Feasibility of Universal Anomaly Detection without Knowing the Abnormality in Medical Images.

Can Cui, Yaohong Wang, Shunxing Bao, Yucheng Tang, Ruining Deng, Lucas W Remedios, Zuhayr Asad, Joseph T Roland, Ken S Lau, Qi Liu, Lori A Coburn, Keith T Wilson, Bennett A Landman, Yuankai Huo
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Abstract

Many anomaly detection approaches, especially deep learning methods, have been recently developed to identify abnormal image morphology by only employing normal images during training. Unfortunately, many prior anomaly detection methods were optimized for a specific "known" abnormality (e.g., brain tumor, bone fraction, cell types). Moreover, even though only the normal images were used in the training process, the abnormal images were often employed during the validation process (e.g., epoch selection, hyper-parameter tuning), which might leak the supposed "unknown" abnormality unintentionally. In this study, we investigated these two essential aspects regarding universal anomaly detection in medical images by (1) comparing various anomaly detection methods across four medical datasets, (2) investigating the inevitable but often neglected issues on how to unbiasedly select the optimal anomaly detection model during the validation phase using only normal images, and (3) proposing a simple decision-level ensemble method to leverage the advantage of different kinds of anomaly detection without knowing the abnormality. The results of our experiments indicate that none of the evaluated methods consistently achieved the best performance across all datasets. Our proposed method enhanced the robustness of performance in general (average AUC 0.956).

在不知道医学图像异常的情况下进行通用异常检测的可行性
最近,许多异常检测方法,尤其是深度学习方法,都是通过在训练过程中仅使用正常图像来识别异常图像形态的。遗憾的是,之前的许多异常检测方法都是针对特定的 "已知 "异常(如脑肿瘤、骨质疏松、细胞类型)进行优化的。此外,尽管在训练过程中只使用了正常图像,但在验证过程(如选择历时、调整超参数)中却经常使用异常图像,这可能会无意中泄露假定的 "未知 "异常。在本研究中,我们通过(1)比较四个医疗数据集中的各种异常检测方法,(2)研究如何在验证阶段仅使用正常图像无偏见地选择最佳异常检测模型这一不可避免但却经常被忽视的问题,以及(3)提出一种简单的决策级集合方法,以在不知道异常情况的情况下利用不同类型异常检测的优势,对医疗图像中的通用异常检测进行了这两个重要方面的研究。我们的实验结果表明,在所有数据集中,没有一种评估方法能始终获得最佳性能。我们提出的方法总体上提高了性能的稳健性(平均 AUC 为 0.956)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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