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Distribution Matching Losses Can Hallucinate Features in Medical Image Translation

机译:分布匹配损失可能会使医学图像翻译产生幻觉

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This paper discusses how distribution matching losses, such as those used in CycleGAN, when used to synthesize medical images can lead to mis-diagnosis of medical conditions. It seems appealing to use these new image synthesis methods for translating images from a source to a target domain because they can produce high quality images and some even do not require paired data. However, the basis of how these image translation models work is through matching the translation output to the distribution of the target domain. This can cause an issue when the data provided in the target domain has an over or under representation of some classes (e.g. healthy or sick). When the output of an algorithm is a transformed image there are uncertainties whether all known and unknown class labels have been preserved or changed. Therefore, we recommend that these translated images should not be used for direct interpretation (e.g. by doctors) because they may lead to misdiag-nosis of patients based on hallucinated image features by an algorithm that matches a distribution. However there are many recent papers that seem as though this is the goal.
机译:本文讨论了分布匹配损失(例如在CycleGAN中使用的分布损失)在用于合成医学图像时如何导致医学状况的误诊。使用这些新的图像合成方法将图像从源转换为目标域似乎很有吸引力,因为它们可以生成高质量的图像,有些甚至不需要配对数据。但是,这些图像翻译模型如何工作的基础是通过将翻译输出与目标域的分布进行匹配。当目标域中提供的数据具有某些类别(例如健康或病假)的过多或不足表示时,这可能会导致问题。当算法的输出是转换后的图像时,不确定所有已知和未知类标签是否已保留或更改。因此,我们建议不要将这些翻译后的图像用于直接解释(例如,由医生使用),因为根据幻觉的图像特征,通过匹配分布的算法,它们可能会导致患者误诊。但是,最近有许多论文似乎都以此为目标。

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