Close
Help
signup_email_alerts
Need Help?



Application of a New Probabilistic Model for Mining Implicit Associated Cancer Genes from OMIM and Medline

Submit a Paper


Libertas Analytics


5728 Article Views

Publication Date: 25 Feb 2007

Journal: Cancer Informatics

Citation: Cancer Informatics 2006:2 361-371

CI journal

666,171 Article Views

7,671,096 Libertas Article Views

More Statistics

Shanfeng Zhu*1, Yasushi Okuno*2, Gozoh Tsujimoto2 and Hiroshi Mamitsuka1, 2

1Bioinformatics Center, Institute for Chemical Research, Kyoto University 2Graduate School of Pharmaceutical Sciences, Kyoto University

Abstract: An important issue in current medical science research is to find the genes that are strongly related to an inherited disease. A particular focus is placed on cancer-gene relations, since some types of cancers are inherited. As bio-medical databases have grown speedily in recent years, an informatics approach to predict such relations from currently available databases should be developed. Our objective is to find implicit associated cancer-genes from biomedical databases including the literature database. Co-occurrence of biological entities has been shown to be a popular and efficient technique in biomedical text mining. We have applied a new probabilistic model, called mixture aspect model (MAM) [48], to combine different types of co-occurrences of genes and cancer derived from Medline and OMIM (Online Mendelian Inheritance in Man). We trained the probability parameters of MAM using a learning method based on an EM (Expectation and Maximization) algorithm. We examined the performance of MAM by predicting associated cancer gene pairs. Through cross-validation, prediction accuracy was shown to be improved by adding gene-gene co-occurrences from Medline to cancer-gene cooccurrences in OMIM. Further experiments showed that MAM found new cancer-gene relations which are unknown in the literature. Supplementary information can be found at http://www.bic.kyotou.ac.jp/pathway/zhusf/CancerInformatics/Supplemental2006.html


Post a Comment

x close

Discussion Add A Comment
No comments yet...Be the first to comment.


share on

Our Service Promise

  • Prompt Processing (Less Than 3 Weeks)
  • Fair & Comprehensive Peer Review
  • Professional Author Service
  • Leading Editors in Chief
  • Extensive Indexing
  • High Readership & Impact
  • What Your Colleagues Say

Quick Links

Follow Us We make it easy to find new research papers.
Email AlertsRSS Feeds
FacebookGoogle+Twitter
PinterestTumblrYouTube

BROWSE CATEGORIES
Our Testimonials
I had a great experience publishing my case report in this journal. The submission to editorial decision time was very short, and in addition there were frequent updates by email regarding the status of the manuscript. I thought the editors were very friendly and supportive. I would recommend this journal to anyone wishing to publish his/her research in a quality journal with a decent article processing speed. I also appreciate the support given by the journal to authors from developing countries like me.
Dr Smith Giri (Tibhuvan University Teaching Hospital, Kathmandu, Nepal) What Your Colleagues Say