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Soft Labeling by Distilling Anatomical Knowledge for Improved MS Lesion Segmentation

机译:通过蒸馏解剖知识进行软标记以改善MS病变分割

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This paper explores the use of a soft ground-truth mask (“soft mask”) to train a Fully Convolutional Neural Network (FCNN) for segmentation of Multiple Sclerosis (MS) lesions. Detection and segmentation of MS lesions is a complex task largely due to the extreme unbalanced data, with very small number of lesion pixels that can be used for training. Utilizing the anatomical knowledge that the lesion surrounding pixels may also include some lesion level information, we suggest to increase the data set of the lesion class with neighboring pixel data -with a reduced confidence weight. A soft mask is constructed by morphological dilation of the binary segmentation mask provided by a given expert, where expert-marked voxels receive label 1 and voxels of the dilated region are assigned a soft label. In the methodology proposed, the FCNN is trained using the soft mask. On the ISBI 2015 challenge dataset, this is shown to provide a better precision-recall tradeoff and to achieve a higher average Dice similarity coefficient. We also show that by using this soft mask scheme we can improve the network segmentation performance when compared to a second independent expert.
机译:本文探索了使用软地面真假面具(“软假面具”)来训练用于多发性硬化症(MS)病变分割的全卷积神经网络(FCNN)。 MS病变的检测和分割是一项复杂的任务,这主要是由于数据极度不平衡,只有很少数量的病变像素可用于训练。利用解剖学知识,即病变周围的像素可能还包括某些病变级别信息,我们建议增加具有相邻像素数据的病变类别的数据集,并降低置信度。通过对给定专家提供的二进制分割蒙版进行形态学扩展来构造软蒙版,在该蒙版中,专家标记的体素接收标签1,并且将膨胀区域的体素分配给软标签。在提出的方法中,使用软掩膜对FCNN进行训练。在ISBI 2015挑战数据集上,这显示出可以提供更好的精确调用权衡,并实现了更高的平均Dice相似系数。我们还表明,与第二位独立专家相比,通过使用这种软掩码方案,我们可以提高网络分段性能。

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