Literature DB >> 30548810

Prediction Algorithm of the Cat Spinal Segments Lengths and Positions in Relation to the Vertebrae.

Polina Y Shkorbatova1, Vsevolod A Lyakhovetskii1,2, Natalia S Merkulyeva1,2,3, Alexandr A Veshchitskii1, Elena Y Bazhenova1, Jean Laurens4, Natalia V Pavlova1, Pavel E Musienko1,3,5.   

Abstract

Detailed knowledge of the topographic organization and precise access to the spinal cord segments is crucial for the neurosurgical manipulations as well as in vivo neurophysiological investigations of the spinal networks involved in sensorimotor and visceral functions. Because of high individual variability, accurate identification of particular portion of the lumbosacral enlargement is normally possible only during postmortem dissection. Yet, it is often necessary to determine the precise location of spinal segments prior to in vivo investigation, targeting spinal cord manipulations, neurointerface implantations, and neuronal activity recordings. To solve this problem, we have developed an algorithm to predict spinal segments locations based on their relation to vertebral reference points. The lengths and relative positions of the spinal cord segments (T13-S3) and the vertebrae (VT13-VL7) were measured in 17 adult cats. On the basis of these measurements, we elaborated the estimation procedure: the cubic regression of the ratio of the segment's length to the lengths of the VL2 vertebra was used for the determination of segment's length; and the quadratic regression of the ratio of their positions in relation to the VL2 rostral part was used to determine the position of the segments. The coefficients of these regressions were calculated at the training sample (nine cats) and were then confirmed at the testing sample (eight cats). Although the quality of the prediction is decreased in the caudal direction, we found high correlations between the regressions and real data. The proposed algorithm can be further translated to other species including human. Anat Rec, 302:1628-1637, 2019.
© 2018 American Association for Anatomy. © 2018 American Association for Anatomy.

Entities:  

Keywords:  cat; dorsal roots; prediction algorithm; segments; spinal cord; vertebrae

Year:  2019        PMID: 30548810      PMCID: PMC6561844          DOI: 10.1002/ar.24054

Source DB:  PubMed          Journal:  Anat Rec (Hoboken)        ISSN: 1932-8486            Impact factor:   2.064


  31 in total

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2.  Gross quantitative measurements of spinal cord segments in human.

Authors:  H-Y Ko; J H Park; Y B Shin; S Y Baek
Journal:  Spinal Cord       Date:  2004-01       Impact factor: 2.772

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Authors:  C E THOMAS; C M COMBS
Journal:  Am J Anat       Date:  1962-01

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Authors:  Yu P Gerasimenko; I A Lavrov; I N Bogacheva; N A Shcherbakova; V I Kucher; P E Musienko
Journal:  Neurosci Behav Physiol       Date:  2005-03

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Authors:  P E Musienko; I N Bogacheva; Iu P Gerasimenko
Journal:  Ross Fiziol Zh Im I M Sechenova       Date:  2005-12

8.  Morphofunctional characteristics of the lumbar enlargement of the spinal cord in rats.

Authors:  E G Gilerovich; T R Moshonkina; E A Fedorova; T T Shishko; N V Pavlova; Yu P Gerasimenko; V A Otellin
Journal:  Neurosci Behav Physiol       Date:  2008-09-18

9.  Control of locomotor activity in humans and animals in the absence of supraspinal influences.

Authors:  Yu P Gerasimenko; A N Makarovskii; O A Nikitin
Journal:  Neurosci Behav Physiol       Date:  2002 Jul-Aug

Review 10.  Combinatory electrical and pharmacological neuroprosthetic interfaces to regain motor function after spinal cord injury.

Authors:  Pavel Musienko; Rubia van den Brand; Olivia Maerzendorfer; Alexandre Larmagnac; Grégoire Courtine
Journal:  IEEE Trans Biomed Eng       Date:  2009-07-24       Impact factor: 4.538

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  1 in total

1.  Rostrocaudal Distribution of the C-Fos-Immunopositive Spinal Network Defined by Muscle Activity during Locomotion.

Authors:  Natalia Merkulyeva; Vsevolod Lyakhovetskii; Aleksandr Veshchitskii; Oleg Gorskii; Pavel Musienko
Journal:  Brain Sci       Date:  2021-01-07
  1 in total

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