SlideShare ist ein Scribd-Unternehmen logo
1 von 1
Downloaden Sie, um offline zu lesen
CLINICALTRIAL SIMULATIONTO EVALUATETHE PHARMACOKINETICS
OF AN ABUSE-DETERRENT OPIOID IN PEDIATRIC SUBJECTS
L. Pham, R. Stevens,V. Lai, J. Bhongsatiern, E. Kendig Camargo Pharmaceutical Services
L. Nguyen University of Buffalo; School of Pharmacy and Pharmaceutical Sciences
J. Bhongsatiern University of Cincinnati; College of Pharmacy
PURPOSE
Pediatric drug development programs are required under the Pediatric Research Equity Act (PREA). A clinical trial simulation (CTS) is
suggested to accurately estimate the sample size which ensures the precise estimation of important pharmacokinetic (PK) parameters
such as clearance (CL) and volume of distribution (Vd) of an investigational drug in pediatric population. For practical and ethical reasons,
a CTS was performed to estimate the sample size and optimal plasma sampling times that sufficiently characterize the PK parameters
(CL, Vd) from a single dose of an abuse-deterrent (AD) opioid in pediatric subjects.
METHODS
Opioid immediate-release (IR) dosage forms are prescribed for moderate to severe pain in pediatrics. The doses are administered as 0.1 - 0.2 mg/kg
every 4 hours. A CTS was performed using D-optimality-based limited sampling schemes in combination with Bayesian and nonlinear mixed-
effects modeling approaches. Eligible patients would be pediatrics aged 2 - 12 years, inclusive, undergoing inpatient surgery who are anticipated
to have postsurgical pain requiring an oral opioid for at least 1 dose (according to institution standard of care).
Two different pediatric age groups (2 - 5 and 6 - 12 years) were evenly distributed by age and gender.
Population PK analysis was performed using nonlinear mixed effects modeling version 7.3 (NONMEM®
). The first-order conditional estimation
with interaction (FOCEI) method was applied to develop base and final covariate models.
Protocol of the study (STUDY) was the only covariate performed in this analysis. Generalized additive modeling (GAM) and stepwise forward
addition/backward elimination procedures were used to assess the statistical significance (p<0.001) of the covariate via changes in the objective
function value (OFV).
Diagnostic plots, including population and individual predicted versus observed drug concentrations, and conditional weighted residuals versus
population predicted drug concentrations, were used to visually inspect the fit of the models.
The population PK model was evaluated by bootstrap analysis, visual predictive check (VPC), and normalized prediction distribution errors (npde). For
VPC and npde, data of drug obtained from the pivotal BE study was used as an external dataset (756 plasma concentrations; n = 42 subjects) and a
thousand simulations (n=1000) were performed.
Optimization of sampling times and sampling windows was determined for the different age groups using ADAPT 5 (Biomedical Simulation
Resource, University of Southern California). The design region was set between 0 and 10 h, and 3 to 5 sampling times per patient.
Optimal sampling windows were obtained around the fixed D-optimal time points for each age group by allowing the assay variability to
be set less than 5% across a wide range of the opioid’s concentrations (a 95% mean efficiency level and uniform distribution of samples
within windows were assumed).
Only one optimal plasma sampling design was implemented across the age groups. The optimal plasma sampling schedules were selected
based on Fisher information matrix (FIM) criteria, and precision of population-based PK estimates (ratio of standard deviation over the estimate).
Sample sizes for the different pediatric age groups were determined using Phoenix NLME simulations based on a confidence interval (CI)
approach. Simulations were used to determine the power of the final sampling windows design with different sample sizes for each age group.
For pediatric modeling, allometric exponents were fixed. CL and Vd terms were scaled by WT0.75
and WT1.0
respectively. The final criterion for sample
sizes for the different pediatric age groups was based on 80% power to achieve a 95% CI within 60-140% of the geometric mean estimate of
CL and Vd for the AD opioid in each pediatric group.
RESULTS
• Optimal blood samples from the CTS estimated 5 samples per subject (0.50 - 0.53, 1.25 - 1.32, 1.50 - 1.54, 4.47 - 4.63 and 8.30 - 8.36 h).
• The final one-compartment model with first order absorption rate constant, lag time, and first order elimination rate constant best described
the drug population PK in adults.
• Standard diagnostic plots of the final model with regard to observed concentrations versus predicted and individual predicted concentrations
are shown in Figure 1.
Figure 1 suggests a slight underprediction bias at the high concentrations (60 ng/mL). However, given the purpose of the
CTS, the histograms of CL and V appear to be reasonable to move forward with the model (Figure 2).
Approximately 7% of the observed
data were outside the 90% prediction
intervals and the prediction was slightly
underestimated at the concentrations of
60 ng/mL. However, since less than 10%
were observed outside the 90% prediction
intervals, the predictive performance of the
final model was accepted (Figure 3). CONCLUSIONS
• This study confirmed that population pharmacokinetic parameters of the drug can be best described by one-compartment model
with lag time.
• Estimations of PK parameters were in agreement with those reported in public domain. The mean (%CV) of clearance, volume of
distribution, absorption rate constant, and lag time are 98.4 (36.5%), 563.1 (31.4%), 6.24 (105%), and 0.44 (21.4%), respectively.
Goodness of fit criteria revealed that the predicted data from the final model was consistent with the observed concentrations.
• The model evaluation demonstrated reliability and robustness of the model based on results of bootstrap analysis. The VPC and
npde showed good predictive performance of the model. In particular, less than 10% of the simulated data were located outside
the 5th to 95th quantile range in the external evaluation dataset.
• Optimal blood samples from the CTS estimated 5 samples per subject (0.50 - 0.53, 1.25 - 1.32, 1.50 - 1.54, 4.47 - 4.63 and
8.30 - 8.36 h) and 14 subjects in each age group would provide the best estimates for CL and Vd.
• CTS findings were instrumental in helping to construct the optimal study design for the timing and number of blood draws for a
future AD opioid pediatric study, ages 2 - 12 years to comply with PREA.
Corresponding Author: lpham@camargopharma.com
Standard diagnostics between observed concentrations (ng/mL) and predicted and individual predicted concentrations
(ng/mL). Concentrations were predicted from the drug population pharmacokinetic model (fasted condition). A red line
represents a line of identity or a reference line. The data points were nearly symmetric along the line of identity with
some shifted towards the observations in the observed vs. individual predicted plot.
1.888.451.5708 www.camargopharma.com
Figure 1
Figure 2
ETA1=CLEARANCE; ETA2=VOLUME OF DISTRIBUTION
Normalized prediction distribution error (npde) from
simulated data (n=1000). Upper panel: a quantile-
quantile plot (QQ-plot) of the distribution of the npde
against the theoretical distribution and a histogram of
empirical cumulative distribution of the npde; Lower
panel: scatterplots of npde with the respective time
and predicted concentrations (DV). In each plot,
approximated prediction intervals are shown in blue
and pink: the line y=x in the QQ-plot; the shape of
the normal distribution in the histogram; the lines
corresponding to y=0 and the critical values 5%
and 95% in scatterplots. Closed circles represent
observed drug concentrations.
Figure 4: Normalized prediction distribution
error (npde)
Five sampling times and sampling windows per subject
(0.50-0.53, 1.25-1.32, 1.50-1.54, 4.47-4.63, and 8.30-8.36
hour) and 14 subjects per treatment group were determined
based on the criteria that 95% confidence interval of estimates
of clearance (CL) and volume of distribution (Vd) were within
60% and 140% of the geometric mean. Example of 10
simulation results is presented in Table 1.
Table 1: Estimation of PK parameter values from an example of 10 simulations
(14 patients – 5 sampling time points for each PK profile)
Trials 1 2 3 4 5 6 7 8 9 10
CL (L/hr)
99.39
(83.6-118.8)
76.73
(62.2-94.7)
80.9
(61.5-106.4)
74.89
(60.80-92.3)
101.91
(80.9-128.4)
100.5
(81.8-123.4)
130.4
(99.0-171.7)
100.5
(80.3-125.7)
96.20
(85.2-108.6)
127.53
(97.9-166.1)
84.2-118.8% 81.0-123.4% 76.1-131.5% 81.2-123.2% 79.4-126.0% 81.4-122.8% 75.9-131.7% 79.9-125.1% 88.6-112.9% 76.8-130.2%
Vd (L)
457.48
(367.1-570.1)
517.4
(403.8-663.0)
498.36
(432.7-574.0)
556.8
(476.6-650.5)
582.13
(454.9-745.0)
637.72
(527.7-770.7)
582.8
(490.5-692.5)
505.0
(426.2-598.5)
499.3
(399.8-623.6)
543.3
(455.9-647.5)
80.2-124.6% 78.0-128.1% 86.8-115.2% 85.6-116.8% 78.1-128.0% 82.7-120.8% 84.2-118.8% 84.4-118.5% 80.1-124.9% 83.9-119.2%
Target 95% confidence interval within 60% and 140% of the geometric mean estimates of clearance (CL) and volume of distribution (Vd) in each pediatric trial with at least 80% power; Reported values in
geometric mean (95% confidence interval), % of geometric mean estimates.
The simulation-based diagnostics
of drug concentrations (ng/mL)
and time (hours; h), n=1000.
Lines represent simulated data;
dashed lines are 50th and 10th-
90th quantiles; solid line is 5th-
95th quantiles; open circles
represent observed concentrations;
observations outside the 90%
prediction intervals = ~7%
Figure 3: Visual predictive
check (VPC) of the drug
population pharmacokinetic
Distribution of the npde with the mean (SE) of 0.099±0.031
and the variance (SE) of 0.73±0.04 suggests that the accuracy
level of the predictive performance of the model is reasonably
good. Figure 4

Weitere ähnliche Inhalte

Was ist angesagt?

Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...cambridgeWD
 
A convenient clinical nomogram for small intestine adenocarcinoma
A convenient clinical nomogram for small intestine adenocarcinomaA convenient clinical nomogram for small intestine adenocarcinoma
A convenient clinical nomogram for small intestine adenocarcinomanguyên anh doanh
 
Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...
Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...
Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...Mina Max
 
Cadth 2015 d5 symposium 2015 endonodal trials - version 2
Cadth 2015 d5 symposium 2015   endonodal trials - version 2Cadth 2015 d5 symposium 2015   endonodal trials - version 2
Cadth 2015 d5 symposium 2015 endonodal trials - version 2CADTH Symposium
 
6. Calculate samplesize for cohort studies
6. Calculate samplesize for cohort studies6. Calculate samplesize for cohort studies
6. Calculate samplesize for cohort studiesAzmi Mohd Tamil
 
How to read a forest plot?
How to read a forest plot?How to read a forest plot?
How to read a forest plot?Samir Haffar
 
Extending A Trial’s Design Case Studies Of Dealing With Study Design Issues
Extending A Trial’s Design Case Studies Of Dealing With Study Design IssuesExtending A Trial’s Design Case Studies Of Dealing With Study Design Issues
Extending A Trial’s Design Case Studies Of Dealing With Study Design IssuesnQuery
 
5. Calculate samplesize for case-control studies
5. Calculate samplesize for case-control studies5. Calculate samplesize for case-control studies
5. Calculate samplesize for case-control studiesAzmi Mohd Tamil
 
Association between genomic recurrence risk and well-being among breast cance...
Association between genomic recurrence risk and well-being among breast cance...Association between genomic recurrence risk and well-being among breast cance...
Association between genomic recurrence risk and well-being among breast cance...Enrique Moreno Gonzalez
 
Efficacy endpoints in Oncology
Efficacy endpoints in OncologyEfficacy endpoints in Oncology
Efficacy endpoints in OncologyAngelo Tinazzi
 
Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014Anjali Ganguly
 
Week12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced datasetWeek12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced datasetMusTapha KaMal FaSya
 
Chapter 25 assessment of clincal responses
Chapter 25 assessment of clincal responsesChapter 25 assessment of clincal responses
Chapter 25 assessment of clincal responsesNilesh Kucha
 
Repeated events analyses
Repeated events analysesRepeated events analyses
Repeated events analysesMike LaValley
 
Machine Learning for Survival Analysis
Machine Learning for Survival AnalysisMachine Learning for Survival Analysis
Machine Learning for Survival AnalysisChandan Reddy
 

Was ist angesagt? (19)

Metanlysis adjuvant pancreatic
Metanlysis adjuvant pancreaticMetanlysis adjuvant pancreatic
Metanlysis adjuvant pancreatic
 
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
 
A convenient clinical nomogram for small intestine adenocarcinoma
A convenient clinical nomogram for small intestine adenocarcinomaA convenient clinical nomogram for small intestine adenocarcinoma
A convenient clinical nomogram for small intestine adenocarcinoma
 
Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...
Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...
Chemotherapy+with+or+without+gefitinib+in+patients+with+advanced+non small-ce...
 
06 Hizoh aimradial20170921 Mortality risk
06 Hizoh aimradial20170921 Mortality risk06 Hizoh aimradial20170921 Mortality risk
06 Hizoh aimradial20170921 Mortality risk
 
Anaes2015 70 209-18
Anaes2015 70 209-18Anaes2015 70 209-18
Anaes2015 70 209-18
 
Cadth 2015 d5 symposium 2015 endonodal trials - version 2
Cadth 2015 d5 symposium 2015   endonodal trials - version 2Cadth 2015 d5 symposium 2015   endonodal trials - version 2
Cadth 2015 d5 symposium 2015 endonodal trials - version 2
 
6. Calculate samplesize for cohort studies
6. Calculate samplesize for cohort studies6. Calculate samplesize for cohort studies
6. Calculate samplesize for cohort studies
 
How to read a forest plot?
How to read a forest plot?How to read a forest plot?
How to read a forest plot?
 
Extending A Trial’s Design Case Studies Of Dealing With Study Design Issues
Extending A Trial’s Design Case Studies Of Dealing With Study Design IssuesExtending A Trial’s Design Case Studies Of Dealing With Study Design Issues
Extending A Trial’s Design Case Studies Of Dealing With Study Design Issues
 
5. Calculate samplesize for case-control studies
5. Calculate samplesize for case-control studies5. Calculate samplesize for case-control studies
5. Calculate samplesize for case-control studies
 
Association between genomic recurrence risk and well-being among breast cance...
Association between genomic recurrence risk and well-being among breast cance...Association between genomic recurrence risk and well-being among breast cance...
Association between genomic recurrence risk and well-being among breast cance...
 
Efficacy endpoints in Oncology
Efficacy endpoints in OncologyEfficacy endpoints in Oncology
Efficacy endpoints in Oncology
 
Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014Anjali_Ganguly_Siemens_2014
Anjali_Ganguly_Siemens_2014
 
Week12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced datasetWeek12sampling and feature selection technique to solve imbalanced dataset
Week12sampling and feature selection technique to solve imbalanced dataset
 
Chapter 25 assessment of clincal responses
Chapter 25 assessment of clincal responsesChapter 25 assessment of clincal responses
Chapter 25 assessment of clincal responses
 
JCO_Editorial_Nov2011
JCO_Editorial_Nov2011JCO_Editorial_Nov2011
JCO_Editorial_Nov2011
 
Repeated events analyses
Repeated events analysesRepeated events analyses
Repeated events analyses
 
Machine Learning for Survival Analysis
Machine Learning for Survival AnalysisMachine Learning for Survival Analysis
Machine Learning for Survival Analysis
 

Andere mochten auch

Loan Pham slides: Dialogue and Debate AAPS 2016
Loan Pham slides: Dialogue and Debate AAPS 2016Loan Pham slides: Dialogue and Debate AAPS 2016
Loan Pham slides: Dialogue and Debate AAPS 2016Loan Pham
 
In vivo in vitro correlation - copy
In vivo in vitro correlation - copyIn vivo in vitro correlation - copy
In vivo in vitro correlation - copyBHUPINDER KAUR
 
Dissolution testing
Dissolution testingDissolution testing
Dissolution testingGaurav Kr
 
OPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSING
OPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSINGOPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSING
OPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSINGJamia Hamdard
 
Disintegration and dissolution tests
Disintegration and dissolution testsDisintegration and dissolution tests
Disintegration and dissolution testsAmera Abdelelah
 

Andere mochten auch (8)

Loan Pham slides: Dialogue and Debate AAPS 2016
Loan Pham slides: Dialogue and Debate AAPS 2016Loan Pham slides: Dialogue and Debate AAPS 2016
Loan Pham slides: Dialogue and Debate AAPS 2016
 
In vivo in vitro correlation - copy
In vivo in vitro correlation - copyIn vivo in vitro correlation - copy
In vivo in vitro correlation - copy
 
Dissolution Method Development & Validation
Dissolution Method Development & ValidationDissolution Method Development & Validation
Dissolution Method Development & Validation
 
Dissolution testing
Dissolution testingDissolution testing
Dissolution testing
 
OPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSING
OPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSINGOPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSING
OPTIMIZATION IN PHARMACEUTICS,FORMULATION & PROCESSING
 
Disintegration and dissolution tests
Disintegration and dissolution testsDisintegration and dissolution tests
Disintegration and dissolution tests
 
Dissolution
DissolutionDissolution
Dissolution
 
Dissolution
DissolutionDissolution
Dissolution
 

Ähnlich wie Clinical Trial Simulation to Evaluate the Pharmacokinetics of an Abuse-Deterrent Opioid in Pediatric Subjects

2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)
2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)
2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)Ji-Youn Yeo
 
Analysis of pk data- Pop PK analysis
Analysis of pk data- Pop PK analysisAnalysis of pk data- Pop PK analysis
Analysis of pk data- Pop PK analysisGayathri Ravi
 
Practical Methods To Overcome Sample Size Challenges
Practical Methods To Overcome Sample Size ChallengesPractical Methods To Overcome Sample Size Challenges
Practical Methods To Overcome Sample Size ChallengesnQuery
 
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...semualkaira
 
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...semualkaira
 
ADMdx_AAIC_2016_EFA_Neurodegeneration_Poster
ADMdx_AAIC_2016_EFA_Neurodegeneration_PosterADMdx_AAIC_2016_EFA_Neurodegeneration_Poster
ADMdx_AAIC_2016_EFA_Neurodegeneration_PosterCraig Pennington
 
i.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approach
i.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approachi.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approach
i.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approachJonathan Josue Cid Galiot
 
Predictors of survival in children with ependymoma from a single center: usi...
 Predictors of survival in children with ependymoma from a single center: usi... Predictors of survival in children with ependymoma from a single center: usi...
Predictors of survival in children with ependymoma from a single center: usi...Francisco H C Felix
 
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...cambridgeWD
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...daranisaha
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...eshaasini
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...semualkaira
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...semualkaira
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...semualkaira
 
MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...
MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...
MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...cscpconf
 
QST Reference Data 2010 magerl pain
QST Reference Data 2010 magerl painQST Reference Data 2010 magerl pain
QST Reference Data 2010 magerl painPaul Coelho, MD
 
Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...
Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...
Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...Mawaya Tanaka
 

Ähnlich wie Clinical Trial Simulation to Evaluate the Pharmacokinetics of an Abuse-Deterrent Opioid in Pediatric Subjects (20)

2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)
2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)
2014-Yeo-A Multiplex Two-Color Real-Time PCR Method(1)
 
Analysis of pk data- Pop PK analysis
Analysis of pk data- Pop PK analysisAnalysis of pk data- Pop PK analysis
Analysis of pk data- Pop PK analysis
 
Practical Methods To Overcome Sample Size Challenges
Practical Methods To Overcome Sample Size ChallengesPractical Methods To Overcome Sample Size Challenges
Practical Methods To Overcome Sample Size Challenges
 
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
 
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
Development and Validation of a Nomogram for Predicting Response to Neoadjuva...
 
ADMdx_AAIC_2016_EFA_Neurodegeneration_Poster
ADMdx_AAIC_2016_EFA_Neurodegeneration_PosterADMdx_AAIC_2016_EFA_Neurodegeneration_Poster
ADMdx_AAIC_2016_EFA_Neurodegeneration_Poster
 
i.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approach
i.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approachi.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approach
i.a.Preoperative ovarian cancer diagnosis using neuro fuzzy approach
 
Pharmacometrics
PharmacometricsPharmacometrics
Pharmacometrics
 
Predictors of survival in children with ependymoma from a single center: usi...
 Predictors of survival in children with ependymoma from a single center: usi... Predictors of survival in children with ependymoma from a single center: usi...
Predictors of survival in children with ependymoma from a single center: usi...
 
QC test
QC testQC test
QC test
 
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
Clinical Trials Versus Health Outcomes Research: SAS/STAT Versus SAS Enterpri...
 
P1-01-17_poster
P1-01-17_posterP1-01-17_poster
P1-01-17_poster
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
 
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
Prognosis of Invasive Micropapillary Carcinoma of the Breast Analyzed by Usin...
 
MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...
MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...
MEDICAL IMAGING MUTIFRACTAL ANALYSIS IN PREDICTION OF EFFICIENCY OF CANCER TH...
 
QST Reference Data 2010 magerl pain
QST Reference Data 2010 magerl painQST Reference Data 2010 magerl pain
QST Reference Data 2010 magerl pain
 
Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...
Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...
Population-Based Pharmacokinetic Modeling of Vancomycin in Children with Rena...
 

Kürzlich hochgeladen

Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...
Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...
Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...adilkhan87451
 
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...GENUINE ESCORT AGENCY
 
VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋
VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋
VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋TANUJA PANDEY
 
Call Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service Available
Call Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service AvailableCall Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service Available
Call Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service AvailableGENUINE ESCORT AGENCY
 
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...Dipal Arora
 
Call Girls Vadodara Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Vadodara Just Call 8617370543 Top Class Call Girl Service AvailableCall Girls Vadodara Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Vadodara Just Call 8617370543 Top Class Call Girl Service AvailableDipal Arora
 
💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...
💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...
💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...khalifaescort01
 
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any TimeTop Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any TimeCall Girls Delhi
 
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated  Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...Top Rated  Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...chandars293
 
Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...
Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...
Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...parulsinha
 
Call Girls Tirupati Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Tirupati Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Tirupati Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Tirupati Just Call 8250077686 Top Class Call Girl Service AvailableDipal Arora
 
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...Anamika Rawat
 
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426jennyeacort
 
Call Girls Kurnool Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Kurnool Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Kurnool Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Kurnool Just Call 8250077686 Top Class Call Girl Service AvailableDipal Arora
 
Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...
Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...
Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...Sheetaleventcompany
 
Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...
Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...
Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...GENUINE ESCORT AGENCY
 
Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls * UPA...
Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls  * UPA...Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls  * UPA...
Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls * UPA...mahaiklolahd
 
Top Rated Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...
Top Rated  Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...Top Rated  Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...
Top Rated Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...chandars293
 

Kürzlich hochgeladen (20)

Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...
Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...
Russian Call Girls Lucknow Just Call 👉👉7877925207 Top Class Call Girl Service...
 
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
Pondicherry Call Girls Book Now 9630942363 Top Class Pondicherry Escort Servi...
 
VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋
VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋
VIP Hyderabad Call Girls Bahadurpally 7877925207 ₹5000 To 25K With AC Room 💚😋
 
Call Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service Available
Call Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service AvailableCall Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service Available
Call Girls Ahmedabad Just Call 9630942363 Top Class Call Girl Service Available
 
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
Best Rate (Patna ) Call Girls Patna ⟟ 8617370543 ⟟ High Class Call Girl In 5 ...
 
Call Girls Vadodara Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Vadodara Just Call 8617370543 Top Class Call Girl Service AvailableCall Girls Vadodara Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Vadodara Just Call 8617370543 Top Class Call Girl Service Available
 
💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...
💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...
💕SONAM KUMAR💕Premium Call Girls Jaipur ↘️9257276172 ↙️One Night Stand With Lo...
 
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any TimeTop Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
 
🌹Attapur⬅️ Vip Call Girls Hyderabad 📱9352852248 Book Well Trand Call Girls In...
🌹Attapur⬅️ Vip Call Girls Hyderabad 📱9352852248 Book Well Trand Call Girls In...🌹Attapur⬅️ Vip Call Girls Hyderabad 📱9352852248 Book Well Trand Call Girls In...
🌹Attapur⬅️ Vip Call Girls Hyderabad 📱9352852248 Book Well Trand Call Girls In...
 
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated  Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...Top Rated  Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
Top Rated Hyderabad Call Girls Erragadda ⟟ 9332606886 ⟟ Call Me For Genuine ...
 
Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...
Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...
Premium Call Girls In Jaipur {8445551418} ❤️VVIP SEEMA Call Girl in Jaipur Ra...
 
Call Girls Tirupati Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Tirupati Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Tirupati Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Tirupati Just Call 8250077686 Top Class Call Girl Service Available
 
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
Jogeshwari ! Call Girls Service Mumbai - 450+ Call Girl Cash Payment 90042684...
 
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
Call Girls in Delhi Triveni Complex Escort Service(🔝))/WhatsApp 97111⇛47426
 
Call Girls in Gagan Vihar (delhi) call me [🔝 9953056974 🔝] escort service 24X7
Call Girls in Gagan Vihar (delhi) call me [🔝  9953056974 🔝] escort service 24X7Call Girls in Gagan Vihar (delhi) call me [🔝  9953056974 🔝] escort service 24X7
Call Girls in Gagan Vihar (delhi) call me [🔝 9953056974 🔝] escort service 24X7
 
Call Girls Kurnool Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Kurnool Just Call 8250077686 Top Class Call Girl Service AvailableCall Girls Kurnool Just Call 8250077686 Top Class Call Girl Service Available
Call Girls Kurnool Just Call 8250077686 Top Class Call Girl Service Available
 
Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...
Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...
Call Girls Service Jaipur {9521753030} ❤️VVIP RIDDHI Call Girl in Jaipur Raja...
 
Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...
Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...
Call Girls Vasai Virar Just Call 9630942363 Top Class Call Girl Service Avail...
 
Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls * UPA...
Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls  * UPA...Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls  * UPA...
Call Girl in Indore 8827247818 {LowPrice} ❤️ (ahana) Indore Call Girls * UPA...
 
Top Rated Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...
Top Rated  Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...Top Rated  Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...
Top Rated Hyderabad Call Girls Chintal ⟟ 9332606886 ⟟ Call Me For Genuine Se...
 

Clinical Trial Simulation to Evaluate the Pharmacokinetics of an Abuse-Deterrent Opioid in Pediatric Subjects

  • 1. CLINICALTRIAL SIMULATIONTO EVALUATETHE PHARMACOKINETICS OF AN ABUSE-DETERRENT OPIOID IN PEDIATRIC SUBJECTS L. Pham, R. Stevens,V. Lai, J. Bhongsatiern, E. Kendig Camargo Pharmaceutical Services L. Nguyen University of Buffalo; School of Pharmacy and Pharmaceutical Sciences J. Bhongsatiern University of Cincinnati; College of Pharmacy PURPOSE Pediatric drug development programs are required under the Pediatric Research Equity Act (PREA). A clinical trial simulation (CTS) is suggested to accurately estimate the sample size which ensures the precise estimation of important pharmacokinetic (PK) parameters such as clearance (CL) and volume of distribution (Vd) of an investigational drug in pediatric population. For practical and ethical reasons, a CTS was performed to estimate the sample size and optimal plasma sampling times that sufficiently characterize the PK parameters (CL, Vd) from a single dose of an abuse-deterrent (AD) opioid in pediatric subjects. METHODS Opioid immediate-release (IR) dosage forms are prescribed for moderate to severe pain in pediatrics. The doses are administered as 0.1 - 0.2 mg/kg every 4 hours. A CTS was performed using D-optimality-based limited sampling schemes in combination with Bayesian and nonlinear mixed- effects modeling approaches. Eligible patients would be pediatrics aged 2 - 12 years, inclusive, undergoing inpatient surgery who are anticipated to have postsurgical pain requiring an oral opioid for at least 1 dose (according to institution standard of care). Two different pediatric age groups (2 - 5 and 6 - 12 years) were evenly distributed by age and gender. Population PK analysis was performed using nonlinear mixed effects modeling version 7.3 (NONMEM® ). The first-order conditional estimation with interaction (FOCEI) method was applied to develop base and final covariate models. Protocol of the study (STUDY) was the only covariate performed in this analysis. Generalized additive modeling (GAM) and stepwise forward addition/backward elimination procedures were used to assess the statistical significance (p<0.001) of the covariate via changes in the objective function value (OFV). Diagnostic plots, including population and individual predicted versus observed drug concentrations, and conditional weighted residuals versus population predicted drug concentrations, were used to visually inspect the fit of the models. The population PK model was evaluated by bootstrap analysis, visual predictive check (VPC), and normalized prediction distribution errors (npde). For VPC and npde, data of drug obtained from the pivotal BE study was used as an external dataset (756 plasma concentrations; n = 42 subjects) and a thousand simulations (n=1000) were performed. Optimization of sampling times and sampling windows was determined for the different age groups using ADAPT 5 (Biomedical Simulation Resource, University of Southern California). The design region was set between 0 and 10 h, and 3 to 5 sampling times per patient. Optimal sampling windows were obtained around the fixed D-optimal time points for each age group by allowing the assay variability to be set less than 5% across a wide range of the opioid’s concentrations (a 95% mean efficiency level and uniform distribution of samples within windows were assumed). Only one optimal plasma sampling design was implemented across the age groups. The optimal plasma sampling schedules were selected based on Fisher information matrix (FIM) criteria, and precision of population-based PK estimates (ratio of standard deviation over the estimate). Sample sizes for the different pediatric age groups were determined using Phoenix NLME simulations based on a confidence interval (CI) approach. Simulations were used to determine the power of the final sampling windows design with different sample sizes for each age group. For pediatric modeling, allometric exponents were fixed. CL and Vd terms were scaled by WT0.75 and WT1.0 respectively. The final criterion for sample sizes for the different pediatric age groups was based on 80% power to achieve a 95% CI within 60-140% of the geometric mean estimate of CL and Vd for the AD opioid in each pediatric group. RESULTS • Optimal blood samples from the CTS estimated 5 samples per subject (0.50 - 0.53, 1.25 - 1.32, 1.50 - 1.54, 4.47 - 4.63 and 8.30 - 8.36 h). • The final one-compartment model with first order absorption rate constant, lag time, and first order elimination rate constant best described the drug population PK in adults. • Standard diagnostic plots of the final model with regard to observed concentrations versus predicted and individual predicted concentrations are shown in Figure 1. Figure 1 suggests a slight underprediction bias at the high concentrations (60 ng/mL). However, given the purpose of the CTS, the histograms of CL and V appear to be reasonable to move forward with the model (Figure 2). Approximately 7% of the observed data were outside the 90% prediction intervals and the prediction was slightly underestimated at the concentrations of 60 ng/mL. However, since less than 10% were observed outside the 90% prediction intervals, the predictive performance of the final model was accepted (Figure 3). CONCLUSIONS • This study confirmed that population pharmacokinetic parameters of the drug can be best described by one-compartment model with lag time. • Estimations of PK parameters were in agreement with those reported in public domain. The mean (%CV) of clearance, volume of distribution, absorption rate constant, and lag time are 98.4 (36.5%), 563.1 (31.4%), 6.24 (105%), and 0.44 (21.4%), respectively. Goodness of fit criteria revealed that the predicted data from the final model was consistent with the observed concentrations. • The model evaluation demonstrated reliability and robustness of the model based on results of bootstrap analysis. The VPC and npde showed good predictive performance of the model. In particular, less than 10% of the simulated data were located outside the 5th to 95th quantile range in the external evaluation dataset. • Optimal blood samples from the CTS estimated 5 samples per subject (0.50 - 0.53, 1.25 - 1.32, 1.50 - 1.54, 4.47 - 4.63 and 8.30 - 8.36 h) and 14 subjects in each age group would provide the best estimates for CL and Vd. • CTS findings were instrumental in helping to construct the optimal study design for the timing and number of blood draws for a future AD opioid pediatric study, ages 2 - 12 years to comply with PREA. Corresponding Author: lpham@camargopharma.com Standard diagnostics between observed concentrations (ng/mL) and predicted and individual predicted concentrations (ng/mL). Concentrations were predicted from the drug population pharmacokinetic model (fasted condition). A red line represents a line of identity or a reference line. The data points were nearly symmetric along the line of identity with some shifted towards the observations in the observed vs. individual predicted plot. 1.888.451.5708 www.camargopharma.com Figure 1 Figure 2 ETA1=CLEARANCE; ETA2=VOLUME OF DISTRIBUTION Normalized prediction distribution error (npde) from simulated data (n=1000). Upper panel: a quantile- quantile plot (QQ-plot) of the distribution of the npde against the theoretical distribution and a histogram of empirical cumulative distribution of the npde; Lower panel: scatterplots of npde with the respective time and predicted concentrations (DV). In each plot, approximated prediction intervals are shown in blue and pink: the line y=x in the QQ-plot; the shape of the normal distribution in the histogram; the lines corresponding to y=0 and the critical values 5% and 95% in scatterplots. Closed circles represent observed drug concentrations. Figure 4: Normalized prediction distribution error (npde) Five sampling times and sampling windows per subject (0.50-0.53, 1.25-1.32, 1.50-1.54, 4.47-4.63, and 8.30-8.36 hour) and 14 subjects per treatment group were determined based on the criteria that 95% confidence interval of estimates of clearance (CL) and volume of distribution (Vd) were within 60% and 140% of the geometric mean. Example of 10 simulation results is presented in Table 1. Table 1: Estimation of PK parameter values from an example of 10 simulations (14 patients – 5 sampling time points for each PK profile) Trials 1 2 3 4 5 6 7 8 9 10 CL (L/hr) 99.39 (83.6-118.8) 76.73 (62.2-94.7) 80.9 (61.5-106.4) 74.89 (60.80-92.3) 101.91 (80.9-128.4) 100.5 (81.8-123.4) 130.4 (99.0-171.7) 100.5 (80.3-125.7) 96.20 (85.2-108.6) 127.53 (97.9-166.1) 84.2-118.8% 81.0-123.4% 76.1-131.5% 81.2-123.2% 79.4-126.0% 81.4-122.8% 75.9-131.7% 79.9-125.1% 88.6-112.9% 76.8-130.2% Vd (L) 457.48 (367.1-570.1) 517.4 (403.8-663.0) 498.36 (432.7-574.0) 556.8 (476.6-650.5) 582.13 (454.9-745.0) 637.72 (527.7-770.7) 582.8 (490.5-692.5) 505.0 (426.2-598.5) 499.3 (399.8-623.6) 543.3 (455.9-647.5) 80.2-124.6% 78.0-128.1% 86.8-115.2% 85.6-116.8% 78.1-128.0% 82.7-120.8% 84.2-118.8% 84.4-118.5% 80.1-124.9% 83.9-119.2% Target 95% confidence interval within 60% and 140% of the geometric mean estimates of clearance (CL) and volume of distribution (Vd) in each pediatric trial with at least 80% power; Reported values in geometric mean (95% confidence interval), % of geometric mean estimates. The simulation-based diagnostics of drug concentrations (ng/mL) and time (hours; h), n=1000. Lines represent simulated data; dashed lines are 50th and 10th- 90th quantiles; solid line is 5th- 95th quantiles; open circles represent observed concentrations; observations outside the 90% prediction intervals = ~7% Figure 3: Visual predictive check (VPC) of the drug population pharmacokinetic Distribution of the npde with the mean (SE) of 0.099±0.031 and the variance (SE) of 0.73±0.04 suggests that the accuracy level of the predictive performance of the model is reasonably good. Figure 4