Last modified by puchades on 2022/11/02 10:16

From version 22.1
edited by sharoncy
on 2020/03/09 14:28
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To version 25.1
edited by sharoncy
on 2020/03/09 14:36
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16 16  The QUINT workflow enables the quantification and spatial analysis of labelled features in histological images of rodent brain sections based on reference atlases of the brain. It utilises three open-source software:
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18 -1. (% style="color:#2980b9" %)//ilastik//(%%) allows the extraction of labelled features such as cells by segmentation.
19 -1. (% style="color:#2980b9" %)//QuickNII//(%%) generates atlas maps customised to match the proportions and cutting plane of the brain sections.
20 -1. (% style="color:#2980b9" %)//Nutil//(%%) enables image transformations, in addition to quantification and spatial analysis of features by drawing on the output of ilastik and QuickNII.
18 +1. [[(% style="color:#2980b9" %)//ilastik//>>doc:.3\. Image segmentation with ilastik.WebHome]](%%) allows the extraction of labelled features such as cells by segmentation.
19 +1. [[(% style="color:#2980b9" %)//QuickNII//>>doc:.Image registration to reference atlas using QuickNII.WebHome]](%%) generates atlas maps customised to match the proportions and cutting plane of the brain sections.
20 +1. (% style="color:#2980b9" %)//Nutil//(%%) enables image [[transformations>>doc:.1\. Preparing the images.WebHome]], in addition to [[quantification and spatial analysis>>doc:.4\. Quantification and spatial analysis with Nutil.WebHome]] of features by drawing on the output of ilastik and QuickNII.
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22 22  In combination, the tools facilitate semi-automated quantification, eliminating the need for more time consuming methods such as stereological analysis with manual delineation of brain regions.
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35 35  Yates SC et al. 2019. QUINT: Workflow for Quantification and Spatial Analysis of Features in Histological Images From Rodent Brain. Front. Neuroinform. 13:75. doi: 10.3389/fninf.2019.00075
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37 -[[https>>url:https://www.nitrc.org/projects/nutil/]][[:~~/~~/www.nitrc.org/projects/nutil>>url:https://www.nitrc.org/projects/nutil/]][[/>>url:https://www.nitrc.org/projects/nutil/]]
37 +[[www.nitrc.org/projects/nutil>>url:https://www.nitrc.org/projects/nutil/]][[/>>url:https://www.nitrc.org/projects/quicknii]]
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39 -[[https:~~/~~/>>url:https://www.nitrc.org/projects/quicknii]][[www.nitrc.org/projects/quicknii>>url:https://www.nitrc.org/projects/quicknii]]
39 +www.nitrc.org/projects/quicknii
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41 41  [[https:~~/~~/www.ilastik.org>>url:https://www.ilastik.org/]][[/>>url:https://www.ilastik.org/]]
42 42  )))