Ren Pengyu, Li Bowen, Dong Shiyao, Chen Lin, Zhang Yuelin
Department of Neurosurgery, Xi'an Jiaotong University School of Medicine, Xi'an, People's Republic of China.
Departments of Otolaryngology-Head & Neck Surgery, Johns Hopkins University School of Medicine, Baltimore, Maryland, United States of America.
PLoS One. 2018 Jan 5;13(1):e0190596. doi: 10.1371/journal.pone.0190596. eCollection 2018.
Although many mathematical methods were used to analyze the neural activity under sinusoidal stimulation within linear response range in vestibular system, the reliabilities of these methods are still not reported, especially in nonlinear response range. Here we chose nonlinear least-squares algorithm (NLSA) with sinusoidal model to analyze the neural response of semicircular canal neurons (SCNs) during sinusoidal rotational stimulation (SRS) over a nonlinear response range. Our aim was to acquire a reliable mathematical method for data analysis under SRS in vestibular system. Our data indicated that the reliability of this method in an entire SCNs population was quite satisfactory. However, the reliability was strongly negatively depended on the neural discharge regularity. In addition, stimulation parameters were the vital impact factors influencing the reliability. The frequency had a significant negative effect but the amplitude had a conspicuous positive effect on the reliability. Thus, NLSA with sinusoidal model resulted a reliable mathematical tool for data analysis of neural response activity under SRS in vestibular system and more suitable for those under the stimulation with low frequency but high amplitude, suggesting that this method can be used in nonlinear response range. This method broke out of the restriction of neural activity analysis under nonlinear response range and provided a solid foundation for future study in nonlinear response range in vestibular system.
尽管许多数学方法被用于分析前庭系统线性响应范围内正弦刺激下的神经活动,但这些方法的可靠性仍未得到报道,尤其是在非线性响应范围内。在此,我们选择具有正弦模型的非线性最小二乘法(NLSA)来分析半规管神经元(SCNs)在非线性响应范围内正弦旋转刺激(SRS)期间的神经反应。我们的目的是获得一种可靠的数学方法,用于前庭系统中SRS下的数据分析。我们的数据表明,该方法在整个SCNs群体中的可靠性相当令人满意。然而,可靠性强烈地负向依赖于神经放电的规律性。此外,刺激参数是影响可靠性的关键因素。频率对可靠性有显著的负面影响,而幅度对可靠性有明显的正向影响。因此,具有正弦模型的NLSA成为前庭系统中SRS下神经反应活动数据分析的可靠数学工具,更适用于低频高幅刺激下的情况,这表明该方法可用于非线性响应范围。该方法突破了非线性响应范围内神经活动分析的限制,为前庭系统非线性响应范围的未来研究奠定了坚实基础。