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KinderMiner Web: a simple web tool for ranking pairwise associations in biomedical applications.

Publication ,  Journal Article
Kuusisto, F; Ng, D; Steill, J; Ross, I; Livny, M; Thomson, J; Page, D; Stewart, R
Published in: F1000Res
2020

Many important scientific discoveries require lengthy experimental processes of trial and error and could benefit from intelligent prioritization based on deep domain understanding. While exponential growth in the scientific literature makes it difficult to keep current in even a single domain, that same rapid growth in literature also presents an opportunity for automated extraction of knowledge via text mining. We have developed a web application implementation of the KinderMiner algorithm for proposing ranked associations between a list of target terms and a key phrase. Any key phrase and target term list can be used for biomedical inquiry. We built the web application around a text index derived from PubMed. It is the first publicly available implementation of the algorithm, is fast and easy to use, and includes an interactive analysis tool. The KinderMiner web application is a public resource offering scientists a cohesive summary of what is currently known about a particular topic within the literature, and helping them to prioritize experiments around that topic. It performs comparably or better to similar state-of-the-art text mining tools, is more flexible, and can be applied to any biomedical topic of interest. It is also continually improving with quarterly updates to the underlying text index and through response to suggestions from the community. The web application is available at https://www.kinderminer.org.

Duke Scholars

Published In

F1000Res

DOI

EISSN

2046-1402

Publication Date

2020

Volume

9

Start / End Page

832

Location

England

Related Subject Headings

  • 1112 Oncology and Carcinogenesis
  • 1103 Clinical Sciences
  • 0601 Biochemistry and Cell Biology
 

Citation

APA
Chicago
ICMJE
MLA
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Kuusisto, F., Ng, D., Steill, J., Ross, I., Livny, M., Thomson, J., … Stewart, R. (2020). KinderMiner Web: a simple web tool for ranking pairwise associations in biomedical applications. F1000Res, 9, 832. https://doi.org/10.12688/f1000research.25523.2
Kuusisto, Finn, Daniel Ng, John Steill, Ian Ross, Miron Livny, James Thomson, David Page, and Ron Stewart. “KinderMiner Web: a simple web tool for ranking pairwise associations in biomedical applications.F1000Res 9 (2020): 832. https://doi.org/10.12688/f1000research.25523.2.
Kuusisto F, Ng D, Steill J, Ross I, Livny M, Thomson J, et al. KinderMiner Web: a simple web tool for ranking pairwise associations in biomedical applications. F1000Res. 2020;9:832.
Kuusisto, Finn, et al. “KinderMiner Web: a simple web tool for ranking pairwise associations in biomedical applications.F1000Res, vol. 9, 2020, p. 832. Pubmed, doi:10.12688/f1000research.25523.2.
Kuusisto F, Ng D, Steill J, Ross I, Livny M, Thomson J, Page D, Stewart R. KinderMiner Web: a simple web tool for ranking pairwise associations in biomedical applications. F1000Res. 2020;9:832.

Published In

F1000Res

DOI

EISSN

2046-1402

Publication Date

2020

Volume

9

Start / End Page

832

Location

England

Related Subject Headings

  • 1112 Oncology and Carcinogenesis
  • 1103 Clinical Sciences
  • 0601 Biochemistry and Cell Biology