Difference between revisions of "Text Mining Resources"

From irefindex
(Initial notes.)
(→‎Notes from the Text Mining Tutorial at EBI: Added more resources with separate lists for different resource types.)
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* [http://nactem.ac.uk/talk_slides/trainingEBI_final.pdf Text Mining in Biomedicine/Exploitation of biomedical semantic resources]
 
* [http://nactem.ac.uk/talk_slides/trainingEBI_final.pdf Text Mining in Biomedicine/Exploitation of biomedical semantic resources]
** NaCTeM's Services: KLEIO, FACTA, MEDIE, TerMine, Acromine
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** NaCTeM's Services: KLEIO, FACTA, MEDIE, TerMine, AcroMine
** Overview of resources, biolexicon, bio-ontologies, text mining infrastructure (U-Compare text mining workflows)
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** Overview of resources, BioLexicon, bio-ontologies, text-mining infrastructure (U-Compare text-mining workflows)
  
Useful resources:
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=== Text Search Resources ===
  
 
* [http://ukpmc.ac.uk/ UK PubMed Central] provides annotation of abstracts, covers (or will eventually cover) up to 1.5 million full-text articles
 
* [http://ukpmc.ac.uk/ UK PubMed Central] provides annotation of abstracts, covers (or will eventually cover) up to 1.5 million full-text articles
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** Results can mimic other services such as EBIMed (by selecting the <tt>whatizitEBIMed</tt> pipeline and by issuing <tt>A Lucene Query</tt> using the input).
 
** Results can mimic other services such as EBIMed (by selecting the <tt>whatizitEBIMed</tt> pipeline and by issuing <tt>A Lucene Query</tt> using the input).
 
** Abstracts can therefore be annotated with domain-specific concepts if the pipeline supports this (<tt>whatizitEBIMed</tt> does, <tt>whatizitProteinInteraction</tt> does not).
 
** Abstracts can therefore be annotated with domain-specific concepts if the pipeline supports this (<tt>whatizitEBIMed</tt> does, <tt>whatizitProteinInteraction</tt> does not).
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* [http://www.nactem.ac.uk/software/kleio/ KLEIO] supports searches for domain-specific keywords (<tt>PDC</tt> versus <tt>PROTEIN:PDC</tt>), and employs named entity recognition to generate terms for indexing with Lucene
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** Results are accessed via a traditional list of document extracts with selectable facets (provided through the use of Solr) for filtering (such as <tt>ORGAN</tt> permitting results where values such as <tt>liver</tt> are mentioned).
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** Abstracts are annotated with domain-specific concepts.
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** The Lucene results are collated with BioLexicon data.
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* [http://text0.mib.man.ac.uk/software/facta/ FACTA] provides a slightly different (more Google-like) search interface for PubMed, concentrating on co-occurrences of concepts
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** Results appear in a traditional list of documents, with "relevant concepts" available to filter the list of results further (similar to KLEIO, EBIMed).
 +
** Annotated sentences do not appear to be available from this service: links to PubMed are provided.
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=== Text Processing and Database Resources ===
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* [http://www.nactem.ac.uk/software/termine/ TerMine] provides part-of-speech tagging using GENIA, term normalisation, acronym extraction/clustering, supporting variations such as ("NF kappa B", "NKfB", "nuclear factor kappa B") on explicitly submitted text
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** Results show the submitted text annotated with recognised terms and acronyms.
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* [http://www.nactem.ac.uk/software/acromine/ AcroMine] is a database of acronyms found in PubMed
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** Techniques employed include word sense disambiguation classifiers based on features such as neighbouring word and context.

Revision as of 15:37, 15 October 2009

Some notes on open source text mining resources:

  • "The Text Mining Tool Evaluation project will describe the process of text mining, identify non-proprietary software that can search blocks of text to identify reports relevant to the cancer registry, and provide information to state cancer registries regarding different tools available and a comparison of the functionality provided by each tool." Evaluation of Open Source Text Mining Tools for Cancer Surveillance (HTML version from the Google cache)
  • "U-Compare is an integrated text mining/natural language processing system based on the UIMA Framework." U-Compare: share and compare tools with UIMA
  • "The BioNLP Unstructured Information Management Architecture (UIMA) Component Repository provides UIMA wrappers for novel and well-known 3rd-party NLP tools used in biomedical text prosessing, such as tokenizers, parsers, named entity taggers, and tools for evaluation." BioNLP UIMA Component Respository
  • "OpenNLP is an organizational center for open source projects related to natural language processing." OpenNLP
  • FreeLing - written in C++ with features from tokenisation through to part-of-speech tagging, word sense disambiguation
  • NLTK - written in Python with a wide range of natural language processing features

Notes from the Text Mining Tutorial at EBI

Links:

Text Search Resources

  • UK PubMed Central provides annotation of abstracts, covers (or will eventually cover) up to 1.5 million full-text articles
    • Links to the official PubMed results with links back to UK PubMed Central results (presented similarly to official PubMed Central results).
  • CiteXplore provides literature search including (but not limited to) PubMed, without domain-specific features
    • Results show PubMed records with search keywords highlighted.
  • GoPubMed provides PubMed searching with Gene Ontology categorisation/filtering of search results
    • Results include annotated abstracts which seem keyword-oriented, not gene-oriented, and offer interesting statistics related to publication metadata.
    • Domain-specific annotations can apparently be activated by selecting items from the "what" sidebar, such as protein PDC.
  • MedEvi offers sentence-oriented, interaction-oriented querying with wildcards like [disease] supported for an interaction participant
    • It seems debatable whether viewing sentences in isolation is very helpful, especially in the tabular form. I tried searching for phosducin AND "phosducin-like protein" in order to retrieve a document seen in Bioscape (PubMed #12060742), and this query did find it, although PDC AND PDCL (which employs the symbol names) does not, suggesting that there is a textual orientation to the service.
    • Annotated sentences do not appear to be available from this service: links to PubMed are provided.
  • EBIMed permits the inspection of results according to the co-occurrence of search terms with other features, thus supporting GoPubMed-style categorisation/filtering as well as gene/protein-related segmentation of results
    • Results are initially presented using a table of "facets" such as co-occurring gene/protein, Gene Ontology categories, drugs and species, with abstracts obtainable upon selection of a particular gene/protein or co-occurring concept.
    • Abstracts are annotated with domain-specific concepts.
  • Protein Corral produces results in a way similar to EBIMed but focusing on interaction verbs and confidence measures
    • Results show a selection of "facets" mostly related to interaction context.
    • Abstracts are annotated with domain-specific concepts.
  • Whatizit is a service which exposes the EBI text-mining infrastructure
    • Results can mimic other services such as EBIMed (by selecting the whatizitEBIMed pipeline and by issuing A Lucene Query using the input).
    • Abstracts can therefore be annotated with domain-specific concepts if the pipeline supports this (whatizitEBIMed does, whatizitProteinInteraction does not).
  • KLEIO supports searches for domain-specific keywords (PDC versus PROTEIN:PDC), and employs named entity recognition to generate terms for indexing with Lucene
    • Results are accessed via a traditional list of document extracts with selectable facets (provided through the use of Solr) for filtering (such as ORGAN permitting results where values such as liver are mentioned).
    • Abstracts are annotated with domain-specific concepts.
    • The Lucene results are collated with BioLexicon data.
  • FACTA provides a slightly different (more Google-like) search interface for PubMed, concentrating on co-occurrences of concepts
    • Results appear in a traditional list of documents, with "relevant concepts" available to filter the list of results further (similar to KLEIO, EBIMed).
    • Annotated sentences do not appear to be available from this service: links to PubMed are provided.

Text Processing and Database Resources

  • TerMine provides part-of-speech tagging using GENIA, term normalisation, acronym extraction/clustering, supporting variations such as ("NF kappa B", "NKfB", "nuclear factor kappa B") on explicitly submitted text
    • Results show the submitted text annotated with recognised terms and acronyms.
  • AcroMine is a database of acronyms found in PubMed
    • Techniques employed include word sense disambiguation classifiers based on features such as neighbouring word and context.