SuperSegger: Robust image segmentation, analysis and lineage tracking of bacterial cells

Research output: Contribution to journalJournal articlepeer-review

Standard

SuperSegger : Robust image segmentation, analysis and lineage tracking of bacterial cells. / Stylianidou, Stella; Brennan, Connor; Nissen, Silas B; Kuwada, Nathan J; Wiggins, Paul A.

In: Molecular Microbiology, Vol. 102, No. 4, 11.11.2016, p. 690-700.

Research output: Contribution to journalJournal articlepeer-review

Harvard

Stylianidou, S, Brennan, C, Nissen, SB, Kuwada, NJ & Wiggins, PA 2016, 'SuperSegger: Robust image segmentation, analysis and lineage tracking of bacterial cells', Molecular Microbiology, vol. 102, no. 4, pp. 690-700. https://doi.org/10.1111/mmi.13486

APA

Stylianidou, S., Brennan, C., Nissen, S. B., Kuwada, N. J., & Wiggins, P. A. (2016). SuperSegger: Robust image segmentation, analysis and lineage tracking of bacterial cells. Molecular Microbiology, 102(4), 690-700. https://doi.org/10.1111/mmi.13486

Vancouver

Stylianidou S, Brennan C, Nissen SB, Kuwada NJ, Wiggins PA. SuperSegger: Robust image segmentation, analysis and lineage tracking of bacterial cells. Molecular Microbiology. 2016 Nov 11;102(4):690-700. https://doi.org/10.1111/mmi.13486

Author

Stylianidou, Stella ; Brennan, Connor ; Nissen, Silas B ; Kuwada, Nathan J ; Wiggins, Paul A. / SuperSegger : Robust image segmentation, analysis and lineage tracking of bacterial cells. In: Molecular Microbiology. 2016 ; Vol. 102, No. 4. pp. 690-700.

Bibtex

@article{6ac42ef9c4174b76b3e51f4e025463b6,
title = "SuperSegger: Robust image segmentation, analysis and lineage tracking of bacterial cells",
abstract = "Many quantitative cell biology questions require fast yet reliable automated image segmentation to identify and link cells from frame-to-frame, and characterize the cell morphology and fluorescence. We present SuperSegger, an automated MATLAB-based image processing package well-suited to quantitative analysis of high-throughput live-cell fluorescence microscopy of bacterial cells. SuperSegger incorporates machine-learning algorithms to optimize cellular boundaries and automated error resolution to reliably link cells from frame-to-frame. Unlike existing packages, it can reliably segment micro-colonies with many cells, facilitating the analysis of cell-cycle dynamics in bacteria as well as cell-contact mediated phenomena. This package has a range of built-in capabilities for characterizing bacterial cells, including the identification of cell division events, mother, daughter, and neighboring cells, and computing statistics on cellular fluorescence, the location and intensity of fluorescent foci. SuperSegger provides a variety of post-processing data visualization tools for single cell and population level analysis, such as histograms, kymographs, frame mosaics, movies, and consensus images. Finally, we demonstrate the power of the package by analyzing lag phase growth with single cell resolution. This article is protected by copyright. All rights reserved.",
author = "Stella Stylianidou and Connor Brennan and Nissen, {Silas B} and Kuwada, {Nathan J} and Wiggins, {Paul A}",
note = "{\textcopyright} 2016 John Wiley & Sons Ltd.",
year = "2016",
month = nov,
day = "11",
doi = "10.1111/mmi.13486",
language = "English",
volume = "102",
pages = "690--700",
journal = "Molecular Microbiology",
issn = "0950-382X",
publisher = "Wiley-Blackwell",
number = "4",

}

RIS

TY - JOUR

T1 - SuperSegger

T2 - Robust image segmentation, analysis and lineage tracking of bacterial cells

AU - Stylianidou, Stella

AU - Brennan, Connor

AU - Nissen, Silas B

AU - Kuwada, Nathan J

AU - Wiggins, Paul A

N1 - © 2016 John Wiley & Sons Ltd.

PY - 2016/11/11

Y1 - 2016/11/11

N2 - Many quantitative cell biology questions require fast yet reliable automated image segmentation to identify and link cells from frame-to-frame, and characterize the cell morphology and fluorescence. We present SuperSegger, an automated MATLAB-based image processing package well-suited to quantitative analysis of high-throughput live-cell fluorescence microscopy of bacterial cells. SuperSegger incorporates machine-learning algorithms to optimize cellular boundaries and automated error resolution to reliably link cells from frame-to-frame. Unlike existing packages, it can reliably segment micro-colonies with many cells, facilitating the analysis of cell-cycle dynamics in bacteria as well as cell-contact mediated phenomena. This package has a range of built-in capabilities for characterizing bacterial cells, including the identification of cell division events, mother, daughter, and neighboring cells, and computing statistics on cellular fluorescence, the location and intensity of fluorescent foci. SuperSegger provides a variety of post-processing data visualization tools for single cell and population level analysis, such as histograms, kymographs, frame mosaics, movies, and consensus images. Finally, we demonstrate the power of the package by analyzing lag phase growth with single cell resolution. This article is protected by copyright. All rights reserved.

AB - Many quantitative cell biology questions require fast yet reliable automated image segmentation to identify and link cells from frame-to-frame, and characterize the cell morphology and fluorescence. We present SuperSegger, an automated MATLAB-based image processing package well-suited to quantitative analysis of high-throughput live-cell fluorescence microscopy of bacterial cells. SuperSegger incorporates machine-learning algorithms to optimize cellular boundaries and automated error resolution to reliably link cells from frame-to-frame. Unlike existing packages, it can reliably segment micro-colonies with many cells, facilitating the analysis of cell-cycle dynamics in bacteria as well as cell-contact mediated phenomena. This package has a range of built-in capabilities for characterizing bacterial cells, including the identification of cell division events, mother, daughter, and neighboring cells, and computing statistics on cellular fluorescence, the location and intensity of fluorescent foci. SuperSegger provides a variety of post-processing data visualization tools for single cell and population level analysis, such as histograms, kymographs, frame mosaics, movies, and consensus images. Finally, we demonstrate the power of the package by analyzing lag phase growth with single cell resolution. This article is protected by copyright. All rights reserved.

U2 - 10.1111/mmi.13486

DO - 10.1111/mmi.13486

M3 - Journal article

C2 - 27569113

VL - 102

SP - 690

EP - 700

JO - Molecular Microbiology

JF - Molecular Microbiology

SN - 0950-382X

IS - 4

ER -

ID: 166064354