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A Soft STAPLE Algorithm Combined with Anatomical Knowledge

机译:一种软装订算法与解剖学知识相结合

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摘要

Supervised machine learning algorithms, especially in the medical domain, are affected by considerable ambiguity in expert markings. In this study we address the case where the experts' opinion is obtained as a distribution over the possible values. We propose a soft version of the STAPLE algorithm for experts' markings fusion that can handle soft values. The algorithm was applied to obtain consensus from soft Multiple Sclerosis (MS) segmentation masks. Soft MS segmentations are constructed from manual binary delineations by including lesion surrounding voxels in the segmentation mask with a reduced confidence weight. We suggest that these voxels contain additional anatomical information about the lesion structure. The fused masks are utilized as ground truth mask to train a Fully Convolutional Neural Network (FCNN). The proposed method was evaluated on the MICCAI 2016 challenge dataset, and yields improved precision-recall tradeoff and a higher average Dice similarity coefficient.
机译:监督机器学习算法,特别是在医学领域,受到专家标记的相当大的模糊。在这项研究中,我们解决了专家意见作为可能价值观的分布而获得的案件。我们为专家标记融合提出了一个软版本,可以处理软值。应用该算法从软多发性硬化(MS)分割掩模中获得共有。通过在分割掩模中包括细分掩模中的病变包围的病变,从手动二进制划分构成软MS分割。我们建议这些体素包含有关病变结构的额外解剖信息。融合面具被用作地面真理面具,以训练一个完全卷积的神经网络(FCNN)。在Miccai 2016挑战数据集中评估了所提出的方法,并产生改善的精确召回权衡和更高的平均骰子相似度系数。

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