Neuroscientists and neuroengineers have long relied on multielectrode neural recordings to study the brain. However, in a typical experiment, many factors corrupt neural recordings from individual electrodes, including electrical noise, movement artifacts, and faulty manufacturing. Currently, common practice is to discard these corrupted recordings, reducing already limited data that is difficult to collect. To address this challenge, we propose Deep Neural Imputation (DNI), a framework to recover missing values from electrodes by learning from data collected across spatial locations, days, and participants. We explore our framework with a linear nearest-neighbor approach and two deep generative autoencoders, demonstrating DNI's flexibility. One deep autoencoder models participants individually, while the other extends this architecture to model many participants jointly. We evaluate our models across 12 human participants implanted with multielectrode intracranial electrocorticography arrays; participants had no explicit task and behaved naturally across hundreds of recording hours. We show that DNI recovers not only time series but also frequency content, and further establish DNI's practical value by recovering significant performance on a scientifically-relevant downstream neural decoding task.
翻译:神经科学家和神经工程师长期依赖多电子神经记录来研究大脑。 但是,在典型的实验中,许多因素都腐蚀了个体电极的神经记录,包括电动噪音、移动文物和故障制造。目前,通常的做法是抛弃这些腐败记录,减少难以收集的有限数据。为了应对这一挑战,我们建议深神经截肢(DNI)这个框架,通过从空间地点、天和参与者之间收集的数据中学习,从电极中恢复缺失的值。我们探索我们的框架,以直线近邻方式和两个深厚的基因化自动编码器来显示DNI的灵活性。一个深度的自动编码模型参与者单独地将这一结构扩展至多个参与者的模型。我们评估我们12个人类参与者的模型,这些参与者是用多电子内部电学阵列植入的;参与者没有明确的任务,在数百个记录小时中行为自然。我们显示DNI不仅恢复了时间序列,而且还恢复了频率内容,还进一步确定了DNI的实用价值,恢复了与科学相关的下潜线性任务。