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http://hdl.handle.net/20.500.12188/17775
Наслов: | Measurement-oriented deep-learning workflow for improved segmentation of myelin and axons in high-resolution images of human cerebral white matter | Authors: | Janjic, Predrag Petrovski, Kristijan Dolgoski, Blagoja Smiley, John Zdravkovski, Panche Pavlovski, Goran Jakjovski, Zlatko Davcheva, Natasha Poposka, Verica Stankov, Aleksandar Rosoklija, Gorazd Petrushevska, Gordana Kocarev, Ljupcho Dwork, Andrew J. |
Keywords: | myelin measurement electron micrographs axon |
Issue Date: | окт-2019 | Publisher: | Elsevier BV | Journal: | Journal of Neuroscience Methods | Abstract: | Background: Standard segmentation of high-contrast electron micrographs (EM) identifies myelin accurately but does not translate easily into measurements of individual axons and their myelin, even in cross-sections of parallel fibers. We describe automated segmentation and measurement of each myelinated axon and its sheath in EMs of arbitrarily oriented human white matter from autopsies. New methods: Preliminary segmentation of myelin, axons and background by machine learning, using selected filters, precedes automated correction of systematic errors. Final segmentation is done by a deep neural network (DNN). Automated measurement of each putative fiber rejects measures encountering pre-defined artifacts and excludes fibers failing to satisfy pre-defined conditions. Results: Improved segmentation of three sets of 30 annotated images each (two sets from human prefrontal white matter and one from human optic nerve) is achieved with a DNN trained only with a subset of the first set from prefrontal white matter. Total number of myelinated axons identified by the DNN differed from expert segmentation by 0.2%, 2.9%, and -5.1%, respectively. G-ratios differed by 2.96%, 0.74% and 2.83%. Intraclass correlation coefficients between DNN and annotated segmentation were mostly>0.9, indicating nearly interchangeable performance. Comparison with existing method(s): Measurement-oriented studies of arbitrarily oriented fibers from central white matter are rare. Published methods are typically applied to cross-sections of fascicles and measure aggregated areas of myelin sheaths and axons, allowing estimation only of average g-ratio. Conclusions: Automated segmentation and measurement of axons and myelin is complex. We report a feasible approach that has so far proven comparable to manual segmentation. | URI: | http://hdl.handle.net/20.500.12188/17775 | DOI: | 10.1016/j.jneumeth.2019.108373 |
Appears in Collections: | Faculty of Medicine: Journal Articles |
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Measurment oriented deep learning - Elsevier.pdf | 3.85 MB | Adobe PDF | View/Open |
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