首页> 外文期刊>Journal of neural engineering >Sparse model-based estimation of functional dependence in high-dimensional field and spike multiscale networks
【24h】

Sparse model-based estimation of functional dependence in high-dimensional field and spike multiscale networks

机译:基于稀疏模型的高维场和尖峰多尺度网络中功能依赖的估计

获取原文
获取原文并翻译 | 示例
           

摘要

Objective. Behavior is encoded across multiple scales of brain activity, from binary neuronal spikes to continuous fields including local field potentials (LFP). Multiscale models need to describe both the encoding of behavior and the conditional dependencies in simultaneously recorded spike and field signals, which form a high-dimensional multiscale network. However, learning spike-field dependencies in high-dimensional recordings is challenging due to the prohibitively large number of spike-field signal pairs, which makes standard learning techniques subject to overfitting. Approach. We present a sparse model-based estimation algorithm to learn these multiscale network dependencies. We develop a multiscale encoding model consisting of a point process model of binary spikes for each neuron whose firing rate is a function of the LFP network features and behavioral states. Doing so, spike-field dependencies constitute the model parameters to be learned. We resolve the parameter learning challenge by forming a constrained optimization problem to maximize the likelihood with an L1 penalty term that eases the detection of significant spike-LFP dependencies. We then apply the Akaike information criterion (AIC) to force a sparse number of nonzero dependency parameters in the model. Main results. We validate the algorithm using simulations and spike-field data from two non-human primates (NHP) in a 3D motor task with motor cortical recordings and a pro-saccade visual task with prefrontal recordings. We find that by identifying a model with a sparse set of dependency parameters, the algorithm improves spike prediction compared with models without dependencies. Further, the algorithm identifies significantly fewer dependency parameters compared with standard methods while improving their spike prediction likely due to detecting fewer spurious dependencies. Also, spike prediction on any electrode improves by including LFP features from all electrodes compared with using only those on the same electrode. Finally, unlike standard methods, the algorithm uncovers patterns of spike-field network dependencies as a function of distance, brain region, and frequency band. Significance. This algorithm can help study functional dependencies in high-dimensional spike-field networks and leads to more accurate multiscale encoding models.
机译:目的。行为被编码在多种规模的大脑活动中,从二进制神经元尖峰到包括局部场电势(LFP)的连续场。多尺度模型需要在同时记录的尖峰和场信号中描述行为编码和条件依赖性,从而形成一个高维多尺度网络。但是,由于尖峰场信号对的数量过高,因此在高维记录中学习尖峰场依赖性非常具有挑战性,这使得标准学习技术容易过拟合。方法。我们提出了一种基于稀疏模型的估计算法来学习这些多尺度网络依赖性。我们为每个神经元开发了一个多尺度编码模型,该模型由二进制峰值的点过程模型组成,每个神经元的激发速率是LFP网络特征和行为状态的函数。这样做,尖峰场相关性构成了要学习的模型参数。我们通过形成一个约束优化问题来解决参数学习挑战,以一个L1惩罚项来最大程度地降低似然性,从而简化了对重要的尖峰LFP相关性的检测。然后,我们应用Akaike信息标准(AIC)来强制模型中稀疏数量的非零依赖性参数。主要结果。我们使用模拟和来自两个非人类灵长类动物(NHP)的尖峰场数据验证该算法,该3D运动任务带有运动皮层记录,而前扫视视觉任务带有前额叶记录。我们发现,通过识别具有稀疏依赖性参数集的模型,与不具有依赖性的模型相比,该算法提高了峰值预测。此外,与标准方法相比,该算法识别出的依赖参数明显更少,同时可能由于检测到更少的虚假依赖而改善了其尖峰预测。而且,与仅使用同一电极上的那些相比,通过包括所有电极的LFP特征,可以改善任何电极上的尖峰预测。最后,与标准方法不同,该算法揭示了尖峰场网络依赖关系的模式,这些依赖关系是距离,大脑区域和频带的函数。意义。该算法可以帮助研究高维尖峰场网络中的功能依赖性,并导致更准确的多尺度编码模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号