Data scarcity is a notable problem, especially in the medical domain, due to patient data laws. Therefore, efficient Pre-Training techniques could help in combating this problem. In this paper, we demonstrate that a model trained on the time direction of functional neuro-imaging data could help in any downstream task, for example, classifying diseases from healthy controls in fMRI data. We train a Deep Neural Network on Independent components derived from fMRI data using the Independent component analysis (ICA) technique. It learns time direction in the ICA-based data. This pre-trained model is further trained to classify brain disorders in different datasets. Through various experiments, we have shown that learning time direction helps a model learn some causal relation in fMRI data that helps in faster convergence, and consequently, the model generalizes well in downstream classification tasks even with fewer data records.
翻译:由于病人数据法,数据稀缺是一个值得注意的问题,特别是在医疗领域。因此,有效的培训前技术有助于解决这一问题。在本文中,我们证明,在功能性神经成像数据的时间方向方面受过培训的模型可以帮助任何下游任务,例如,将疾病从健康控制中分类,在FMRI数据中将疾病分类;我们利用独立组成部分分析技术,对来自FMRI数据的独立组成部分进行深神经网络培训;在ICA数据中学习时间方向。这个经过培训的模型经过进一步培训,可以将脑疾病分类到不同的数据集中。我们通过各种实验,已经表明学习的时间方向有助于模型学习FMRI数据中的一些因果关系,有助于更快地趋同,因此,模型在下游分类任务中非常概括,即使数据记录较少。