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Items for "Probabilistic graphical models"

Probabilistic Graphical Models for Computational Biomedicine

BACKGROUND: As genomics becomes increasingly relevant to medicine, medical informatics and bioinformatics are gradually converging into a larger field that we call computational biomedicine. OBJECTIVES: Developing a computational framework that is common to the different disciplines that compose computational biomedicine will be a major enabler of the further development and integration of this research domain. METHODS: Probabilistic graphical models such as Hidden Markov Models, belief networks, and missing-data models together with computational methods such as dynamic programming, Expectation-Maximization, data-augmentation Gibbs sampling, and the Metropolis-Hastings algorithm provide the tools for an integrated probabilistic approach to computational biomedicine. RESULTS AND CONCLUSIONS: We show how graphical models have already found a broad application in different fields composing computational biomedicine...

Keywords: Probabilistic graphical models, belief networks, Expectation- Maximization, Gibbs sampling, Medical Informatics, statistical genetics, bioinformatics, computational biomedicine

01/2003 | Methods of Information in Medicine, Schattauer