Bridget McInnes, Ph.D.

Associate Professor VCU College of Engineering

  • Engineering East Hall, Room E4255, Richmond VA

Dr. McInnes' research is in the area of Natural Language Processing (NLP) with a particular interest in semantics.

Contact

VCU College of Engineering

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Biography

Dr. McInnes' research has primarily been in the area of Natural Language Processing (NLP) with a particular interest in semantics, the process of analyzing the meaning of text. Specific areas of interest include:

- Word sense disambiguation
- Biomedical text processing
- Semantic similarity and relatedness
- Information extraction
- Literature-based discovery

Industry Expertise

Education/Learning
Research

Areas of Expertise

Natural Language Processing
Biomedical Text Processing
Information Retrieval
Machine Learning

Education

University of Minnesota

Ph.D.

Computer Science

2009

University of Minnesota

M.S.

Computer Science

2004

University of Minnesota

B.S.

Computer Science

2002

Selected Articles

Using PharmGKB to Train Text Mining Approaches for Identifying Potential Gene Targets for Pharmacogenomic Studies.

Journal of Biomedical Informatics

2012

The main objective of this study was to investigate the feasibility of using PharmGKB, a pharmacogenomic database, as a source of training data in combination with text of MEDLINE abstracts for a text mining approach to identification of potential gene targets for pathway-driven pharmacogenomics research. We used the manually curated relations between drugs and genes in PharmGKB database to train a support vector machine predictive model and applied this model prospectively to MEDLINE abstracts. The gene targets suggested by this approach were subsequently manually reviewed. Our quantitative analysis showed that a support vector machine classifiers trained on MEDLINE abstracts with single words (unigrams) used as features and PharmGKB relations used for supervision, achieve an overall sensitivity of 85% and specificity of 69%. The subsequent qualitative analysis showed that gene targets “suggested” by the automatic classifier were not anticipated by expert reviewers but were subsequently found to be relevant to the three drugs that were investigated: carbamazepine, lamivudine and zidovudine. Our results show that this approach is not only feasible but may also find new gene targets not identifiable by other methods thus making it a valuable tool for pathway-driven pharmacogenomics research.

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Similarity: Measuring the Relatedness and Similarity of Biomedical Concepts

Association for Computational Linguistics

2013

UMLS::Similarity is freely available open source software that allows a user to measure the semantic similarity or relatedness of biomedical terms found in the Unified Medical Language System (UMLS). It is written in Perl and can be used via a command line interface, an API, or a Web interface.

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Evaluating Measures of Semantic Similarity and Relatedness to Disambiguate Terms in Biomedical Text

Journal of Biomedical Informatics

2013

In this article, we evaluate a knowledge-based word sense disambiguation method that determines the intended concept associated with an ambiguous word in biomedical text using semantic similarity and relatedness measures. These measures quantify the degree of similarity or relatedness between concepts in the Unified Medical Language System (UMLS). The objective of this work is to develop a method that can disambiguate terms in biomedical text by exploiting similarity and relatedness information extracted from biomedical resources and to evaluate the efficacy of these measure on WSD.

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