Chen Ying, Jiang Jianwei, Shi Jie, Chang Wanying, Shi Jun, Chen Man, Zhang Qi
Shanghai Institute for Advanced Communication and Data Science, Shanghai University, Shanghai, China.
The SMART (Smart Medicine and AI-based Radiology Technology) Lab, Institute of Biomedical Engineering, Shanghai University, Shanghai, China.
Ann Transl Med. 2020 Jun;8(12):742. doi: 10.21037/atm-19-4630.
The ultrasonic diagnosis of lymph node lesions is usually based on a small number of subjective visual features from a single ultrasonic modality, which limits diagnostic accuracy. Therefore, our study aimed to propose a computerized method for using dual-mode ultrasound radiomics and the intrinsic imaging phenotypes for accurately differentiating benign, lymphomatous, and metastatic lymph nodes.
A total of 543 lymph nodes from 538 patients were examined with both B-mode ultrasonography and elastography. The data set was randomly divided into a training set of 407 nodes and a validation set of 136 nodes. First, we extracted 430 radiomic features from dual-mode images. Then, we combined the least absolute shrinkage and selection operator with the analysis of variance to select several typical features. We retrieved the intrinsic imaging phenotypes by using a hierarchical clustering of all radiomics features, and we integrated the phenotypes with the selected features for the classification of benign, lymphomatous, and metastatic nodes.
The areas under the receiver operating characteristic curves (AUCs) on the validation set were 0.960 for benign lymphomatous, 0.716 for benign metastatic, 0.933 for lymphomatous metastatic, and 0.856 for benign malignant.
The radiomics features and intrinsic imaging phenotypes derived from the dual-mode ultrasound can capture the distinctions between benign, lymphomatous, and metastatic nodes and are valuable in node differentiation.
淋巴结病变的超声诊断通常基于单一超声模态的少数主观视觉特征,这限制了诊断准确性。因此,我们的研究旨在提出一种利用双模态超声影像组学和内在成像表型准确区分良性、淋巴瘤性和转移性淋巴结的计算机化方法。
对538例患者的543个淋巴结进行了B超和弹性成像检查。数据集随机分为407个淋巴结的训练集和136个淋巴结的验证集。首先,我们从双模态图像中提取了430个影像组学特征。然后,我们将最小绝对收缩和选择算子与方差分析相结合,以选择几个典型特征。我们通过对所有影像组学特征进行层次聚类来获取内在成像表型,并将这些表型与所选特征相结合,用于良性、淋巴瘤性和转移性淋巴结的分类。
验证集上的受试者工作特征曲线下面积(AUC)分别为:良性与淋巴瘤性为0.960,良性与转移性为0.716,淋巴瘤性与转移性为0.933,良性与恶性为0.856。
双模态超声衍生的影像组学特征和内在成像表型能够捕捉良性、淋巴瘤性和转移性淋巴结之间的差异,对淋巴结的鉴别具有重要价值。