对抗性反事实增强:在阿尔茨海默病分类中的应用。

Tian Xia, Pedro Sanchez, Chen Qin, Sotirios A Tsaftaris
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引用次数: 6

摘要

由于医学数据的可用性有限,用于医学图像分析的深度学习方法往往难以推广到看不见的数据。在训练过程中使用随机变换增强数据已被证明有助于训练神经网络,并成为一种普遍存在的技术。在这里,我们提出了一种新的对抗性反事实增强方案,旨在找到最有效的合成图像来改善下游任务,给出了一个预训练的生成模型。具体而言,我们构建了一个对抗博弈,其中我们交替迭代地更新生成器和下游分类器的输入条件因子梯度反向传播。这可以看作是找到分类器的“弱点”,并通过生成模型有意地迫使它克服它的弱点。为了证明所提出方法的有效性,我们将阿尔茨海默病(AD)分类作为下游任务来验证该方法。预训练生成模型使用年龄作为条件因素来合成大脑图像。大量的实验和消融研究表明,所提出的方法提高了分类性能,并有可能减轻虚假相关性和灾难性遗忘。代码:https://github.com/xiat0616/adversarial_counterfactual_augmentation。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Adversarial counterfactual augmentation: application in Alzheimer's disease classification.

Adversarial counterfactual augmentation: application in Alzheimer's disease classification.

Adversarial counterfactual augmentation: application in Alzheimer's disease classification.

Adversarial counterfactual augmentation: application in Alzheimer's disease classification.

Due to the limited availability of medical data, deep learning approaches for medical image analysis tend to generalise poorly to unseen data. Augmenting data during training with random transformations has been shown to help and became a ubiquitous technique for training neural networks. Here, we propose a novel adversarial counterfactual augmentation scheme that aims at finding the most effective synthesised images to improve downstream tasks, given a pre-trained generative model. Specifically, we construct an adversarial game where we update the input conditional factor of the generator and the downstream classifier with gradient backpropagation alternatively and iteratively. This can be viewed as finding the 'weakness' of the classifier and purposely forcing it to overcome its weakness via the generative model. To demonstrate the effectiveness of the proposed approach, we validate the method with the classification of Alzheimer's Disease (AD) as a downstream task. The pre-trained generative model synthesises brain images using age as conditional factor. Extensive experiments and ablation studies have been performed to show that the proposed approach improves classification performance and has potential to alleviate spurious correlations and catastrophic forgetting. Code: https://github.com/xiat0616/adversarial_counterfactual_augmentation.

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