Department of Radiology, The Second Xiangya Hospital of Central South University, Changsha, China.
Department of Neurology, The Second Xiangya Hospital of Central South University, Changsha, China.
Front Immunol. 2022 Jun 14;13:897959. doi: 10.3389/fimmu.2022.897959. eCollection 2022.
Differential diagnosis of demyelinating diseases of the central nervous system is a challenging task that is prone to errors and inconsistent reading, requiring expertise and additional examination approaches. Advancements in deep-learning-based image interpretations allow for prompt and automated analyses of conventional magnetic resonance imaging (MRI), which can be utilized in classifying multi-sequence MRI, and thus may help in subsequent treatment referral.
Imaging and clinical data from 290 patients diagnosed with demyelinating diseases from August 2013 to October 2021 were included for analysis, including 67 patients with multiple sclerosis (MS), 162 patients with aquaporin 4 antibody-positive (AQP4+) neuromyelitis optica spectrum disorder (NMOSD), and 61 patients with myelin oligodendrocyte glycoprotein antibody-associated disease (MOGAD). Considering the heterogeneous nature of lesion size and distribution in demyelinating diseases, multi-modal MRI of brain and/or spinal cord were utilized to build the deep-learning model. This novel transformer-based deep-learning model architecture was designed to be versatile in handling with multiple image sequences (coronal T2-weighted and sagittal T2-fluid attenuation inversion recovery) and scanning locations (brain and spinal cord) for differentiating among MS, NMOSD, and MOGAD. Model performances were evaluated using the area under the receiver operating curve (AUC) and the confusion matrices measurements. The classification accuracy between the fusion model and the neuroradiological raters was also compared.
The fusion model that was trained with combined brain and spinal cord MRI achieved an overall improved performance, with the AUC of 0.933 (95%CI: 0.848, 0.991), 0.942 (95%CI: 0.879, 0.987) and 0.803 (95%CI: 0.629, 0.949) for MS, AQP4+ NMOSD, and MOGAD, respectively. This exceeded the performance using the brain or spinal cord MRI alone for the identification of the AQP4+ NMOSD (AUC of 0.940, brain only and 0.689, spinal cord only) and MOGAD (0.782, brain only and 0.714, spinal cord only). In the multi-category classification, the fusion model had an accuracy of 81.4%, which was significantly higher compared to rater 1 (64.4%, p=0.04<0.05) and comparable to rater 2 (74.6%, p=0.388).
The proposed novel transformer-based model showed desirable performance in the differentiation of MS, AQP4+ NMOSD, and MOGAD on brain and spinal cord MRI, which is comparable to that of neuroradiologists. Our model is thus applicable for interpretating conventional MRI in the differential diagnosis of demyelinating diseases with overlapping lesions.
中枢神经系统脱髓鞘疾病的鉴别诊断是一项具有挑战性的任务,容易出现错误和不一致的读片,需要专业知识和额外的检查方法。基于深度学习的图像解释技术的进步允许对常规磁共振成像(MRI)进行快速和自动分析,这可以用于对多序列 MRI 进行分类,从而有助于后续的治疗转诊。
纳入了 2013 年 8 月至 2021 年 10 月期间诊断为脱髓鞘疾病的 290 名患者的影像学和临床数据,包括 67 名多发性硬化症(MS)患者、162 名水通道蛋白 4 抗体阳性(AQP4+)视神经脊髓炎谱系疾病(NMOSD)患者和 61 名髓鞘少突胶质细胞糖蛋白抗体相关性疾病(MOGAD)患者。考虑到脱髓鞘疾病病变大小和分布的异质性,使用脑和/或脊髓的多模态 MRI 来构建深度学习模型。这个新的基于变压器的深度学习模型架构旨在灵活处理多个图像序列(冠状 T2 加权和矢状 T2 液体衰减反转恢复)和扫描位置(脑和脊髓),以区分 MS、NMOSD 和 MOGAD。使用受试者工作特征曲线下面积(AUC)和混淆矩阵测量来评估模型性能。还比较了融合模型和神经放射学家之间的分类准确性。
使用脑和脊髓 MRI 联合训练的融合模型总体性能得到了提高,对 MS、AQP4+ NMOSD 和 MOGAD 的 AUC 分别为 0.933(95%CI:0.848,0.991)、0.942(95%CI:0.879,0.987)和 0.803(95%CI:0.629,0.949)。这超过了仅使用脑或脊髓 MRI 对 AQP4+ NMOSD(AUC 为 0.940,脑仅用;0.689,脊髓仅用)和 MOGAD(0.782,脑仅用;0.714,脊髓仅用)的识别性能。在多类别分类中,融合模型的准确率为 81.4%,明显高于评分者 1(64.4%,p=0.04<0.05),与评分者 2(74.6%,p=0.388)相当。
所提出的新型基于变压器的模型在脑和脊髓 MRI 上对 MS、AQP4+ NMOSD 和 MOGAD 的鉴别诊断中表现出良好的性能,与神经放射科医生相当。因此,我们的模型适用于解释具有重叠病变的脱髓鞘疾病的常规 MRI。