论文标题
用于恢复大脑功能的神经协调员:抓握皮质模型的结果
Neural Co-Processors for Restoring Brain Function: Results from a Cortical Model of Grasping
论文作者
论文摘要
目的:设计闭环大脑计算机界面的主要挑战是找到最佳的刺激模式,这是不同受试者和目标的持续神经活动的函数。方法:为了实现目标定向的闭环神经刺激,我们提出了使用人工神经网络和深度学习来学习最佳闭环刺激政策,塑造神经活动和桥接受伤的神经回路进行靶向修复和康复。当生物电路本身适应刺激时,协会制度会适应刺激政策,从而实现了一种脑部设备共同适应的形式。在这里,我们使用仿真为神经处理器的未来体内测试奠定了基础。我们利用一种皮质模型的抓地力模型,我们应用了各种形式的模拟病变,使我们能够开发关键的学习算法并研究对非平稳性的适应性。主要结果:我们的模拟表明神经协调员使用监督学习方法学习刺激政策的能力,并随着基础大脑和传感器的变化而适应该政策。我们的协调员成功地与模拟的大脑合作,在应用各种病变后完成了触及和抓紧任务,从而实现了健康功能的恢复。意义:我们的结果为适应性活动依赖性闭环神经刺激的协同处理提供了首次概念验证证明,以优化用于康复目标。尽管模拟和应用之间存在差距,但我们的结果提供了有关如何为各种神经康复和神经假体应用学习复杂的自适应刺激政策如何开发的辅助处理者的见解。
Objective: A major challenge in designing closed-loop brain-computer interfaces is finding optimal stimulation patterns as a function of ongoing neural activity for different subjects and objectives. Approach: To achieve goal-directed closed-loop neurostimulation, we propose "neural co-processors" which use artificial neural networks and deep learning to learn optimal closed-loop stimulation policies, shaping neural activity and bridging injured neural circuits for targeted repair and rehabilitation. The co-processor adapts the stimulation policy as the biological circuit itself adapts to the stimulation, achieving a form of brain-device co-adaptation. Here we use simulations to lay the groundwork for future in vivo tests of neural co-processors. We leverage a cortical model of grasping, to which we applied various forms of simulated lesions, allowing us to develop the critical learning algorithms and study adaptations to non-stationarity. Main results: Our simulations show the ability of a neural co-processor to learn a stimulation policy using a supervised learning approach, and to adapt that policy as the underlying brain and sensors change. Our co-processor successfully co-adapted with the simulated brain to accomplish the reach-and-grasp task after a variety of lesions were applied, achieving recovery towards healthy function. Significance: Our results provide the first proof-of-concept demonstration of a co-processor for adaptive activity-dependent closed-loop neurostimulation, optimizing for a rehabilitation goal. While a gap remains between simulations and applications, our results provide insights on how co-processors may be developed for learning complex adaptive stimulation policies for a variety of neural rehabilitation and neuroprosthetic applications.