Stability analysis using mixed models: A critique of tolerance interval methods and a probabilistic solution |
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Authors: | Stan Altan Paul Faya Adam P. Rauk David LeBlond John W. Seaman Jr. Dwaine Banton |
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Affiliation: | 1. Statistics and Decision Sciences, Janssen R&D, Raritan, New Jersey, USA;2. Statistics – Discovery and Development, Eli Lilly and Company, Indianapolis, Indiana, USA;3. Robert Singer Consulting, Chicago, Illinois, USA;4. Department of Statistical Science, Baylor University, Waco, Texas, USA;5. Statistical Analysis and Research Center, LabCorp, Stockholm, Sweden |
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Abstract: | Recently, tolerance interval approaches to the calculation of a shelf life of a drug product have been proposed in the literature. These address the belief that shelf life should be related to control of a certain proportion of batches being out of specification. We question the appropriateness of the tolerance interval approach. Our concerns relate to the computational challenges and practical interpretations of the method. We provide an alternative Bayesian approach, which directly controls the desired proportion of batches falling out of specification assuming a controlled manufacturing process. The approach has an intuitive interpretation and posterior distributions are straightforward to compute. If prior information on the fixed and random parameters is available, a Bayesian approach can provide additional benefits both to the company and the consumer. It also avoids many of the computational challenges with the tolerance interval methodology. |
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Keywords: | Bayesian degradation pharmaceutical shelf life tolerance interval |
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