全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

相关文章

更多...
PLOS ONE  2012 

Automatic Extraction of Nuclei Centroids of Mouse Embryonic Cells from Fluorescence Microscopy Images

DOI: 10.1371/journal.pone.0035550

Full-Text   Cite this paper   Add to My Lib

Abstract:

Accurate identification of cell nuclei and their tracking using three dimensional (3D) microscopic images is a demanding task in many biological studies. Manual identification of nuclei centroids from images is an error-prone task, sometimes impossible to accomplish due to low contrast and the presence of noise. Nonetheless, only a few methods are available for 3D bioimaging applications, which sharply contrast with 2D analysis, where many methods already exist. In addition, most methods essentially adopt segmentation for which a reliable solution is still unknown, especially for 3D bio-images having juxtaposed cells. In this work, we propose a new method that can directly extract nuclei centroids from fluorescence microscopy images. This method involves three steps: (i) Pre-processing, (ii) Local enhancement, and (iii) Centroid extraction. The first step includes two variations: first variation (Variant-1) uses the whole 3D pre-processed image, whereas the second one (Variant-2) modifies the preprocessed image to the candidate regions or the candidate hybrid image for further processing. At the second step, a multiscale cube filtering is employed in order to locally enhance the pre-processed image. Centroid extraction in the third step consists of three stages. In Stage-1, we compute a local characteristic ratio at every voxel and extract local maxima regions as candidate centroids using a ratio threshold. Stage-2 processing removes spurious centroids from Stage-1 results by analyzing shapes of intensity profiles from the enhanced image. An iterative procedure based on the nearest neighborhood principle is then proposed to combine if there are fragmented nuclei. Both qualitative and quantitative analyses on a set of 100 images of 3D mouse embryo are performed. Investigations reveal a promising achievement of the technique presented in terms of average sensitivity and precision (i.e., 88.04% and 91.30% for Variant-1; 86.19% and 95.00% for Variant-2), when compared with an existing method (86.06% and 90.11%), originally developed for analyzing C. elegans images.

References

[1]  Hamahashi S, Onami S, Kitano H (2005) Detection of nuclei in 4d nomarski dic microscope images of early caenorhabditis elegans embryos using local image entropy and object tracking. BMC Bioinformatics 6: 1–15.
[2]  Peng H (2008) Bioimage informatics: A new area of engineering biology. Bioinformatics 24: 1827–1836.
[3]  Schnabel R, Hutter H, Moerman D, Schnabel H (1997) Assessing normal embryogenesis in caenorhadditis elegans using a 4d microscope: Variability of development and regional specification. Developmental Biology 184: 234–265.
[4]  Parfitt DE, Zernicka-Goetz M (2010) Epigenetic modification affecting expression of cell polarity and cell fate genes to regulate lineage specification in the early mouse embryo. Molecular Biology of the Cell 21: 2649–2660.
[5]  Li G, Liu T, Tarokh A, Nie J, Guo L, et al. (2007) 3d cell nuclei segmentation based on gradient ow tracking. BMC Cell Biology 8: 1–10.
[6]  Dzyubachyk O, Cappellen WA, Essers J, Niessen WJ, Meijering E (2010) Advanced level-set-based cell tracking in time-lapse uorescence microscopy. IEEE Trans on Medical Imaging 29: 852–867.
[7]  Wang Q, Niemi J, Tan CM, You L, West M (2010) Image segmentation and dynamic lineage analysis in single-cell uorescence microscopy. Cytometry Part A 77A: 101–110.
[8]  Keller PJ, Schmidt AD, Wittbrodt J, Stelzer EHK (2008) Reconstruction of zebrafish early embryonic development by scanned light sheet microscopy. Science 322: 1065–1069.
[9]  Russ JC (2007) The Image Processing Handbook. Boca Raton, FL 33487–2742: CRC Press.
[10]  Bao Z, Murray JI, Boyle T, Ooi SL, Sandel MJ, et al. (2006) Automated cell lineage tracing in caenorhabditis elegans. Proceedings of the National Academy of Science of USA 103: 2707–2712.
[11]  Fujimori T (2010) Preimplantation development of mouse: A view from cellular behaviour. Development, Growth Differentiation 52: 253–262.
[12]  Kurotaki Y, Hatta K, Nabeshima Y, Fujimori T (2007) Blastocyst axis is specified independently of early cell lineage but aligns with the zp shape. Science 316: 719–723.
[13]  PLUTO (Computer Aided Diagnosis System for Multiple Organs and Systems) Website. 25: Available: http://pluto.newves.org/trac. Accessed 2011 December.
[14]  Ostu N (1979) A threshold selection method from gray-level histograms. IEEE Trans SMC 9: 62–66.
[15]  Foucher S, Benie GB, Boucher JM (2001) Multiscale map filtering for sar images. IEEE Trans on Image Processing 10: 49–60.
[16]  Lakshmanan V (2004) A separable filter for directly smoothing. IEEE Geosc and Remote Sensing Letters 1: 192–195.
[17]  Makhoul J, Kubala F, Schwartz R, Weischedel R (1999) Performance measures for information extraction. Proceedings of DARPA Broadcast News Workshop, Herndon, VA, February 1999. pp. 249–252.
[18]  Olson DL, Delen D (2008) Advanced Data Mining Techniques. Berlin Heidelberg: Springer-Verlag.
[19]  MIST (Media Integration and Standard Toolkit) Website. 10: Available: http://mist.murase.m.is.nagoya-u.ac.jp/t?rac-en/. Accessed 2012 April.
[20]  ImageJ (Image Processing and Analysis in Java) Website. 10: Available: http://rsbweb.nih.gov/ij/. Accessed 2012 April.
[21]  Williams DB, Madisetti VK (1999) Digital Signal Processing Handbook. ISBN 0849321352: CRC Press.
[22]  Bukhari SS, Shafait F, Breuel TM (2009) Adaptive binarization of unconstrained hand-held camera-captured document images. Journal of Universal Computer Science 15: 3343–3363.

Full-Text

Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133