Unsupervised, piecewise linear decoding enables an accurate prediction of muscle activity in a multi-task brain computer interface.

Xuan Ma, Fabio Rizzoglio, Kevin L Bodkin, Lee E Miller
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Abstract

Objective.Creating an intracortical brain computer interface (iBCI) capable of seamless transitions between tasks and contexts would greatly enhance user experience. However, the nonlinearity in neural activity presents challenges to computing a global iBCI decoder. We aimed to develop a method that differs from a globally optimized decoder to address this issue.Approach.We devised an unsupervised approach that relies on the structure of a low-dimensional neural manifold to implement a piecewise linear decoder. We created a distinctive dataset in which monkeys performed a diverse set of tasks, some trained, others innate, while we recorded neural signals from the motor cortex (M1) and electromyographs (EMGs) from upper limb muscles. We used both linear and nonlinear dimensionality reduction techniques to discover neural manifolds and applied unsupervised algorithms to identify clusters within those spaces. Finally, we fit a linear decoder of EMG for each cluster. A specific decoder was activated corresponding to the cluster each new neural data point belonged to.Main results.We found clusters in the neural manifolds corresponding with the different tasks or task sub-phases. The performance of piecewise decoding improved as the number of clusters increased and plateaued gradually. With only two clusters it already outperformed a global linear decoder, and unexpectedly, it outperformed even a global recurrent neural network decoder with 10-12 clusters.Significance.This study introduced a computationally lightweight solution for creating iBCI decoders that can function effectively across a broad range of tasks. EMG decoding is particularly challenging, as muscle activity is used, under varying contexts, to control interaction forces and limb stiffness, as well as motion. The results suggest that a piecewise linear decoder can provide a good approximation to the nonlinearity between neural activity and motor outputs, a result of our increased understanding of the structure of neural manifolds in motor cortex.

无监督的分段线性解码可以在多任务脑机接口中准确预测肌肉活动。
目的:创建一个能够在任务和上下文之间无缝转换的脑机接口(iBCI)将极大地增强用户体验。然而,神经活动的非线性给全局iBCI解码器的计算带来了挑战。我们的目标是开发一种不同于全局优化解码器的方法来解决这个问题。方法:我们设计了一种无监督的方法,它依赖于低维神经流形的结构来实现分段线性解码器。我们创建了一个独特的数据集,其中猴子执行各种各样的任务,其中一些是经过训练的,另一些是天生的,同时我们记录了来自运动皮层(M1)和上肢肌肉的肌电图(emg)的神经信号。我们使用线性和非线性降维技术来发现神经流形,并应用无监督算法来识别这些空间中的聚类。最后,我们为每个聚类拟合一个线性肌电信号解码器。每个新的神经数据点所属的聚类对应一个特定的解码器被激活。主要结果:在神经流形中发现了与不同任务或任务子阶段相对应的簇。分段解码的性能随着簇数的增加而提高,并逐渐趋于平稳。仅用两个簇,它就已经超过了全局线性解码器,并且出乎意料的是,它甚至超过了具有10-12个簇的全局递归神经网络(RNN)解码器。意义:本研究介绍了一种计算轻量级的解决方案,用于创建可在广泛任务中有效运行的iBCI解码器。肌电图解码尤其具有挑战性,因为在不同的环境下,肌肉活动被用来控制相互作用力和肢体僵硬以及运动。结果表明,分段线性解码器可以很好地近似神经活动和运动输出之间的非线性,这是我们对运动皮层中神经流形结构的进一步了解的结果。
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