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首页> 外文期刊>Scientific reports. >Estimation of Bladder Pressure and Volume from the Neural Activity of Lumbosacral Dorsal Horn Using a Long-Short-Term-Memory-based Deep Neural Network
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Estimation of Bladder Pressure and Volume from the Neural Activity of Lumbosacral Dorsal Horn Using a Long-Short-Term-Memory-based Deep Neural Network

机译:基于长短期记忆基础神经网络估算腰骶背角神经活性的膀胱压力和体积

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摘要

In this paper, we propose a deep recurrent neural network (DRNN) for the estimation of bladder pressure and volume from neural activity recorded directly from spinal cord gray matter neurons. The model was based on the Long Short-Term Memory (LSTM) architecture, which has emerged as a general and effective model for capturing long-term temporal dependencies with good generalization performance. In this way, training the network with the data recorded from one rat could lead to estimating the bladder status of different rats. We combined modeling of spiking and local field potential (LFP) activity into a unified framework to estimate the pressure and volume of the bladder. Moreover, we investigated the effect of two-electrode recording on decoding performance. The results show that the two-electrode recordings significantly improve the decoding performance compared to single-electrode recordings. The proposed framework could estimate bladder pressure and volume with an average normalized root-mean-squared (NRMS) error of 14.9?±?4.8% and 19.7?±?4.7% and a correlation coefficient (CC) of 83.2?±?3.2% and 74.2?±?6.2%, respectively. This work represents a promising approach to the real-time estimation of bladder pressure/volume in the closed-loop control of bladder function using functional electrical stimulation.
机译:在本文中,我们提出了一种深度复发性神经网络(DRNN),用于估计膀胱压力和从直接从脊髓灰质神经元记录的神经活动的体积。该模型基于长期内记忆(LSTM)架构,它作为捕获具有良好泛化性能的长期时间依赖性的一般和有效的模型。以这种方式,利用从一只大鼠记录的数据训练网络可能导致估计不同大鼠的膀胱状态。我们将尖峰和局部场势(LFP)活动的建模综合到统一的框架中,以估计膀胱的压力和体积。此外,我们研究了两电极记录对解码性能的影响。结果表明,与单电极记录相比,双电极记录显着提高了解码性能。所提出的框架可以估算膀胱压力和体积,平均归一化的根本平均平衡(NRMS)误差为14.9±4.8%和19.7°?±4.7%和83.2?±3.2%的相关系数(Cc)。3.2%和74.2?±6.2%。该作品代表了使用功能电刺激的膀胱功能闭环控制中膀胱压力/体积的实时估计的有希望的方法。

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