ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser

Background: Image bioinformatics infrastructure typically relies on a combination of server-side high-performance computing and client desktop applications tailored for graphic rendering. On the server side, matrix manipulation environments are often used as the back-end where deployment of speciali...

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Main Authors: Jonas S Almeida, Egiebade E Iriabho, Vijaya L Gorrepati, Sean R Wilkinson, Alexander Grüneberg, David E Robbins, James R Hackney
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2012-01-01
Series:Journal of Pathology Informatics
Subjects:
Online Access:http://www.jpathinformatics.org/article.asp?issn=2153-3539;year=2012;volume=3;issue=1;spage=25;epage=25;aulast=
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spelling doaj-f2b594340d1b4434acefe0d489826e322020-11-24T23:59:35ZengWolters Kluwer Medknow PublicationsJournal of Pathology Informatics2153-35392153-35392012-01-0131252510.4103/2153-3539.98813ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browserJonas S AlmeidaEgiebade E IriabhoVijaya L GorrepatiSean R WilkinsonAlexander GrünebergDavid E RobbinsJames R HackneyBackground: Image bioinformatics infrastructure typically relies on a combination of server-side high-performance computing and client desktop applications tailored for graphic rendering. On the server side, matrix manipulation environments are often used as the back-end where deployment of specialized analytical workflows takes place. However, neither the server-side nor the client-side desktop solution, by themselves or combined, is conducive to the emergence of open, collaborative, computational ecosystems for image analysis that are both self-sustained and user driven. Materials and Methods: ImageJS was developed as a browser-based webApp, untethered from a server-side backend, by making use of recent advances in the modern web browser such as a very efficient compiler, high-end graphical rendering capabilities, and I/O tailored for code migration. Results : Multiple versioned code hosting services were used to develop distinct ImageJS modules to illustrate its amenability to collaborative deployment without compromise of reproducibility or provenance. The illustrative examples include modules for image segmentation, feature extraction, and filtering. The deployment of image analysis by code migration is in sharp contrast with the more conventional, heavier, and less safe reliance on data transfer. Accordingly, code and data are loaded into the browser by exactly the same script tag loading mechanism, which offers a number of interesting applications that would be hard to attain with more conventional platforms, such as NIH′s popular ImageJ application. Conclusions : The modern web browser was found to be advantageous for image bioinformatics in both the research and clinical environments. This conclusion reflects advantages in deployment scalability and analysis reproducibility, as well as the critical ability to deliver advanced computational statistical procedures machines where access to sensitive data is controlled, that is, without local "download and installation."http://www.jpathinformatics.org/article.asp?issn=2153-3539;year=2012;volume=3;issue=1;spage=25;epage=25;aulast=Cloud computingimage analysiswebApp
collection DOAJ
language English
format Article
sources DOAJ
author Jonas S Almeida
Egiebade E Iriabho
Vijaya L Gorrepati
Sean R Wilkinson
Alexander Grüneberg
David E Robbins
James R Hackney
spellingShingle Jonas S Almeida
Egiebade E Iriabho
Vijaya L Gorrepati
Sean R Wilkinson
Alexander Grüneberg
David E Robbins
James R Hackney
ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
Journal of Pathology Informatics
Cloud computing
image analysis
webApp
author_facet Jonas S Almeida
Egiebade E Iriabho
Vijaya L Gorrepati
Sean R Wilkinson
Alexander Grüneberg
David E Robbins
James R Hackney
author_sort Jonas S Almeida
title ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
title_short ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
title_full ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
title_fullStr ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
title_full_unstemmed ImageJS: Personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
title_sort imagejs: personalized, participated, pervasive, and reproducible image bioinformatics in the web browser
publisher Wolters Kluwer Medknow Publications
series Journal of Pathology Informatics
issn 2153-3539
2153-3539
publishDate 2012-01-01
description Background: Image bioinformatics infrastructure typically relies on a combination of server-side high-performance computing and client desktop applications tailored for graphic rendering. On the server side, matrix manipulation environments are often used as the back-end where deployment of specialized analytical workflows takes place. However, neither the server-side nor the client-side desktop solution, by themselves or combined, is conducive to the emergence of open, collaborative, computational ecosystems for image analysis that are both self-sustained and user driven. Materials and Methods: ImageJS was developed as a browser-based webApp, untethered from a server-side backend, by making use of recent advances in the modern web browser such as a very efficient compiler, high-end graphical rendering capabilities, and I/O tailored for code migration. Results : Multiple versioned code hosting services were used to develop distinct ImageJS modules to illustrate its amenability to collaborative deployment without compromise of reproducibility or provenance. The illustrative examples include modules for image segmentation, feature extraction, and filtering. The deployment of image analysis by code migration is in sharp contrast with the more conventional, heavier, and less safe reliance on data transfer. Accordingly, code and data are loaded into the browser by exactly the same script tag loading mechanism, which offers a number of interesting applications that would be hard to attain with more conventional platforms, such as NIH′s popular ImageJ application. Conclusions : The modern web browser was found to be advantageous for image bioinformatics in both the research and clinical environments. This conclusion reflects advantages in deployment scalability and analysis reproducibility, as well as the critical ability to deliver advanced computational statistical procedures machines where access to sensitive data is controlled, that is, without local "download and installation."
topic Cloud computing
image analysis
webApp
url http://www.jpathinformatics.org/article.asp?issn=2153-3539;year=2012;volume=3;issue=1;spage=25;epage=25;aulast=
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