Jacobs Adam L, Fridman Gene, Douglas Robert M, Alam Nazia M, Latham Peter E, Prusky Glen T, Nirenberg Sheila
Department of Physiology and Biophysics, Weill Medical College of Cornell University, New York, NY 10065, USA.
Proc Natl Acad Sci U S A. 2009 Apr 7;106(14):5936-41. doi: 10.1073/pnas.0900573106. Epub 2009 Mar 18.
The subject of neural coding has generated much debate. A key issue is whether the nervous system uses coarse or fine coding. Each has different strengths and weaknesses and, therefore, different implications for how the brain computes. For example, the strength of coarse coding is that it is robust to fluctuations in spike arrival times; downstream neurons do not have to keep track of the details of the spike train. The weakness, though, is that individual cells cannot carry much information, so downstream neurons have to pool signals across cells and/or time to obtain enough information to represent the sensory world and guide behavior. In contrast, with fine coding, individual cells can carry much more information, but downstream neurons have to resolve spike train structure to obtain it. Here, we set up a strategy to determine which codes are viable, and we apply it to the retina as a model system. We recorded from all the retinal output cells an animal uses to solve a task, evaluated the cells' spike trains for as long as the animal evaluates them, and used optimal, i.e., Bayesian, decoding. This approach makes it possible to obtain an upper bound on the performance of codes and thus eliminate those that are insufficient, that is, those that cannot account for behavioral performance. Our results show that standard coarse coding (spike count coding) is insufficient; finer, more information-rich codes are necessary.
神经编码这一主题引发了诸多争论。一个关键问题是神经系统采用的是粗略编码还是精细编码。每种编码都有不同的优缺点,因此,对于大脑如何进行计算也有不同的影响。例如,粗略编码的优点在于它对尖峰到达时间的波动具有鲁棒性;下游神经元无需追踪尖峰序列的细节。然而,其缺点是单个细胞携带的信息不多,所以下游神经元必须跨细胞和/或跨时间整合信号,以获取足够的信息来表征感觉世界并指导行为。相比之下,对于精细编码,单个细胞可以携带更多信息,但下游神经元必须解析尖峰序列结构才能获取这些信息。在此,我们制定了一种策略来确定哪些编码是可行的,并将其应用于视网膜这一模型系统。我们记录了动物用于解决一项任务的所有视网膜输出细胞的活动,在动物对这些细胞进行评估的相同时长内评估细胞的尖峰序列,并采用最优的,即贝叶斯解码方法。这种方法使得有可能获得编码性能的上限,从而排除那些不充分的编码,也就是那些无法解释行为表现的编码。我们的结果表明,标准的粗略编码(尖峰计数编码)是不充分的;更精细、信息更丰富的编码是必要的。