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Peripheral Nerve Activation Evokes Machine-Learnable Signals in the Dorsal Column Nuclei

机译:周围神经激活在背柱核中引起机器学习信号

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摘要

The brainstem dorsal column nuclei (DCN) are essential to inform the brain of tactile and proprioceptive events experienced by the body. However, little is known about how ascending somatosensory information is represented in the DCN. Our objective was to investigate the usefulness of high-frequency (HF) and low-frequency (LF) DCN signal features (SFs) in predicting the nerve from which signals were evoked. We also aimed to explore the robustness of DCN SFs and map their relative information content across the brainstem surface. DCN surface potentials were recorded from urethane-anesthetized Wistar rats during sural and peroneal nerve electrical stimulation. Five salient SFs were extracted from each recording electrode of a seven-electrode array. We used a machine learning approach to quantify and rank information content contained within DCN surface-potential signals following peripheral nerve activation. Machine-learning of SF and electrode position combinations was quantified to determine a hierarchy of information importance for resolving the peripheral origin of nerve activation. A supervised back-propagation artificial neural network (ANN) could predict the nerve from which a response was evoked with up to 96.8 ± 0.8% accuracy. Guided by feature-learnability, we maintained high prediction accuracy after reducing ANN algorithm inputs from 35 (5 SFs from 7 electrodes) to 6 (4 SFs from one electrode and 2 SFs from a second electrode). When the number of input features were reduced, the best performing input combinations included HF and LF features. Feature-learnability also revealed that signals recorded from the same midline electrode can be accurately classified when evoked from bilateral nerve pairs, suggesting DCN surface activity asymmetry. Here we demonstrate a novel method for mapping the information content of signal patterns across the DCN surface and show that DCN SFs are robust across a population. Finally, we also show that the DCN is functionally asymmetrically organized, which challenges our current understanding of somatotopic symmetry across the midline at sub-cortical levels.
机译:脑干背柱核(DCN)对于告知大脑身体经历的触觉和本体感受事件至关重要。但是,对于如何在DCN中表示身体感觉信息的提升知之甚少。我们的目标是研究高频(HF)和低频(LF)DCN信号特征(SFs)在预测诱发信号的神经方面的有用性。我们还旨在探索DCN SF的鲁棒性,并在整个脑干表面绘制其相对信息内容。在腓肠和腓神经电刺激过程中,氨基甲酸乙酯麻醉的Wistar大鼠记录了DCN表面电位。从七电极阵列的每个记录电极中提取五个显着的SF。我们使用机器学习方法对周围神经激活后DCN表面电位信号中包含的信息内容进行量化和排序。 SF和电极位置组合的机器学习被量化,以确定信息重要性的层次,以解决神经激活的外围起源。监督的反向传播人工神经网络(ANN)可以预测引起反应的神经,准确度高达96.8±0.8%。在功能可学习性的指导下,在将ANN算法输入从35个(7个电极5 SF)减少到6个(一个电极4 SF和第二个电极2 SF)后,我们保持了较高的预测精度。当减少输入功能部件的数量时,性能最佳的输入组合包括HF和LF功能部件。特征易学性还显示,当从双侧神经对中诱发出同一条中线电极记录的信号时,可以准确分类,这表明DCN表面活性不对称。在这里,我们展示了一种用于在DCN整个表面上映射信号模式信息内容的新颖方法,并显示了DCN SF在整个种群中都很健壮。最后,我们还显示了DCN在功能上是不对称组织的,这挑战了我们当前对皮层下跨中线的体位对称性的理解。

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