| Literature DB >> 27853188 |
Joe Chalfoun1, Michael Majurski1, Alden Dima1, Michael Halter2, Kiran Bhadriraju3,4, Mary Brady1.
Abstract
The ability to accurately track cells and particles from images is critical to many biomedical problems. To address this, we developed Lineage Mapper, an open-source tracker for time-lapse images of biological cells, colonies, and particles. Lineage Mapper tracks objects independently of the segmentation method, detects mitosis in confluence, separates cell clumps mistakenly segmented as a single cell, provides accuracy and scalability even on terabyte-sized datasets, and creates division and/or fusion lineages. Lineage Mapper has been tested and validated on multiple biological and simulated problems. The software is available in ImageJ and Matlab at isg.nist.gov.Entities:
Mesh:
Year: 2016 PMID: 27853188 PMCID: PMC5113068 DOI: 10.1038/srep36984
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Schematic description of Lineage Mapper algorithm and output summary data and visualizations.
Figure 2Example datasets where LM was used.
Each dataset was segmented with a different segmentation method and all were tracked using LM.
Figure 3Examples of post-processing tracking outputs to analyze biological hypotheses.
Figure 4Cell and particle tracking performance of Lineage Mapper on real and simulated datasets.
(a) Tracking accuracy measured on 12 simulated reference datasets for performance quantification and comparison between 15 trackers. (b,c) Tracking accuracy measured on manual segmentation and tracking of two randomly chosen time-lapse images of NIH 3T3 fibroblast cells and MCF10A breast epithelial sheets respectively.