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Bayesian Skip-Autoencoders for Unsupervised Hyperintense Anomaly Detection in High Resolution Brain Mri

机译:贝叶斯跳过自动编码器用于高分辨率脑Mri中的无监督超强异常检测

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Autoencoder-based approaches for Unsupervised Anomaly Detection (UAD) in brain MRI have recently gained a lot of attention and have shown promising performance. However, brain MR images are particularly complex and require large model capacity for learning a proper reconstruction, which existing methods encounter by restricting themselves to downsampled data or anatomical subregions. In this work, we show that models with limited capacity can be trained and used for UAD in full brain MR images at their native resolution by introducing skip-connections, a concept which has already proven beneficial for biomedical image segmentation and image-to-image translation, and a dropout-based mechanism to prevent the model from learning an identity mapping. In an ablative study on two different pathologies we show considerable improvements over State-of-the-Art Autoencoder-based UAD models. The stochastic nature of the model also allows to investigate epistemic uncertainty in our so-called Skip-Autoencoder, which is briefly portrayed.
机译:基于自动编码器的大脑MRI中无监督异常检测(UAD)方法最近引起了很多关注,并显示出令人鼓舞的性能。但是,脑部MR图像特别复杂,并且需要较大的模型能力来学习适当的重建,现有方法通过将其自身限制为下采样数据或解剖学子区域而遇到。在这项工作中,我们证明可以通过引入跳过连接来训练容量有限的模型,并将其用于全脑MR图像中原始分辨率的UAD,该概念已被证明对生物医学图像分割和图像到图像有益转换和基于辍学的机制来防止模型学习身份映射。在对两种不同病理学的简要研究中,我们显示了与基于自动编码器的最新UAD模型相比的显着改进。该模型的随机性质还允许在我们简短描述的所谓的“跳过自动编码器”中研究认知不确定性。

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