Most laboratories studying biological processes and human disease use light/fluorescence microscopes to image cells and other biological samples. There is strong and growing demand for software to analyze these images, as automated microscopes collect images faster than can be examined by eye and the information sought from images is increasingly quantitative and complex. We have begun to address this demand with CellProfiler, a versatile, open-source software tool for quantifying data from biological images, particularly in high-throughput experiments (www.cellprofiler.org). CellProfiler can extract valuable biological information from images quickly while increasing the objectivity and statistical power of assays. In the three years since its release, it has become widely used, having been downloaded more than 8,000 times by users in over 60 countries. Using CellProfiler's point-and-click interface, researchers build a customized chain of image analysis modules to identify and measure biological objects in images. The software evolved in an intensely collaborative and interdisciplinary research environment with dozens of ongoing projects and has been successfully applied to a wide range of biological samples and assays, from counting cells to scoring complex phenotypes by machine learning. To enable further biological imaging research, meet the needs of the growing user base, and expand the community that benefits from CellProfiler, we propose to improve its capabilities, interface, and support: First, we will add user-requested capabilities, leveraging existing open-source projects by interoperating with them where feasible. These new features will include object tracking in time-lapse movies, compatibility with additional file formats, new image processing algorithms, and expanded tools for quality control, performance evaluation, cluster computing, and workflow management. Second, we will improve the interface, increase processing speed, and simplify the addition of new features by refactoring and porting the MATLAB-based code to an open-source language and instituting proven software development practices. Third, we will provide user, educator, and developer support and outreach for CellProfiler. These activities will facilitate research in the scientific community and help guide usability improvements. These improvements to the only open-source software for modular, high-throughput biological image analysis will enable hundreds of NIH-funded laboratories to make high-impact biological discoveries from cell images across all disciplines within biology.

Public Health Relevance

Most laboratories studying biological processes and human disease use microscopy to analyze cells and other samples. We will enable these researchers to rapidly and accurately extract numerical data from microscopy images by continuing to develop and support our user-friendly, open-source cell image analysis software, CellProfiler (www.cellprofiler.org).

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
1R01GM089652-01
Application #
7761085
Study Section
Special Emphasis Panel (ZRG1-BST-Q (01))
Program Officer
Deatherage, James F
Project Start
2010-07-01
Project End
2014-05-31
Budget Start
2010-07-01
Budget End
2011-05-31
Support Year
1
Fiscal Year
2010
Total Cost
$463,608
Indirect Cost
Name
Broad Institute, Inc.
Department
Type
DUNS #
623544785
City
Cambridge
State
MA
Country
United States
Zip Code
02142
Bray, Mark-Anthony; Carpenter, Anne E (2018) Quality Control for High-Throughput Imaging Experiments Using Machine Learning in Cellprofiler. Methods Mol Biol 1683:89-112
Bray, Mark-Anthony; Singh, Shantanu; Han, Han et al. (2016) Cell Painting, a high-content image-based assay for morphological profiling using multiplexed fluorescent dyes. Nat Protoc 11:1757-74
Dao, David; Fraser, Adam N; Hung, Jane et al. (2016) CellProfiler Analyst: interactive data exploration, analysis and classification of large biological image sets. Bioinformatics 32:3210-3212
Dordea, Ana C; Bray, Mark-Anthony; Allen, Kaitlin et al. (2016) An open-source computational tool to automatically quantify immunolabeled retinal ganglion cells. Exp Eye Res 147:50-56
Jolly, Amber L; Luan, Chi-Hao; Dusel, Brendon E et al. (2016) A Genome-wide RNAi Screen for Microtubule Bundle Formation and Lysosome Motility Regulation in Drosophila S2 Cells. Cell Rep 14:611-620
Goodman, Allen; Carpenter, Anne E (2016) High-Throughput, Automated Image Processing for Large-Scale Fluorescence Microscopy Experiments. Microsc Microanal 22:538-539
Uhlmann, Virginie; Singh, Shantanu; Carpenter, Anne E (2016) CP-CHARM: segmentation-free image classification made accessible. BMC Bioinformatics 17:51
Bray, Mark-Anthony; Vokes, Martha S; Carpenter, Anne E (2015) Using CellProfiler for Automatic Identification and Measurement of Biological Objects in Images. Curr Protoc Mol Biol 109:14.17.1-13
Du, Ziming; Abedalthagafi, Malak; Aizer, Ayal A et al. (2015) Increased expression of the immune modulatory molecule PD-L1 (CD274) in anaplastic meningioma. Oncotarget 6:4704-16
Bray, Mark-Anthony; Carpenter, Anne E (2015) CellProfiler Tracer: exploring and validating high-throughput, time-lapse microscopy image data. BMC Bioinformatics 16:368

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