Training Auxiliary Prototypical Classifiers for Explainable Anomaly Detection in Medical Image Segmentation

Wonwoong Cho, Jeonghoon Park, J. Choo
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引用次数: 3

Abstract

Machine learning-based algorithms using fully convolutional networks (FCNs) have been a promising option for medical image segmentation. However, such deep networks silently fail if input samples are drawn far from the training data distribution, thus causing critical problems in automatic data processing pipelines. To overcome such out-of-distribution (OoD) problems, we propose a novel OoD score formulation and its regularization strategy by applying an auxiliary add-on classifier to an intermediate layer of an FCN, where the auxiliary module is helfpul for analyzing the encoder output features by taking their class information into account. Our regularization strategy train the module along with the FCN via the principle of outlier exposure so that our model can be trained to distinguish OoD samples from normal ones without modifying the original network architecture. Our extensive experiment results demonstrate that the proposed approach can successfully conduct effective OoD detection without loss of segmentation performance. In addition, our module can provide reasonable explanation maps along with OoD scores, which can enable users to analyze the reliability of predictions.
医学图像分割中可解释异常检测的辅助原型分类器训练
基于机器学习的全卷积网络(fcn)算法已经成为医学图像分割的一个很有前途的选择。然而,如果输入样本远离训练数据分布,这种深度网络就会无声地失败,从而在自动数据处理管道中造成关键问题。为了克服这种分布外(OoD)问题,我们提出了一种新的OoD分数公式及其正则化策略,通过在FCN的中间层应用辅助附加分类器,其中辅助模块有助于通过考虑其类信息来分析编码器输出特征。我们的正则化策略通过异常值暴露原理与FCN一起训练模块,以便我们的模型可以在不修改原始网络架构的情况下训练出OoD样本与正常样本。我们的大量实验结果表明,该方法可以在不损失分割性能的情况下成功地进行有效的OoD检测。此外,我们的模块可以提供合理的解释图以及OoD分数,使用户可以分析预测的可靠性。
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