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1.
IEEE Trans Med Imaging ; 29(8): 1463-73, 2010 Aug.
Article in English | MEDLINE | ID: mdl-20525532

ABSTRACT

Microscopy cell image analysis is a fundamental tool for biological research. In particular, multivariate fluorescence microscopy is used to observe different aspects of cells in cultures. It is still common practice to perform analysis tasks by visual inspection of individual cells which is time consuming, exhausting and prone to induce subjective bias. This makes automatic cell image analysis essential for large scale, objective studies of cell cultures. Traditionally the task of automatic cell analysis is approached through the use of image segmentation methods for extraction of cells' locations and shapes. Image segmentation, although fundamental, is neither an easy task in computer vision nor is it robust to image quality changes. This makes image segmentation for cell detection semi-automated requiring frequent tuning of parameters. We introduce a new approach for cell detection and shape estimation in multivariate images based on the sliding band filter (SBF). This filter's design makes it adequate to detect overall convex shapes and as such it performs well for cell detection. Furthermore, the parameters involved are intuitive as they are directly related to the expected cell size. Using the SBF filter we detect cells' nucleus and cytoplasm location and shapes. Based on the assumption that each cell has the same approximate shape center in both nuclei and cytoplasm fluorescence channels, we guide cytoplasm shape estimation by the nuclear detections improving performance and reducing errors. Then we validate cell detection by gathering evidence from nuclei and cytoplasm channels. Additionally, we include overlap correction and shape regularization steps which further improve the estimated cell shapes. The approach is evaluated using two datasets with different types of data: a 20 images benchmark set of simulated cell culture images, containing 1000 simulated cells; a 16 images Drosophila melanogaster Kc167 dataset containing 1255 cells, stained for DNA and actin. Both image datasets present a difficult problem due to the high variability of cell shapes and frequent cluster overlap between cells. On the Drosophila dataset our approach achieved a precision/recall of 95%/69% and 82%/90% for nuclei and cytoplasm detection respectively and an overall accuracy of 76%.


Subject(s)
Cell Nucleus/ultrastructure , Cytoplasm/ultrastructure , Image Processing, Computer-Assisted/methods , Microscopy, Fluorescence/methods , Actins/chemistry , Animals , Cell Aggregation , Cell Nucleus/chemistry , Cell Shape , Cytoplasm/chemistry , DNA/chemistry , Databases, Factual , Drosophila melanogaster , Multivariate Analysis , Reproducibility of Results
2.
Comput Biol Med ; 39(9): 785-93, 2009 Sep.
Article in English | MEDLINE | ID: mdl-19604506

ABSTRACT

To obtain development information of individual plant cells, it is necessary to perform in vivo imaging of the specimen under study, through time-lapse confocal microscopy. Automation of cell detection/marking process is important to provide research tools in order to ease the search for special events, such as cell division. In this paper we discuss an automatic cell detection approach for Arabidopsis thaliana based on segmentation, which selects the best cell candidates from a starting watershed-based image segmentation and improves the result by merging adjacent regions. The selection of individual cells is obtained using a support vector machine (SVM) classifier, based on a cell descriptor constructed from the shape and edge strength of the cells' contour. In addition we proposed a novel cell merging criterion based on edge strength along the line that connects adjacent cells' centroids, which is a valuable tool in the reduction of cell over-segmentation. The result is largely pruned of badly segmented and over-segmented cells, thus facilitating the study of cells. When comparing the results after merging with the basic watershed segmentation, we obtain 1.5% better coverage (increase in F-measure) and up to 27% better precision in correct cell segmentation.


Subject(s)
Arabidopsis/cytology , Plant Roots/cytology , Arabidopsis/growth & development , Artificial Intelligence , Cell Shape , Cell Wall/ultrastructure , Computer Simulation , Image Processing, Computer-Assisted/statistics & numerical data , Models, Biological
3.
Article in English | MEDLINE | ID: mdl-18002736

ABSTRACT

Renal scintigraphy is a well-established functional technique for the visual evaluation of the renal cortical mass. It allows the visualization of the radiopharmaceutical tracer distribution, the size, shape, symmetry, and position of the kidneys. However, the (visual) analysis of these images tend to be subjective, causing significant variability in the interpretation of findings. This paper proposes objective measures that reflect common findings observed in those images, and potentially can minimize the inter-observer variability. We also propose a segmentation method specific for renal scintigraphic images. Our preliminary experiments indicate that our proposed features agree in at least 90% of the cases with the specialists visual evaluation.


Subject(s)
Algorithms , Image Enhancement/methods , Image Interpretation, Computer-Assisted/methods , Kidney Diseases/diagnostic imaging , Kidney/diagnostic imaging , Radionuclide Imaging/methods , Humans , Reproducibility of Results , Sensitivity and Specificity
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