Chapter 16: text mining for translational bioinformatics.

Text mining for translational bioinformatics is a new field with tremendous research potential. It is a subfield of biomedical natural language processing that concerns itself directly with the problem of relating basic biomedical research to clinical practice, and vice versa. Applications of text m...

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Main Authors: K Bretonnel Cohen, Lawrence E Hunter
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-04-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3635962?pdf=render
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spelling doaj-7e1cfb6eb3074cb7924dfe9a0415e1bc2020-11-25T01:44:11ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582013-04-0194e100304410.1371/journal.pcbi.1003044Chapter 16: text mining for translational bioinformatics.K Bretonnel CohenLawrence E HunterText mining for translational bioinformatics is a new field with tremendous research potential. It is a subfield of biomedical natural language processing that concerns itself directly with the problem of relating basic biomedical research to clinical practice, and vice versa. Applications of text mining fall both into the category of T1 translational research-translating basic science results into new interventions-and T2 translational research, or translational research for public health. Potential use cases include better phenotyping of research subjects, and pharmacogenomic research. A variety of methods for evaluating text mining applications exist, including corpora, structured test suites, and post hoc judging. Two basic principles of linguistic structure are relevant for building text mining applications. One is that linguistic structure consists of multiple levels. The other is that every level of linguistic structure is characterized by ambiguity. There are two basic approaches to text mining: rule-based, also known as knowledge-based; and machine-learning-based, also known as statistical. Many systems are hybrids of the two approaches. Shared tasks have had a strong effect on the direction of the field. Like all translational bioinformatics software, text mining software for translational bioinformatics can be considered health-critical and should be subject to the strictest standards of quality assurance and software testing.http://europepmc.org/articles/PMC3635962?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author K Bretonnel Cohen
Lawrence E Hunter
spellingShingle K Bretonnel Cohen
Lawrence E Hunter
Chapter 16: text mining for translational bioinformatics.
PLoS Computational Biology
author_facet K Bretonnel Cohen
Lawrence E Hunter
author_sort K Bretonnel Cohen
title Chapter 16: text mining for translational bioinformatics.
title_short Chapter 16: text mining for translational bioinformatics.
title_full Chapter 16: text mining for translational bioinformatics.
title_fullStr Chapter 16: text mining for translational bioinformatics.
title_full_unstemmed Chapter 16: text mining for translational bioinformatics.
title_sort chapter 16: text mining for translational bioinformatics.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2013-04-01
description Text mining for translational bioinformatics is a new field with tremendous research potential. It is a subfield of biomedical natural language processing that concerns itself directly with the problem of relating basic biomedical research to clinical practice, and vice versa. Applications of text mining fall both into the category of T1 translational research-translating basic science results into new interventions-and T2 translational research, or translational research for public health. Potential use cases include better phenotyping of research subjects, and pharmacogenomic research. A variety of methods for evaluating text mining applications exist, including corpora, structured test suites, and post hoc judging. Two basic principles of linguistic structure are relevant for building text mining applications. One is that linguistic structure consists of multiple levels. The other is that every level of linguistic structure is characterized by ambiguity. There are two basic approaches to text mining: rule-based, also known as knowledge-based; and machine-learning-based, also known as statistical. Many systems are hybrids of the two approaches. Shared tasks have had a strong effect on the direction of the field. Like all translational bioinformatics software, text mining software for translational bioinformatics can be considered health-critical and should be subject to the strictest standards of quality assurance and software testing.
url http://europepmc.org/articles/PMC3635962?pdf=render
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