Alegre-Cortés Javier, Soto-Sánchez Cristina, Albarracín Ana L, Farfán Fernando D, Val-Calvo Mikel, Ferrandez José M, Fernandez Eduardo
Neuroprosthetics and Visual Rehabilitation Research Unit, Bioengineering Institute, Miguel Hernández University, Alicante, Spain.
Biomedical Research Networking Center in Bioengineering, Biomaterials and Nanomedicine, Madrid, Spain.
Front Neuroinform. 2018 Jan 10;11:77. doi: 10.3389/fninf.2017.00077. eCollection 2017.
Machine learning and artificial intelligence have strong roots on principles of neural computation. Some examples are the structure of the first perceptron, inspired in the retina, neuroprosthetics based on ganglion cell recordings or Hopfield networks. In addition, machine learning provides a powerful set of tools to analyze neural data, which has already proved its efficacy in so distant fields of research as speech recognition, behavioral states classification, or LFP recordings. However, despite the huge technological advances in neural data reduction of dimensionality, pattern selection, and clustering during the last years, there has not been a proportional development of the analytical tools used for Time-Frequency (T-F) analysis in neuroscience. Bearing this in mind, we introduce the convenience of using non-linear, non-stationary tools, EMD algorithms in particular, for the transformation of the oscillatory neural data (EEG, EMG, spike oscillations…) into the T-F domain prior to its analysis with machine learning tools. We support that to achieve meaningful conclusions, the transformed data we analyze has to be as faithful as possible to the original recording, so that the transformations forced into the data due to restrictions in the T-F computation are not extended to the results of the machine learning analysis. Moreover, bioinspired computation such as brain-machine interface may be enriched from a more precise definition of neuronal coding where non-linearities of the neuronal dynamics are considered.
机器学习和人工智能在神经计算原理方面有着深厚的根基。一些例子包括受视网膜启发的首个感知器的结构、基于神经节细胞记录的神经假体或霍普菲尔德网络。此外,机器学习提供了一套强大的工具来分析神经数据,这已经在诸如语音识别、行为状态分类或局部场电位记录等遥远的研究领域证明了其有效性。然而,尽管在过去几年中神经数据降维、模式选择和聚类方面取得了巨大的技术进步,但神经科学中用于时频(T-F)分析的分析工具却没有得到相应的发展。考虑到这一点,我们介绍了使用非线性、非平稳工具(特别是经验模态分解算法)的便利性,以便在使用机器学习工具进行分析之前,将振荡神经数据(脑电图、肌电图、尖峰振荡等)转换到时频域。我们支持这样的观点,即要得出有意义的结论,我们分析的转换后数据必须尽可能忠实于原始记录,这样由于时频计算中的限制而强加给数据的转换就不会扩展到机器学习分析的结果。此外,诸如脑机接口之类的受生物启发的计算可能会从对神经元编码的更精确定义中得到丰富,其中考虑了神经元动力学的非线性。