首页> 外文会议>International Workshop on Brain-Lesion;Medical Image Computing for Computer Assisted Intervention Conference >Saliency Based Deep Neural Network for Automatic Detection of Gadolinium-Enhancing Multiple Sclerosis Lesions in Brain MRI
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Saliency Based Deep Neural Network for Automatic Detection of Gadolinium-Enhancing Multiple Sclerosis Lesions in Brain MRI

机译:基于显着性的深度神经网络在脑MRI中自动检测增强-的多发性硬化病灶

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The appearance of contrast-enhanced pathologies (e.g. lesion, cancer) is an important marker of disease activity, stage and treatment efficacy in clinical trials. The automatic detection and segmentation of these enhanced pathologies remains a difficult challenge, as they can be very small and visibly similar to other non-pathological enhancements (e.g. blood vessels). In this paper, we propose a deep neural network classifier for the detection and segmentation of Gadolinium enhancing lesions in brain MRI of patients with Multiple Sclerosis (MS). To avoid false positive and false negative assertions, the proposed end-to-end network uses an enhancement-based attention mechanism which assigns saliency based on the differences between the Tf-weighted images before and after injection of Gadolinium, and works to first identify candidate lesions and then to remove the false positives. The effect of the saliency map is evaluated on 2293 patient multi-channel MRI scans acquired during two proprietary, multi-center clinical trials for MS treatments. Inclusion of the attention mechanism results in a decrease in false positive lesion voxels over a basic U-Net [2] and DeepMedic [6]. In terms of lesion-level detection, the framework achieves a sensitivity of 82% at a false discovery rate of 0.2, significantly outperforming the other two methods when detecting small lesions. Experiments aimed at predicting the presence of Gad lesion activity in patient scans (i.e. the presence of more than 1 lesion) result in high accuracy showing: (a) significantly improved accuracy over DeepMedic, and (b) a reduction in the errors in predicting the degree of lesion activity (in terms of per scan lesion counts) over a standard U-Net and DeepMedic.
机译:在临床试验中,增强对比的病理学(例如病变,癌症)的出现是疾病活动,阶段和治疗效果的重要标志。这些增强的病理的自动检测和分割仍然是一个艰巨的挑战,因为它们可能很小并且在视觉上类似于其他非病理增强(例如血管)。在本文中,我们提出了一种深度神经网络分类器,用于检测和分割多发性硬化症(MS)脑MRI中增强病变。为了避免错误的肯定和错误的否定断言,建议的端到端网络使用基于增强的注意力机制,该机制根据注入Ga前后的Tf加权图像之间的差异来分配显着性,并首先识别候选对象。然后清除病灶的假阳性。在两项针对MS治疗的专有,多中心临床试验中获得的2293位患者多通道MRI扫描评估了显着性图的效果。包括注意机制在内的假阳性病变体素比基本的U-Net [2]和DeepMedic [6]减少。在病变级别检测方面,该框架在误发现率为0.2的情况下达到了82%的灵敏度,在检测小病变时明显优于其他两种方法。旨在预测患者扫描中Gad病变活动的存在(即,存在1个以上病变)的实验可提供较高的准确性,这些结果表明:(a)与DeepMedic相比,准确性显着提高;(b)减少了预测Deep-Medic时的错误标准U-Net和DeepMedic上病变活动的程度(以每次扫描的病变计数为单位)。

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