Pathological brain lesions exhibit diverse appearance in brain images, in terms of intensity, texture, shape, size, and location. Comprehensive sets of data and annotations are difficult to acquire. Therefore, unsupervised anomaly detection approaches have been proposed using only normal data for training, with the aim of detecting outlier anomalous voxels at test time. Denoising methods, for instance classical denoising autoencoders (DAEs) and more recently emerging diffusion models, are a promising approach, however naive application of pixelwise noise leads to poor anomaly detection performance. We show that optimization of the spatial resolution and magnitude of the noise improves the performance of different model training regimes, with similar noise parameter adjustments giving good performance for both DAEs and diffusion models. Visual inspection of the reconstructions suggests that the training noise influences the trade-off between the extent of the detail that is reconstructed and the extent of erasure of anomalies, both of which contribute to better anomaly detection performance. We validate our findings on two real-world datasets (tumor detection in brain MRI and hemorrhage/ischemia/tumor detection in brain CT), showing good detection on diverse anomaly appearances. Overall, we find that a DAE trained with coarse noise is a fast and simple method that gives state-of-the-art accuracy. Diffusion models applied to anomaly detection are as yet in their infancy and provide a promising avenue for further research.
翻译:脑部病理病变在大脑图像中呈现出不同的外观,在强度、质度、形状、大小和位置方面,很难获得全套数据和说明。因此,提议采用未经监督的异常检测方法,仅使用正常的培训数据,目的是在测试时发现异常异常的肉毒杆菌。Denooising方法,例如古典脱色自动立体器(DAEs)和最近出现的传播模型,是一种有希望的方法,但像素噪音的天真应用导致异常现象检测性效绩不佳。我们表明,空间分辨率和噪音规模的优化改善了不同示范培训制度的性能,类似的噪音参数调整给DAEs和推广模型都带来了良好的性能。对重建工作的视觉检查表明,培训噪音影响着所重建的详细程度和异常现象消减缩程度之间的权衡,这两种方法都有助于更好地检测异常现象。我们验证了我们关于两个真实世界数据集(脑MRI和hemorrage/ischemia/treamal ) 的发现结果,通过经过培训的正常状态检测,在大脑中提供了一种正常的正常的频率探测方法。