Department of Psychological and Brain Sciences, Dartmouth College, Hanover, New Hampshire, United States of America.
PLoS Comput Biol. 2023 Dec 27;19(12):e1011763. doi: 10.1371/journal.pcbi.1011763. eCollection 2023 Dec.
The analysis of neurons that exhibit receptive fields dependent on an organism's spatial location, such as grid, place or boundary cells typically begins by mapping their activity in space using firing rate maps. However, mapping approaches are varied and depend on multiple tuning parameters that are usually chosen qualitatively by the experimenter and thus vary significantly across studies. Small changes in parameters such as these can impact results significantly, yet, to date a quantitative investigation of firing rate maps has not been attempted. Using simulated datasets, we examined how tuning parameters, recording duration and firing field size affect the accuracy of spatial maps generated using the most widely used approaches. For each approach we found a clear subset of parameters which yielded low-error firing rate maps and isolated the parameters yielding 1) the least error possible and 2) the Pareto-optimal parameter set which balanced error, computation time, place field detection accuracy and the extrapolation of missing values. Smoothed bivariate histograms and averaged shifted histograms were consistently associated with the fastest computation times while still providing accurate maps. Adaptive smoothing and binning approaches were found to compensate for low positional sampling the most effectively. Kernel smoothed density estimation also compensated for low sampling well and resulted in accurate maps, but it was also among the slowest methods tested. Overall, the bivariate histogram, coupled with spatial smoothing, is likely the most desirable method in the majority of cases.
分析那些表现出依赖于生物体空间位置的感受野的神经元,例如网格、位置或边界细胞,通常首先通过使用发放率图来映射它们在空间中的活动。然而,映射方法是多种多样的,并且取决于多个调谐参数,这些参数通常由实验者定性选择,因此在不同的研究中差异很大。这些参数的微小变化可能会对结果产生重大影响,但迄今为止,尚未尝试对发放率图进行定量研究。使用模拟数据集,我们研究了调谐参数、记录持续时间和发放场大小如何影响使用最广泛的方法生成的空间图的准确性。对于每种方法,我们都找到了一个明确的参数子集,这些参数产生了低误差的发放率图,并确定了产生 1)最小误差的参数和 2)平衡误差、计算时间、位置场检测准确性和缺失值外推的帕累托最优参数集的参数。平滑双变量直方图和平均移位直方图始终与最快的计算时间相关联,同时仍提供准确的地图。自适应平滑和分箱方法被发现最有效地补偿了低位置采样。核平滑密度估计也能很好地补偿低采样,并产生准确的地图,但它也是测试中最慢的方法之一。总的来说,在大多数情况下,双变量直方图与空间平滑相结合可能是最理想的方法。