Cargando…

AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons

PURPOSE: Assessment of glaucomatous damage in animal models is facilitated by rapid and accurate quantification of retinal ganglion cell (RGC) axonal loss and morphologic change. However, manual assessment is extremely time- and labor-intensive. Here, we developed AxoNet 2.0, an automated deep learn...

Descripción completa

Detalles Bibliográficos
Autores principales: Goyal, Vidisha, Read, A. Thomas, Ritch, Matthew D., Hannon, Bailey G., Rodriguez, Gabriela Sanchez, Brown, Dillon M., Feola, Andrew J., Hedberg-Buenz, Adam, Cull, Grant A., Reynaud, Juan, Garvin, Mona K., Anderson, Michael G., Burgoyne, Claude F., Ethier, C. Ross
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Association for Research in Vision and Ophthalmology 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10020950/
https://www.ncbi.nlm.nih.gov/pubmed/36917117
http://dx.doi.org/10.1167/tvst.12.3.9
_version_ 1784908371375161344
author Goyal, Vidisha
Read, A. Thomas
Ritch, Matthew D.
Hannon, Bailey G.
Rodriguez, Gabriela Sanchez
Brown, Dillon M.
Feola, Andrew J.
Hedberg-Buenz, Adam
Cull, Grant A.
Reynaud, Juan
Garvin, Mona K.
Anderson, Michael G.
Burgoyne, Claude F.
Ethier, C. Ross
author_facet Goyal, Vidisha
Read, A. Thomas
Ritch, Matthew D.
Hannon, Bailey G.
Rodriguez, Gabriela Sanchez
Brown, Dillon M.
Feola, Andrew J.
Hedberg-Buenz, Adam
Cull, Grant A.
Reynaud, Juan
Garvin, Mona K.
Anderson, Michael G.
Burgoyne, Claude F.
Ethier, C. Ross
author_sort Goyal, Vidisha
collection PubMed
description PURPOSE: Assessment of glaucomatous damage in animal models is facilitated by rapid and accurate quantification of retinal ganglion cell (RGC) axonal loss and morphologic change. However, manual assessment is extremely time- and labor-intensive. Here, we developed AxoNet 2.0, an automated deep learning (DL) tool that (i) counts normal-appearing RGC axons and (ii) quantifies their morphometry from light micrographs. METHODS: A DL algorithm was trained to segment the axoplasm and myelin sheath of normal-appearing axons using manually-annotated rat optic nerve (ON) cross-sectional micrographs. Performance was quantified by various metrics (e.g., soft-Dice coefficient between predicted and ground-truth segmentations). We also quantified axon counts, axon density, and axon size distributions between hypertensive and control eyes and compared to literature reports. RESULTS: AxoNet 2.0 performed very well when compared to manual annotations of rat ON (R(2) = 0.92 for automated vs. manual counts, soft-Dice coefficient = 0.81 ± 0.02, mean absolute percentage error in axonal morphometric outcomes < 15%). AxoNet 2.0 also showed promise for generalization, performing well on other animal models (R(2) = 0.97 between automated versus manual counts for mice and 0.98 for non-human primates). As expected, the algorithm detected decreased in axon density in hypertensive rat eyes (P ≪ 0.001) with preferential loss of large axons (P < 0.001). CONCLUSIONS: AxoNet 2.0 provides a fast and nonsubjective tool to quantify both RGC axon counts and morphological features, thus assisting with assessing axonal damage in animal models of glaucomatous optic neuropathy. TRANSLATIONAL RELEVANCE: This deep learning approach will increase rigor of basic science studies designed to investigate RGC axon protection and regeneration.
format Online
Article
Text
id pubmed-10020950
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher The Association for Research in Vision and Ophthalmology
record_format MEDLINE/PubMed
spelling pubmed-100209502023-03-18 AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons Goyal, Vidisha Read, A. Thomas Ritch, Matthew D. Hannon, Bailey G. Rodriguez, Gabriela Sanchez Brown, Dillon M. Feola, Andrew J. Hedberg-Buenz, Adam Cull, Grant A. Reynaud, Juan Garvin, Mona K. Anderson, Michael G. Burgoyne, Claude F. Ethier, C. Ross Transl Vis Sci Technol Artificial Intelligence PURPOSE: Assessment of glaucomatous damage in animal models is facilitated by rapid and accurate quantification of retinal ganglion cell (RGC) axonal loss and morphologic change. However, manual assessment is extremely time- and labor-intensive. Here, we developed AxoNet 2.0, an automated deep learning (DL) tool that (i) counts normal-appearing RGC axons and (ii) quantifies their morphometry from light micrographs. METHODS: A DL algorithm was trained to segment the axoplasm and myelin sheath of normal-appearing axons using manually-annotated rat optic nerve (ON) cross-sectional micrographs. Performance was quantified by various metrics (e.g., soft-Dice coefficient between predicted and ground-truth segmentations). We also quantified axon counts, axon density, and axon size distributions between hypertensive and control eyes and compared to literature reports. RESULTS: AxoNet 2.0 performed very well when compared to manual annotations of rat ON (R(2) = 0.92 for automated vs. manual counts, soft-Dice coefficient = 0.81 ± 0.02, mean absolute percentage error in axonal morphometric outcomes < 15%). AxoNet 2.0 also showed promise for generalization, performing well on other animal models (R(2) = 0.97 between automated versus manual counts for mice and 0.98 for non-human primates). As expected, the algorithm detected decreased in axon density in hypertensive rat eyes (P ≪ 0.001) with preferential loss of large axons (P < 0.001). CONCLUSIONS: AxoNet 2.0 provides a fast and nonsubjective tool to quantify both RGC axon counts and morphological features, thus assisting with assessing axonal damage in animal models of glaucomatous optic neuropathy. TRANSLATIONAL RELEVANCE: This deep learning approach will increase rigor of basic science studies designed to investigate RGC axon protection and regeneration. The Association for Research in Vision and Ophthalmology 2023-03-14 /pmc/articles/PMC10020950/ /pubmed/36917117 http://dx.doi.org/10.1167/tvst.12.3.9 Text en Copyright 2023 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
spellingShingle Artificial Intelligence
Goyal, Vidisha
Read, A. Thomas
Ritch, Matthew D.
Hannon, Bailey G.
Rodriguez, Gabriela Sanchez
Brown, Dillon M.
Feola, Andrew J.
Hedberg-Buenz, Adam
Cull, Grant A.
Reynaud, Juan
Garvin, Mona K.
Anderson, Michael G.
Burgoyne, Claude F.
Ethier, C. Ross
AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons
title AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons
title_full AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons
title_fullStr AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons
title_full_unstemmed AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons
title_short AxoNet 2.0: A Deep Learning-Based Tool for Morphometric Analysis of Retinal Ganglion Cell Axons
title_sort axonet 2.0: a deep learning-based tool for morphometric analysis of retinal ganglion cell axons
topic Artificial Intelligence
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10020950/
https://www.ncbi.nlm.nih.gov/pubmed/36917117
http://dx.doi.org/10.1167/tvst.12.3.9
work_keys_str_mv AT goyalvidisha axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT readathomas axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT ritchmatthewd axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT hannonbaileyg axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT rodriguezgabrielasanchez axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT browndillonm axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT feolaandrewj axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT hedbergbuenzadam axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT cullgranta axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT reynaudjuan axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT garvinmonak axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT andersonmichaelg axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT burgoyneclaudef axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons
AT ethiercross axonet20adeeplearningbasedtoolformorphometricanalysisofretinalganglioncellaxons