Motivation: Recently, confocal light sheet microscopy has enabled high-throughput acquisition of whole mouse brain 3D images at the micron scale resolution. This poses the unprecedented challenge of creating accurate digital maps of the whole set of cells in a brain. Results: We introduce a fast and scalable algorithm for fully automated cell identification. We obtained the whole digital map of Purkinje cells in mouse cerebellum consisting of a set of 3D cell center coordinates. The method is accurate and we estimated an F1 measure of 0.96 using 56 representative volumes, totaling 1.09 GVoxel and containing 4138 manually annotated soma centers. Availability and implementation: Source code and its documentation are available at http://bcfind.dinfo.unifi.it/. The whole pipeline of methods is implemented in Python and makes use of Pylearn2 and modified parts of Scikit-learn. Brain images are available on request.

Large-scale automated identification of mouse brain cells in confocal light sheet microscopy images / P. Frasconi;L. Silvestri;P. Soda;R. Cortini;F. S. Pavone;G. Iannello. - In: BIOINFORMATICS. - ISSN 1367-4803. - STAMPA. - 30:(2014), pp. i587-i593. [10.1093/bioinformatics/btu469]

Large-scale automated identification of mouse brain cells in confocal light sheet microscopy images

FRASCONI, PAOLO;SILVESTRI, LUDOVICO;PAVONE, FRANCESCO SAVERIO;
2014

Abstract

Motivation: Recently, confocal light sheet microscopy has enabled high-throughput acquisition of whole mouse brain 3D images at the micron scale resolution. This poses the unprecedented challenge of creating accurate digital maps of the whole set of cells in a brain. Results: We introduce a fast and scalable algorithm for fully automated cell identification. We obtained the whole digital map of Purkinje cells in mouse cerebellum consisting of a set of 3D cell center coordinates. The method is accurate and we estimated an F1 measure of 0.96 using 56 representative volumes, totaling 1.09 GVoxel and containing 4138 manually annotated soma centers. Availability and implementation: Source code and its documentation are available at http://bcfind.dinfo.unifi.it/. The whole pipeline of methods is implemented in Python and makes use of Pylearn2 and modified parts of Scikit-learn. Brain images are available on request.
2014
30
i587
i593
P. Frasconi;L. Silvestri;P. Soda;R. Cortini;F. S. Pavone;G. Iannello
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/891130
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