Li Jie, Li Zheng
State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal UniversityBeijing, China.
IDG/McGovern Institute for Brain Research, Beijing Normal UniversityBeijing, China.
Front Neurosci. 2017 Jul 18;11:406. doi: 10.3389/fnins.2017.00406. eCollection 2017.
Traditionally, the key step before decoding motor intentions from cortical recordings is spike sorting, the process of identifying which neuron was responsible for an action potential. Recently, researchers have started investigating approaches to decoding which omit the spike sorting step, by directly using information about action potentials' waveform shapes in the decoder, though this approach is not yet widespread. Particularly, one recent approach involves computing the moments of waveform features and using these moment values as inputs to decoders. This computationally inexpensive approach was shown to be comparable in accuracy to traditional spike sorting. In this study, we use offline data recorded from two Rhesus monkeys to further validate this approach. We also modify this approach by using sums of exponentiated features of spikes, rather than moments. Our results show that using waveform feature sums facilitates significantly higher hand movement reconstruction accuracy than using waveform feature moments, though the magnitudes of differences are small. We find that using the sums of one simple feature, the spike amplitude, allows better offline decoding accuracy than traditional spike sorting by expert (correlation of 0.767, 0.785 vs. 0.744, 0.738, respectively, for two monkeys, average 16% reduction in mean-squared-error), as well as unsorted threshold crossings (0.746, 0.776; average 9% reduction in mean-squared-error). Our results suggest that the sums-of-features framework has potential as an alternative to both spike sorting and using unsorted threshold crossings, if developed further. Also, we present data comparing sorted vs. unsorted spike counts in terms of offline decoding accuracy. Traditional sorted spike counts do not include waveforms that do not match any template ("hash"), but threshold crossing counts do include this hash. On our data and in previous work, hash contributes to decoding accuracy. Thus, using the comparison between sorted spike counts and threshold crossing counts to evaluate the benefit of sorting is confounded by the presence of hash. We find that when the comparison is controlled for hash, performing sorting is better than not. These results offer a new perspective on the question of to sort or not to sort.
传统上,从皮层记录中解码运动意图之前的关键步骤是尖峰分类,即识别哪个神经元对动作电位负责的过程。最近,研究人员开始研究省略尖峰分类步骤的解码方法,通过在解码器中直接使用有关动作电位波形形状的信息,不过这种方法尚未广泛应用。特别是,最近的一种方法涉及计算波形特征的矩,并将这些矩值用作解码器的输入。这种计算成本低的方法在准确性上被证明与传统的尖峰分类相当。在本研究中,我们使用从两只恒河猴记录的离线数据来进一步验证这种方法。我们还通过使用尖峰的指数特征之和而不是矩来修改这种方法。我们的结果表明,使用波形特征之和比使用波形特征矩能显著提高手部运动重建的准确性,尽管差异幅度较小。我们发现,使用一个简单特征(尖峰幅度)的和比专家进行的传统尖峰分类能实现更好的离线解码准确性(两只猴子的相关性分别为0.767、0.785,而传统尖峰分类的相关性为0.744、0.738,平均均方误差降低16%),以及比未分类的阈值穿越(0.746、0.776;平均均方误差降低9%)更好。我们的结果表明,如果进一步发展,特征和框架有可能成为尖峰分类和使用未分类阈值穿越的替代方法。此外,我们展示了在离线解码准确性方面比较分类与未分类尖峰计数的数据。传统的分类尖峰计数不包括与任何模板不匹配的波形(“哈希”),但阈值穿越计数包括这个哈希。在我们的数据以及之前的工作中,哈希有助于解码准确性。因此,使用分类尖峰计数和阈值穿越计数之间的比较来评估分类的益处会因哈希的存在而混淆。我们发现,当对哈希进行控制时,进行分类比不分类更好。这些结果为是否进行分类的问题提供了新的视角。