论文标题
学习正常脑解剖结构的全球和局部特征,以进行无监督的异常检测
Learning Global and Local Features of Normal Brain Anatomy for Unsupervised Abnormality Detection
论文作者
论文摘要
在现实世界实践中,忽略意外发现可能会导致严重后果。但是,有监督的学习是当前深度学习成功的基础,仅鼓励模型确定事先在数据集中定义的异常。因此,必须在不限于特定疾病类别的医学图像中实施异常检测。在这项研究中,我们证明了一个无监督的学习框架,用于从转移性脑肿瘤的患者群体捕获的脑磁共振成像中像素异常检测。我们的概念如下:如果图像重建网络可以忠实地重现正常解剖结构的全球特征,则可以根据局部差异通过歧视网络重建的局部差异来识别未见图像中的异常病变。两个网络均在数据集上训练,该数据集仅包含没有标签的普通图像。此外,我们设计了一个度量标准,以评估重建图像的解剖学保真度,并确认当图像重建网络获得更高的分数时,总体检测性能得到改善。为了进行评估,全面分割了临床上显着的异常。结果表明,接收器工作特性下的区域曲线值分别为0.78、0.61、0.91和0.60。
In real-world clinical practice, overlooking unanticipated findings can result in serious consequences. However, supervised learning, which is the foundation for the current success of deep learning, only encourages models to identify abnormalities that are defined in datasets in advance. Therefore, abnormality detection must be implemented in medical images that are not limited to a specific disease category. In this study, we demonstrate an unsupervised learning framework for pixel-wise abnormality detection in brain magnetic resonance imaging captured from a patient population with metastatic brain tumor. Our concept is as follows: If an image reconstruction network can faithfully reproduce the global features of normal anatomy, then the abnormal lesions in unseen images can be identified based on the local difference from those reconstructed as normal by a discriminative network. Both networks are trained on a dataset comprising only normal images without labels. In addition, we devise a metric to evaluate the anatomical fidelity of the reconstructed images and confirm that the overall detection performance is improved when the image reconstruction network achieves a higher score. For evaluation, clinically significant abnormalities are comprehensively segmented. The results show that the area under the receiver operating characteristics curve values for metastatic brain tumors, extracranial metastatic tumors, postoperative cavities, and structural changes are 0.78, 0.61, 0.91, and 0.60, respectively.