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Anatomical Priors in Convolutional Networks for Unsupervised Biomedical Segmentation

机译:卷积网络中无监督生物医学分割的解剖先验

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We consider the problem of segmenting a biomedical image into anatomical regions of interest. We specifically address the frequent scenario where we have no paired training data that contains images and their manual segmentations. Instead, we employ unpaired segmentation images that we use to build an anatomical prior. Critically these segmentations can be derived from imaging data from a different dataset and imaging modality than the current task. We introduce a generative probabilistic model that employs the learned prior through a convolutional neural network to compute segmentations in an unsupervised setting. We conducted an empirical analysis of the proposed approach in the context of structural brain MRI segmentation, using a multi-study dataset of more than 14,000 scans. Our results show that an anatomical prior enables fast unsupervised segmentation which is typically not possible using standard convolutional networks. The integration of anatomical priors can facilitate CNN-based anatomical segmentation in a range of novel clinical problems, where few or no annotations are available and thus standard networks are not trainable. The code, model definitions and model weights are freely available at http://github.com/adalcaeuron.
机译:我们考虑将生物医学图像分割为感兴趣的解剖区域的问题。我们专门针对经常出现的情况,即我们没有包含图像及其手动分割的成对训练数据。相反,我们采用了未配对的分割图像,这些图像用于构建解剖先验。至关重要的是,这些分割可以从与当前任务不同的数据集和成像方式中获取成像数据。我们介绍了一种生成概率模型,该模型利用通过卷积神经网络获得的先验知识来在无监督的情况下计算细分。我们使用了超过14,000次扫描的多研究数据集,在结构性脑MRI分割的背景下对提出的方法进行了实证分析。我们的结果表明,解剖学先验可以实现快速无监督的分割,这通常是使用标准卷积网络无法实现的。解剖先验的整合可以促进一系列新颖的临床问题中基于CNN的解剖分割,其中很少或没有注释可用,因此标准网络无法训练。代码,模型定义和模型权重可从http://github.com/adalca/neuron免费获得。

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