CEUS).
通过机器学习方法建立一个基于超声的放射组学模型,然后评估该模型区分感染性局灶性肝脏病变与恶性肝脏病变的能力。
共纳入 104 例感染性局灶性肝脏病变患者和 485 例恶性肝脏肿瘤患者,包括肝细胞癌(HCC)、胆管癌(CC)、肝细胞癌-胆管细胞癌(cHCC-CC)和肝转移瘤。从灰阶超声图像中提取放射组学特征。通过降维方法和分类器进行特征选择和预测建模。通过接受者操作特征(ROC)曲线分析评估预测模型的诊断效果。
共从每个局灶性肝脏病变的灰阶超声图像中提取了 5234 个放射组学特征。基于超声的放射组学模型对区分感染性局灶性肝脏病变与恶性肝脏肿瘤具有良好的预测价值,其在训练集和验证集中的曲线下面积(AUC)分别为 0.887 和 0.836(HCC 组)、0.896 和 0.766(CC 组)、0.944 和 0.754(cHCC-CC 组)、0.918 和 0.808(肝转移瘤组)和 0.949 和 0.745(恶性肝脏肿瘤组)。
基于超声的放射组学有助于区分感染性局灶性肝脏病变与恶性病变,有望作为常规灰阶超声和对比增强超声(CEUS)的补充。