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A discriminative feature set in the fast phase of spikes for sorting oligo-unit discharges of arterial baroreceptors

机译:在峰值快速阶段设置的区分性特征,用于对动脉压力感受器的低单位排放进行分类

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The present study was aimed to establish a simple and robust protocol that was more suitable for sorting discharges of the arterial baroreceptor. Oligo-unit (= 5) baroreceptor discharges were recorded in vitro from fine filaments of the rabbit carotid sinus nerve. Different time windows, covering the fast phase only or both the fast and slow phases of the spike were used to extract spike event data for sorting. Three measurements focusing on the fast phase of spikes-the maximum slope in the ascending limb from the half amplitude to the peak, the peak amplitude, and the width of the spike at the half amplitudewere selected as a feature set. The performance of this measurement-based analysis with subsequent K-means algorithm (MBAKM) in sorting oligo-unit discharges was compared with the performance of principal component analysis followed by K-means (PCAKM) and template matching (TM). The present study proved that: (1) MBAKM was more discriminative with less intervention than PCAKM and TM in determining the number of clusters and cluster attributions of spikes; (2) there was a higher consistency (larger intersection set) among the three algorithms with narrow windows of 0.45-0.65 ms than with 1.45 ms window. This study suggested that discriminative features were embodied in the fast phase of spikes and the oligo-unit discharges of baroreceptors could be sorted more robustly and accurately with less intervention by MBAKM than by PCAKM and TM. MBAKM with narrow time window would be promising in further studying baroreceptors and multiunit discharges from other neural structures. (C) 2018 Elsevier B.V. All rights reserved.
机译:本研究旨在建立一个更简单,更可靠的协议,该协议更适合于对动脉压力感受器的放电进行分类。在体外从兔颈动脉窦神经的细丝中记录了寡单位(<= 5)压力感受器放电。使用不同的时间窗口(仅覆盖尖峰的快速阶段或尖峰的快速阶段和慢速阶段)提取尖峰事件数据进行分类。选择了三个针对尖峰快速相位的测量-上升肢体从半振幅到峰值的最大斜率,峰值振幅和半振幅的尖峰宽度作为特征集。将这种基于测量的分析以及随后的K-均值算法(MBAKM)在分类低单位排放中的性能与主成分分析,随后的K-均值(PCAKM)和模板匹配(TM)的性能进行了比较。本研究证明:(1)MBAKM在确定簇的数量和峰的簇归因方面比PCAKM和TM具有更高的判别力和更少的干预; (2)在0.45-0.65 ms的窄窗口中,这三种算法比1.45 ms的窗口具有更高的一致性(更大的交集)。这项研究表明,鉴别特征体现在尖峰的快速阶段,并且与PCAKM和TM相比,MBAKM的干预可以更可靠,更准确地分类压力感受器的寡单位放电。时间窗较窄的MBAKM在进一步研究压力感受器和其他神经结构的多单位放电方面将很有希望。 (C)2018 Elsevier B.V.保留所有权利。

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