Development of Semantic Web-based Imaging Database for Biological
Morphome
- URL: http://arxiv.org/abs/2110.12058v1
- Date: Wed, 20 Oct 2021 15:59:35 GMT
- Title: Development of Semantic Web-based Imaging Database for Biological
Morphome
- Authors: Satoshi Kume, Hiroshi Masuya, Mitsuyo Maeda, Mitsuo Suga, Yosky
Kataoka, Norio Kobayashi
- Abstract summary: We introduce the RIKEN Microstructural Imaging MetaDatabase.
It is a semantic web-based imaging database in which image metadata are described.
We discuss advanced utilisation of morphological imaging data that can be promoted by this database.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We introduce the RIKEN Microstructural Imaging Metadatabase, a semantic
web-based imaging database in which image metadata are described using the
Resource Description Framework (RDF) and detailed biological properties
observed in the images can be represented as Linked Open Data. The metadata are
used to develop a large-scale imaging viewer that provides a straightforward
graphical user interface to visualise a large microstructural tiling image at
the gigabyte level. We applied the database to accumulate comprehensive
microstructural imaging data produced by automated scanning electron
microscopy. As a result, we have successfully managed vast numbers of images
and their metadata, including the interpretation of morphological phenotypes
occurring in sub-cellular components and biosamples captured in the images. We
also discuss advanced utilisation of morphological imaging data that can be
promoted by this database.
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