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Multiple Sclerosis Lesion Segmentation Using Longitudinal Normalization and Convolutional Recurrent Neural Networks

机译:多发性硬化病变分割使用纵向标准化和卷积经常性神经网络

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Magnetic resonance imaging (MRI) is the primary clinical tool to examine inflammatory brain lesions in Multiple Sclerosis (MS). Disease progression and inflammatory activities are examined by longitudinal image analysis to support diagnosis and treatment decision. Automated lesion segmentation methods based on deep convolutional neural networks (CNN) have been proposed, but are not yet applied in the clinical setting. Typical CNNs working on cross-sectional single time-point data have several limitations: changes to the image characteristics between single examinations due to scanner and protocol variations have an impact on the segmentation output, while at the same time the additional temporal correlation using pre-examinations is disregarded. In this work, we investigate approaches to overcome these limitations. Within a CNN architectural design, we propose convolutional Long Short-Term Memory (C-LSTM) networks to incorporate the temporal dimension. To reduce scanner- and protocol dependent variations between single MRI exams, we propose a histogram normalization technique as pre-processing step. The ISBI 2015 challenge data was used for network training and cross-validation. We demonstrate that the combination of the longitudinal normalization and CNN architecture increases the performance and the inter-time-point stability of the lesion segmentation. In the combined solution, the dice coefficient was increased and made more consistent for each subject. The proposed methods can therefore be used to increase the performance and stability of fully automated lesion segmentation applications in the clinical routine or in clinical trials.
机译:磁共振成像(MRI)是在多发性硬化症(MS)中检查炎症性脑病变的主要临床工具。通过纵向图像分析检查疾病进展和炎症活动,以支持诊断和治疗决策。已经提出了基于深卷积神经网络(CNN)的自动化病变分段方法,但尚未在临床环境中应用。在横截面单个时间点数据上工作的典型CNN具有若干限制:由于扫描仪和协议变化导致的单个检查之间的图像特性的变化对分段输出产生影响,同时使用预先使用预应考试被忽略了。在这项工作中,我们调查克服这些限制的方法。在CNN架构设计中,我们提出了卷积的长短期记忆(C-LSTM)网络来包含时间维度。为了减少单个MRI考试之间的扫描仪和协议依赖性变化,我们提出了一种直方图归一化技术作为预处理步骤。 ISBI 2015挑战数据用于网络培训和交叉验证。我们证明纵向归一化和CNN架构的组合增加了病变分割的性能和时间点稳定性。在组合的溶液中,骰子系数增加并使每个受试者更加一致。因此,所提出的方法可用于提高临床常规或临床试验中全自动损伤分段应用的性能和稳定性。

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