Institut de la Vision, Sorbonne Université, INSERM, CNRS, Paris, France.
J Neurophysiol. 2023 Sep 1;130(3):706-718. doi: 10.1152/jn.00243.2022. Epub 2023 Aug 16.
Classifying neurons in different types is still an open challenge. In the retina, recent works have taken advantage of the ability to record from a large number of cells to classify ganglion cells into different types based on functional information. Although the first attempts in this direction used the receptive field properties of each cell to classify them, more recent approaches have proposed to cluster ganglion cells directly based on their response to stimuli. These two approaches have not been compared directly. Here, we recorded the responses of a large number of ganglion cells and compared two methods for classifying them into functional groups, one based on the receptive field properties, and the other one using directly their responses to stimuli with various temporal frequencies. We show that the response-based approach allows separation of more types than the receptive field-based method, leading to a better classification. This better granularity is due to the fact that the response-based method takes into account not only the linear part of ganglion cell function but also some of the nonlinearities. A careful characterization of nonlinear processing is thus key to allowing functional classification of sensory neurons. In the retina, ganglion cells can be classified based on their response to visual stimuli. Although some methods are based on the modeling of receptive fields, others rely on responses to characteristic stimuli. We compared these two classes of methods and show that the latter provides a higher discrimination performance. We also show that this gain arises from the ability to account for the nonlinear behavior of neurons.
对不同类型的神经元进行分类仍然是一个悬而未决的问题。在视网膜中,最近的研究利用能够对大量细胞进行记录的能力,根据功能信息将神经节细胞分为不同的类型。尽管在这一方向的最初尝试中使用了每个细胞的感受野特性来对它们进行分类,但最近的方法已经提出直接根据它们对刺激的反应来对神经节细胞进行聚类。这两种方法尚未直接进行比较。在这里,我们记录了大量神经节细胞的反应,并比较了两种将它们分类为功能组的方法,一种基于感受野特性,另一种直接基于它们对各种时间频率刺激的反应。我们表明,基于反应的方法比基于感受野的方法可以分离出更多的类型,从而实现更好的分类。这种更好的粒度是由于基于反应的方法不仅考虑了神经节细胞功能的线性部分,还考虑了一些非线性部分。因此,对非线性处理进行仔细的特征描述是实现感觉神经元功能分类的关键。在视网膜中,可以根据对视觉刺激的反应对神经节细胞进行分类。尽管有些方法基于感受野的建模,但其他方法则依赖于对特征刺激的反应。我们比较了这两类方法,表明后者提供了更高的判别性能。我们还表明,这种增益源于对神经元非线性行为的解释能力。