Champalimaud Centre for the Unknown, Lisbon, Portugal.
Champalimaud Centre for the Unknown, Lisbon, Portugal.
Curr Opin Neurobiol. 2019 Oct;58:112-121. doi: 10.1016/j.conb.2019.09.004. Epub 2019 Sep 25.
A central tenet of neuroscience is that the brain works through large populations of interacting neurons. With recent advances in recording techniques, the inner working of these populations has come into full view. Analyzing the resulting large-scale data sets is challenging because of the often complex and 'mixed' dependency of neural activities on experimental parameters, such as stimuli, decisions, or motor responses. Here we review recent insights gained from analyzing these data with dimensionality reduction methods that 'demix' these dependencies. We demonstrate that the mappings from (carefully chosen) experimental parameters to population activities appear to be typical and stable across tasks, brain areas, and animals, and are often identifiable by linear methods. By considering when and why dimensionality reduction and demixing work well, we argue for a view of population coding in which populations represent (demixed) latent signals, corresponding to stimuli, decisions, motor responses, and so on. These latent signals are encoded into neural population activity via non-linear mappings and decoded via linear readouts. We explain how such a scheme can facilitate the propagation of information across cortical areas, and we review neural network architectures that can reproduce the encoding and decoding of latent signals in population activities. These architectures promise a link from the biophysics of single neurons to the activities of neural populations.
神经科学的一个中心原则是,大脑通过大量相互作用的神经元来工作。随着记录技术的最新进展,这些群体的内部运作已经完全展现在我们眼前。由于神经活动对实验参数(如刺激、决策或运动反应)的复杂且“混合”的依赖性,分析由此产生的大规模数据集具有挑战性。在这里,我们回顾了最近通过使用降维方法分析这些数据所获得的见解,这些方法可以“解混”这些依赖性。我们证明,从(精心选择的)实验参数到群体活动的映射在任务、脑区和动物之间似乎是典型且稳定的,并且通常可以通过线性方法识别。通过考虑何时以及为何降维和解混效果良好,我们认为群体编码的观点是,群体代表(解混的)潜在信号,对应于刺激、决策、运动反应等。这些潜在信号通过非线性映射被编码到神经群体活动中,并通过线性读取进行解码。我们解释了这样的方案如何促进信息在皮质区域之间的传播,我们还回顾了可以再现群体活动中潜在信号的编码和解码的神经网络架构。这些架构有望将单个神经元的生物物理学与神经群体的活动联系起来。