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Artificial Intelligence Approaches to Assessing Primary Cilia

Cilia are microtubule based cellular appendages that function as signaling centers for a diversity of signaling pathways in many mammalian cell types. Cilia length is highly conserved, tightly regulated, and varies between different cell types and tissues and has been implicated in directly impactin...

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Autores principales: Bansal, Ruchi, Engle, Staci E., Kamba, Tisianna K., Brewer, Kathryn M., Lewis, Wesley R., Berbari, Nicolas F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8791558/
https://www.ncbi.nlm.nih.gov/pubmed/33999029
http://dx.doi.org/10.3791/62521
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author Bansal, Ruchi
Engle, Staci E.
Kamba, Tisianna K.
Brewer, Kathryn M.
Lewis, Wesley R.
Berbari, Nicolas F.
author_facet Bansal, Ruchi
Engle, Staci E.
Kamba, Tisianna K.
Brewer, Kathryn M.
Lewis, Wesley R.
Berbari, Nicolas F.
author_sort Bansal, Ruchi
collection PubMed
description Cilia are microtubule based cellular appendages that function as signaling centers for a diversity of signaling pathways in many mammalian cell types. Cilia length is highly conserved, tightly regulated, and varies between different cell types and tissues and has been implicated in directly impacting their signaling capacity. For example, cilia have been shown to alter their lengths in response to activation of ciliary G protein-coupled receptors. However, accurately and reproducibly measuring the lengths of numerous cilia is a time-consuming and labor-intensive procedure. Current approaches are also error and bias prone. Artificial intelligence (Ai) programs can be utilized to overcome many of these challenges due to capabilities that permit assimilation, manipulation, and optimization of extensive data sets. Here, we demonstrate that an Ai module can be trained to recognize cilia in images from both in vivo and in vitro samples. After using the trained Ai to identify cilia, we are able to design and rapidly utilize applications that analyze hundreds of cilia in a single sample for length, fluorescence intensity and co-localization. This unbiased approach increased our confidence and rigor when comparing samples from different primary neuronal preps in vitro as well as across different brain regions within an animal and between animals. Moreover, this technique can be used to reliably analyze cilia dynamics from any cell type and tissue in a high-throughput manner across multiple samples and treatment groups. Ultimately, Ai-based approaches will likely become standard as most fields move toward less biased and more reproducible approaches for image acquisition and analysis.
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spelling pubmed-87915582022-05-01 Artificial Intelligence Approaches to Assessing Primary Cilia Bansal, Ruchi Engle, Staci E. Kamba, Tisianna K. Brewer, Kathryn M. Lewis, Wesley R. Berbari, Nicolas F. J Vis Exp Article Cilia are microtubule based cellular appendages that function as signaling centers for a diversity of signaling pathways in many mammalian cell types. Cilia length is highly conserved, tightly regulated, and varies between different cell types and tissues and has been implicated in directly impacting their signaling capacity. For example, cilia have been shown to alter their lengths in response to activation of ciliary G protein-coupled receptors. However, accurately and reproducibly measuring the lengths of numerous cilia is a time-consuming and labor-intensive procedure. Current approaches are also error and bias prone. Artificial intelligence (Ai) programs can be utilized to overcome many of these challenges due to capabilities that permit assimilation, manipulation, and optimization of extensive data sets. Here, we demonstrate that an Ai module can be trained to recognize cilia in images from both in vivo and in vitro samples. After using the trained Ai to identify cilia, we are able to design and rapidly utilize applications that analyze hundreds of cilia in a single sample for length, fluorescence intensity and co-localization. This unbiased approach increased our confidence and rigor when comparing samples from different primary neuronal preps in vitro as well as across different brain regions within an animal and between animals. Moreover, this technique can be used to reliably analyze cilia dynamics from any cell type and tissue in a high-throughput manner across multiple samples and treatment groups. Ultimately, Ai-based approaches will likely become standard as most fields move toward less biased and more reproducible approaches for image acquisition and analysis. 2021-05-01 /pmc/articles/PMC8791558/ /pubmed/33999029 http://dx.doi.org/10.3791/62521 Text en https://creativecommons.org/licenses/by-nc/3.0/Creative Commons Attribution-NonCommercial-NoDerivs 3.0 Unported License
spellingShingle Article
Bansal, Ruchi
Engle, Staci E.
Kamba, Tisianna K.
Brewer, Kathryn M.
Lewis, Wesley R.
Berbari, Nicolas F.
Artificial Intelligence Approaches to Assessing Primary Cilia
title Artificial Intelligence Approaches to Assessing Primary Cilia
title_full Artificial Intelligence Approaches to Assessing Primary Cilia
title_fullStr Artificial Intelligence Approaches to Assessing Primary Cilia
title_full_unstemmed Artificial Intelligence Approaches to Assessing Primary Cilia
title_short Artificial Intelligence Approaches to Assessing Primary Cilia
title_sort artificial intelligence approaches to assessing primary cilia
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8791558/
https://www.ncbi.nlm.nih.gov/pubmed/33999029
http://dx.doi.org/10.3791/62521
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