跟踪单个单位在慢性,大规模,神经记录的脑机接口应用。

Frontiers in neuroengineering Pub Date : 2014-07-08 eCollection Date: 2014-01-01 DOI:10.3389/fneng.2014.00023
Ahmed Eleryan, Mukta Vaidya, Joshua Southerland, Islam S Badreldin, Karthikeyan Balasubramanian, Andrew H Fagg, Nicholas Hatsopoulos, Karim Oweiss
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引用次数: 18

摘要

在神经生物学系统的群体编码研究中,跟踪单元身份对于评估长时间内神经元成分编码特性的可能变化至关重要。在皮质内控制的脑机接口(bmi)中,确保单元稳定性对于运动变量的可靠神经解码更为关键。在长期使用过程中,内在尖峰模式、调谐特性和单单元识别的可变性是维持这种稳定性的主要挑战,需要由经验丰富的操作员在BMI会话中频繁地每天校准神经解码器。在这里,我们报告了一种单元稳定性跟踪算法,该算法有效且自主地识别假定的单单元,这些单单元在每个会话开始时使用相对较短的持续记录间隔,在许多会话中保持稳定。该算法首先建立了一个数据库,从单位的平均峰值波形和多天记录的放电模式中提取特征。然后,它使用这些特征来决定某一天同一频道上出现的峰值是否属于另一天记录的同一单元。我们评估了算法在使用人类专家判断训练的不同特征选择和分类器时的整体性能,并将其量化为准确性和执行时间的函数。总的来说,我们发现随着长期植入恒河猴数据量的增加,准确率和执行时间之间存在权衡,在约90%的分类准确率下,每个通道平均处理时间为12 s。此外,77%的推测结果与人类专家追踪的结果相符。这些结果表明,在几个月的记录中,可以高精度地执行自动单元跟踪,并用于简化BMI会话期间的校准阶段。我们的研究结果可能有助于研究学习过程中的种群编码,提高BMI系统的可靠性并加速其在临床应用中的部署。
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Tracking single units in chronic, large scale, neural recordings for brain machine interface applications.

In the study of population coding in neurobiological systems, tracking unit identity may be critical to assess possible changes in the coding properties of neuronal constituents over prolonged periods of time. Ensuring unit stability is even more critical for reliable neural decoding of motor variables in intra-cortically controlled brain-machine interfaces (BMIs). Variability in intrinsic spike patterns, tuning characteristics, and single-unit identity over chronic use is a major challenge to maintaining this stability, requiring frequent daily calibration of neural decoders in BMI sessions by an experienced human operator. Here, we report on a unit-stability tracking algorithm that efficiently and autonomously identifies putative single-units that are stable across many sessions using a relatively short duration recording interval at the start of each session. The algorithm first builds a database of features extracted from units' average spike waveforms and firing patterns across many days of recording. It then uses these features to decide whether spike occurrences on the same channel on one day belong to the same unit recorded on another day or not. We assessed the overall performance of the algorithm for different choices of features and classifiers trained using human expert judgment, and quantified it as a function of accuracy and execution time. Overall, we found a trade-off between accuracy and execution time with increasing data volumes from chronically implanted rhesus macaques, with an average of 12 s processing time per channel at ~90% classification accuracy. Furthermore, 77% of the resulting putative single-units matched those tracked by human experts. These results demonstrate that over the span of a few months of recordings, automated unit tracking can be performed with high accuracy and used to streamline the calibration phase during BMI sessions. Our findings may be useful to the study of population coding during learning, and to improve the reliability of BMI systems and accelerate their deployment in clinical applications.

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