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Classification algorithms with multi-modal data fusion could accurately distinguish neuromyelitis optica from multiple sclerosis

机译:具有多模式数据融合的分类算法可以准确地区分视神经脊髓炎和多发性硬化症

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摘要

Neuromyelitis optica (NMO) exhibits substantial similarities to multiple sclerosis (MS) in clinical manifestations and imaging results and has long been considered a variant of MS. With the advent of a specific biomarker in NMO, known as anti-aquaporin 4, this assumption has changed; however, the differential diagnosis remains challenging and it is still not clear whether a combination of neuroimaging and clinical data could be used to aid clinical decision-making. Computer-aided diagnosis is a rapidly evolving process that holds great promise to facilitate objective differential diagnoses of disorders that show similar presentations. In this study, we aimed to use a powerful method for multi-modal data fusion, known as a multi-kernel learning and performed automatic diagnosis of subjects. We included 30 patients with NMO, 25 patients with MS and 35 healthy volunteers and performed multi-modal imaging with T1-weighted high resolution scans, diffusion tensor imaging (DTI) and resting-state functional MRI (fMRI). In addition, subjects underwent clinical examinations and cognitive assessments. We included 18 a priori predictors from neuroimaging, clinical and cognitive measures in the initial model. We used 10-fold cross-validation to learn the importance of each modality, train and finally test the model performance. The mean accuracy in differentiating between MS and NMO was 88%, where visible white matter lesion load, normal appearing white matter (DTI) and functional connectivity had the most important contributions to the final classification. In a multi-class classification problem we distinguished between all of 3 groups (MS, NMO and healthy controls) with an average accuracy of 84%. In this classification, visible white matter lesion load, functional connectivity, and cognitive scores were the 3 most important modalities. Our work provides preliminary evidence that computational tools can be used to help make an objective differential diagnosis of NMO and MS.
机译:视神经脊髓炎(NMO)在临床表现和影像学结果上与多发性硬化症(MS)表现出很大的相似性,长期以来一直被认为是MS的一种变体。随着NMO中一种称为抗水通道蛋白4的特定生物标记的出现,这一假设已经改变。然而,鉴别诊断仍然具有挑战性,并且尚不清楚神经影像学和临床数据的结合是否可用于辅助临床决策。计算机辅助诊断是一个快速发展的过程,具有极大的希望,可以促进对表现出相似表现的疾病进行客观的鉴别诊断。在这项研究中,我们旨在使用一种强大的方法进行多模式数据融合,称为多内核学习,并执行对象的自动诊断。我们纳入了30例NMO患者,25例MS患者和35名健康志愿者,并通过T1加权高分辨率扫描,弥散张量成像(DTI)和静止状态功能性MRI(fMRI)进行了多模式成像。此外,对受试者进行临床检查和认知评估。在初始模型中,我们从神经影像学,临床和认知指标中纳入了18个先验预测因子。我们使用10倍交叉验证来了解每种方法的重要性,进行训练并最终测试模型性能。区分MS和NMO的平均准确度为88%,其中可见白质病变负荷,正常出现的白质(DTI)和功能连接对最终分类最重要。在多类别分类问题中,我们区分了所有三个组(MS,NMO和健康对照组),平均准确度为84%。在这种分类中,可见白质病变负荷,功能连接性和认知评分是3种最重要的方式。我们的工作提供了初步的证据,表明可以使用计算工具来帮助对NMO和MS进行客观的鉴别诊断。

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