Applied Mathematics and Scientific Computation Program, University of Maryland-College Park, College Park, Maryland, United States of America.
PLoS One. 2010 Mar 2;5(3):e9493. doi: 10.1371/journal.pone.0009493.
The field of neural prosthetics aims to develop prosthetic limbs with a brain-computer interface (BCI) through which neural activity is decoded into movements. A natural extension of current research is the incorporation of neural activity from multiple modalities to more accurately estimate the user's intent. The challenge remains how to appropriately combine this information in real-time for a neural prosthetic device.
METHODOLOGY/PRINCIPAL FINDINGS: Here we propose a framework based on decision fusion, i.e., fusing predictions from several single-modality decoders to produce a more accurate device state estimate. We examine two algorithms for continuous variable decision fusion: the Kalman filter and artificial neural networks (ANNs). Using simulated cortical neural spike signals, we implemented several successful individual neural decoding algorithms, and tested the capabilities of each fusion method in the context of decoding 2-dimensional endpoint trajectories of a neural prosthetic arm. Extensively testing these methods on random trajectories, we find that on average both the Kalman filter and ANNs successfully fuse the individual decoder estimates to produce more accurate predictions.
Our results reveal that a fusion-based approach has the potential to improve prediction accuracy over individual decoders of varying quality, and we hope that this work will encourage multimodal neural prosthetics experiments in the future.
神经假肢领域旨在通过脑机接口(BCI)开发假肢,通过该接口可以将神经活动解码为运动。当前研究的自然延伸是结合来自多个模态的神经活动,以更准确地估计用户的意图。挑战仍然是如何在实时为神经假肢设备适当地组合这些信息。
方法/主要发现:在这里,我们提出了一个基于决策融合的框架,即融合来自几个单模态解码器的预测,以产生更准确的设备状态估计。我们研究了两种连续变量决策融合算法:卡尔曼滤波器和人工神经网络(ANNs)。使用模拟皮质神经尖峰信号,我们实现了几种成功的单个神经解码算法,并在解码神经假肢臂的二维端点轨迹的背景下测试了每种融合方法的能力。在随机轨迹上广泛测试这些方法,我们发现平均而言,卡尔曼滤波器和人工神经网络都成功地融合了各个解码器的估计值,从而产生了更准确的预测。
我们的结果表明,基于融合的方法有可能提高预测准确性,优于不同质量的单个解码器,我们希望这项工作将鼓励未来进行多模态神经假肢实验。