Attili Sarojini M, Mackesey Sean T, Ascoli Giorgio A
Center for Neural Informatics, Structures, & Plasticity, Krasnow Institute for Advanced Study, Bioengineering Department and Neuroscience Program, George Mason University, Fairfax, VA, USA.
Ann Oper Res. 2020 Jun;289(1):33-50. doi: 10.1007/s10479-020-03542-7. Epub 2020 Mar 9.
Understanding brain computation requires assembling a complete catalog of its architectural components. Although the brain is organized into several anatomical and functional regions, it is ultimately the neurons in every region that are responsible for cognition and behavior. Thus, classifying neuron types throughout the brain and quantifying the population sizes of distinct classes in different regions is a key subject of research in the neuroscience community. The total number of neurons in the brain has been estimated for multiple species, but the definition and population size of each neuron type are still open questions even in common model organisms: the so called "cell census" problem. We propose a methodology that uses operations research principles to estimate the number of neurons in each type based on available information on their distinguishing properties. Thus, assuming a set of neuron type definitions, we provide a solution to the issue of assessing their relative proportions. Specifically, we present a three-step approach that includes literature search, equation generation, and numerical optimization. Solving computationally the set of equations generated by literature mining yields best estimates or most likely ranges for the number of neurons in each type. While this strategy can be applied towards any neural system, we illustrate its usage on the rodent hippocampus.
理解大脑计算需要汇编其结构组件的完整目录。尽管大脑被组织成几个解剖学和功能区域,但最终每个区域的神经元才是负责认知和行为的主体。因此,对全脑的神经元类型进行分类并量化不同区域中不同类型的群体规模,是神经科学界研究的一个关键课题。已经对多个物种大脑中的神经元总数进行了估计,但即使在常见的模式生物中,每种神经元类型的定义和群体规模仍然是悬而未决的问题:即所谓的“细胞普查”问题。我们提出了一种方法,该方法运用运筹学原理,根据有关神经元区分特性的现有信息来估计每种类型的神经元数量。因此,在假设一组神经元类型定义的基础上,我们提供了一个评估它们相对比例问题的解决方案。具体而言,我们提出了一种三步法,包括文献检索、方程生成和数值优化。通过计算求解文献挖掘生成的方程组,可得出每种类型神经元数量的最佳估计值或最可能范围。虽然这种策略可应用于任何神经系统,但我们在啮齿动物海马体上展示了其用法。