Reducing power requirements for high-accuracy decoding in iBCIs.

Brianna M Karpowicz, Bareesh Bhaduri, Samuel R Nason-Tomaszewski, Brandon G Jacques, Yahia H Ali, Robert D Flint, Payton H Bechefsky, Leigh R Hochberg, Nicholas AuYong, Marc W Slutzky, Chethan Pandarinath
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Abstract

Objective.Current intracortical brain-computer interfaces (iBCIs) rely predominantly on threshold crossings ('spikes') for decoding neural activity into a control signal for an external device. Spiking data can yield high accuracy online control during complex behaviors; however, its dependence on high-sampling-rate data collection can pose challenges. An alternative signal for iBCI decoding is the local field potential (LFP), a continuous-valued signal that can be acquired simultaneously with spiking activity. However, LFPs are seldom used alone for online iBCI control as their decoding performance has yet to achieve parity with spikes.Approach.Here, we present a strategy to improve the performance of LFP-based decoders by first training a neural dynamics model to use LFPs to reconstruct the firing rates underlying spiking data, and then decoding from the estimated rates. We test these models on previously-collected macaque data during center-out and random-target reaching tasks as well as data collected from a human iBCI participant during attempted speech.Main results.In all cases, training models from LFPs enables firing rate reconstruction with accuracy comparable to spiking-based dynamics models. In addition, LFP-based dynamics models enable decoding performance exceeding that of LFPs alone and approaching that of spiking-based models. In all applications except speech, LFP-based dynamics models also facilitate decoding accuracy exceeding that of direct decoding from spikes.Significance.Because LFP-based dynamics models operate on lower bandwidth and with lower sampling rate than spiking models, our findings indicate that iBCI devices can be designed to operate with lower power requirements than devices dependent on recorded spiking activity, without sacrificing high-accuracy decoding.

降低 iBCI 中高精度解码的功耗要求。
目的:目前的皮层内脑机接口(iBCI)主要依靠阈值交叉("尖峰")将神经活动解码为外部设备的控制信号。尖峰数据可以在复杂行为中产生高精度的在线控制;然而,它对高采样率数据收集的依赖会带来挑战。用于 iBCI 解码的另一种信号是局部场电位(LFP),这是一种连续值信号,可与尖峰活动同时采集。然而,LFP 很少单独用于在线 iBCI 控制,因为其解码性能尚未达到与尖峰信号相当的水平:在此,我们提出了一种提高基于 LFP 的解码器性能的策略,首先训练神经动力学模型,利用 LFP 重建尖峰数据的发射率,然后根据估计的发射率进行解码。我们在以前收集的猕猴在中心向外和随机目标到达任务中的数据以及人类 iBCI 参与者在尝试说话时收集的数据上测试了这些模型:在所有情况下,通过 LFPs 训练模型可以重建发射率,其准确性可与基于尖峰脉冲的动力学模型相媲美。此外,基于 LFP 的动力学模型的解码性能超过了单独使用 LFP 的解码性能,接近基于尖峰模型的解码性能。在除语音外的所有应用中,基于 LFP 的动力学模型也有助于提高解码精度,超过直接从尖峰解码的精度:意义:与尖峰模型相比,基于 LFP 的动态模型的带宽更低,采样率也更低,因此我们的研究结果表明,与依赖尖峰活动记录的设备相比,iBCI 设备的运行功耗要求更低,而不会影响高精度解码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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