Learning to detect cells using non-overlapping extremal regions.

Arteta C, Lempitsky V, Noble J, Zisserman A

Cell detection in microscopy images is an important step in the automation of cell based-experiments. We propose a machine learning-based cell detection method applicable to different modalities. The method consists of three steps: first, a set of candidate cell-like regions is identified. Then, each candidate region is evaluated using a statistical model of the cell appearance. Finally, dynamic programming picks a set of non-overlapping regions that match the model. The cell model requires few images with simple dot annotation for training and can be learned within a structured SVM framework. In the reported experiments, state-of-the-art cell detection accuracy is achieved for HandE stained histology, fluorescence, and phase-contrast images.

Keywords:

Microscopy, Phase-Contrast

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Computer Simulation

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Algorithms

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Models, Statistical

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Cell Size

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Software

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Pattern Recognition, Automated

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Image Processing, Computer-Assisted

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Support Vector Machines

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Artificial Intelligence

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Hela Cells

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Reproducibility of Results

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Microscopy

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Humans