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Unsupervised Cross-Modal Synthesis of Subject-Specific Scans

机译:主题特定扫描的无监督跨模态合成

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Recently, cross-modal synthesis of subject-specific scans has been receiving significant attention from the medical imaging community. Though various synthesis approaches have been introduced in the recent past, most of them are either tailored to a specific application or proposed for the supervised setting, i.e., they assume the availability of training data from the same set of subjects in both source and target modalities. But, collecting multiple scans from each subject is undesirable. Hence, to address this issue, we propose a general unsupervised cross-modal medical image synthesis approach that works without paired training data. Given a source modality image of a subject, we first generate multiple target modality candidate values for each voxel independently using cross-modal nearest neighbor search. Then, we select the best candidate values jointly for all the voxels by simultaneously maximizing a global mutual information cost function and a local spatial consistency cost function. Finally, we use coupled sparse representation for further refinement of synthesized images. Our experiments on generating T1-MRI brain scans from T2-MRI and vice versa demonstrate that the synthesis capability of the proposed unsupervised approach is comparable to various state-of-the-art supervised approaches in the literature.
机译:近来,主题特定扫描的交叉模式合成已受到医学成像界的极大关注。尽管最近已经引入了各种综合方法,但其中大多数方法要么针对特定应用量身定制,要么针对有监督的环境而提出,即,它们假定在源和目标模式下都可以从同一组对象获得训练数据。但是,不希望从每个对象收集多个扫描。因此,为了解决这个问题,我们提出了一种通用的无监督交叉模式医学图像合成方法,该方法无需配对训练数据即可工作。给定一个对象的源模态图像,我们首先使用跨模态最近邻搜索为每个体素独立生成多个目标模态候选值。然后,通过同时最大化全局互信息成本函数和局部空间一致性成本函数,我们共同为所有体素选择最佳候选值。最后,我们使用耦合的稀疏表示来进一步细化合成图像。我们从T2-MRI生成T1-MRI脑扫描(反之亦然)的实验表明,所提出的无监督方法的合成能力可与文献中的各种最新监督方法相媲美。

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