Transfer learning has been widely utilized to mitigate the data scarcity problem in the field of Alzheimer's disease (AD). Conventional transfer learning relies on re-using models trained on AD-irrelevant tasks such as natural image classification. However, it often leads to negative transfer due to the discrepancy between the non-medical source and target medical domains. To address this, we present evidence-empowered transfer learning for AD diagnosis. Unlike conventional approaches, we leverage an AD-relevant auxiliary task, namely morphological change prediction, without requiring additional MRI data. In this auxiliary task, the diagnosis model learns the evidential and transferable knowledge from morphological features in MRI scans. Experimental results demonstrate that our framework is not only effective in improving detection performance regardless of model capacity, but also more data-efficient and faithful.
翻译:常规的迁移学习在解决阿尔茨海默病(AD)数据缺乏问题方面已经得到广泛使用。常规迁移学习依赖于重用在AD不相关任务(例如自然图像分类)上训练的模型。然而,由于非医学源和目标医学领域之间的差异,常常导致负迁移。为解决这个问题,我们提出了一种在AD诊断中证据赋能的迁移学习方法。与常规方法不同,我们利用了AD相关的辅助任务,即形态变化预测,而无需额外的MRI数据。在这个辅助任务中,诊断模型从MRI扫描中的形态特征中学习能够迁移的证据和知识。实验结果表明,我们的框架不仅能够提高检测性能,而且更具数据有效性和可靠性。