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BioChain : Using Lexical Chaining Approaches for Biomedical Text Summarization

BioChain : Using Lexical Chaining Approaches for Biomedical Text Summarization. Lawrence Reeve. INFO780 - Final Report – Summer 2005. Discussions. BioChain Goal & Approach BioChain Process Evaluation Using other summarization systems Comparing abstract vs full-text Summarization

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BioChain : Using Lexical Chaining Approaches for Biomedical Text Summarization

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  1. BioChain: Using Lexical Chaining Approaches for Biomedical Text Summarization Lawrence Reeve INFO780 - Final Report – Summer 2005

  2. Discussions • BioChain • Goal & Approach • BioChain Process • Evaluation • Using other summarization systems • Comparing abstract vs full-text • Summarization • DUC 2004 System Examples • Summary

  3. BioChain Goal • Take biomedical abstract (or full text) and generate a summary: Adjuvant Chemotherapy for Adult Soft Tissue Sarcomas of the Extremities and Girdles: Results of the Italian Randomized Cooperative Trial. (Frustaci et al, 2001) Adjuvant chemotherapy for soft tissue sarcoma is controversial because previous trials reported conflicting results. The present study was designed with restricted selection criteria and high dose-intensities of the two most active chemotherapeutic agents. Patients and Methods: Patients between 18 and 65 years of age with grade 3 to 4 spindle-cell sarcomas (primary diameter >= 5 cm or any size recurrent tumor) in extremities or girdles were eligible. Stratification was by primary versus recurrent tumors and by tumor diameter greater than or equal to 10 cm versus less than 10 cm. One hundred four patients were randomized, 51 to the control group and 53 to the treatment group (five cycles of 4'-epidoxorubicin 60 mg/m2 days 1 and 2 and ifosfamide 1.8 g/m2 days 1 through 5, with hydration, mesna, and granulocyte colony-stimulating factor). Results: After a median follow-up of 59 months, 60 patients had relapsed and 48 died (28 and 20 in the treatment arm and 32 and 28 in the control arm, respectively). The median disease-free survival (DFS) was 48 months in the treatment group and 16 months in the control group (P = .04); and the median overall survival (OS) was 75 months for treated and 46 months for untreated patients (P = .03). For OS, the absolute benefit deriving from chemotherapy was 13% at 2 years and increased to 19% at 4 years (P = .04). Conclusion: Intensified adjuvant chemotherapy had a positive impact on the DFS and OS of patients with high risk extremity soft tissue sarcomas at a median follow-up of 59 months. Therefore, our data favor an intensified treatment in similar cases. Although cure is still difficult to achieve, a significant delay in death is worthwhile, also considering the short duration of treatment and the absence of toxic deaths.

  4. BioChain Goal • Work done in conjunction DUCoM • Ari Brooks, M.D. • What’s the latest, best information on cancer treatment? • Current focus is on clinical trial papers • Database of ~1,200 manually processed papers • Current goal: Summarize a single clinical trial paper • Ultimate goal: Summarize multiple clinical trial documents

  5. BioChain Approach • Apply methods/concepts from lexical chaining: • Cluster (chain) words together based on semantic-relatedness • Words are chained together based on word ‘senses’ (concepts) • Lexical Chaining… • identifies lexical cohesion • property causing sentences to ‘hang together’ (Morris & Hirst, 1991) • captures core themes of a text (aboutness) • is an intermediate format • Example: (Doran et al., 2004) • “The house contains an attic. The home is a cabin.” • Lexical Chain: dwelling  {house, attic, home, cabin}

  6. Implemented Using UMLS • Key UMLS resources used: • Metathesaurus • Maps terms into concepts • Semantic Network organizes related concepts • MetaMap Transfer Application • text-to-concept mapping tool

  7. BioChain Process

  8. Source Text Input • Abstract or full text from PubMed • Need to identify noun phrases within each sentence • concepts are derived from noun phrases using vocabulary in metathesaurus • Sentences must be sequentially ordered • PDF conversion issues • Columns • Captions • Bibliography • Reference numbers • Images of documents • Text tables

  9. MetaMap Transfer • Maps noun phrases • to UMLS Metathesaurus concepts • to UMLS Semantic Types Candidate Scores Sentence/ Phrase Candidate Concepts Final Mapping Concept Semantic Type(s) Source: http://mmtx.nlm.nih.gov/runMMTx.shtml

  10. UMLS Metathesaurus • Vocabulary database: • Contains concepts, terms and relationships • Incorporates more than 100 source vocabularies (SNOMED-CT, CPT, others) • 1 million concepts • 5 million terms • links alternative terms of the same concept together • identifies relationships between different concepts • co-occurrence • parent, child, sibling • synonymy (National Library of Medicine, 2005d)

  11. UMLS Metathesaurus Concept Terms Source: http://www.nlm.nih.gov/research/umls/meta2.html

  12. UMLS Semantic Network • Provides: • categorization of all concepts in the UMLS Metathesaurus • relationships between concepts • Consists of: • 135 semantic types • 54 relationships (National Library of Medicine, 2005d)

  13. UMLS Semantic Network Source: http://www.nlm.nih.gov/research/umls/META3_current_semantic_types.html

  14. Concept Chaining • Use semantic network to link together related concepts: • Ex: T081 - Quantitative (semantic type) • High dose (concept) • cm (concept) • Size(concept) • Median Statistical Measurement (concept) • MetaMap Transfer: • Noun phrase  concept  semantic type • BioChain: • Semantic type concept, concept, concept

  15. Concept Chaining • Internal storage: • Array of semantic types formed • 135 semantic types, each has a type id • Ex: T061 - Therapeutic or Preventive Procedure • 135 entries indexed by semantic id • Each semantic type entry holds a list of concepts found in the source text • Each concept instance in semantic type entry contains: • Original noun phrase • Sentence number • Section (paragraph) number

  16. Sample Abstract (Frustaci et al, 2001) Adjuvant Chemotherapy for Adult Soft Tissue Sarcomas of the Extremities and Girdles: Results of the Italian Randomized Cooperative Trial. Adjuvant chemotherapy for soft tissue sarcoma is controversial because previous trials reported conflicting results. The present study was designed with restricted selection criteria and high dose-intensities of the two most active chemotherapeutic agents. Patients and Methods: Patients between 18 and 65 years of age with grade 3 to 4 spindle-cell sarcomas (primary diameter >= 5 cm or any size recurrent tumor) in extremities or girdles were eligible. Stratification was by primary versus recurrent tumors and by tumor diameter greater than or equal to 10 cm versus less than 10 cm. One hundred four patients were randomized, 51 to the control group and 53 to the treatment group (five cycles of 4'-epidoxorubicin 60 mg/m2 days 1 and 2 and ifosfamide 1.8 g/m2 days 1 through 5, with hydration, mesna, and granulocyte colony-stimulating factor). Results: After a median follow-up of 59 months, 60 patients had relapsed and 48 died (28 and 20 in the treatment arm and 32 and 28 in the control arm, respectively). The median disease-free survival (DFS) was 48 months in the treatment group and 16 months in the control group (P = .04); and the median overall survival (OS) was 75 months for treated and 46 months for untreated patients (P = .03). For OS, the absolute benefit deriving from chemotherapy was 13% at 2 years and increased to 19% at 4 years (P = .04). Conclusion: Intensified adjuvant chemotherapy had a positive impact on the DFS and OS of patients with high risk extremity soft tissue sarcomas at a median follow-up of 59 months. Therefore, our data favor an intensified treatment in similar cases. Although cure is still difficult to achieve, a significant delay in death is worthwhile, also considering the short duration of treatment and the absence of toxic deaths.

  17. Concept Chain - Example T061 - Therapeutic or Preventive Procedure: 6.0 phrase: ‘Adjuvant Chemotherapy’ concept: Chemotherapy, Adjuvant sentence#0, section#0 phrase: ‘Adjuvant chemotherapy’ concept: Chemotherapy, Adjuvant sentence#2, section#1 phrase: ‘primary diameter cm’ concept: Primary operation (qualifier value) sentence#5, section#2 phrase: ‘Intensified adjuvant chemotherapy’ concept: Chemotherapy, Adjuvant sentence#13, section#4 phrase: ‘intensified treatment’ concept: Therapeutic procedure sentence#14, section#4 Semantic Type Metathesaurus Concepts

  18. Chain Scoring • Each chain has a score • Indicates degree a semantic type is discussed in text • Lexical chaining research identified 3 factors for strength: (Morris & Hirst, 1991) • Reiteration: more repetion is better • Density: shorter distance between concepts is better • Length: longer chain length is better • Using method from University College Dublin (Doran, Stokes, Dunnion, McCarthy, 2004) • Frequency of most frequent concept (reiteraton)* number of unique concept occurences

  19. Chain Scoring (cont’d) • Assign score of 0 unless in one of these concepts:

  20. Strong Chains • Strong chains identify ‘best’ semantic types in text • Lexical chaining research identifies 3 factors for strength: (Morris & Hirst, 1991) • Reiteration: more repetion is better • Density: shorter distance between concepts is better • Length: longer chain length is better • Lexical chaining research generally uses: • two standard deviations above the mean of the scores computed for every chain in the document (Barzilay and Elhadad, 1997)

  21. Strong Chains – Example • Top chains: • T081-Quantitative Concept, score: 14.0 • T061-Therapeutic or Preventive Procedure, score: 6.0 • T169-Functional Concept, score: 6.0 • T079-Temporal Concept, score: 4.0 • T080-Qualitative Concept, score: 4.0 • T082-Spatial Concept, score: 4.0 • T073-Manufactured Object, score: 2.0 • T109-Organic Chemical, score: 2.0 • T170-Intellectual Product, score: 2.0 • T121-Pharmacologic Substance, score: 1.0 • Strong chains: (2 StdDev) • Avg score: 1.6666666666666667 • Std Dev: 3.0671497204093914 • Strong Score: 7.80096610748545 • T081-Quantitative Concept: 14.0 • Strong chains: (1 StdDev) • Avg score: 1.6666666666666667 • Std Dev: 3.0671497204093914 • Strong Score: 4.733816387076058 • T081-Quantitative Concept: 14.0 • T061-Therapeutic or Preventive Procedure: 6.0 • T169-Functional Concept: 6.0

  22. Identifying Top Concepts • Part of sentence extraction process • Get top chains (top semantic types) • based on chain strength • Perform frequency count on concepts with chains • concept(s) with highest frequency is top concept • Another approach: • Identify concept relationship types • assign weight to each relationship type ( synonymy, siblings, parent, child) • Score each concept based on contribution to chain • Choose highest scoring concept

  23. Sentence Extraction • Use extractive approach • Identify main concepts in text using semantic types • Identify which sentences discusses the main concepts the most • Using chain strength and concept frequency

  24. Sentence Extraction – Examples Top Concepts – 2 standard deviations T081-Quantitative Concept -------------- Concept: Median Statistical Measurement, sentence#9 Sentence: The median disease-free survival (DFS) was 48 months in the treatment group and 16 months in the control group (P = .04); Concept: Median Statistical Measurement, sentence#10 Sentence: and the median overall survival (OS) was 75 months for treated and 46 months for untreated patients (P = .03).

  25. Evaluation • Qualitative • Domain expert: Dr. Ari Brooks • Provided concept filtering • Quantitative • Concept chains: Compare abstract vs. full text (Silber and McCoy, 2002) • Recall: Percentage of strong chains from the main text that are in the abstract • Precision: Percentage of concept instances in the abstract that also appear in strong chains in the document • Summarization: • Compare with Word 2002, SweSum, Copernic

  26. Evaluation How similar are sentences extracted by BioChain to other systems?

  27. Evaluation Do abstracts adequately represent the full-text?

  28. Evaluation • Avg p=0.90, r=0.92 • Avg # of strong chains in full-text is 3 • Represents 2% of all possible semantic types • Avg unique UMLS concepts in abstract is 8 • Avg 80% coverage of concepts in filter • Diversity test • p=0.00, r=0.33

  29. DUC 2004 Summarization Approaches • Systems: • News Story • LAKE • KMS • GISTexter • All used extractive sentence approach

  30. DUC 2004 – News Story • C5.0 decision tree to predict words in a summary • Used 8 features: • TF of word in document • IDF of term in external news corpus • position of word from start of document • Lexical cohesion score between word and document • Binary Flags: noun, verb, adjective, noun phrase • Results: • TF, word position and IDF have greatest impact on summary quality • lexical cohesion adds little as feature in decision tree

  31. DUC 2004 – LAKE • keyphrase extraction approach • extracting all uni-grams, bi-grams, tri-grams, and four-grams and filter them with part-of-speech patterns • Naïve Bayes classifier trained using manual keyphrases used to identify relevant keyphrases: • keyphrase head TF*IDF • distance of keyphrase from the start of document • Classifier identifies candidate phrases that maximize TF*IDF and occur at beginning of document • Results: • Scored in middle of all submissions • Add additional features that capture the semantic properties of keyphrases: lexical chains

  32. DUC 2004 – KMS • Text decomposed into a parse tree format • identify noun phrases and score them based on a frequency analysis of terms in the noun phrases • Results: • frequency-based approach performs better than systems based on other approaches • Simple to implement

  33. DUC 2004 – GISTexter • computes weight for each term in collection • based on term frequency in a relevant set of documents • Sentence score = sum of weights of each term in sentence • Top scoring sentences are then extracted • Results • Performed among the best systems

  34. Summary • Want to summarize biomedical texts (specifically oncology) • Use lexical chaining approaches with existing UMLS resources to identify the ‘aboutness’ of a text using concepts vs terms • Extract sentences containing strongest concepts within a semantic type chain • Result is an indicative summary of what text is about • Evaluation shows concept chaining is strong between human summary and full-text

  35. References • Afantenos, S. D., Karkaletsis, V., & Stamatopoulos, P. (2005). Summarization from Medical Documents: A SurveyArtificial Intelligence in Medicine, 33(2), 157-177. • Aronson, A. R. (2001). Effective mapping of biomedical text to the UMLS Metathesaurus: the MetaMap program. Proceedings of the AMIA Symposium 2001, 17-21. • Barzilay, R., & Elhadad, M. (1997). Using Lexical Chains for Text Summarization. In Proceedings of the Intelligent Scalable Text Summarization Workshop (ISTS'97), ACL, Madrid, Spain, 10-18. • Copernic Technologies, I. (2005). Copernic Summarizer. Canada: . Retrieved August 7, 2005, from http://www.copernic.com • D’Avanzo, E., Magnini, B., & Vallin, A. (2004). Keyphrase Extraction for Summarization Purposes: The LAKE System at DUC-2004. Proceedings of the 2004 Document Understanding Conference, Boston, USA, Retrieved June 3, 2005, • Dalianis, H. (2000). SweSum - A Text Summarizer for Swedish No. TRITA-NA-P0015). Stockholm, Sweden: NADA, KTH. • Doran, W., Stokes, N., Carthy, J., & Dunnion, J. (2004). Comparing Lexical Chain-based Summarisation Approaches using an Extrinsic Evaluation. Proceedings of the Global WordNet Conference(GWC 2004), • Doran, W. P., Stokes, N. S., Dunnion, J., & Carthy, J. (2004). Assessing the Impact of Lexical Chain Scoring Methods and Sentence Extraction Schemes on Summarization. Proceedings of the 5th International conference on Intelligent Text Processing and Computational Linguistics CICLing-2004, • Doran, W., Stokes, N., Newman, E., Dunnion, J., Carthy, J., & Toolan, F. (2004). News Story Gisting at University College Dublin. Proceedings of the Document Understanding Conference (DUC-2004),

  36. References, continued • Fellbaum, C. (1998). WORDNET: An Electronic Lexical DatabaseThe MIT Press. • Galley, M., & McKeown, K. (2003). Improving Word Sense Disambiguation in Lexical Chaining. Proceedings of the Eighteenth International Joint Conference on Artificial Intelligence, Acapulco,Mexico, 1486-1488. • Lacatusu, F., Hickl, A., Harabagiu, S., & Nezda, L. (2004). Lite-GISTexter at DUC 2004. Proceedings of the 2004 Document Understanding Conference, Retrieved June 10, 2005, • Lin, C. (2005). Recall-Oriented Understudy for Gisting Evaluation (ROUGE). Retrieved August 20, 2005 from http://www.isi.edu/~cyl/ROUGE/ • Litkowski, K. C. (2004). Summarization Experiments in DUC 2004. Proceedings of the 2004 Document Understanding Conference, Boston, USA, Retrieved June 5, 2005, • Microsoft Coporation. (2002). Microsoft Word 2002. Redmond, Washington, USA: . Retrieved August 7, 2005, from http://office.microsoft.com • Morris, J., & Hirst, G. (1991). Lexical Cohesion Computed by Thesaural Relations as an Indicator of the Structure of Text. Computational Linguistics, 17(1), 21-43. • National Institute of Standards and Technology (NIST). (2005). Document Undertanding Conferences. Retrieved August 20, 2005 from http://www-nlpir.nist.gov/projects/duc/ • Silber, G. H., & McCoy, K. F. (2002). Efficiently Computed Lexical Chains as an Intermediate Representation for Automatic Text Summarization. Computational Linguistics, 28(4)

  37. References, continued • SNOMED International. (2005). SNOMED Clinical Terms. Retrieved July 31, 2005 from http://www.snomed.org/ • Turney, P. (2000). Learning algorithms for keyphrase extraction. Information Retrieval, 2(4), 303-336. • United States National Library of Medicine. (2005a). ClinicalTrials.gov. Retrieved July 31, 2005 from http://www.clinicaltrials.gov/ • United States National Library of Medicine. (2005b). MetaMap Transfer. Retrieved July 31, 2005 from http://mmtx.nlm.nih.gov/ • United States National Library of Medicine. (2005c). PubMed. Retrieved July 31, 2005 from http://www.ncbi.nlm.nih.gov/entrez/query.fcgi • United States National Library of Medicine. (2005d). Unified Medical Language System (UMLS). Retrieved July 5, 2005 from http://www.nlm.nih.gov/research/umls/ • United States National Library of Medicine. (2004a). UMLS Metathesaurus Fact Sheet. Retrieved July 31, 2005 from http://www.nlm.nih.gov/pubs/factsheets/umlsmeta.html • United States National Library of Medicine. (2004b). UMLS Semantic Network Fact Sheet. Retrieved July 31, 2005 from http://www.nlm.nih.gov/pubs/factsheets/umlssemn.html

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