Schaub Michael T, Schultz Simon R
Department of Bioengineering, Imperial College London, South Kensington, London SW72AZ, UK.
J Comput Neurosci. 2012 Feb;32(1):101-18. doi: 10.1007/s10827-011-0342-z. Epub 2011 Jun 11.
The Ising model has recently received much attention for the statistical description of neural spike train data. In this paper, we propose and demonstrate its use for building decoders capable of predicting, on a millisecond timescale, the stimulus represented by a pattern of neural activity. After fitting to a training dataset, the Ising decoder can be applied "online" for instantaneous decoding of test data. While such models can be fit exactly using Boltzmann learning, this approach rapidly becomes computationally intractable as neural ensemble size increases. We show that several approaches, including the Thouless-Anderson-Palmer (TAP) mean field approach from statistical physics, and the recently developed Minimum Probability Flow Learning (MPFL) algorithm, can be used for rapid inference of model parameters in large-scale neural ensembles. Use of the Ising model for decoding, unlike other problems such as functional connectivity estimation, requires estimation of the partition function. As this involves summation over all possible responses, this step can be limiting. Mean field approaches avoid this problem by providing an analytical expression for the partition function. We demonstrate these decoding techniques by applying them to simulated neural ensemble responses from a mouse visual cortex model, finding an improvement in decoder performance for a model with heterogeneous as opposed to homogeneous neural tuning and response properties. Our results demonstrate the practicality of using the Ising model to read out, or decode, spatial patterns of activity comprised of many hundreds of neurons.
伊辛模型最近在神经脉冲序列数据的统计描述方面受到了广泛关注。在本文中,我们提出并展示了其在构建解码器方面的应用,该解码器能够在毫秒时间尺度上预测由神经活动模式所代表的刺激。在拟合训练数据集之后,伊辛解码器可以“在线”应用于测试数据的即时解码。虽然此类模型可以使用玻尔兹曼学习精确拟合,但随着神经群体规模的增加,这种方法在计算上很快变得难以处理。我们表明,包括统计物理学中的 Thouless-Anderson-Palmer(TAP)平均场方法以及最近开发的最小概率流学习(MPFL)算法在内的几种方法,可用于大规模神经群体中模型参数的快速推断。与功能连接估计等其他问题不同,使用伊辛模型进行解码需要估计配分函数。由于这涉及对所有可能响应的求和,这一步可能会成为限制因素。平均场方法通过为配分函数提供解析表达式来避免这个问题。我们通过将这些解码技术应用于来自小鼠视觉皮层模型的模拟神经群体响应来展示它们,发现对于具有异质而非同质神经调谐和响应特性的模型,解码器性能有所提高。我们的结果证明了使用伊辛模型读出或解码由数百个神经元组成的活动空间模式的实用性。