Tyler Christopher W, Liang Michael, Zhou Zhangziyi, Likova Lora T
Smith-Kettlewell Brain Imaging Center, Smith-Kettlewell Eye Research Institute, 2318 Fillmore Street, San Francisco CA 94115, USA; Optometry and Vision Sciences, City-St Georges, Northampton Square, University of London, London EC1, UK.
Smith-Kettlewell Brain Imaging Center, Smith-Kettlewell Eye Research Institute, 2318 Fillmore Street, San Francisco CA 94115, USA; Optometry and Vision Sciences, City-St Georges, Northampton Square, University of London, London EC1, UK.
Vision Res. 2025 Oct;235:108661. doi: 10.1016/j.visres.2025.108661. Epub 2025 Jul 31.
The electroretinogram (ERG) is a mass electrical response from all electrically activated components of the retina, recorded with the goal of identifying the individual contributions of relevant components for the purposes of electrodiagnosis of eye diseases and other systemic medical conditions. The primary hypothesis being tested was that the ERGs across the spectrum in the mesopic range of intensities could be fully accounted with a duplex (two-component) model of linear combinations of rod- and cone-pathway responses. Full-field square-wave ERGs were measured with the RETeval device at 2 Hz for 7 spectral bands: red, yellow, green, cyan, blue, magenta, and white, in increasing steps of 0.5 log units from 3 to 300 phot cd/m, totaling 35 conditions for each eye of three neurotypical participants. A novel three-stage process termed Native Components Analysis (NCA), designed to overcome the distributive and orthogonality disadvantages of conventional linear component analysis, was implemented to identify the components contributing to the On-response of the overall ERG. The first step was select the ERG waveforms representative of each region of the response matrix. They were thus designated in terms of a) high and low intensities and b) the narrowband red, green and blue spectral regions. These 6 waveforms were taken as the native component candidates for an optimized fit to the full dataset. The second step was to determine the fit of these ERG components so-defined to the overall set of recorded ERG On-responses from each eye - a 140-parameter fit to the 10,500-parameter dataset. This approach was then compared with the standard approach of orthogonal Principal Components Analysis (PCA) to provide comparable compression. Over 6 datasets from the two eyes of three participants, the fit of the first 4 factors of the novel NCA approach accounted for 95.0 % of the overall variance in the data, compared with 97.5 % for the standard PCA approach. Adding components beyond the best 4 provided no significant improvement in the fits. For the individual datasets, the fit of the PCA accounted for 95.4 - 99.1 % of the variance, while the fit of the representative ERGs of the NCA approach accounted for 89.6-98.1 % of the variance across the individual datasets, validating the strategy of using representative ERG responses as the analytic components. The NCA fits strongly disconfirm the duplex rod/cone model that the ERG is a combination of just two temporal components, showing that as many as four separate components are required to account for the variance in the 35 waveforms in the participant group, with consistent structure across the spectral datasets. These results validate the utility of the novel Native Components Analysis approach to functional response analysis of retinal signals.
视网膜电图(ERG)是视网膜所有电激活成分产生的群体电反应,记录该反应的目的是为了确定相关成分的个体贡献,以用于眼部疾病和其他全身性疾病的电诊断。正在检验的主要假设是,在中等强度范围内的整个光谱上的ERG可以通过视杆和视锥通路反应的线性组合的双成分模型来充分解释。使用RETeval设备以2Hz的频率对7个光谱带(红色、黄色、绿色、青色、蓝色、品红色和白色)的全视野方波ERG进行测量,强度从3到300 phot cd/m以0.5对数单位的递增步长变化,三名神经典型参与者的每只眼睛共有35种情况。实施了一种名为原生成分分析(NCA)的新颖三阶段过程,旨在克服传统线性成分分析的分布和正交性缺点,以识别对总体ERG的开反应有贡献的成分。第一步是选择代表反应矩阵每个区域的ERG波形。因此,根据a)高强度和低强度以及b)窄带红色、绿色和蓝色光谱区域对它们进行了指定。这6个波形被视为原生成分候选者,用于对完整数据集进行优化拟合。第二步是确定如此定义的这些ERG成分对每只眼睛记录的总体ERG开反应集的拟合度——对10500参数数据集进行140参数拟合。然后将该方法与正交主成分分析(PCA)的标准方法进行比较,以提供可比的压缩效果。在来自三名参与者双眼的6个数据集中,新颖的NCA方法的前4个因子的拟合度占数据总体方差的95.0%,而标准PCA方法为97.5%。添加超过最佳的4个成分后,拟合度没有显著改善。对于单个数据集,PCA的拟合度占方差的95.4 - 99.1%,而NCA方法的代表性ERG的拟合度占单个数据集方差的89.6 - 98.1%,验证了使用代表性ERG反应作为分析成分的策略。NCA拟合强烈否定了ERG只是两个时间成分组合的双视杆/视锥模型,表明需要多达四个单独的成分来解释参与者组中35个波形的方差,并且在光谱数据集中具有一致的结构。这些结果验证了新颖的原生成分分析方法在视网膜信号功能反应分析中的实用性。