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Evaluation of decoding algorithms for estimating bladder pressure from dorsal root ganglia neural recordings

机译:从背根神经节神经记录估计膀胱压力的解码算法评估

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摘要

A closed-loop device for bladder control may offer greater clinical benefit compared to current open-loop stimulation devices. Previous studies have demonstrated the feasibility of using single-unit recordings from sacral-level dorsal root ganglia (DRG) for decoding bladder pressure. Automatic online sorting, to differentiate single units, can be computationally heavy and unreliable, in contrast to simple multi-unit thresholded activity. In this study, the feasibility of using DRG multi-unit recordings to decode bladder pressure was examined. A broad range of feature selection methods and three algorithms (multivariate linear regression, basic Kalman filter, and a nonlinear autoregressive moving average model) were used to create training models and provide validation fits to bladder pressure for data collected in seven anesthetized feline experiments. A non-linear autoregressive moving average (NARMA) model with regularization provided the most accurate bladder pressure estimate, based on normalized root-mean-squared error, NRMSE, (17 ± 7%). A basic Kalman filter yielded the highest similarity to the bladder pressure with an average correlation coefficient, CC, of 0.81 ± 0.13. The best algorithm set (based on NRMSE) was further evaluated on data obtained from a chronic feline experiment. Testing results yielded a NRMSE and CC of 10.7% and 0.61, respectively from a model that was trained on data recorded two weeks prior. From offline analysis, implementation of NARMA in a closed-loop scheme for detecting bladder contractions would provide a robust control signal. Ultimate integration of closed-loop algorithms in bladder neuroprostheses will require evaluations of parameter and signal stability over time.
机译:与当前的开环刺激装置相比,用于膀胱控制的闭环装置可以提供更大的临床益处。先前的研究表明,使用from水平背根神经节(DRG)的单个记录来解码膀胱压力是可行的。与简单的多单元阈值活动相比,用于区分单个单元的自动在线排序可能在计算上繁琐且不可靠。在这项研究中,检查了使用DRG多单位记录解码膀胱压力的可行性。各种各样的特征选择方法和三种算法(多元线性回归,基本卡尔曼滤波器和非线性自回归移动平均模型)被用于创建训练模型,并为七个麻醉猫科动物实验中收集的数据提供与膀胱压力的验证拟合。基于归一化均方根误差NRMSE(17±7%)的正则化非线性自回归移动平均(NARMA)模型可提供最准确的膀胱压力估算值。基本的卡尔曼滤波器与膀胱压力的相似性最高,平均相关系数CC为0.81±0.13。最佳算法集(基于NRMSE)是根据从慢性猫科动物实验获得的数据进一步评估的。根据对两周前记录的数据进行训练的模型,测试结果得出的NRMSE和CC分别为10.7%和0.61。从离线分析来看,在用于检测膀胱收缩的闭环方案中实施NARMA将提供可靠的控制信号。闭环算法在膀胱神经假体中的最终集成将需要评估随时间变化的参数和信号稳定性。

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