About
In making advances within Computational Systems Biology there is an acknowledged need for the ongoing development of both probabilistic and mechanistic, possibly multi-scale, models of complex biological processes. In addition to such models the development of appropriate and efficient inferential methodology to identify and reason over such models is necessary. Examples of the progress which has been made in our understanding of modern biology by the exploitation of such methodology include model based inference of p53 activity; uncovering the evolution of protein complexes and understanding the circadian clock in plants; details of which were presented at the LICSB workshops.
Videos
Welcome
Introduction
Apr 17, 2008 3199 views
Session 1
Gaussian process modelling of transcription factor networks using Markov Chain M...
Apr 17, 2008 4520 views
Time delay analysis
Apr 17, 2008 5674 views
Gaussian process modelling of latent chemical species: Applications to inferring...
Apr 17, 2008 3136 views
Data variability could be your friend
Apr 17, 2008 5491 views
Session 2
Statistical learning of biological networks: a brief overview
Apr 17, 2008 4519 views
Relationship between structure and dynamics of gene regulatory networks
Apr 17, 2008 5534 views
Learning Bayesian networks from postgenomic data with an improved structure MCMC...
Apr 17, 2008 5959 views
Validating inferred gene networks using ODE models of regulation dynamics
Apr 17, 2008 4237 views
Session 3
Parameter estimation using moment-closure methods
Apr 17, 2008 4382 views
BioBayes: Bayesian inference for Systems Biology
Apr 17, 2008 419171 views
Abductive and inductive inference for integrative Systems Biology
Sep 4, 2019 1 views
Parameter estimation in biochemical reaction networks: An observer-based approac...
Apr 17, 2008 3877 views
Session 4
Probabilistic multi-class multi-kernel learning: On protein fold recognition and...
Apr 17, 2008 4167 views
Predicting anti-cancer molecule activity using machine learning algorithms
Apr 17, 2008 419394 views
Factor models for QTL studies
Apr 17, 2008 5414 views
