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Big data challenges in decoding cortical activity in a human with quadriplegia to inform a brain computer interface

机译:解码四肢瘫痪患者的皮层活动以告知大脑计算机接口的大数据挑战

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Recent advances in Brain Computer Interfaces (BCIs) have created hope that one day paralyzed patients will be able to regain control of their paralyzed limbs. As part of an ongoing clinical study, we have implanted a 96-electrode Utah array in the motor cortex of a paralyzed human. The array generates almost 3 million data points from the brain every second. This presents several big data challenges towards developing algorithms that should not only process the data in real-time (for the BCI to be responsive) but are also robust to temporal variations and non-stationarities in the sensor data. We demonstrate an algorithmic approach to analyze such data and present a novel method to evaluate such algorithms. We present our methodology with examples of decoding human brain data in real-time to inform a BCI.
机译:脑计算机接口(BCI)的最新进展已使人们希望,有一天瘫痪的患者将能够重新控制其瘫痪的肢体。作为正在进行的临床研究的一部分,我们在瘫痪的人的运动皮层中植入了96电极的犹他州阵列。该阵列每秒从大脑生成近300万个数据点。这给开发算法带来了一些大数据挑战,这些算法不仅应实时处理数据(以使BCI响应),而且还应对传感器数据的时间变化和非平稳性具有鲁棒性。我们演示了一种分析此类数据的算法方法,并提出了一种评估此类算法的新颖方法。我们以实时解码人脑数据以告知BCI的示例为例,介绍了我们的方法。

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