论文标题

用于在半义务设置中具有基于流量的生成模型的医学图像的多功能异常检测方法

A versatile anomaly detection method for medical images with a flow-based generative model in semi-supervision setting

论文作者

Shibata, H., Hanaoka, S., Nomura, Y., Nakao, T., Sato, I., Sato, D., Hayashi, N., Abe, O.

论文摘要

医学图像中的监督是一个至关重要的问题,需要及时报告医学图像。因此,强烈需要一种可以检测到几乎所有类型的病变/疾病的通用异常检测方法。但是,到目前为止,很少有用于医疗图像的市售和多功能异常检测方法。最近,基于深度学习方法的异常检测方法在受欢迎程度上已经迅速增长,这些方法似乎为问题提供了合理的解决方案。但是,为深度学习中训练所需的图像标记的工作量仍然很重。在这项研究中,我们提出了一种基于两个基于流动的生成模型的异常检测方法。使用此方法,可以将后验概率计算为任何给定图像的正态度量。生成模型的训练需要两组图像:仅包含正常图像的集合,另一组包含正常图像和异常图像,没有任何标签。在后一组中,每个样品不必标记为正常或异常。因此,图像的任何混合物(例如,医院中的所有病例)都可以用作数据集,而无需繁琐的手动标记。该方法用两种类型的医学图像验证:胸部X射线射线照相(CXR)和脑计算机断层扫描(BCT)。 CXRS对数后概率(肺炎样不良度为0.868)和BCT(梗塞的0.904)的对数后​​验概率的接收器操作特征曲线下的区域可与先前研究的研究相媲美。该结果显示了我们方法的多功能性。

Oversight in medical images is a crucial problem, and timely reporting of medical images is desired. Therefore, an all-purpose anomaly detection method that can detect virtually all types of lesions/diseases in a given image is strongly desired. However, few commercially available and versatile anomaly detection methods for medical images have been provided so far. Recently, anomaly detection methods built upon deep learning methods have been rapidly growing in popularity, and these methods seem to provide reasonable solutions to the problem. However, the workload to label the images necessary for training in deep learning remains heavy. In this study, we present an anomaly detection method based on two trained flow-based generative models. With this method, the posterior probability can be computed as a normality metric for any given image. The training of the generative models requires two sets of images: a set containing only normal images and another set containing both normal and abnormal images without any labels. In the latter set, each sample does not have to be labeled as normal or abnormal; therefore, any mixture of images (e.g., all cases in a hospital) can be used as the dataset without cumbersome manual labeling. The method was validated with two types of medical images: chest X-ray radiographs (CXRs) and brain computed tomographies (BCTs). The areas under the receiver operating characteristic curves for logarithm posterior probabilities of CXRs (0.868 for pneumonia-like opacities) and BCTs (0.904 for infarction) were comparable to those in previous studies with other anomaly detection methods. This result showed the versatility of our method.

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