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Semi-supervised VAE-GAN for Out-of-Sample Detection Applied to MRI Quality Control

机译:半监控VAE-GaN用于样品外检测,适用于MRI质量控制

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Discriminative deep learning models have shown remarkable success in many medical image analysis applications. However, their success is limited in problems that involve learning from imbalanced and heterogeneous datasets. Generative models parameterized using deep learning models can resolve this problem by characterizing the distribution of well-represented classes, a step enabling the identification of samples that were improbably generated from that distribution. This paper proposes a semi-supervised out-of-sample detection framework based on a 3D variational autoencoder-based generative adversarial network (VAE-GAN). The proposed framework relies on a high-level similarity metric and invariant representations learned by a semi-supervised discriminator to evaluate the generated images. The encoded latent representations were constrained according to user-defined properties through a jointly trained predictor network. Anomaly samples are detected using learned similarity scores and/or scores from an online one-class neural network. The high performance of the proposed methods is confirmed via a novel application to the automatic quality control of structural MR images.
机译:歧视性深度学习模型在许多医学图像分析应用中表现出显着的成功。然而,他们的成功是有限的,涉及从不平衡和异构数据集学习的问题。使用深度学习模型参数化的生成模型可以通过表征良好的类的分布来解决这个问题,这是一种能够识别从该分布不可能产生的样本的步骤。本文提出了一种基于基于3D变形AutoEncoder的生成的对抗网络(VAE-GaN)的半监督超样本检测框架。所提出的框架依赖于半监督判别者学习的高级相似度和不变表示来评估生成的图像。通过共同训练的预测器网络根据用户定义的属性来限制编码潜在表示。使用来自在线单级神经网络的学习相似度分数和/或分数来检测异常样本。通过新的应用对结构MR图像的自动质量控制来确认所提出的方法的高性能。

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