Ribeiro Mafalda, Koh Ryan G L, Donnelly Tom, Lutteroth Christof, Proulx Michael J, Rocha Paulo R F, Metcalfe Benjamin
Annu Int Conf IEEE Eng Med Biol Soc. 2023 Jul;2023:1-4. doi: 10.1109/EMBC40787.2023.10340443.
Neural interfaces that electrically stimulate the peripheral nervous system have been shown to successfully improve symptom management for several conditions, such as epilepsy and depression. A crucial part for closing the loop and improving the efficacy of implantable neuromodulation devices is the efficient extraction of meaningful information from nerve recordings, which can have a low Signal-to-Noise ratio (SNR) and non-stationary noise. In recent years, machine learning (ML) models have shown outstanding performance in regression and classification problems, but it is often unclear how to translate and assess these for novel tasks in biomedical engineering. This paper aims to adapt existing ML algorithms to carry out unsupervised denoising of neural recordings instead. This is achieved by applying bandpass filtering and two novel ML algorithms to in-vivo spontaneous, low-SNR vagus nerve recordings. The performance of each approach is compared using the task of extracting respiratory afferent activity and validated using cross-correlation, MSE, and accuracy in terms of extracting the true respiratory rate. A variational autoencoder (VAE) model in particular produces results that show better correlation with respiratory activity compared to bandpass filtering, highlighting that these models have the potential to preserve relevant features in complex neural recordings.
已证明,电刺激外周神经系统的神经接口能够成功改善多种病症(如癫痫和抑郁症)的症状管理。对于闭环操作和提高可植入神经调节设备的功效而言,一个关键部分是从神经记录中有效提取有意义的信息,而这些记录可能具有低信噪比(SNR)和非平稳噪声。近年来,机器学习(ML)模型在回归和分类问题中表现出色,但对于生物医学工程中的新任务,通常不清楚如何转换和评估这些模型。本文旨在调整现有的ML算法,转而对神经记录进行无监督去噪。这是通过将带通滤波和两种新颖的ML算法应用于体内自发的、低SNR迷走神经记录来实现的。使用提取呼吸传入活动的任务比较每种方法的性能,并使用互相关、均方误差以及提取真实呼吸频率方面的准确率进行验证。特别是,与带通滤波相比,变分自编码器(VAE)模型产生的结果显示出与呼吸活动更好的相关性,这突出表明这些模型有潜力在复杂的神经记录中保留相关特征。