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      A Novel Validation Algorithm Allows for Automated Cell Tracking and the Extraction of Biologically Meaningful Parameters

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          Abstract

          Automated microscopy is currently the only method to non-invasively and label-free observe complex multi-cellular processes, such as cell migration, cell cycle, and cell differentiation. Extracting biological information from a time-series of micrographs requires each cell to be recognized and followed through sequential microscopic snapshots. Although recent attempts to automatize this process resulted in ever improving cell detection rates, manual identification of identical cells is still the most reliable technique. However, its tedious and subjective nature prevented tracking from becoming a standardized tool for the investigation of cell cultures. Here, we present a novel method to accomplish automated cell tracking with a reliability comparable to manual tracking. Previously, automated cell tracking could not rival the reliability of manual tracking because, in contrast to the human way of solving this task, none of the algorithms had an independent quality control mechanism; they missed validation. Thus, instead of trying to improve the cell detection or tracking rates, we proceeded from the idea to automatically inspect the tracking results and accept only those of high trustworthiness, while rejecting all other results. This validation algorithm works independently of the quality of cell detection and tracking through a systematic search for tracking errors. It is based only on very general assumptions about the spatiotemporal contiguity of cell paths. While traditional tracking often aims to yield genealogic information about single cells, the natural outcome of a validated cell tracking algorithm turns out to be a set of complete, but often unconnected cell paths, i.e. records of cells from mitosis to mitosis. This is a consequence of the fact that the validation algorithm takes complete paths as the unit of rejection/acceptance. The resulting set of complete paths can be used to automatically extract important biological parameters with high reliability and statistical significance. These include the distribution of life/cycle times and cell areas, as well as of the symmetry of cell divisions and motion analyses. The new algorithm thus allows for the quantification and parameterization of cell culture with unprecedented accuracy. To evaluate our validation algorithm, two large reference data sets were manually created. These data sets comprise more than 320,000 unstained adult pancreatic stem cells from rat, including 2592 mitotic events. The reference data sets specify every cell position and shape, and assign each cell to the correct branch of its genealogic tree. We provide these reference data sets for free use by others as a benchmark for the future improvement of automated tracking methods.

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          Cells keep a memory of their tissue origin during axolotl limb regeneration.

          During limb regeneration adult tissue is converted into a zone of undifferentiated progenitors called the blastema that reforms the diverse tissues of the limb. Previous experiments have led to wide acceptance that limb tissues dedifferentiate to form pluripotent cells. Here we have reexamined this question using an integrated GFP transgene to track the major limb tissues during limb regeneration in the salamander Ambystoma mexicanum (the axolotl). Surprisingly, we find that each tissue produces progenitor cells with restricted potential. Therefore, the blastema is a heterogeneous collection of restricted progenitor cells. On the basis of these findings, we further demonstrate that positional identity is a cell-type-specific property of blastema cells, in which cartilage-derived blastema cells harbour positional identity but Schwann-derived cells do not. Our results show that the complex phenomenon of limb regeneration can be achieved without complete dedifferentiation to a pluripotent state, a conclusion with important implications for regenerative medicine.
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            The postembryonic cell lineages of the hermaphrodite and male gonads in Caenorhabditis elegans.

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              Continuous single-cell imaging of blood generation from haemogenic endothelium.

              Despite decades of research, the identity of the cells generating the first haematopoietic cells in mammalian embryos is unknown. Indeed, whether blood cells arise from mesodermal cells, mesenchymal progenitors, bipotent endothelial-haematopoietic precursors or haemogenic endothelial cells remains controversial. Proximity of endothelial and blood cells at sites of embryonic haematopoiesis, as well as their similar gene expression, led to the hypothesis of the endothelium generating blood. However, owing to lacking technology it has been impossible to observe blood cell emergence continuously at the single-cell level, and the postulated existence of haemogenic endothelial cells remains disputed. Here, using new imaging and cell-tracking methods, we show that embryonic endothelial cells can be haemogenic. By continuous long-term single-cell observation of mouse mesodermal cells generating endothelial cell and blood colonies, it was possible to detect haemogenic endothelial cells giving rise to blood cells. Living endothelial and haematopoietic cells were identified by simultaneous detection of morphology and multiple molecular and functional markers. Detachment of nascent blood cells from endothelium is not directly linked to asymmetric cell division, and haemogenic endothelial cells are specified from cells already expressing endothelial markers. These results improve our understanding of the developmental origin of mammalian blood and the potential generation of haematopoietic stem cells from embryonic stem cells.
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                Author and article information

                Contributors
                Role: Editor
                Journal
                PLoS One
                plos
                plosone
                PLoS ONE
                Public Library of Science (San Francisco, USA )
                1932-6203
                2011
                8 November 2011
                : 6
                : 11
                : e27315
                Affiliations
                [1 ]Fraunhofer Institution for Marine Biotechnology, Lübeck, Germany
                [2 ]Institute for Neuro- and Bioinformatics, University of Lübeck, Lübeck, Germany
                [3 ]Graduate School for Computing in Medicine and Life Science, University of Lübeck, Lübeck, Germany
                Leiden University Medical Center, The Netherlands
                Author notes

                Conceived and designed the experiments: DHR SS TB AMM CK. Performed the experiments: SS DHR TB. Analyzed the data: TB DHR. Contributed reagents/materials/analysis tools: TB DHR. Wrote the paper: DHR TB.

                Article
                PONE-D-11-00356
                10.1371/journal.pone.0027315
                3210784
                22087288
                3fb0e5c5-ec21-4a5c-981a-8fe4c14c7a6f
                Rapoport et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
                History
                : 22 December 2010
                : 14 October 2011
                Page count
                Pages: 16
                Categories
                Research Article
                Biology
                Biotechnology
                Computational Biology
                Signaling Networks
                Systems Biology
                Molecular Cell Biology
                Cell Adhesion
                Cell Division
                Cell Growth
                Cellular Structures
                Cytometry

                Uncategorized
                Uncategorized

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