Literature DB >> 24692020

SPIN: a method of skeleton-based polarity identification for neurons.

Yi-Hsuan Lee1, Yen-Nan Lin, Chao-Chun Chuang, Chung-Chuan Lo.   

Abstract

Directional signal transmission is essential for neural circuit function and thus for connectomic analysis. The directions of signal flow can be obtained by experimentally identifying neuronal polarity (axons or dendrites). However, the experimental techniques are not applicable to existing neuronal databases in which polarity information is not available. To address the issue, we proposed SPIN: a method of Skeleton-based Polarity Identification for Neurons. SPIN was designed to work with large-scale neuronal databases in which tracing-line data are available. In SPIN, a classifier is first trained by neurons with known polarity in two steps: 1) identifying morphological features that most correlate with the polarity and 2) constructing a linear classifier by determining a discriminant axis (a specific combination of the features) and decision boundaries. Each polarity-undefined neuron is then divided into several morphological substructures (domains) and the corresponding polarities are determined using the classifier. Finally, the result is evaluated and warnings for potential errors are returned. We tested this method on fruitfly (Drosophila melanogaster) and blowfly (Calliphora vicina and Calliphora erythrocephala) unipolar neurons using data obtained from the Flycircuit and Neuromorpho databases, respectively. On average, the polarity of 84-92 % of the terminal points in each neuron could be correctly identified. An ideal performance with an accuracy between 93 and 98 % can be achieved if we fed SPIN with relatively "clean" data without artificial branches. Our result demonstrates that SPIN, as a computer-based semi-automatic method, provides quick and accurate polarity identification and is particularly suitable for analyzing large-scale data. We implemented SPIN in Matlab and released the codes under the GPLv3 license.

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Year:  2014        PMID: 24692020     DOI: 10.1007/s12021-014-9225-6

Source DB:  PubMed          Journal:  Neuroinformatics        ISSN: 1539-2791


  45 in total

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Review 7.  Neuronal polarity in Drosophila: sorting out axons and dendrites.

Authors:  Melissa M Rolls
Journal:  Dev Neurobiol       Date:  2011-06       Impact factor: 3.964

Review 8.  The DIADEM data sets: representative light microscopy images of neuronal morphology to advance automation of digital reconstructions.

Authors:  Kerry M Brown; Germán Barrionuevo; Alison J Canty; Vincenzo De Paola; Judith A Hirsch; Gregory S X E Jefferis; Ju Lu; Marjolein Snippe; Izumi Sugihara; Giorgio A Ascoli
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Review 9.  Neuronal morphology goes digital: a research hub for cellular and system neuroscience.

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4.  Identification of Neuronal Polarity by Node-Based Machine Learning.

Authors:  Chen-Zhi Su; Kuan-Ting Chou; Hsuan-Pei Huang; Chiau-Jou Li; Ching-Che Charng; Chung-Chuan Lo; Daw-Wei Wang
Journal:  Neuroinformatics       Date:  2021-03-05
  4 in total

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