Cargando…

An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy

BACKGROUND: In recent years, high-throughput microscopy has emerged as a powerful tool to analyze cellular dynamics in an unprecedentedly high resolved manner. The amount of data that is generated, for example in long-term time-lapse microscopy experiments, requires automated methods for processing...

Descripción completa

Detalles Bibliográficos
Autores principales: Buggenthin, Felix, Marr, Carsten, Schwarzfischer, Michael, Hoppe, Philipp S, Hilsenbeck, Oliver, Schroeder, Timm, Theis, Fabian J
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3850979/
https://www.ncbi.nlm.nih.gov/pubmed/24090363
http://dx.doi.org/10.1186/1471-2105-14-297
_version_ 1782294203323121664
author Buggenthin, Felix
Marr, Carsten
Schwarzfischer, Michael
Hoppe, Philipp S
Hilsenbeck, Oliver
Schroeder, Timm
Theis, Fabian J
author_facet Buggenthin, Felix
Marr, Carsten
Schwarzfischer, Michael
Hoppe, Philipp S
Hilsenbeck, Oliver
Schroeder, Timm
Theis, Fabian J
author_sort Buggenthin, Felix
collection PubMed
description BACKGROUND: In recent years, high-throughput microscopy has emerged as a powerful tool to analyze cellular dynamics in an unprecedentedly high resolved manner. The amount of data that is generated, for example in long-term time-lapse microscopy experiments, requires automated methods for processing and analysis. Available software frameworks are well suited for high-throughput processing of fluorescence images, but they often do not perform well on bright field image data that varies considerably between laboratories, setups, and even single experiments. RESULTS: In this contribution, we present a fully automated image processing pipeline that is able to robustly segment and analyze cells with ellipsoid morphology from bright field microscopy in a high-throughput, yet time efficient manner. The pipeline comprises two steps: (i) Image acquisition is adjusted to obtain optimal bright field image quality for automatic processing. (ii) A concatenation of fast performing image processing algorithms robustly identifies single cells in each image. We applied the method to a time-lapse movie consisting of ∼315,000 images of differentiating hematopoietic stem cells over 6 days. We evaluated the accuracy of our method by comparing the number of identified cells with manual counts. Our method is able to segment images with varying cell density and different cell types without parameter adjustment and clearly outperforms a standard approach. By computing population doubling times, we were able to identify three growth phases in the stem cell population throughout the whole movie, and validated our result with cell cycle times from single cell tracking. CONCLUSIONS: Our method allows fully automated processing and analysis of high-throughput bright field microscopy data. The robustness of cell detection and fast computation time will support the analysis of high-content screening experiments, on-line analysis of time-lapse experiments as well as development of methods to automatically track single-cell genealogies.
format Online
Article
Text
id pubmed-3850979
institution National Center for Biotechnology Information
language English
publishDate 2013
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-38509792013-12-05 An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy Buggenthin, Felix Marr, Carsten Schwarzfischer, Michael Hoppe, Philipp S Hilsenbeck, Oliver Schroeder, Timm Theis, Fabian J BMC Bioinformatics Research Article BACKGROUND: In recent years, high-throughput microscopy has emerged as a powerful tool to analyze cellular dynamics in an unprecedentedly high resolved manner. The amount of data that is generated, for example in long-term time-lapse microscopy experiments, requires automated methods for processing and analysis. Available software frameworks are well suited for high-throughput processing of fluorescence images, but they often do not perform well on bright field image data that varies considerably between laboratories, setups, and even single experiments. RESULTS: In this contribution, we present a fully automated image processing pipeline that is able to robustly segment and analyze cells with ellipsoid morphology from bright field microscopy in a high-throughput, yet time efficient manner. The pipeline comprises two steps: (i) Image acquisition is adjusted to obtain optimal bright field image quality for automatic processing. (ii) A concatenation of fast performing image processing algorithms robustly identifies single cells in each image. We applied the method to a time-lapse movie consisting of ∼315,000 images of differentiating hematopoietic stem cells over 6 days. We evaluated the accuracy of our method by comparing the number of identified cells with manual counts. Our method is able to segment images with varying cell density and different cell types without parameter adjustment and clearly outperforms a standard approach. By computing population doubling times, we were able to identify three growth phases in the stem cell population throughout the whole movie, and validated our result with cell cycle times from single cell tracking. CONCLUSIONS: Our method allows fully automated processing and analysis of high-throughput bright field microscopy data. The robustness of cell detection and fast computation time will support the analysis of high-content screening experiments, on-line analysis of time-lapse experiments as well as development of methods to automatically track single-cell genealogies. BioMed Central 2013-10-04 /pmc/articles/PMC3850979/ /pubmed/24090363 http://dx.doi.org/10.1186/1471-2105-14-297 Text en Copyright © 2013 Buggenthin et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Buggenthin, Felix
Marr, Carsten
Schwarzfischer, Michael
Hoppe, Philipp S
Hilsenbeck, Oliver
Schroeder, Timm
Theis, Fabian J
An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
title An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
title_full An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
title_fullStr An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
title_full_unstemmed An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
title_short An automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
title_sort automatic method for robust and fast cell detection in bright field images from high-throughput microscopy
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3850979/
https://www.ncbi.nlm.nih.gov/pubmed/24090363
http://dx.doi.org/10.1186/1471-2105-14-297
work_keys_str_mv AT buggenthinfelix anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT marrcarsten anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT schwarzfischermichael anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT hoppephilipps anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT hilsenbeckoliver anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT schroedertimm anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT theisfabianj anautomaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT buggenthinfelix automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT marrcarsten automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT schwarzfischermichael automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT hoppephilipps automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT hilsenbeckoliver automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT schroedertimm automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy
AT theisfabianj automaticmethodforrobustandfastcelldetectioninbrightfieldimagesfromhighthroughputmicroscopy