2012
DOI: 10.1177/0091270011422812
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Clarification on Precision Criteria to Derive Sample Size When Designing Pediatric Pharmacokinetic Studies

Abstract: P ediatric drug development is challenging and fairly unique in several aspects. 1 Most of the development programs have just one chance to perform an informative set of trials. After that, industry does not have any financial incentive. Pharmacokinetic (PK) information is useful in (1) selecting dose range for future studies; (2) assessing drug exposure for efficacy and safety purposes, especially by matching exposures to adults, and ultimately (3) supporting dosing approval. Different guidances were publishe… Show more

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Cited by 94 publications
(115 citation statements)
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“…RSE of CL TV predictions over weight were also calculated using the variance-covariance matrix obtained from NONMEM [13]. For this, we log-transformed the power function of Eq.…”
Section: Case Studymentioning
confidence: 99%
See 1 more Smart Citation
“…RSE of CL TV predictions over weight were also calculated using the variance-covariance matrix obtained from NONMEM [13]. For this, we log-transformed the power function of Eq.…”
Section: Case Studymentioning
confidence: 99%
“…In this context, the power function in Eq. 1 can be considered a linear model in the log domain, with an intercept of log CL pop [13]. If the same concepts apply, we might expect the RSE of the estimate of CL pop to be minimal when normalizing weight to the geometric mean.…”
Section: Introductionmentioning
confidence: 99%
“…Several methods for defining an appropriate sample size for pediatric population PK studies have been proposed, each of which is associated with relative strengths and weaknesses 4, 5, 6, 7. The most well‐known approach was put forth by the FDA in 2012 3. This approach aims to precisely estimate PK parameters (e.g., clearance and volume of distribution).…”
Section: Power and Sample Size Calculationsmentioning
confidence: 99%
“…This approach aims to precisely estimate PK parameters (e.g., clearance and volume of distribution). The regulatory requirement that evolved from this approach states that a pediatric trial “must be prospectively powered to target a 95% confidence interval within 60‐140% of the geometric mean estimates of clearance and volume of distribution [
] in each pediatric sub‐group with ≄80% power.”3 Pediatric subgroups are most commonly derived from stratifications based on age; however, other physiologic (e.g., weight) or pathophysiologic (e.g., rate of disease progression) factors that influence the exposure–response profile should also be considered to ensure that the sample size is appropriate given the trial's objectives. In three examples put forth by the FDA, including two antibiotics and one sympatholytic drug, the following age groups have been used: 3 to <6 months, 6 to <12 months, 1 to <2 years, 2 to <6 years, 6 to <12 years, and 12 to 18 years 3…”
Section: Power and Sample Size Calculationsmentioning
confidence: 99%
“…Likewise, there is an evolving set of physiologic-based absorption models (e.g., ADAM, GITA, Grass) which are able to accommodate pediatric-specific anatomical parameters potentially improving guidance for pediatric formulations even further. Integrating in vitro drug characteristics, study design, sampling scheme, dosing requirements, and sample size into a complete trial simulation model would seem to be an optimal way of assuring adherence with both study objectives (49) and recent FDA quality standards on pediatric trial design (50).…”
Section: Clinical Considerationsmentioning
confidence: 99%