The application of a real-time rapid-prototyping environment for the behavioral rehabilitation of a lost brain function in rats

R. Prueckl, Engelbert Grünbacher, R. Ortner, A. Taub, R. Hogri, A. Magal, Eyal Segalis, M. Zreik, N. Nossenson, Ivan Herreros-Alonso, Andrea Giovannucci, R. O. Almog, S. Bamford, Mira Marcus-Kalish, Y. Shacham, P. Verschure, H. Messer, M. Mintz, J. Scharinger, A. Silmon, C. Guger
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引用次数: 1

Abstract

In this paper we propose a Rapid Prototyping Environment (RPE) for real-time biosignal analysis including ECG, EEG, ECoG and EMG of humans and animals requiring a very precise time resolution. Based on the previous RPE which was mainly designed for developing Brain Computer Interfaces (BCI), the present solution offers tools for data preprocessing, analysis and visualization even in the case of high sampling rates and furthermore tools for precise cognitive stimulation. One application of the system, the analysis of multi-unit activity measured from the brain of a rat is presented to prove the efficiency of the proposed environment. The experimental setup was used to design and implement a biomimetic, biohybrid model for demonstrating the recovery of a learning function lost with age. Throughout the paper we discuss the components of the setup, the software structure and the online visualization. At the end we present results of a real-time experiment in which the model of the brain learned to react to the acquired signals.
实时快速原型环境在大鼠失脑功能行为康复中的应用
在本文中,我们提出了一种快速原型环境(RPE),用于实时生物信号分析,包括人类和动物的ECG, EEG, ECoG和EMG,需要非常精确的时间分辨率。基于先前主要用于开发脑机接口(BCI)的RPE,本解决方案提供了即使在高采样率的情况下也能进行数据预处理、分析和可视化的工具,并进一步提供了精确认知刺激的工具。该系统的一个应用,分析了从大鼠大脑中测量的多单元活动,以证明所提出的环境的效率。该实验装置用于设计和实现一个仿生、生物杂交模型,以展示随着年龄增长而丧失的学习功能的恢复。本文讨论了系统的组成、软件结构和在线可视化。最后,我们展示了一个实时实验的结果,在这个实验中,大脑模型学会了对获得的信号做出反应。
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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