论文标题
大脑激活图的几乎没有解码
Few-shot Decoding of Brain Activation Maps
论文作者
论文摘要
很少有学习解决有限数量的培训示例的问题。到目前为止,该领域主要是由计算机视觉中的应用驱动的。在这里,我们有兴趣适应最近引入的几种方法来解决处理神经影像数据的问题,这是一个有希望的应用程序字段。为此,我们创建了一个神经影像学基准数据集,用于几次学习,并比较包括元学习以及各种骨干网络在内的多个学习范式。我们的实验表明,很少有射击方法能够使用很少的示例有效地解码大脑信号,这为临床和认知神经科学中的许多应用铺平了道路,例如从脑扫描中识别生物标志物或了解跨多种认知任务的大脑表征的概括。
Few-shot learning addresses problems for which a limited number of training examples are available. So far, the field has been mostly driven by applications in computer vision. Here, we are interested in adapting recently introduced few-shot methods to solve problems dealing with neuroimaging data, a promising application field. To this end, we create a neuroimaging benchmark dataset for few-shot learning and compare multiple learning paradigms, including meta-learning, as well as various backbone networks. Our experiments show that few-shot methods are able to efficiently decode brain signals using few examples, which paves the way for a number of applications in clinical and cognitive neuroscience, such as identifying biomarkers from brain scans or understanding the generalization of brain representations across a wide range of cognitive tasks.