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Scale-Space Autoencoders for Unsupervised Anomaly Segmentation in Brain MRI

机译:脑MRI中无监督异常分段的尺度空间自身额

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Brain pathologies can vary greatly in size and shape, ranging from few pixels (i.e. MS lesions) to large, space-occupying tumors. Recently proposed Autoencoder-based methods for unsupervised anomaly segmentation in brain MRI have shown promising performance, but face difficulties in modeling distributions with high fidelity, which is crucial for accurate delineation of particularly small lesions. Here, similar to these previous works, we model the distribution of healthy brain MRI to localize pathologies from erroneous reconstructions. However, to achieve improved reconstruction fidelity at higher resolutions, we learn to compress and reconstruct different frequency bands of healthy brain MRI using the laplacian pyramid. In a range of experiments comparing our method to different State-of-the-Art approaches on three different brain MR datasets with MS lesions and tumors, we show improved anomaly segmentation performance and the general capability to obtain much more crisp reconstructions of input data at native resolution. The modeling of the laplacian pyramid further enables the delineation and aggregation of lesions at multiple scales, which allows to effectively cope with different pathologies and lesion sizes using a single model.
机译:脑病理的尺寸和形状可以大大变化,从几个像素(即MS病变)到大,空间占用的肿瘤。最近提出了基于AutoEncoder的脑部MRI中的无人生异常分段的方法,表现出了有希望的性能,但面对具有高保真性的分布造型的困难,这对于精确描绘特别小病变至关重要。在这里,类似于这些以前的作品,我们模拟了健康脑MRI的分布,从错误的重建中定位病理学。然而,为了实现更高的分辨率的改进的重建保真度,我们学习使用Laplacian金字塔压缩和重建健康脑MRI的不同频带。在一系列实验中,将我们的方法与不同的脑子衰退和肿瘤的三种不同脑MR数据集进行比较,我们显示出改善的异常分割性能和一般能力,以获得更加清晰的输入数据重建。原始分辨率。拉普拉斯金字塔的建模进一步使得能够在多个尺度下描绘和聚集病变,这允许使用单一模型有效地应对不同的病理和病变尺寸。

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