<it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications

<p>Abstract</p> <p>Background</p> <p>The volume of health science publications is escalating rapidly. Thus, keeping up with developments is becoming harder as is the task of finding important cross-domain connections. When geographic location is a relevant component of...

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Main Authors: Turton Ian J, Stryker Michael S, MacEachren Alan M, Pezanowski Scott
Format: Article
Language:English
Published: BMC 2010-05-01
Series:International Journal of Health Geographics
Online Access:http://www.ij-healthgeographics.com/content/9/1/23
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spelling doaj-7dfc6c8b610e44a1904270727e4994fb2020-11-24T20:59:24ZengBMCInternational Journal of Health Geographics1476-072X2010-05-01912310.1186/1476-072X-9-23<it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publicationsTurton Ian JStryker Michael SMacEachren Alan MPezanowski Scott<p>Abstract</p> <p>Background</p> <p>The volume of health science publications is escalating rapidly. Thus, keeping up with developments is becoming harder as is the task of finding important cross-domain connections. When geographic location is a relevant component of research reported in publications, these tasks are more difficult because standard search and indexing facilities have limited or no ability to identify geographic foci in documents. This paper introduces <it><smcaps>HEALTH</smcaps> GeoJunction</it>, a web application that supports researchers in the task of quickly finding scientific publications that are relevant geographically and temporally as well as thematically.</p> <p>Results</p> <p><it><smcaps>HEALTH</smcaps> GeoJunction </it>is a geovisual analytics-enabled web application providing: (a) web services using computational reasoning methods to extract place-time-concept information from bibliographic data for documents and (b) visually-enabled place-time-concept query, filtering, and contextualizing tools that apply to both the documents and their extracted content. This paper focuses specifically on strategies for visually-enabled, iterative, facet-like, place-time-concept filtering that allows analysts to quickly drill down to scientific findings of interest in PubMed abstracts and to explore relations among abstracts and extracted concepts in place and time. The approach enables analysts to: find publications without knowing all relevant query parameters, recognize unanticipated geographic relations within and among documents in multiple health domains, identify the thematic emphasis of research targeting particular places, notice changes in concepts over time, and notice changes in places where concepts are emphasized.</p> <p>Conclusions</p> <p>PubMed is a database of over 19 million biomedical abstracts and citations maintained by the National Center for Biotechnology Information; achieving quick filtering is an important contribution due to the database size. Including geography in filters is important due to rapidly escalating attention to geographic factors in public health. The implementation of mechanisms for iterative place-time-concept filtering makes it possible to narrow searches efficiently and quickly from thousands of documents to a small subset that meet place-time-concept constraints. Support for a <it>more-like-this </it>query creates the potential to identify unexpected connections across diverse areas of research. Multi-view visualization methods support understanding of the place, time, and concept components of document collections and enable comparison of filtered query results to the full set of publications.</p> http://www.ij-healthgeographics.com/content/9/1/23
collection DOAJ
language English
format Article
sources DOAJ
author Turton Ian J
Stryker Michael S
MacEachren Alan M
Pezanowski Scott
spellingShingle Turton Ian J
Stryker Michael S
MacEachren Alan M
Pezanowski Scott
<it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications
International Journal of Health Geographics
author_facet Turton Ian J
Stryker Michael S
MacEachren Alan M
Pezanowski Scott
author_sort Turton Ian J
title <it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications
title_short <it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications
title_full <it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications
title_fullStr <it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications
title_full_unstemmed <it><smcaps>HEALTH</smcaps> GeoJunction</it>: place-time-concept browsing of health publications
title_sort <it><smcaps>health</smcaps> geojunction</it>: place-time-concept browsing of health publications
publisher BMC
series International Journal of Health Geographics
issn 1476-072X
publishDate 2010-05-01
description <p>Abstract</p> <p>Background</p> <p>The volume of health science publications is escalating rapidly. Thus, keeping up with developments is becoming harder as is the task of finding important cross-domain connections. When geographic location is a relevant component of research reported in publications, these tasks are more difficult because standard search and indexing facilities have limited or no ability to identify geographic foci in documents. This paper introduces <it><smcaps>HEALTH</smcaps> GeoJunction</it>, a web application that supports researchers in the task of quickly finding scientific publications that are relevant geographically and temporally as well as thematically.</p> <p>Results</p> <p><it><smcaps>HEALTH</smcaps> GeoJunction </it>is a geovisual analytics-enabled web application providing: (a) web services using computational reasoning methods to extract place-time-concept information from bibliographic data for documents and (b) visually-enabled place-time-concept query, filtering, and contextualizing tools that apply to both the documents and their extracted content. This paper focuses specifically on strategies for visually-enabled, iterative, facet-like, place-time-concept filtering that allows analysts to quickly drill down to scientific findings of interest in PubMed abstracts and to explore relations among abstracts and extracted concepts in place and time. The approach enables analysts to: find publications without knowing all relevant query parameters, recognize unanticipated geographic relations within and among documents in multiple health domains, identify the thematic emphasis of research targeting particular places, notice changes in concepts over time, and notice changes in places where concepts are emphasized.</p> <p>Conclusions</p> <p>PubMed is a database of over 19 million biomedical abstracts and citations maintained by the National Center for Biotechnology Information; achieving quick filtering is an important contribution due to the database size. Including geography in filters is important due to rapidly escalating attention to geographic factors in public health. The implementation of mechanisms for iterative place-time-concept filtering makes it possible to narrow searches efficiently and quickly from thousands of documents to a small subset that meet place-time-concept constraints. Support for a <it>more-like-this </it>query creates the potential to identify unexpected connections across diverse areas of research. Multi-view visualization methods support understanding of the place, time, and concept components of document collections and enable comparison of filtered query results to the full set of publications.</p>
url http://www.ij-healthgeographics.com/content/9/1/23
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