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Better Fiber ODFs from Suboptimal Data with Autoencoder Based Regularization

机译:通过基于自动编码器的正则化,从次优数据中获得更好的光纤ODF

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We propose a novel way of estimating fiber orientation distribution functions (fODFs) from diffusion MRI. Our method combines convex optimization with unsupervised learning in a way that preserves the relative benefits of both. In particular, we regularize constrained spherical deconvolution (CSD) with a prior that is derived from an fODF autoencoder, effectively encouraging solutions that are similar to fODFs observed in high-quality training data. Our method improves results on independent test data, especially when only few measurements or relatively weak diffusion weighting (low b values) are available.
机译:我们提出了一种从扩散MRI估计纤维取向分布函数(fODFs)的新颖方法。我们的方法将凸优化与无监督学习相结合,从而保留了两者的相对优势。特别是,我们使用从fODF自动编码器派生的先验对约束球面反卷积(CSD)进行正则化,有效地鼓励了与在高质量训练数据中观察到的fODF相似的解决方案。我们的方法可以改善独立测试数据的结果,尤其是在只有很少的测量结果或相对较弱的扩散权重(低b值)可用的情况下。

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