Automated cell nucleus detection for large-volume electron microscopy of neural tissue

Biomedical Imaging(2014)

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摘要
Volumetric electron microscopy techniques, such as serial block-face electron microscopy (SBEM), generate massive amounts of image data that are used for reconstructing neural circuits. Typically, this requires time-intensive manual annotation of cells and their connections. To facilitate this analysis, we study the problem of automated detection of cell nuclei in a new SBEM dataset that contains cerebral cortex, white matter, and striatum from an adult mouse brain. The dataset was manually annotated to identify the locations of all 3309 cell nuclei in the volume. We make both dataset and annotations available here. Using a hybrid approach that combines interactive learning, morphological processing, and object level feature classification, we demonstrate automated detection of cell nuclei at 92.4% recall and 95.1% precision. These algorithms are not RAM-limited and can scale to arbitrarily large datasets.
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关键词
biological tissues,brain,cellular biophysics,feature extraction,image classification,image reconstruction,learning (artificial intelligence),medical image processing,neurophysiology,object detection,adult mouse brain,automated cell nucleus detection,cell time-intensive manual annotation,cerebral cortex,hybrid approach,interactive learning,large-volume electron microscopy techniques,morphological processing,neural circuit reconstruction,neural tissue,object level feature classification,serial block-face electron microscopy,striatum,white matter,automated nucleus detection,block-face electron microscopy,block-wise connected components,connectomics,interactive segmentation,random forest,soma
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