Wang Luxi, Lin Naier, Chen Wei, Xiao Hanyu, Zhang Yiyin, Sha Yan
Shanghai Institute of Medical Imaging, Fudan University, Shanghai, China.
Department of Radiology, Eye & ENT Hospital of Fudan University, 83 Fenyang Road, Shanghai, 200031, China.
BMC Med Imaging. 2025 Feb 21;25(1):56. doi: 10.1186/s12880-024-01517-9.
To develop MRI-based deep learning (DL) models for distinguishing sinonasal squamous cell carcinoma (SCC), adenoid cystic carcinoma (ACC) and olfactory neuroblastoma (ONB) and to evaluate whether the DL models could improve the diagnostic performance of Senior radiologist (SR) and Junior radiologist (JR).
This retrospective analysis consisted of 465 patients (229 sinonasal SCCs, 128 ACCs and 108 ONBs). The training and validation cohorts included 325 and 47 patients and the independent external testing cohort consisted of 93 patients. MRI images included T2-weighted image (T2WI), contrast-enhanced T1-weighted image (CE-T1WI) and apparent diffusion coefficient (ADC). We analyzed the conventional MRI features to choose the independent predictors and built the conventional MRI model. Then we compared the macro- and micro- area under the curves (AUCs) of different sequences and different DL networks to formulate the best DL model [artificial intelligence (AI) model scheme]. With AI assistance, we observed the diagnostic performances between SR and JR. The diagnostic efficacies of SR and JR were assessed by accuracy, Recall, precision, F1-Score and confusion matrices.
The independent predictors of conventional MRI included intensity on T2WI and intracranial invasion of sinonasal malignancies. With ExtraTrees (ET) classier, the conventional MRI model owned AUC of 78.8%. For DL models, ResNet101 network showed better performance than ResNet50 and DensNet121, especially for the mean fusion sequence (macro-AUC = 0.892, micro-AUC = 0.875, Accuracy = 0.810), and also good for the ADC sequence (macro-AUC = 0.872, micro-AUC = 0.874, Accuracy = 0.814). Grad-CAM showed that DL models focused on solid component of lesions. With the best AI scheme (ResNet101-mean sequence-based DL model) assistance, the diagnosis performances of SR (accuracy = 0.957, average Recall = 0.962, precision = 0.955, F1-Score = 0.957) and JR (accuracy = 0.925, average Recall = 0.917, precision = 0.931, F1-Score = 0.923) were significantly improved.
The ResNet101 network with mean sequence based DL model could effectively differential between sinonasal SCC, ACC and ONB and improved the diagnostic performances of both senior and junior radiologists.
开发基于磁共振成像(MRI)的深度学习(DL)模型,以区分鼻窦鳞状细胞癌(SCC)、腺样囊性癌(ACC)和嗅神经母细胞瘤(ONB),并评估DL模型是否能提高高级放射科医生(SR)和初级放射科医生(JR)的诊断性能。
这项回顾性分析纳入了465例患者(229例鼻窦SCC、128例ACC和108例ONB)。训练和验证队列分别包括325例和47例患者,独立的外部测试队列由93例患者组成。MRI图像包括T2加权图像(T2WI)、对比增强T1加权图像(CE-T1WI)和表观扩散系数(ADC)。我们分析了传统MRI特征以选择独立预测因子,并构建了传统MRI模型。然后,我们比较了不同序列和不同DL网络的曲线下宏观和微观面积(AUC),以制定最佳DL模型[人工智能(AI)模型方案]。在AI辅助下,我们观察了SR和JR之间的诊断性能。通过准确性、召回率、精确率、F1分数和混淆矩阵评估SR和JR的诊断效能。
传统MRI的独立预测因子包括T2WI上的信号强度和鼻窦恶性肿瘤的颅内侵犯。使用ExtraTrees(ET)分类器,传统MRI模型的AUC为78.8%。对于DL模型,ResNet101网络表现优于ResNet50和DensNet121,尤其是对于平均融合序列(宏观AUC = 0.892,微观AUC = 0.875,准确性 = 0.810),对ADC序列也有良好表现(宏观AUC = 0.872,微观AUC = 0.874,准确性 = 0.814)。Grad-CAM显示DL模型关注病变的实性成分。在最佳AI方案(基于ResNet101-平均序列的DL模型)辅助下,SR(准确性 = 0.957,平均召回率 = 0.962,精确率 = 0.955,F1分数 = 0.957)和JR(准确性 = 0.925,平均召回率 = 0.917,精确率 = 0.931,F1分数 = 0.923)的诊断性能显著提高。
基于平均序列的ResNet101网络DL模型能够有效区分鼻窦SCC、ACC和ONB,并提高了高级和初级放射科医生的诊断性能。