MOTIVATION: Automated identification of cell cycle phases captured via fluorescent microscopy is very important for understanding cell cycle and for drug discovery. In this article, we propose a novel cell detection method that utilizes both the intensity and shape information of the cell for better segmentation quality. In contrast to conventional off-line learning algorithms, an Online Support Vector Classifier (OSVC) is thus proposed, which removes support vectors from the old model and assigns new training examples weighted according to their importance to accommodate the ever-changing experimental conditions. RESULTS: We image three cell lines using fluorescent microscopy under different experiment conditions, including one treated with taxol. Then, we segment and classify the cell types into interphase, prophase, metaphase and anaphase. Experimental results show the effectiveness of the proposed system in image segmentation and cell phase identification. AVAILABILITY: The software and test datasets are available from the authors.
MOTIVATION: Automated identification of cell cycle phases captured via fluorescent microscopy is very important for understanding cell cycle and for drug discovery. In this article, we propose a novel cell detection method that utilizes both the intensity and shape information of the cell for better segmentation quality. In contrast to conventional off-line learning algorithms, an Online Support Vector Classifier (OSVC) is thus proposed, which removes support vectors from the old model and assigns new training examples weighted according to their importance to accommodate the ever-changing experimental conditions. RESULTS: We image three cell lines using fluorescent microscopy under different experiment conditions, including one treated with taxol. Then, we segment and classify the cell types into interphase, prophase, metaphase and anaphase. Experimental results show the effectiveness of the proposed system in image segmentation and cell phase identification. AVAILABILITY: The software and test datasets are available from the authors.
Authors: Qing Zhong; Alberto Giovanni Busetto; Juan P Fededa; Joachim M Buhmann; Daniel W Gerlich Journal: Nat Methods Date: 2012-05-27 Impact factor: 28.547
Authors: Michael Held; Michael H A Schmitz; Bernd Fischer; Thomas Walter; Beate Neumann; Michael H Olma; Matthias Peter; Jan Ellenberg; Daniel W Gerlich Journal: Nat Methods Date: 2010-08-08 Impact factor: 28.547
Authors: Julia Ritzerfeld; Steffen Remmele; Tao Wang; Koen Temmerman; Britta Brügger; Sabine Wegehingel; Stella Tournaviti; Jeroen R P M Strating; Felix T Wieland; Beate Neumann; Jan Ellenberg; Chris Lawerenz; Jürgen Hesser; Holger Erfle; Rainer Pepperkok; Walter Nickel Journal: Genome Res Date: 2011-07-27 Impact factor: 9.043
Authors: Benjamin Misselwitz; Gerhard Strittmatter; Balamurugan Periaswamy; Markus C Schlumberger; Samuel Rout; Peter Horvath; Karol Kozak; Wolf-Dietrich Hardt Journal: BMC Bioinformatics Date: 2010-01-14 Impact factor: 3.169