Khamis Heba, Birznieks Ingvars, Redmond Stephen J
Graduate School of Biomedical Engineering, University of New South Wales Australia, Sydney, Australia; Neuroscience Research Australia, Sydney, Australia; School of Science and Health, University of Western Sydney, Penrith, New South Wales, Australia
Neuroscience Research Australia, Sydney, Australia; School of Medical Sciences, Medicine, University of New South Wales Australia, Sydney, Australia; and School of Science and Health, University of Western Sydney, Penrith, New South Wales, Australia.
J Neurophysiol. 2015 Jul;114(1):474-84. doi: 10.1152/jn.00040.2015. Epub 2015 May 6.
Dexterous manipulation is not possible without sensory information about object properties and manipulative forces. Fundamental neuroscience has been unable to demonstrate how information about multiple stimulus parameters may be continuously extracted, concurrently, from a population of tactile afferents. This is the first study to demonstrate this, using spike trains recorded from tactile afferents innervating the monkey fingerpad. A multiple-regression model, requiring no a priori knowledge of stimulus-onset times or stimulus combination, was developed to obtain continuous estimates of instantaneous force and torque. The stimuli consisted of a normal-force ramp (to a plateau of 1.8, 2.2, or 2.5 N), on top of which -3.5, -2.0, 0, +2.0, or +3.5 mNm torque was applied about the normal to the skin surface. The model inputs were sliding windows of binned spike counts recorded from each afferent. Models were trained and tested by 15-fold cross-validation to estimate instantaneous normal force and torque over the entire stimulation period. With the use of the spike trains from 58 slow-adapting type I and 25 fast-adapting type I afferents, the instantaneous normal force and torque could be estimated with small error. This study demonstrated that instantaneous force and torque parameters could be reliably extracted from a small number of tactile afferent responses in a real-time fashion with stimulus combinations that the model had not been exposed to during training. Analysis of the model weights may reveal how interactions between stimulus parameters could be disentangled for complex population responses and could be used to test neurophysiologically relevant hypotheses about encoding mechanisms.
没有关于物体属性和操纵力的感官信息,就不可能进行灵巧的操作。基础神经科学一直无法证明如何从一群触觉传入神经中同时连续提取关于多个刺激参数的信息。这是第一项利用从支配猴子指尖的触觉传入神经记录的尖峰序列来证明这一点的研究。我们开发了一种多元回归模型,该模型不需要关于刺激开始时间或刺激组合的先验知识,以获得瞬时力和扭矩的连续估计值。刺激包括一个法向力斜坡(达到1.8、2.2或2.5 N的平台值),在其之上,围绕皮肤表面法线施加-3.5、-2.0、0、+2.0或+3.5 mNm的扭矩。模型输入是从每个传入神经记录的分箱尖峰计数的滑动窗口。通过15折交叉验证对模型进行训练和测试,以估计整个刺激期的瞬时法向力和扭矩。利用来自58条慢适应I型和25条快适应I型传入神经的尖峰序列,可以以较小的误差估计瞬时法向力和扭矩。这项研究表明,通过模型在训练期间未接触过的刺激组合,可以从少量触觉传入神经反应中实时可靠地提取瞬时力和扭矩参数。对模型权重的分析可能揭示刺激参数之间的相互作用如何能够从复杂的群体反应中解开,并且可用于测试关于编码机制的神经生理学相关假设。