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Improving automated multiple sclerosis lesion segmentation with a cascaded 3D convolutional neural network approach

机译:用级联3D卷积神经网络方法改善自动化多发性硬化病变分割

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In this paper, we present a novel automated method for White Matter (WM) lesion segmentation of Multiple Sclerosis (MS) patient images. Our approach is based on a cascade of two 3D patch-wise convolutional neural networks (CNN). The first network is trained to be more sensitive revealing possible candidate lesion voxels while the second network is trained to reduce the number of misclassified voxels coming from the first network. This cascaded CNN architecture tends to learn well from a small (n <= 35) set of labeled data of the same MRI contrast, which can be very interesting in practice, given the difficulty to obtain manual label annotations and the large amount of available unlabeled Magnetic Resonance Imaging (MRI) data. We evaluate the accuracy of the proposed method on the public MS lesion segmentation challenge MICCAI2008 dataset, comparing it with respect to other state-of-the-art MS lesion segmentation tools. Furthermore, the proposed method is also evaluated on two private MS clinical datasets, where the performance of our method is also compared with different recent public available state-of-the-art MS lesion segmentation methods. At the time of writing this paper, our method is the best ranked approach on the MICCAI2008 challenge, outperforming the rest of 60 participant methods when using all the available input modalities (T1-w, T2-w and FLAIR), while still in the top-rank (3rd position) when using only T1-w and FLAIR modalities. On clinical MS data, our approach exhibits a significant increase in the accuracy segmenting of WM lesions when compared with the rest of evaluated methods, highly correlating (r >= 0.97) also with the expected lesion volume.
机译:在本文中,我们提出了一种用于多发性硬化(MS)患者图像的白质(WM)病变分割的新型自动化方法。我们的方法是基于两个3D修补程序卷积神经网络(CNN)的级联。第一网络训练以更敏感的揭示可能的候选病变体素,而第二网络训练以减少来自第一网络的错误分类体素的数量。这种级联的CNN架构往往从相同MRI对比度的一个小(n <= 35)的标记数据集中了解得很好,这在实践中非常有趣,因为难以获得手动标签注释和大量可用的未标记磁共振成像(MRI)数据。我们评估在公共MS病变分割挑战MICCAI2008数据集上的提出方法的准确性,比较了与其他最先进的MS病变分段工具相比。此外,还在两个私人MS临床数据集中评估所提出的方法,其中我们的方法的性能也与不同最近的公众可用最先进的MS病变分段分段方法进行比较。在撰写本文时,我们的方法是Miccai2008挑战上最佳排名的方法,优于使用所有可用的输入模态(T1-W,T2-W和Flair)时的60个参与者方法的其余部分。仅使用T1-W和Flair模式时的顶级(第3个位置)。在临床MS数据上,与其他评估方法相比,我们的方法表现出WM病变的精度分段显着增加,高度相关(r> = 0.97),同样具有预期的病变体积。

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