Title: Alternative statistical modeling of Pharmacokinetics and Pharmacodynamics
1Alternative statistical modeling of
Pharmacokinetics and Pharmacodynamics
- A collaboration between
- Aalborg University
- and
- Novo Nordisk A/S
Claus DethlefsenCenter for Cardiovascular
Research
2Participants
- 4 Post. Doc.s
- Kim E. Andersen
- Claus Dethlefsen
- Susanne G. Bøttcher
- Malene Højbjerre
- Steering commitee
- Novo Nordisk A/S
- Judith L. Jacobsen
- Merete Jørgensen
- Aalborg University
- Søren Lundbye-Christensen
- Susanne Christensen
3Four different backgrounds
- State Space Models
- Inverse Problems
- Bayesian Networks
- Graphical Models
PK/PD
4Learning Bayesian Networks
- Susanne Bøttcher and Claus Dethlefsen
5Bayesian Networks
- A Directed Acyclic Graph (DAG)
- To each node with parents there is attached
a local conditional probability distribution, - Lack of edges in corresponds to conditional
independencies, - Joint distribution
6Conditional Gaussian Distribution
- Observations of discrete variables multinomial
distributed - Continuous variables are Gaussian linear
regressions on the continuous parents, with
parameters depending on the configuration of the
discrete parents. (ANCOVA) - No continuous parents of discrete nodes
- Jointly a Conditional Gaussian (CG) distribution
7Advantages using Bayesian networks
- Qualitative representation of causal relations
- Compact description of the assumed independence
relations among the variables - Prior information is combined with data in the
learning process - Observations at all nodes are not needed for
inference (calculation of distribution of
unobserved given observed)
8Software
- Hugin www.hugin.comPrediction in Bayesian
networks - R Free software www.r-project.orgStatistical
software - Deal Package for R (documented) on CRANLearning
of parameters and structure.Developed by Claus
Dethlefsen and Susanne Bøttcher
9Why Deal ?
- No other software learns Bayesian networks with
mixed variables !
10TrainingData
Hugin GUI
DEAL
Parameter priors
.net
Parameter posteriorsNetwork score
Priorknowledge
Hugin API
Posterior network
11Prediction of Insulin Sensitivity Index using
Bayesian Networks
- Susanne Bøttcher and Claus Dethlefsen
12Insulin Sensitivity Index
- Insulin Sensitivity Index ( ) measures the
fractional increase in glucose clearance rate
during an IVGTT (Intraveneous Glucose Tolerance
Test) - A low is associated with risk of developing
type 2 diabetes
13Aim
- Estimate insulin sensitivity index based on
measurements of plasma glucose and serum insulin
levels during an OGTT (Oral Glucose Tolerance
Test) in individuals with normal glucose tolerance
14Methods
- 187 subjects without recognised diabetes
- IVGTT determines insulin sensitivity index
- OGTT with measurements of plasma glucose and
serum insulin levels at time points 0, 30, 60,
105, 180, 240 - Use 140 subjects as training data and 47 subjects
as validation data
15Previous study
Hansen et al used a multiple regression
analysis Log(S.I) BMI SEX G0 I0 G30
I30 G60 I60 G105 I105 G180 I180
G240 I240
16Prediction
17Bayesian Network
18Bayesian network
19A Bayesian Approach to the Minimal Model
- Kim E. Andersen and Malene Højbjerre
20Motivation
21Glucose Tolerance Test Protocols
22The Minimal Model of Glucose Disposal
23What can be done?
24Alternative Model Specification
25The Stochastic Minimal Model
26Results
27Comparison of MINMOD and Bayes
28References
- Andersen and Højbjerre. A Population-based
Bayesian Approach to the Minimal Model of Glucose
and Insulin Homeostasis, Statistics in Medicine,
24 2381-2400, 2005. - Andersen and Højbjerre. A Bayesian Approach to
Bergman's Minimal Model, in C.M.Bishop B.J.Frey
(eds), Proceedings of the Ninth International
Workshop on Artificial Intelligence and
Statistics, 2003. - Bøttcher and Dethlefsen. deal A package for
learning Bayesian networks. Journal of
Statistical Software, 8(20)1-40, 2003. - Bøttcher and Dethlefsen. Prediction of the
insulin sensitivity index using Bayesian
networks. Technical Report R-2004-14, Aalborg
University, 2004. - Hansen, Drivsholm, Urhammer, Palacios, Vølund,
Borch-Johnsen and Pedersen. The BIGTT test.
Diabetes Care, 30257-262, 2007.