Anomaly detection remains a challenging task in neuroimaging when little to no supervision is available and when lesions can be very small or with subtle contrast. Patch-based representation learning has shown powerful representation capacities when applied to industrial or medical imaging and outlier detection methods have been applied successfully to these images. In this work, we propose an unsupervised anomaly detection (UAD) method based on a latent space constructed by a siamese patch-based auto-encoder and perform the outlier detection with a One-Class SVM training paradigm tailored to the lesion detection task in multi-modality neuroimaging. We evaluate performances of this model on a public database, the White Matter Hyperintensities (WMH) challenge and show in par performance with the two best performing state-of-the-art methods reported so far.
翻译:摘要:当几乎没有监督信息可用时,异常检测仍然是神经影像学中的一个具有挑战性的任务。当病变可能非常小或对比度微妙时,基于补丁的表征学习已经表现出强大的表征能力。离群点检测方法已经成功应用于这些图像。在本文中,我们提出了一种基于补丁自动编码器构建的潜在空间的无监督异常检测方法,并通过One-Class SVM训练范例为多模态神经影像中的病变检测任务执行离群点检测,以白质高信号(WMH)挑战公共数据集作为参照,评估了该模型的性能。我们发现,在性能上,该方法不逊于已报道的两种最优秀的现有技术。