Wang Xinyan, Dai Shuangfeng, Wang Qian, Chai Xiangfei, Xian Junfang
Department of Radiology, Beijing Tongren Hospital, Capital Medical University, Beijing, 100730, China.
Huiying Medical Technology Co., Ltd., Beijing, China.
Jpn J Radiol. 2021 Aug;39(8):755-762. doi: 10.1007/s11604-021-01116-6. Epub 2021 Apr 15.
To develop and validate an MRI-based radiomics model in differentiation between sinonasal primary lymphomas and squamous cell carcinomas (SCCs).
One-hundred-and-fifty-four patients were enrolled (74 individuals with SCCs and 80 with lymphomas). After feature analysis and feature selection with variance threshold and least absolute shrinkage and selection operator (LASSO) methods, an MRI-based radiomics model with the support vector machine (SVM) classifier was constructed in differentiation between lymphomas and SCCs. Areas under the receiver operating characteristic curves (AUCs) of the MRI-based radiomics model were compared with those of radiologists using Delong test.
Five features (T1 original shape Compactness2, T1 wavelet-HHH first-order Total Energy, T2 wavelet-HLH GLCM Informational Measure of Correlation1, T1 wavelet-LHL GLCM Inverse Variance and T1 square GLRLM Long Run Low Gray Level Emphasis) were finally selected in the radiomics model. The AUC values in differentiation between lymphomas and SCCs were 0.94 for the training dataset and 0.85 for the validation dataset, respectively. For all the patient datasets, the AUC values of radiomics model, readers 1, 2 and 3 were 0.92, 0.76, 0.77 and 0.80, respectively. For the validation datasets, no significant difference was found between the AUCs of the radiomics model and those of the three radiologist (P = 0.459, 0.469, 0.738 for radiologist 1, 2 and 3, respectively).
An MRI-based radiomics model can help to differentiate sinonasal lymphomas from SCCs with high accuracy.
建立并验证基于磁共振成像(MRI)的影像组学模型,以鉴别鼻窦原发性淋巴瘤和鳞状细胞癌(SCC)。
纳入154例患者(74例SCC患者和80例淋巴瘤患者)。采用方差阈值法和最小绝对收缩与选择算子(LASSO)法进行特征分析和特征选择后,构建了基于支持向量机(SVM)分类器的MRI影像组学模型,用于鉴别淋巴瘤和SCC。采用德龙检验比较基于MRI的影像组学模型与放射科医生的受试者操作特征曲线(AUC)下面积。
影像组学模型最终选择了5个特征(T1原始形状紧致度2、T1小波-HHH一阶总能量、T2小波-HLH灰度共生矩阵相关信息测度1、T1小波-LHL灰度共生矩阵逆方差和T1平方灰度行程长度矩阵长程低灰度级强调)。训练数据集鉴别淋巴瘤和SCC的AUC值分别为0.94,验证数据集为0.85。对于所有患者数据集,影像组学模型、读者1、读者2和读者3的AUC值分别为0.92、0.76、0.77和0.80。对于验证数据集,影像组学模型与三位放射科医生的AUC之间未发现显著差异(放射科医生1、2和3的P值分别为0.459、0.469和0.738)。
基于MRI的影像组学模型有助于高精度地鉴别鼻窦淋巴瘤和SCC。