4.2 Article

Automatic classification of canine PRG neuronal discharge patterns using K-means clustering

Journal

RESPIRATORY PHYSIOLOGY & NEUROBIOLOGY
Volume 207, Issue -, Pages 28-39

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.resp.2014.11.016

Keywords

Classification; Clustering; Discharge patterns; Pontine neurons; Dogs

Funding

  1. United States Department of Veterans Affairs [1 101 BX000721-01]
  2. Biomedical Laboratory Research and Development Program
  3. Department of Anesthesiology, Medical College of Wisconsin
  4. Children's Hospital of Wisconsin

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Respiratory-related neurons in the parabrachial-Kolliker-Fuse (PB-KF) region of the pons play a key role in the control of breathing. The neuronal activities of these pontine respiratory group (PRG) neurons exhibit a variety of inspiratory (I), expiratory (E), phase spanning and non-respiratory related (NRM) discharge patterns. Due to the variety of patterns, it can be difficult to classify them into distinct subgroups according to their discharge contours. This report presents a method that automatically classifies neurons according to their discharge patterns and derives an average subgroup contour of each class. It is based on the K-means clustering technique and it is implemented via SigmaPlot User-Defined transform scripts. The discharge patterns of 135 canine PRG neurons were classified into seven distinct subgroups. Additional methods for choosing the optimal number of clusters are described. Analysis of the results suggests that the K-means clustering method offers a robust objective means of both automatically categorizing neuron patterns and establishing the underlying archetypical contours of subtypes based on the discharge patterns of group of neurons. Published by Elsevier B.V.

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