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Deep Learning of Image Features from Unlabeled Data for Multiple Sclerosis Lesion Segmentation

机译:来自未标记数据的图像特征深度学习,用于多发性硬化病变分割

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A new automatic method for multiple sclerosis (MS) lesion segmentation in multi-channel 3D MR images is presented. The main novelty of the method is that it learns the spatial image features needed for training a supervised classifier entirely from unlabeled data. This is in contrast to other current supervised methods, which typically require the user to preselect or design the features to be used. Our method can learn an extensive set of image features with minimal user effort and bias. In addition, by separating the feature learning from the classifier training that uses labeled (pre-segmented data), the feature learning can take advantage of the typically much more available unlabeled data. Our method uses deep learning for feature learning and a random forest for supervised classification, but potentially any supervised classifier can be used. Quantitative validation is carried out using 1450 T2-weighted and PD-weighted pairs of MRIs of MS patients, with 1400 pairs used for feature learning (100 of those for labeled training), and 50 for testing. The results demonstrate that the learned features are highly competitive with hand-crafted features in terms of segmentation accuracy, and that segmentation performance increases with the amount of unlabeled data used, even when the number of labeled images is fixed.
机译:提出了一种新的自动方法,用于多通道3D MR图像中的多发性硬化(MS)病变分割。该方法的主要新颖之处在于,它完全从未标记的数据中学习了训练有监督的分类器所需的空间图像特征。这与其他当前受监督的方法相反,后者通常要求用户预先选择或设计要使用的功能。我们的方法可以以最小的用户努力和偏见来学习广泛的图像功能。另外,通过将特征学习与使用标记的(预分段数据)的分类器训练分开,特征学习可以利用通常更多可用的未标记数据的优势。我们的方法使用深度学习进行特征学习,并使用随机森林进行监督分类,但是有可能使用任何监督分类器。使用1450例MS患者的T2加权和PD加权MRI对进行定量验证,其中1400对用于特征学习(其中100对用于标记训练),另外50对用于测试。结果表明,在分割精度方面,学习到的功能与手工制作的功能具有很高的竞争力,并且即使使用固定数量的标记图像,分割性能也会随着使用的未标记数据量的增加而提高。

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