Skip Navigation LinksHome > CABI Abstract
Title: Finite mixture model analysis of microarray expression data on samples of uncertain biological type with application to reproductive efficiency.
Personal Authors: Bing, N., Hoeschele, I., Ye, K. Y., Eilertsen, K. J.
Author Affiliation: Virginia Bioinformatics Institute, Virginia Tech, Blacksburg, VA 24061-0477, USA.
Editors: No editors
Document Title: Veterinary Immunology and Immunopathology

Abstract:

Common goals of microarray experiments are the detection of genes that are differentially expressed between several biological types and the construction of classifiers that predict biological type of samples. Here we consider a situation where there is no training data. There is considerable interest in comparing expression profiles associated with successful pregnancies (SP) and unsuccessful pregnancies (UP) in model and farm animals. Successful pregnancy rate is known to be much higher in embryos generated by in vitro fertilization (IVF) than in nuclear transfer (NT) embryos, and higher under induced ovulation for large follicles (LF) than for small follicles (SF). The tasks of identifying genes differentially expressed between SP and UP, and predicting SP for future samples are not well accomplished by comparing IVF and NT, or LF and SF. A suitable method is finite mixture model analysis (FMMA), which models each observed class (IVF and NT, or LF and SF) as a mixture of two distributions, one for SP and one for UP, with different known or unknown proportions (here known to be 0.50 SP for IVF and 0.02 SP for NT). The means of the two distributions differ for the differentially expressed genes, which we identify via a likelihood ratio test. We confirm by simulation that FMMA strongly outperforms hierarchical clustering and linear discriminant analysis using the known class labels (NT, IVF). We apply FMMA to a real data set on IVF and NT embryos, and compute their posterior probabilities of SP, which confirm our prior knowledge of the SP proportions for IVF and NT.


Publisher: Elsevier


About CAB Abstracts
CAB Abstracts is a unique and informative resource covering everything from Agriculture to Entomology to Public Health. In April 2006 we published our 5 millionth abstract, making it the largest and most comprehensive abstracts database in its field.

Your institution may have a subscription to CAB Abstracts via CAB Direct. Please click here to explore the numerous records and resources available for your search on ‘%’





Searching for related material ...


We have searched our content for additional helpful material on % and the links below will take you to the results from some of our other sites:



Search CAB Abstracts Lite

About CABI
Established in 1910, CABI is a not for profit organisation, owned by over 40 Member Countries. Through partnership with these countries and our international network of people, we address local needs worldwide. Our activities encompass scientific publishing, research and communication, and our aim is to bridge the gap between scientific knowledge and its application to real life.

We publish CAB Abstracts, a world-leading bibliographic database covering agriculture, environment, public health and nutrition, animal and plant sciences and tourism. We also publish multimedia compendia, books, journals and internet resources – bringing the most up to date scientific information right to researchers’ fingertips.


Our People
At the heart of CABI’s success are the people who make it happen. We have over 300 staff working from 10 locations around the world, all of them experts in their field. From publishing specialists, microbiologists, ecologists to pathologists, we have the expertise to make a difference.

You can beat heart disease any way you want to. Volunteer for the BHF