论文标题
通过计算潜在表示的差异,改善了大脑MRI的切片肿瘤检测
Improved Slice-wise Tumour Detection in Brain MRIs by Computing Dissimilarities between Latent Representations
论文作者
论文摘要
通过学习健康图像的分布并将异常视为异常值,可以通过无监督的方法解决磁共振图像(MRI)的异常检测。在包含未标记数据的附加数据集也存在异常的情况下,该任务可以作为半监督任务进行框架,并具有负面和未标记的样品点。最近,在2020年的Albu等人中,我们提出了一种基于对变量自动编码器的潜在空间中的差异函数的计算,对肿瘤检测进行了切片,以进行肿瘤检测,并接受了对未标记数据的培训。差异是在图像的编码和通过仅在健康图像上训练的不同自动编码器获得的重建的编码之间计算的。在本文中,我们介绍了我们的方法的新颖和改进的结果,并通过在HCP和BRATS-2018数据集的子集上训练变异自动编码器以及对其余个体的测试。我们表明,通过训练模型在更高分辨率的图像上并提高重建质量,我们获得了与不同基准相当的结果,这些基线采用了对健康个体训练的单个VAE。如预期的那样,我们方法的性能随着用于确定异常存在的阈值的大小而增加。
Anomaly detection for Magnetic Resonance Images (MRIs) can be solved with unsupervised methods by learning the distribution of healthy images and identifying anomalies as outliers. In presence of an additional dataset of unlabelled data containing also anomalies, the task can be framed as a semi-supervised task with negative and unlabelled sample points. Recently, in Albu et al., 2020, we have proposed a slice-wise semi-supervised method for tumour detection based on the computation of a dissimilarity function in the latent space of a Variational AutoEncoder, trained on unlabelled data. The dissimilarity is computed between the encoding of the image and the encoding of its reconstruction obtained through a different autoencoder trained only on healthy images. In this paper we present novel and improved results for our method, obtained by training the Variational AutoEncoders on a subset of the HCP and BRATS-2018 datasets and testing on the remaining individuals. We show that by training the models on higher resolution images and by improving the quality of the reconstructions, we obtain results which are comparable with different baselines, which employ a single VAE trained on healthy individuals. As expected, the performance of our method increases with the size of the threshold used to determine the presence of an anomaly.