Yan Qinqin, Yi Yinqiao, Shen Jie, Shan Fei, Zhang Zhiyong, Yang Guang, Shi Yuxin
Department of Radiology, Shanghai Public Health Clinical Center, Fudan University, Shanghai, 201508, China.
Shanghai Key Laboratory of Magnetic Resonance, East China Normal University, Shanghai, 200062, China.
Cancer Cell Int. 2021 Oct 18;21(1):539. doi: 10.1186/s12935-021-02195-1.
Cumulative CT radiation damage was positively correlated with increased tumor risks. Although it has recently been known that non-radiation MRI is alternative for pulmonary imaging. There is little known about the value of MRI T1-mapping in the diagnosis of pulmonary nodules. This article aimed to investigate the value of native T1-mapping-based radiomics features in differential diagnosis of pulmonary lesions.
73 patients underwent 3 T-MRI examination in this prospective study. The 99 pulmonary lesions on native T1-mapping images were segmented twice by one radiologist at indicated time points utilizing the in-house semi-automated software, followed by extraction of radiomics features. The inter-class correlation coefficient (ICC) was used for analyzing intra-observer's agreement. Dimensionality reduction and feature selection were performed via univariate analysis, and least absolute shrinkage and selection operator (LASSO) analysis. Then, the binary logical regression (LR), support vector machine (SVM) and decision tree classifiers with the input of optimal features were selected for differentiating malignant from benign lesions. The receiver operative characteristics (ROC) curve, area under the curve (AUC), sensitivity, specificity and accuracy were calculated. Z-test was used to compare differences among AUCs.
107 features were obtained, of them, 19.5% (n = 21) had relatively good reliability (ICC ≥ 0.6). The remained 5 features (3 GLCM, 1 GLSZM and 1 shape features) by dimensionality reduction were useful. The AUC of LR was 0.82(95%CI: 0.67-0.98), with sensitivity, specificity and accuracy of 70%, 85% and 80%. The AUC of SVM was 0.82(95%CI: 0.67-0.98), with sensitivity, specificity and accuracy of 70, 85 and 80%. The AUC of decision tree was 0.69(95%CI: 0.49-0.87), with sensitivity, specificity and accuracy of 50, 85 and 73.3%.
The LR and SVM models using native T1-mapping-based radiomics features can differentiate pulmonary malignant from benign lesions, especially for uncertain nodules requiring long-term follow-ups.
CT累积辐射损伤与肿瘤风险增加呈正相关。尽管最近已知非辐射性的MRI可作为肺部成像的替代方法,但关于MRI T1映射在肺结节诊断中的价值却知之甚少。本文旨在探讨基于T1映射的放射组学特征在肺病变鉴别诊断中的价值。
在这项前瞻性研究中,73例患者接受了3T-MRI检查。由一名放射科医生在指定时间点使用内部半自动软件对T1映射图像上的99个肺病变进行两次分割,随后提取放射组学特征。组内相关系数(ICC)用于分析观察者内部的一致性。通过单变量分析以及最小绝对收缩和选择算子(LASSO)分析进行降维和特征选择。然后,选择以最佳特征为输入的二元逻辑回归(LR)、支持向量机(SVM)和决策树分类器来区分恶性和良性病变。计算受试者工作特征(ROC)曲线、曲线下面积(AUC)、敏感性、特异性和准确性。使用Z检验比较AUC之间的差异。
共获得107个特征,其中19.5%(n = 21)具有相对较好的可靠性(ICC≥0.6)。降维后剩余的5个特征(3个灰度共生矩阵特征、1个灰度游程长度矩阵特征和1个形状特征)是有用的。LR的AUC为0.82(95%CI:0.67 - 0.98),敏感性、特异性和准确性分别为70%、85%和80%。SVM的AUC为0.82(95%CI:0.67 - 0.98),敏感性、特异性和准确性分别为70%、85%和80%。决策树的AUC为0.69(95%CI:0.49 - 0.87),敏感性、特异性和准确性分别为50%、85%和73.3%。
使用基于T1映射的放射组学特征的LR和SVM模型可以区分肺部恶性和良性病变,特别是对于需要长期随访的不确定结节。