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Hierarchical Multimodal Fusion of Deep-Learned Lesion and Tissue Integrity Features in Brain MRIs for Distinguishing Neuromyelitis Optica from Multiple Sclerosis

机译:深度学习的病变和脑MRI的组织完整性特征的分级多峰融合用于区分多发性硬化症的神经脊髓炎

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Neuromyelitis optica spectrum disorder (NMOSD) is a disease of the central nervous system that is often misdiagnosed as multiple sclerosis (MS) because they share similar clinical and radiological characteristics. Two key pathological signs of NMOSD and MS that are detectable on magnetic resonance imaging (MRI) are white matter lesions and alterations in tissue integrity as measured by fractional anisotropy (FA) values on diffusion tensor images (DTIs). This paper proposes a multimodal deep learning model that discovers latent features in brain lesion masks and DTIs for distinguishing NMOSD from MS. The main technical challenge is to optimally extract and integrate features from two very heterogeneous image types (lesion masks and FA maps). Our solution is to first build two modality-specific pathways, each designed to accommodate the expected feature density and scale, then integrate them into a hierarchical multimodal fusion (HMF) model. The HMF model contains two multimodal fusion layers operating at two different scales, which in turn are joined by a multi-scale fusion layer. We hypothesize that the HMF approach would allow the automatic extraction of joint-features of heterogeneous image types to be optimized with greater efficiency and accuracy than the traditional multimodal approach of combining only the top-layer modality-specific features with a single fusion layer. The proposed model gives an average diagnostic accuracy of 81.3% (85.3% sensitivity and 75.0% specificity) on 82 NMOSD patients and 52 MS patients in a seven-fold cross-validation, which significantly outperforms the user-defined MRI features previously used in clinical studies, as well as deep-learned features using the conventional fusion approach.
机译:视神经脊髓炎频谱疾病(NMOSD)是中枢神经系统疾病,由于它们具有相似的临床和放射学特征,因此经常被误诊为多发性硬化症(MS)。在磁共振成像(MRI)上可检测到的NMOSD和MS的两个关键病理迹象是白质病变和组织完整性的改变,这是通过扩散张量图像(DTI)上的分数各向异性(FA)值来测量的。本文提出了一种多模式深度学习模型,该模型可发现脑病变蒙版和DTI中的潜在特征,以区分NMOSD和MS。主要的技术挑战是从两种非常不同的图像类型(病变蒙版和FA贴图)中最佳地提取和集成特征。我们的解决方案是首先构建两个特定于模态的途径,每个途径都旨在适应预期的特征密度和尺度,然后将它们集成到分层多模态融合(HMF)模型中。 HMF模型包含两个以两种不同比例运行的多峰融合层,而这些多峰融合层又由一个多尺度融合层连接在一起。我们假设,与仅将特定于顶层模态的特征与单个融合层组合在一起的传统多模态方法相比,HMF方法将允许以更高的效率和准确性来优化异质图像类型的联合特征的自动提取。所提出的模型对82名NMOSD患者和52名MS患者进行7倍交叉验证,平均诊断准确度为81.3%(灵敏度为85.3%,特异性为75.0%),大大优于以前在临床中使用的用户定义的MRI功能研究,以及使用常规融合方法的深度学习功能。

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