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CNN Detection of New and Enlarging Multiple Sclerosis Lesions from Longitudinal Mri Using Subtraction Images

机译:使用减影图像从纵向Mri进行CNN新发和扩大的多发性硬化病变的检测

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Accurate detection and segmentation of new lesional activity in longitudinal Magnetic Resonance Images (MRIs) of patients with Multiple Sclerosis (MS) is important for monitoring disease activity, as well as for assessing treatment effects. In this work, we present the first deep learning framework to automatically detect and segment new and enlarging (NE) T2w lesions from longitudinal brain MRIs acquired from relapsing-remitting MS (RRMS) patients. The proposed framework is an adapted 3D U-Net [1] which includes as inputs the reference multi-modal MRI and T2-weighted lesion maps, as well an attention mechanism based on the subtraction MRI (between the two timepoints) which serves to assist the network in learning to differentiate between real anatomical change and artifactual change, while constraining the search space for small lesions. Experiments on a large, proprietary, multi -center, multi-modal, clinical trial dataset consisting of 1677 multi-modal scans illustrate that network achieves high overall detection accuracy (detection AUC=.95), outperforming (1) a U-Net without an attention mechanism (de-tection AUC=.93), (2) a framework based on subtracting independent T2-weighted segmentations (detection AUC=.57), and (3) DeepMedic (detection AUC=.84) [2], particularly for small lesions. In addition, the method was able to accurately classify patients as active/inactive with (sensitivities of. 69 and specificities of. 97).
机译:在多发性硬化症(MS)患者的纵向磁共振图像(MRI)中准确检测和分割新病变活动对于监测疾病活动以及评估治疗效果非常重要。在这项工作中,我们提出了第一个深度学习框架,该框架可以从复发缓解型MS(RRMS)患者获得的纵向脑MRI中自动检测并分割新的和扩大的(NE)T2w病变。拟议的框架是经过改编的3D U-Net [1],其中包括参考多模态MRI和T2加权病灶图作为输入,以及基于减法MRI(在两个时间点之间)的注意力机制,以帮助网络在学习中区分真实的解剖变化和人为变化,同时限制了小病变的搜索空间。对大型专有,多中心,多模式,临床试验数据集(包括1677个多模式扫描)进行的实验表明,该网络可实现较高的整体检测精度(检测AUC = .95),胜过(1)没有注意机制(检测AUC = .93),(2)基于减去独立的T2加权细分(检测AUC = .57)的框架,以及(3)DeepMedic(检测AUC = .84)[2],特别是对于小的病变。另外,该方法能够准确地将患者分类为活动/不活动(敏感性为69,特异性为97)。

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