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Classification and analysis of electrical signals in urinary bladder smooth muscle using a modified vector quantization technique

机译:使用改进的矢量量化技术进行膀胱平滑肌中电信号的分类和分析

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Voiding of the urinary bladder depends on contraction of the smooth muscle of its wall, known as detrusor muscle, and this in turn relies on electrical signals generated in the muscle cells. The exact shapes of these signals contain important information about bladder biophysics, but are poorly understood. We present an analysis of detrusor signals using a vector quantization technique based on a modified k-means clustering algorithm for the automatic detection and classification of the signals. We find that our procedure is able to sort the signals from a mixed pool into three predefined classes with an overall sensitivity of 0.9 and a specificity of 0.97. The various features of the signals belonging to an example class are evaluated for inter-feature correlation, and these correlations appear to be consistent with certain hypotheses about the mechanism of generation of the signals. Our work offers a novel approach to analyzing intracellularly recorded signals and inferring muscle biophysics at the cellular level.
机译:膀胱的空隙取决于其壁的平滑肌收缩,称为逼尿肌肌肉,这反过来依赖于肌肉细胞中产生的电信号。这些信号的确切形状包含有关膀胱生物物理学的重要信息,但也很难理解。我们使用基于修改的k均值聚类算法的矢量量化技术对Detrusor信号进行分析,用于自动检测和分类信号。我们发现我们的程序能够将来自混合池的信号分为三个预定义的类,其整体灵敏度为0.9,特异性为0.97。对属于示例类的信号的各种特征进行评估以进行特征间相关性,并且这些相关性似乎与关于产生信号的生成机制的某些假设一致。我们的作品提供了一种新的方法来分析细胞内记录的信号并在细胞水平下推断肌肉生物物理学。

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