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Reproducible image-based profiling with Pycytominer

Technological advances in high-throughput microscopy have facilitated the acquisition of cell images at a rapid pace, and data pipelines can now extract and process thousands of image-based features from microscopy images. These features represent valuable single-cell phenotypes that contain informa...

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Autores principales: Serrano, Erik, Chandrasekaran, Srinivas Niranj, Bunten, Dave, Brewer, Kenneth I., Tomkinson, Jenna, Kern, Roshan, Bornholdt, Michael, Fleming, Stephen, Pei, Ruifan, Arevalo, John, Tsang, Hillary, Rubinetti, Vincent, Tromans-Coia, Callum, Becker, Tim, Weisbart, Erin, Bunne, Charlotte, Kalinin, Alexandr A., Senft, Rebecca, Taylor, Stephen J., Jamali, Nasim, Adeboye, Adeniyi, Abbasi, Hamdah Shafqat, Goodman, Allen, Caicedo, Juan C., Carpenter, Anne E., Cimini, Beth A., Singh, Shantanu, Way, Gregory P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10690292/
https://www.ncbi.nlm.nih.gov/pubmed/38045474
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author Serrano, Erik
Chandrasekaran, Srinivas Niranj
Bunten, Dave
Brewer, Kenneth I.
Tomkinson, Jenna
Kern, Roshan
Bornholdt, Michael
Fleming, Stephen
Pei, Ruifan
Arevalo, John
Tsang, Hillary
Rubinetti, Vincent
Tromans-Coia, Callum
Becker, Tim
Weisbart, Erin
Bunne, Charlotte
Kalinin, Alexandr A.
Senft, Rebecca
Taylor, Stephen J.
Jamali, Nasim
Adeboye, Adeniyi
Abbasi, Hamdah Shafqat
Goodman, Allen
Caicedo, Juan C.
Carpenter, Anne E.
Cimini, Beth A.
Singh, Shantanu
Way, Gregory P.
author_facet Serrano, Erik
Chandrasekaran, Srinivas Niranj
Bunten, Dave
Brewer, Kenneth I.
Tomkinson, Jenna
Kern, Roshan
Bornholdt, Michael
Fleming, Stephen
Pei, Ruifan
Arevalo, John
Tsang, Hillary
Rubinetti, Vincent
Tromans-Coia, Callum
Becker, Tim
Weisbart, Erin
Bunne, Charlotte
Kalinin, Alexandr A.
Senft, Rebecca
Taylor, Stephen J.
Jamali, Nasim
Adeboye, Adeniyi
Abbasi, Hamdah Shafqat
Goodman, Allen
Caicedo, Juan C.
Carpenter, Anne E.
Cimini, Beth A.
Singh, Shantanu
Way, Gregory P.
author_sort Serrano, Erik
collection PubMed
description Technological advances in high-throughput microscopy have facilitated the acquisition of cell images at a rapid pace, and data pipelines can now extract and process thousands of image-based features from microscopy images. These features represent valuable single-cell phenotypes that contain information about cell state and biological processes. The use of these features for biological discovery is known as image-based or morphological profiling. However, these raw features need processing before use and image-based profiling lacks scalable and reproducible open-source software. Inconsistent processing across studies makes it difficult to compare datasets and processing steps, further delaying the development of optimal pipelines, methods, and analyses. To address these issues, we present Pycytominer, an open-source software package with a vibrant community that establishes an image-based profiling standard. Pycytominer has a simple, user-friendly Application Programming Interface (API) that implements image-based profiling functions for processing high-dimensional morphological features extracted from microscopy images of cells. Establishing Pycytominer as a standard image-based profiling toolkit ensures consistent data processing pipelines with data provenance, therefore minimizing potential inconsistencies and enabling researchers to confidently derive accurate conclusions and discover novel insights from their data, thus driving progress in our field.
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spelling pubmed-106902922023-12-02 Reproducible image-based profiling with Pycytominer Serrano, Erik Chandrasekaran, Srinivas Niranj Bunten, Dave Brewer, Kenneth I. Tomkinson, Jenna Kern, Roshan Bornholdt, Michael Fleming, Stephen Pei, Ruifan Arevalo, John Tsang, Hillary Rubinetti, Vincent Tromans-Coia, Callum Becker, Tim Weisbart, Erin Bunne, Charlotte Kalinin, Alexandr A. Senft, Rebecca Taylor, Stephen J. Jamali, Nasim Adeboye, Adeniyi Abbasi, Hamdah Shafqat Goodman, Allen Caicedo, Juan C. Carpenter, Anne E. Cimini, Beth A. Singh, Shantanu Way, Gregory P. ArXiv Article Technological advances in high-throughput microscopy have facilitated the acquisition of cell images at a rapid pace, and data pipelines can now extract and process thousands of image-based features from microscopy images. These features represent valuable single-cell phenotypes that contain information about cell state and biological processes. The use of these features for biological discovery is known as image-based or morphological profiling. However, these raw features need processing before use and image-based profiling lacks scalable and reproducible open-source software. Inconsistent processing across studies makes it difficult to compare datasets and processing steps, further delaying the development of optimal pipelines, methods, and analyses. To address these issues, we present Pycytominer, an open-source software package with a vibrant community that establishes an image-based profiling standard. Pycytominer has a simple, user-friendly Application Programming Interface (API) that implements image-based profiling functions for processing high-dimensional morphological features extracted from microscopy images of cells. Establishing Pycytominer as a standard image-based profiling toolkit ensures consistent data processing pipelines with data provenance, therefore minimizing potential inconsistencies and enabling researchers to confidently derive accurate conclusions and discover novel insights from their data, thus driving progress in our field. Cornell University 2023-11-22 /pmc/articles/PMC10690292/ /pubmed/38045474 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Serrano, Erik
Chandrasekaran, Srinivas Niranj
Bunten, Dave
Brewer, Kenneth I.
Tomkinson, Jenna
Kern, Roshan
Bornholdt, Michael
Fleming, Stephen
Pei, Ruifan
Arevalo, John
Tsang, Hillary
Rubinetti, Vincent
Tromans-Coia, Callum
Becker, Tim
Weisbart, Erin
Bunne, Charlotte
Kalinin, Alexandr A.
Senft, Rebecca
Taylor, Stephen J.
Jamali, Nasim
Adeboye, Adeniyi
Abbasi, Hamdah Shafqat
Goodman, Allen
Caicedo, Juan C.
Carpenter, Anne E.
Cimini, Beth A.
Singh, Shantanu
Way, Gregory P.
Reproducible image-based profiling with Pycytominer
title Reproducible image-based profiling with Pycytominer
title_full Reproducible image-based profiling with Pycytominer
title_fullStr Reproducible image-based profiling with Pycytominer
title_full_unstemmed Reproducible image-based profiling with Pycytominer
title_short Reproducible image-based profiling with Pycytominer
title_sort reproducible image-based profiling with pycytominer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10690292/
https://www.ncbi.nlm.nih.gov/pubmed/38045474
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