Cargando…

Addressing persistent challenges in digital image analysis of cancerous tissues

The National Cancer Institute (NCI) supports many research programs and consortia, many of which use imaging as a major modality for characterizing cancerous tissue. A trans-consortia Image Analysis Working Group (IAWG) was established in 2019 with a mission to disseminate imaging-related work and f...

Descripción completa

Detalles Bibliográficos
Autores principales: Prabhakaran, Sandhya, Yapp, Clarence, Baker, Gregory J., Beyer, Johanna, Chang, Young Hwan, Creason, Allison L., Krueger, Robert, Muhlich, Jeremy, Patterson, Nathan Heath, Sidak, Kevin, Sudar, Damir, Taylor, Adam J., Ternes, Luke, Troidl, Jakob, Xie, Yubin, Sokolov, Artem, Tyson, Darren R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10401923/
https://www.ncbi.nlm.nih.gov/pubmed/37547011
http://dx.doi.org/10.1101/2023.07.21.548450
_version_ 1785084771871752192
author Prabhakaran, Sandhya
Yapp, Clarence
Baker, Gregory J.
Beyer, Johanna
Chang, Young Hwan
Creason, Allison L.
Krueger, Robert
Muhlich, Jeremy
Patterson, Nathan Heath
Sidak, Kevin
Sudar, Damir
Taylor, Adam J.
Ternes, Luke
Troidl, Jakob
Xie, Yubin
Sokolov, Artem
Tyson, Darren R.
author_facet Prabhakaran, Sandhya
Yapp, Clarence
Baker, Gregory J.
Beyer, Johanna
Chang, Young Hwan
Creason, Allison L.
Krueger, Robert
Muhlich, Jeremy
Patterson, Nathan Heath
Sidak, Kevin
Sudar, Damir
Taylor, Adam J.
Ternes, Luke
Troidl, Jakob
Xie, Yubin
Sokolov, Artem
Tyson, Darren R.
author_sort Prabhakaran, Sandhya
collection PubMed
description The National Cancer Institute (NCI) supports many research programs and consortia, many of which use imaging as a major modality for characterizing cancerous tissue. A trans-consortia Image Analysis Working Group (IAWG) was established in 2019 with a mission to disseminate imaging-related work and foster collaborations. In 2022, the IAWG held a virtual hackathon focused on addressing challenges of analyzing high dimensional datasets from fixed cancerous tissues. Standard image processing techniques have automated feature extraction, but the next generation of imaging data requires more advanced methods to fully utilize the available information. In this perspective, we discuss current limitations of the automated analysis of multiplexed tissue images, the first steps toward deeper understanding of these limitations, what possible solutions have been developed, any new or refined approaches that were developed during the Image Analysis Hackathon 2022, and where further effort is required. The outstanding problems addressed in the hackathon fell into three main themes: 1) challenges to cell type classification and assessment, 2) translation and visual representation of spatial aspects of high dimensional data, and 3) scaling digital image analyses to large (multi-TB) datasets. We describe the rationale for each specific challenge and the progress made toward addressing it during the hackathon. We also suggest areas that would benefit from more focus and offer insight into broader challenges that the community will need to address as new technologies are developed and integrated into the broad range of image-based modalities and analytical resources already in use within the cancer research community.
format Online
Article
Text
id pubmed-10401923
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Cold Spring Harbor Laboratory
record_format MEDLINE/PubMed
spelling pubmed-104019232023-08-05 Addressing persistent challenges in digital image analysis of cancerous tissues Prabhakaran, Sandhya Yapp, Clarence Baker, Gregory J. Beyer, Johanna Chang, Young Hwan Creason, Allison L. Krueger, Robert Muhlich, Jeremy Patterson, Nathan Heath Sidak, Kevin Sudar, Damir Taylor, Adam J. Ternes, Luke Troidl, Jakob Xie, Yubin Sokolov, Artem Tyson, Darren R. bioRxiv Article The National Cancer Institute (NCI) supports many research programs and consortia, many of which use imaging as a major modality for characterizing cancerous tissue. A trans-consortia Image Analysis Working Group (IAWG) was established in 2019 with a mission to disseminate imaging-related work and foster collaborations. In 2022, the IAWG held a virtual hackathon focused on addressing challenges of analyzing high dimensional datasets from fixed cancerous tissues. Standard image processing techniques have automated feature extraction, but the next generation of imaging data requires more advanced methods to fully utilize the available information. In this perspective, we discuss current limitations of the automated analysis of multiplexed tissue images, the first steps toward deeper understanding of these limitations, what possible solutions have been developed, any new or refined approaches that were developed during the Image Analysis Hackathon 2022, and where further effort is required. The outstanding problems addressed in the hackathon fell into three main themes: 1) challenges to cell type classification and assessment, 2) translation and visual representation of spatial aspects of high dimensional data, and 3) scaling digital image analyses to large (multi-TB) datasets. We describe the rationale for each specific challenge and the progress made toward addressing it during the hackathon. We also suggest areas that would benefit from more focus and offer insight into broader challenges that the community will need to address as new technologies are developed and integrated into the broad range of image-based modalities and analytical resources already in use within the cancer research community. Cold Spring Harbor Laboratory 2023-07-24 /pmc/articles/PMC10401923/ /pubmed/37547011 http://dx.doi.org/10.1101/2023.07.21.548450 Text en https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nc-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Prabhakaran, Sandhya
Yapp, Clarence
Baker, Gregory J.
Beyer, Johanna
Chang, Young Hwan
Creason, Allison L.
Krueger, Robert
Muhlich, Jeremy
Patterson, Nathan Heath
Sidak, Kevin
Sudar, Damir
Taylor, Adam J.
Ternes, Luke
Troidl, Jakob
Xie, Yubin
Sokolov, Artem
Tyson, Darren R.
Addressing persistent challenges in digital image analysis of cancerous tissues
title Addressing persistent challenges in digital image analysis of cancerous tissues
title_full Addressing persistent challenges in digital image analysis of cancerous tissues
title_fullStr Addressing persistent challenges in digital image analysis of cancerous tissues
title_full_unstemmed Addressing persistent challenges in digital image analysis of cancerous tissues
title_short Addressing persistent challenges in digital image analysis of cancerous tissues
title_sort addressing persistent challenges in digital image analysis of cancerous tissues
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10401923/
https://www.ncbi.nlm.nih.gov/pubmed/37547011
http://dx.doi.org/10.1101/2023.07.21.548450
work_keys_str_mv AT prabhakaransandhya addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT yappclarence addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT bakergregoryj addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT beyerjohanna addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT changyounghwan addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT creasonallisonl addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT kruegerrobert addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT muhlichjeremy addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT pattersonnathanheath addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT sidakkevin addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT sudardamir addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT tayloradamj addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT ternesluke addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT troidljakob addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT xieyubin addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT sokolovartem addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT tysondarrenr addressingpersistentchallengesindigitalimageanalysisofcanceroustissues
AT addressingpersistentchallengesindigitalimageanalysisofcanceroustissues