Stiefel Klaus M, Sejnowski Terrence J
Theoretical and Experimental Neurobiology Unit, Okinawa Institute of Science and Technology, 12-22, Suzaki, Uruma, Okinawa, Japan.
J Neurophysiol. 2007 Jul;98(1):513-26. doi: 10.1152/jn.00865.2006. Epub 2007 Apr 11.
Neurons have a wide range of dendritic morphologies the functions of which are largely unknown. We used an optimization procedure to find neuronal morphological structures for two computational tasks: first, neuronal morphologies were selected for linearly summing excitatory synaptic potentials (EPSPs); second, structures were selected that distinguished the temporal order of EPSPs. The solutions resembled the morphology of real neurons. In particular the neurons optimized for linear summation electrotonically separated their synapses, as found in avian nucleus laminaris neurons, and neurons optimized for spike-order detection had primary dendrites of significantly different diameter, as found in the basal and apical dendrites of cortical pyramidal neurons. This similarity makes an experimentally testable prediction of our theoretical approach, which is that pyramidal neurons can act as spike-order detectors for basal and apical inputs. The automated mapping between neuronal function and structure introduced here could allow a large catalog of computational functions to be built indexed by morphological structure.
神经元具有多种树突形态,但其功能大多未知。我们使用一种优化程序来寻找适用于两项计算任务的神经元形态结构:第一,选择神经元形态以线性叠加兴奋性突触后电位(EPSP);第二,选择能够区分EPSP时间顺序的结构。得到的解决方案类似于真实神经元的形态。特别是,为线性叠加而优化的神经元在电性质上分离了它们的突触,这在鸟类层状核神经元中也有发现,而为检测尖峰顺序而优化的神经元具有直径显著不同的初级树突,这在皮质锥体细胞的基底和顶端树突中也有发现。这种相似性为我们的理论方法提供了一个可通过实验检验的预测,即锥体细胞可以作为基底和顶端输入的尖峰顺序检测器。这里介绍的神经元功能与结构之间的自动映射可以构建一个由形态结构索引的大量计算功能目录。