Sample size re-estimation for clinical trials with longitudinal negative binomial counts including time trends.
Thomas AsendorfRobin HendersonHeinz SchmidliTim FriedePublished in: Statistics in medicine (2018)
In some diseases, such as multiple sclerosis, lesion counts obtained from magnetic resonance imaging (MRI) are used as markers of disease progression. This leads to longitudinal, and typically overdispersed, count data outcomes in clinical trials. Models for such data invariably include a number of nuisance parameters, which can be difficult to specify at the planning stage, leading to considerable uncertainty in sample size specification. Consequently, blinded sample size re-estimation procedures are used, allowing for an adjustment of the sample size within an ongoing trial by estimating relevant nuisance parameters at an interim point, without compromising trial integrity. To date, the methods available for re-estimation have required an assumption that the mean count is time-constant within patients. We propose a new modeling approach that maintains the advantages of established procedures but allows for general underlying and treatment-specific time trends in the mean response. A simulation study is conducted to assess the effectiveness of blinded sample size re-estimation methods over fixed designs. Sample sizes attained through blinded sample size re-estimation procedures are shown to maintain the desired study power without inflating the Type I error rate and the procedure is demonstrated on MRI data from a recent study in multiple sclerosis.
Keyphrases
- clinical trial
- multiple sclerosis
- magnetic resonance imaging
- study protocol
- contrast enhanced
- electronic health record
- systematic review
- big data
- peripheral blood
- computed tomography
- type diabetes
- magnetic resonance
- metabolic syndrome
- adipose tissue
- white matter
- machine learning
- deep learning
- artificial intelligence
- weight loss