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Andrei Mogoutov, Alberto Cambrosio, Peter Keating & Philippe Mustar

6 th Biennial International Triple Helix Conference on University-Industry Government-Links Singapore, May 16-18 , 2007. Biomedical innovation at the laboratory, clinical and commercial interface. Mapping research grants, publications and patents in the field of microarrays.

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Andrei Mogoutov, Alberto Cambrosio, Peter Keating & Philippe Mustar

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  1. 6th Biennial International Triple Helix Conference on University-Industry Government-Links Singapore, May 16-18 , 2007 Biomedical innovation at the laboratory, clinical and commercial interface.Mapping research grants, publications and patents in the field of microarrays • Andrei Mogoutov, Alberto Cambrosio, Peter Keating & Philippe Mustar

  2. Main goals of this paper: • To analyze biomedical innovation by triangulating three sources of information: publications, patents and research projects (see Verganti et al.) • In particular: to develop a methodology for linking publication, patent and project databases by using emergent (rather than pre-established) categories • Methods: • Heterogeneous network analysis (ReseauLu X2) • Text-mining (SPSS LexiQuest Mine)

  3. Case study: Microarrays • A DNA microarray (a.k.a as biochip, DNA chip, gene array, etc.) is a collection of microscopic DNA spots, commonly representing single genes, arrayed on a solid surface by covalent attachment to chemically suitable matrices • Compared to previous molecular genetic approaches, a microarray experiment involves the simultaneous analysis of many hundreds or thousands of genes, as opposed to single ones • Microarrays have become a key technology of the (post)genomic era • Annual compounded growth rate of the microarray market between 1999-2004: 63%

  4. Databases • Publications: • PubMed: robust keyword system; biomedical • Web of Science: addresses and citations; general S&T • [PubMed/WoS intersection] • Research Projects: • CRISP: NIH-financed projects; biomedical • [NSF] • Patents: • Derwent Innovation Index • [USPTO]/ [EUPTO]

  5. 1. Characterizing the field of microarrays

  6. Publications (PubMed)

  7. Publications (Web of Science)

  8. Publications: most cited authors

  9. Mapping: ReseauLu X2

  10. Co-authorship network (most cited authors)

  11. Collaborative institutional network

  12. regulatory agency Institutional network (4 nearest nodes) biotech company hospital university

  13. Journal inter-citation network (5 nearest nodes) cancer cluster

  14. Patents (Derwent)

  15. CRISP Projects

  16. 2. Database bridges • 2a. Via authors and pre-established (institutional) categories

  17. CRISP projects by Institute

  18. Link via authors Categories by Institutes CRISP projects vs. Publications

  19. Link via authors Categories by Institutes CRISP projects vs. Citations

  20. Link via authors Categories by Institutes CRISP projects vs. Patents

  21. 2. Database bridges • 2b. Via content (emergent categories)

  22. Text mining: SPSS LexiQuest Mine and Text Mining Builder Dictionary interface Concept extraction

  23. Methodology for generating emergent categories • The chosen database is text-mined (NLP software) to extract the relevant concepts (composite terms and uniterms): • in the present case, WoS was chosen over CRISP because it includes biomedical and non-biomedical domains • The most relevant (specific) concepts are selected by using a ChiSq filter • After building a co-occurrence map (nearest nodes), clusters corresponding to sub-domains are identified by a modified fuzzy K-means clustering algorithm • The list of concepts defining each sub-domain is used to analyze the other databases

  24. Emergent sub-domains

  25. Publications (WoS) by sub-domains

  26. CRISP projects by sub-domains

  27. Patents by sub-domains

  28. % of sub-domains in projects, patents and publications

  29. SNPs

  30. Bioinformatics

  31. Acknowledgments • Research for this paper was supported by grants from: • CIHR • FQRSC • SSHRC

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