Publication: An Automated Bayesian Framework for Integrative Gene Expression Analysis and Predictive Medicine
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Date
2012
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American Medical Informatics Association
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Parikh, Neena, Amin Zollanvari, and Gil Alterovitz. 2012. An automated Bayesian framework for integrative gene expression analysis and predictive medicine. AMIA Summits on Translational Science Proceedings 2012: 95-104.
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Abstract
Motivation: This work constructs a closed loop Bayesian Network framework for predictive medicine via integrative analysis of publicly available gene expression findings pertaining to various diseases. Results: An automated pipeline was successfully constructed. Integrative models were made based on gene expression data obtained from GEO experiments relating to four different diseases using Bayesian statistical methods. Many of these models demonstrated a high level of accuracy and predictive ability. The approach described in this paper can be applied to any complex disorder and can include any number and type of genome-scale studies.
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