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Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research

BACKGROUND: Massive datasets comprising high-resolution images, generated in neuro-imaging studies and in clinical imaging research, are increasingly challenging our ability to analyze, share, and filter such images in clinical and basic translational research. Pivot collection exploratory analysis...

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Autores principales: Viangteeravat, Teeradache, Anyanwu, Matthew N, Ra Nagisetty, Venkateswara, Kuscu, Emin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3164611/
https://www.ncbi.nlm.nih.gov/pubmed/21884637
http://dx.doi.org/10.1186/2043-9113-1-18
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author Viangteeravat, Teeradache
Anyanwu, Matthew N
Ra Nagisetty, Venkateswara
Kuscu, Emin
author_facet Viangteeravat, Teeradache
Anyanwu, Matthew N
Ra Nagisetty, Venkateswara
Kuscu, Emin
author_sort Viangteeravat, Teeradache
collection PubMed
description BACKGROUND: Massive datasets comprising high-resolution images, generated in neuro-imaging studies and in clinical imaging research, are increasingly challenging our ability to analyze, share, and filter such images in clinical and basic translational research. Pivot collection exploratory analysis provides each user the ability to fully interact with the massive amounts of visual data to fully facilitate sufficient sorting, flexibility and speed to fluidly access, explore or analyze the massive image data sets of high-resolution images and their associated meta information, such as neuro-imaging databases from the Allen Brain Atlas. It is used in clustering, filtering, data sharing and classifying of the visual data into various deep zoom levels and meta information categories to detect the underlying hidden pattern within the data set that has been used. METHOD: We deployed prototype Pivot collections using the Linux CentOS running on the Apache web server. We also tested the prototype Pivot collections on other operating systems like Windows (the most common variants) and UNIX, etc. It is demonstrated that the approach yields very good results when compared with other approaches used by some researchers for generation, creation, and clustering of massive image collections such as the coronal and horizontal sections of the mouse brain from the Allen Brain Atlas. RESULTS: Pivot visual analytics was used to analyze a prototype of dataset Dab2 co-expressed genes from the Allen Brain Atlas. The metadata along with high-resolution images were automatically extracted using the Allen Brain Atlas API. It is then used to identify the hidden information based on the various categories and conditions applied by using options generated from automated collection. A metadata category like chromosome, as well as data for individual cases like sex, age, and plan attributes of a particular gene, is used to filter, sort and to determine if there exist other genes with a similar characteristics to Dab2. And online access to the mouse brain pivot collection can be viewed using the link http://edtech-dev.uthsc.edu/CTSI/teeDev1/unittest/PaPa/collection.html (user name: tviangte and password: demome) CONCLUSIONS: Our proposed algorithm has automated the creation of large image Pivot collections; this will enable investigators of clinical research projects to easily and quickly analyse the image collections through a perspective that is useful for making critical decisions about the image patterns discovered.
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spelling pubmed-31646112011-09-02 Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research Viangteeravat, Teeradache Anyanwu, Matthew N Ra Nagisetty, Venkateswara Kuscu, Emin J Clin Bioinforma Methodology BACKGROUND: Massive datasets comprising high-resolution images, generated in neuro-imaging studies and in clinical imaging research, are increasingly challenging our ability to analyze, share, and filter such images in clinical and basic translational research. Pivot collection exploratory analysis provides each user the ability to fully interact with the massive amounts of visual data to fully facilitate sufficient sorting, flexibility and speed to fluidly access, explore or analyze the massive image data sets of high-resolution images and their associated meta information, such as neuro-imaging databases from the Allen Brain Atlas. It is used in clustering, filtering, data sharing and classifying of the visual data into various deep zoom levels and meta information categories to detect the underlying hidden pattern within the data set that has been used. METHOD: We deployed prototype Pivot collections using the Linux CentOS running on the Apache web server. We also tested the prototype Pivot collections on other operating systems like Windows (the most common variants) and UNIX, etc. It is demonstrated that the approach yields very good results when compared with other approaches used by some researchers for generation, creation, and clustering of massive image collections such as the coronal and horizontal sections of the mouse brain from the Allen Brain Atlas. RESULTS: Pivot visual analytics was used to analyze a prototype of dataset Dab2 co-expressed genes from the Allen Brain Atlas. The metadata along with high-resolution images were automatically extracted using the Allen Brain Atlas API. It is then used to identify the hidden information based on the various categories and conditions applied by using options generated from automated collection. A metadata category like chromosome, as well as data for individual cases like sex, age, and plan attributes of a particular gene, is used to filter, sort and to determine if there exist other genes with a similar characteristics to Dab2. And online access to the mouse brain pivot collection can be viewed using the link http://edtech-dev.uthsc.edu/CTSI/teeDev1/unittest/PaPa/collection.html (user name: tviangte and password: demome) CONCLUSIONS: Our proposed algorithm has automated the creation of large image Pivot collections; this will enable investigators of clinical research projects to easily and quickly analyse the image collections through a perspective that is useful for making critical decisions about the image patterns discovered. BioMed Central 2011-07-15 /pmc/articles/PMC3164611/ /pubmed/21884637 http://dx.doi.org/10.1186/2043-9113-1-18 Text en Copyright ©2011 Viangteeravat et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Methodology
Viangteeravat, Teeradache
Anyanwu, Matthew N
Ra Nagisetty, Venkateswara
Kuscu, Emin
Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research
title Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research
title_full Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research
title_fullStr Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research
title_full_unstemmed Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research
title_short Automated generation of massive image knowledge collections using Microsoft Live Labs Pivot to promote neuroimaging and translational research
title_sort automated generation of massive image knowledge collections using microsoft live labs pivot to promote neuroimaging and translational research
topic Methodology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3164611/
https://www.ncbi.nlm.nih.gov/pubmed/21884637
http://dx.doi.org/10.1186/2043-9113-1-18
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