Advances in automated 3‐D image analysis of cell populations imaged by confocal microscopy
H. Ancin,Badrinath Roysam,Thomas Edward Dufresne,Matthew M. Chestnut,Gregg M. Ridder,Donald H. Szarowski,James N. Turner,James N. Turner +7 more
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TL;DR: Algorithms for efficient data pre-processing and adaptive segmentation, effective handling of image anisotrophy, and fast 3-D morphological algorithms for separating overlapping or connected clusters utilizing image gradient information whenever available are reported.
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Abstract: Automated three-dimensional (3-D) image analysis methods are presented for rapid and effective analysis of populations of fluorescently labeled cells or nuclei in thick tissue sections that have been imaged three dimensionally using a confocal microscope. The methods presented here greatly improve upon our earlier work (Roysam et al.:J Microsc 173: 115-126, 1994). The principal advances reported are: algorithms for efficient data pre-processing and adaptive segmentation, effective handling of image anisotrophy, and fast 3-D morphological algorithms for separating overlapping or connected clusters utilizing image gradient information whenever available. A particular feature of this method is its ability to separate densely packed and connected clusters of cell nuclei. Some of the challenges overcome in this work include the efficient and effective handling of imaging noise, anisotrophy, and large variations in image parameters such as intensity, object size, and shape. The method is able to handle significant inter-cell, intra-cell, inter-image, and intra-image variations. Studies indicate that this method is rapid, robust, and adaptable. Examples were presented to illustrate the applicability of this approach to analyzing images of nuclei from densely packed regions in thick sections of rat liver, and brain that were labeled with a fluorescent Schiff reagent.
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Citations
Improved Automatic Detection and Segmentation of Cell Nuclei in Histopathology Images
TL;DR: This paper presents a robust and accurate novel method for segmenting cell nuclei using a combination of ideas, and presents an efficient semiautomated approach to editing automated segmentation results that requires two mouse clicks per operation.
761
A hybrid 3D watershed algorithm incorporating gradient cues and object models for automatic segmentation of nuclei in confocal image stacks
Gang Lin,Umesh Adiga,Umesh Adiga,Kathy Olson,John F. Guzowski,Carol A. Barnes,Badrinath Roysam +6 more
TL;DR: This work has shown that tight clustering of nuclei in 3D confocal microscope images is a common source of segmentation error, and a compelling need to minimize these errors for constructing highly automated scoring systems.
364
Patent
Method and apparatus for screening chemical compounds
Timothy D. Harris,Richard L. Hansen,William J. Karsh,Neal A. Nicklaus,Jay K. Trautman +4 more
- 27 Oct 2000
TL;DR: In this paper, a laser linescan confocal microscope with high speed, high resolution and multi-wavelength capabilities and real-time data processing is used for screening large numbers of chemical compounds and performing a wide variety of fluorescent assays, including live cell assays.
244
Hierarchical, model-based merging of multiple fragments for improved three-dimensional segmentation of nuclei.
TL;DR: To achieve higher accuracy without sacrificing scale, more sophisticated yet computationally efficient algorithms are needed.
116
A multi-model approach to simultaneous segmentation and classification of heterogeneous populations of cell nuclei in 3D confocal microscope images.
Gang Lin,Monica K. Chawla,Kathy Olson,Carol A. Barnes,John F. Guzowski,CS Bjornsson,William Shain,Badrinath Roysam +7 more
TL;DR: The multi‐model method was found to achieve high accuracy on nuclear segmentation and classification by correctly resolving ambiguities in clustered regions containing heterogeneous cell populations.
114
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