Hoang Huu, Yamashita Okito, Tokuda Isao T, Sato Masa-Aki, Kawato Mitsuo, Toyama Keisuke
Department of Mechanical Engineering, Ritsumeikan University Shiga, Japan ; ATR Neural Information Analysis Laboratories Kyoto, Japan.
ATR Neural Information Analysis Laboratories Kyoto, Japan ; Brain Functional Imaging Technologies Group, CiNet Osaka, Japan.
Front Comput Neurosci. 2015 May 21;9:56. doi: 10.3389/fncom.2015.00056. eCollection 2015.
The inverse problem for estimating model parameters from brain spike data is an ill-posed problem because of a huge mismatch in the system complexity between the model and the brain as well as its non-stationary dynamics, and needs a stochastic approach that finds the most likely solution among many possible solutions. In the present study, we developed a segmental Bayesian method to estimate the two parameters of interest, the gap-junctional (gc ) and inhibitory conductance (gi ) from inferior olive spike data. Feature vectors were estimated for the spike data in a segment-wise fashion to compensate for the non-stationary firing dynamics. Hierarchical Bayesian estimation was conducted to estimate the gc and gi for every spike segment using a forward model constructed in the principal component analysis (PCA) space of the feature vectors, and to merge the segmental estimates into single estimates for every neuron. The segmental Bayesian estimation gave smaller fitting errors than the conventional Bayesian inference, which finds the estimates once across the entire spike data, or the minimum error method, which directly finds the closest match in the PCA space. The segmental Bayesian inference has the potential to overcome the problem of non-stationary dynamics and resolve the ill-posedness of the inverse problem because of the mismatch between the model and the brain under the constraints based, and it is a useful tool to evaluate parameters of interest for neuroscience from experimental spike train data.
从脑尖峰数据估计模型参数的逆问题是一个不适定问题,这是因为模型与大脑之间在系统复杂性上存在巨大不匹配以及其非平稳动力学特性,因此需要一种随机方法,以便在众多可能解中找到最可能的解。在本研究中,我们开发了一种分段贝叶斯方法,用于从下橄榄核尖峰数据估计两个感兴趣的参数,即缝隙连接电导(gc)和抑制性电导(gi)。以逐段方式为尖峰数据估计特征向量,以补偿非平稳发放动力学。使用在特征向量的主成分分析(PCA)空间中构建的前向模型,进行分层贝叶斯估计,以估计每个尖峰段的gc和gi,并将各段估计合并为每个神经元的单一估计。与传统贝叶斯推理(在整个尖峰数据上一次性找到估计值)或最小误差方法(直接在PCA空间中找到最接近的匹配)相比,分段贝叶斯估计给出的拟合误差更小。分段贝叶斯推理有潜力克服非平稳动力学问题,并解决由于基于约束条件下模型与大脑之间的不匹配而导致的逆问题的不适定性,并且它是从实验尖峰序列数据评估神经科学感兴趣参数的有用工具。