Literature DB >> 33410136

Astrocyte regional heterogeneity revealed through machine learning-based glial neuroanatomical assays.

Jessica Blackburn1,2, Michele Joana Alves1, Mehmet Tahir Aslan1, Lokman Cevik1, Jing Zhao3, Catherine M Czeisler1, José Javier Otero1.   

Abstract

Evaluation of reactive astrogliosis by neuroanatomical assays represents a common experimental outcome for neuroanatomists. The literature demonstrates several conflicting results as to the accuracy of such measures. We posited that the diverging results within the neuroanatomy literature were due to suboptimal analytical workflows in addition to astrocyte regional heterogeneity. We therefore generated an automated segmentation workflow to extract features of glial fibrillary acidic protein (GFAP) and aldehyde dehydrogenase family 1, member L1 (ALDH1L1) labeled astrocytes with and without neuroinflammation. We achieved this by capturing multiplexed immunofluorescent confocal images of mouse brains treated with either vehicle or lipopolysaccharide (LPS) followed by implementation of our workflows. Using classical image analysis techniques focused on pixel intensity only, we were unable to identify differences between vehicle-treated and LPS-treated animals. However, when utilizing machine learning-based algorithms, we were able to (1) accurately predict which objects were derived from GFAP or ALDH1L1-stained images indicating that GFAP and ALDH1L1 highlight distinct morphological aspects of astrocytes, (2) we could predict which neuroanatomical region the segmented GFAP or ALDH1L1 object had been derived from, indicating that morphological features of astrocytes change as a function of neuroanatomical location. (3) We discovered a statistically significant, albeit not highly accurate, prediction of which objects had come from LPS versus vehicle-treated animals, indicating that although features exist capable of distinguishing LPS-treated versus vehicle-treated GFAP and ALDH1L1-segmented objects, that significant overlap between morphologies exists. We further determined that for most classification scenarios, nonlinear models were required for improved treatment class designations. We propose that unbiased automated image analysis techniques coupled with well-validated machine learning tools represent highly useful models capable of providing insights into neuroanatomical assays.
© 2021 Wiley Periodicals LLC.

Entities:  

Keywords:  astrocyte; clustering analysis; gliosis; machine learning; neuroanatomy; neuroinflammation

Mesh:

Year:  2021        PMID: 33410136      PMCID: PMC8113076          DOI: 10.1002/cne.25105

Source DB:  PubMed          Journal:  J Comp Neurol        ISSN: 0021-9967            Impact factor:   3.028


  33 in total

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Authors:  Nancy Ann Oberheim; Steven A Goldman; Maiken Nedergaard
Journal:  Methods Mol Biol       Date:  2012

2.  Quantitative 3-D analysis of GFAP labeled astrocytes from fluorescence confocal images.

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3.  Neurotoxic reactive astrocytes are induced by activated microglia.

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Journal:  Nature       Date:  2017-01-18       Impact factor: 49.962

4.  A computational image analysis glossary for biologists.

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6.  mclust 5: Clustering, Classification and Density Estimation Using Gaussian Finite Mixture Models.

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8.  Astrocyte heterogeneity across the brain and spinal cord occurs developmentally, in adulthood and in response to demyelination.

Authors:  Hyesook Yoon; Grant Walters; Alex R Paulsen; Isobel A Scarisbrick
Journal:  PLoS One       Date:  2017-07-10       Impact factor: 3.240

9.  Three-dimensional intact-tissue sequencing of single-cell transcriptional states.

Authors:  Xiao Wang; William E Allen; Matthew A Wright; Emily L Sylwestrak; Nikolay Samusik; Sam Vesuna; Kathryn Evans; Cindy Liu; Charu Ramakrishnan; Jia Liu; Garry P Nolan; Felice-Alessio Bava; Karl Deisseroth
Journal:  Science       Date:  2018-06-21       Impact factor: 47.728

10.  A multistep deep learning framework for the automated detection and segmentation of astrocytes in fluorescent images of brain tissue.

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Journal:  Sci Rep       Date:  2020-03-20       Impact factor: 4.379

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  1 in total

1.  Advances in quantitative analysis of astrocytes using machine learning.

Authors:  Demetrio Labate; Cihan Kayasandik
Journal:  Neural Regen Res       Date:  2023-02       Impact factor: 6.058

  1 in total

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