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Transfer learning improves resting-state functional connectivity pattern analysis using convolutional neural networks

机译:转移学习使用卷积神经网络改善了静态功能连接模式分析

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摘要

BackgroundDeep learning is gaining importance in the prediction of cognitive states and brain pathology based on neuroimaging data. Including multiple hidden layers in artificial neural networks enables unprecedented predictive power; however, the proper training of deep neural networks requires thousands of exemplars. Collecting this amount of data is not feasible in typical neuroimaging experiments. A handy solution to this problem, which has largely fallen outside the scope of deep learning applications in neuroimaging, is to repurpose deep networks that have already been trained on large datasets by fine-tuning them to target datasets/tasks with fewer exemplars. Here, we investigated how this method, called transfer learning, can aid age category classification and regression based on brain functional connectivity patterns derived from resting-state functional magnetic resonance imaging. We trained a connectome-convolutional neural network on a larger public dataset and then examined how the knowledge learned can be used effectively to perform these tasks on smaller target datasets collected with a different type of scanner and/or imaging protocol and pre-processing pipeline.
机译:背景技术深度学习在基于神经影像数据的认知状态和脑病理预测中正变得越来越重要。在人工神经网络中包含多个隐藏层可实现前所未有的预测能力;但是,正确地训练深度神经网络需要成千上万的范例。在典型的神经影像实验中,收集如此大量的数据是不可行的。解决此问题的一种简便方法已大大超出了在神经影像学的深度学习应用程序的范围,它可以重新利用已经在大型数据集上进行训练的深度网络,方法是将它们微调到具有较少样本的目标数据集/任务。在这里,我们研究了这种称为转移学习的方法如何基于从静止状态功能磁共振成像得出的大脑功能连接模式,帮助年龄分类和回归。我们在一个较大的公共数据集上训练了一个Connectome卷积神经网络,然后研究了如何将所学知识有效地用于在使用不同类型的扫描仪和/或成像协议以及预处理管道收集的较小目标数据集上执行这些任务。

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