DDMODEL00000118: Friedrich_2014_PK

  public model
Short description:
Evacetrapib pharmacokinetics was described by using a two-compartment model with first-order absorption
PharmML 0.8.x (0.8.1)
  • The pharmacokinetics and pharmacokinetic/pharmacodynamic relationships of evacetrapib administered as monotherapy or in combination with statins.
  • Friedrich S, Kastelein JJ, James D, Waterhouse T, Nissen SE, Nicholls SJ, Krueger KA
  • CPT: pharmacometrics & systems pharmacology, 1/2014, Volume 3, pages: e94
  • Lilly Research Laboratories, Eli Lilly and Company, Indianapolis, Indiana, USA. Department of Vascular Medicine, Academic Medical Center, Amsterdam, The Netherlands. Cleveland Clinic Coordinating Center for Clinical Research, Cleveland Clinic, Cleveland
  • Evacetrapib is a novel cholesteryl ester transfer protein (CETP) inhibitor currently being evaluated in a late-stage cardiovascular outcome trial. Using population-based models, we analyzed evacetrapib concentration data along with high-density lipoprotein cholesterol (HDL-C) and low-density lipoprotein cholesterol (LDL-C) data from a 12-week study in dyslipidemic patients treated with evacetrapib alone or in combination with atorvastatin, simvastatin, or rosuvastatin. Evacetrapib pharmacokinetics were characterized using a two-compartment model with first-order absorption. Evacetrapib exposure increased in a less than dose-proportional manner, similar to other CETP inhibitors. No patient factors had a clinically relevant impact on evacetrapib pharmacokinetics. The relationships between evacetrapib exposure and HDL-C and LDL-C were characterized using Emax models. The theoretical maximal mean HDL-C increase and LDL-C decrease relative to baseline were 177 and 44.1%, respectively. HDL-C change from baseline was found to be negatively correlated with baseline HDL-C. A pharmacologically independent LDL-C reduction was found when evacetrapib was coadministered with statins.CPT Pharmacometrics Syst. Pharmacol. (2014) 3, e94; doi:10.1038/psp.2013.70; published online 22 January 2014.
Paolo Magni
Context of model development: Disease Progression model;
Model compliance with original publication: Yes;
Model implementation requiring submitter’s additional knowledge: No;
Modelling context description: Evacetrapib is a novel cholesteryl ester transfer protein (CETP) inhibitor currently being evaluated in a late-stage cardiovascular outcome trial. Using population-based models, we analyzed evacetrapib concentration data along with high-density lipoprotein cholesterol (HDL-C) and low-density lipoprotein cholesterol (LDL-C) data from a 12-week study in dyslipidemic patients treated with evacetrapib alone or in combination with atorvastatin, simvastatin, or rosuvastatin. Evacetrapib pharmacokinetics were characterized using a two-compartment model with first-order absorption. Evacetrapib exposure increased in a less than dose-proportional manner, similar to other CETP inhibitors. No patient factors had a clinically relevant impact on evacetrapib pharmacokinetics. The relationships between evacetrapib exposure and HDL-C and LDL-C were characterized using Emax models. The theoretical maximal mean HDL-C increase and LDL-C decrease relative to baseline were 177 and 44.1%, respectively. HDL-C change from baseline was found to be negatively correlated with baseline HDL-C. A pharmacologically independent LDL-C reduction was found when evacetrapib was coadministered with statins.;
Modelling task in scope: estimation;
Nature of research: Early clinical development (Phases I and II);
Therapeutic/disease area: Endocrinology;
Annotations are correct.
This model is not certified.
  • Model owner: Paolo Magni
  • Submitted: Dec 12, 2015 10:02:46 AM
  • Last Modified: Oct 13, 2016 6:20:59 PM
Revisions
  • Version: 7 public model Download this version
    • Submitted on: Oct 13, 2016 6:20:59 PM
    • Submitted by: Paolo Magni
    • With comment: Edited model metadata online.
  • Version: 5 public model Download this version
    • Submitted on: Jul 16, 2016 5:14:38 PM
    • Submitted by: Paolo Magni
    • With comment: Updated model annotations.
  • Version: 2 public model Download this version
    • Submitted on: Dec 12, 2015 10:02:46 AM
    • Submitted by: Paolo Magni
    • With comment: Edited model metadata online.

Name

Generated from MDL. MOG ID: friedrich_pk_mog

Independent Variables

T

Function Definitions

proportionalError:realproportional:realf:real=proportionalf

Covariate Model: cm

Continuous Covariates

DDI
CGCL
TALD

Parameter Model: pm

Random Variables

ETA_CLvm_mdl.ID~Normal2mean=0var=pm.PPV_CL
ETA_V2vm_mdl.ID~Normal2mean=0var=pm.PPV_V2
ETA_Qvm_mdl.ID~Normal2mean=0var=pm.PPV_Q
EPS_Yvm_err.DV~Normal2mean=0var=pm.SIGMA_RES_Y

Population Parameters

KA
POP_CL
POP_V2
POP_Q
V3
BETA_DOSE_CL
BETA_CGCL_CL
RUV_PROP
PPV_CL
PPV_V2
PPV_Q
SIGMA_RES_Y
COV_CL_V2
GRPCL=pm.POP_CL1+pm.BETA_DOSE_CLcm.DDI1+pm.BETA_CGCL_CLcm.CGCL-91.28

Individual Parameters

lnCL=lnpm.GRPCL+pm.ETA_CL
lnV2=lnpm.POP_V2+pm.ETA_V2
lnQ=lnpm.POP_Q+pm.ETA_Q
K23=pm.Qpm.V2
K32=pm.Qpm.V3
S2=pm.V21000
S3=pm.V31000

Random Variable Correlation

covETA_CLETA_V2=pm.COV_CL_V2

Structural Model: sm

Variables

TA1=-sm.A1pm.KAA1T=0=0
TA2=pm.KAsm.A1-pm.K23sm.A2+pm.K32sm.A3-pm.CLpm.V2sm.A2A2T=0=0
TA3=pm.K23sm.A2-pm.K32sm.A3A3T=0=0
C2=sm.A2pm.S2
C3=sm.A3pm.S3

Observation Model: om1

Continuous Observation

Y=sm.C2+proportionalErrorproportional=pm.RUV_PROPf=sm.C2+pm.EPS_Y

External Dataset

OID
nm_ds
Tool Format
NONMEM

File Specification

Format
csv
Delimiter
comma
File Location
Simulated_data_PK_reduced.csv

Column Definitions

Column ID Position Column Type Value Type
ID
1
id
int
TIME
2
idv
real
DV
3
dv
real
MDV
4
mdv
int
CMT
5
cmt
int
AMT
6
dose
real
DDI
7
covariate
real
CGCL
8
covariate
real
TALD
9
covariate
real

Column Mappings

Column Ref Modelling Mapping
ID
vm_mdl.ID
TIME
T
DV
om1.Y
AMT
{sm.A1ifAMT>0
DDI
cm.DDI
CGCL
cm.CGCL
TALD
cm.TALD

Estimation Step

OID
estimStep_1
Dataset Reference
nm_ds

Parameters To Estimate

Parameter Initial Value Fixed? Limits
pm.KA
0.3
true
pm.POP_CL
20
false
050
pm.POP_V2
250
false
01000
pm.POP_Q
10
false
0100
pm.V3
1000
false
010000
pm.BETA_DOSE_CL
0.001
false
00.005
pm.BETA_CGCL_CL
0.001
false
00.005
pm.RUV_PROP
1
true
pm.PPV_CL
0.5
false
pm.PPV_V2
0.5
false
pm.PPV_Q
1
false
pm.SIGMA_RES_Y
0.5
false
pm.COV_CL_V2
0.3
false

Operations

Operation: 1

Op Type
generic
Operation Properties
Name Value
algo
foce

Step Dependencies

Step OID Preceding Steps
estimStep_1
 
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