Department of Physics, Indiana University, Bloomington, Indiana, United States of America.
PLoS One. 2011;6(11):e27431. doi: 10.1371/journal.pone.0027431. Epub 2011 Nov 15.
Transfer entropy (TE) is an information-theoretic measure which has received recent attention in neuroscience for its potential to identify effective connectivity between neurons. Calculating TE for large ensembles of spiking neurons is computationally intensive, and has caused most investigators to probe neural interactions at only a single time delay and at a message length of only a single time bin. This is problematic, as synaptic delays between cortical neurons, for example, range from one to tens of milliseconds. In addition, neurons produce bursts of spikes spanning multiple time bins. To address these issues, here we introduce a free software package that allows TE to be measured at multiple delays and message lengths. To assess performance, we applied these extensions of TE to a spiking cortical network model (Izhikevich, 2006) with known connectivity and a range of synaptic delays. For comparison, we also investigated single-delay TE, at a message length of one bin (D1TE), and cross-correlation (CC) methods. We found that D1TE could identify 36% of true connections when evaluated at a false positive rate of 1%. For extended versions of TE, this dramatically improved to 73% of true connections. In addition, the connections correctly identified by extended versions of TE accounted for 85% of the total synaptic weight in the network. Cross correlation methods generally performed more poorly than extended TE, but were useful when data length was short. A computational performance analysis demonstrated that the algorithm for extended TE, when used on currently available desktop computers, could extract effective connectivity from 1 hr recordings containing 200 neurons in ∼5 min. We conclude that extending TE to multiple delays and message lengths improves its ability to assess effective connectivity between spiking neurons. These extensions to TE soon could become practical tools for experimentalists who record hundreds of spiking neurons.
转移熵(TE)是一种信息论度量,它在神经科学中受到了关注,因为它有可能识别神经元之间的有效连接。对于大量的尖峰神经元 ensemble,计算 TE 是计算密集型的,这导致大多数研究人员只能在单个时间延迟和单个时间 bin 的消息长度下探测神经相互作用。这是有问题的,例如,皮质神经元之间的突触延迟范围从 1 到 10 毫秒。此外,神经元产生跨越多个时间 bin 的尖峰爆发。为了解决这些问题,我们在这里引入了一个免费的软件包,该软件包允许在多个延迟和消息长度下测量 TE。为了评估性能,我们将这些 TE 的扩展应用于具有已知连接和一系列突触延迟的尖峰皮质网络模型(Izhikevich,2006)。为了比较,我们还研究了单延迟 TE,在一个 bin 的消息长度(D1TE)和互相关(CC)方法。我们发现,在假阳性率为 1%的情况下,D1TE 可以识别 36%的真实连接。对于 TE 的扩展版本,这一比例显著提高到 73%的真实连接。此外,TE 扩展版本正确识别的连接占网络总突触权重的 85%。互相关方法的性能通常不如 TE 扩展版本好,但在数据长度较短时很有用。计算性能分析表明,当在当前可用的桌面计算机上使用时,TE 的扩展算法可以在大约 5 分钟内从包含 200 个神经元的 1 小时记录中提取有效连接。我们得出结论,将 TE 扩展到多个延迟和消息长度可以提高其评估尖峰神经元之间有效连接的能力。这些 TE 的扩展很快就会成为记录数百个尖峰神经元的实验人员的实用工具。