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Sample size estimation for comparing dynamic treatment regimens in a SMART: A Monte Carlo-based approach and case study with longitudinal overdispersed count outcomes.

Publication ,  Journal Article
Yap, J; J Dziak, J; Maiti, R; Lynch, K; McKay, JR; Chakraborty, B; Nahum-Shani, I
Published in: Stat Methods Med Res
July 2023

Dynamic treatment regimens (DTRs), also known as treatment algorithms or adaptive interventions, play an increasingly important role in many health domains. DTRs are motivated to address the unique and changing needs of individuals by delivering the type of treatment needed, when needed, while minimizing unnecessary treatment. Practically, a DTR is a sequence of decision rules that specify, for each of several points in time, how available information about the individual's status and progress should be used in practice to decide which treatment (e.g. type or intensity) to deliver. The sequential multiple assignment randomized trial (SMART) is an experimental design widely used to empirically inform the development of DTRs. Sample size planning resources for SMARTs have been developed for continuous, binary, and survival outcomes. However, an important gap exists in sample size estimation methodology for SMARTs with longitudinal count outcomes. Furthermore, in many health domains, count data are overdispersed-having variance greater than their mean. We propose a Monte Carlo-based approach to sample size estimation applicable to many types of longitudinal outcomes and provide a case study with longitudinal overdispersed count outcomes. A SMART for engaging alcohol and cocaine-dependent patients in treatment is used as motivation.

Duke Scholars

Published In

Stat Methods Med Res

DOI

EISSN

1477-0334

Publication Date

July 2023

Volume

32

Issue

7

Start / End Page

1267 / 1283

Location

England

Related Subject Headings

  • Statistics & Probability
  • Sample Size
  • Research Design
  • Randomized Controlled Trials as Topic
  • Humans
  • Clinical Protocols
  • Algorithms
  • 4905 Statistics
  • 4202 Epidemiology
  • 1117 Public Health and Health Services
 

Citation

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Yap, J., J Dziak, J., Maiti, R., Lynch, K., McKay, J. R., Chakraborty, B., & Nahum-Shani, I. (2023). Sample size estimation for comparing dynamic treatment regimens in a SMART: A Monte Carlo-based approach and case study with longitudinal overdispersed count outcomes. Stat Methods Med Res, 32(7), 1267–1283. https://doi.org/10.1177/09622802231167435
Yap, Jamie, John J Dziak, Raju Maiti, Kevin Lynch, James R. McKay, Bibhas Chakraborty, and Inbal Nahum-Shani. “Sample size estimation for comparing dynamic treatment regimens in a SMART: A Monte Carlo-based approach and case study with longitudinal overdispersed count outcomes.Stat Methods Med Res 32, no. 7 (July 2023): 1267–83. https://doi.org/10.1177/09622802231167435.
Yap J, J Dziak J, Maiti R, Lynch K, McKay JR, Chakraborty B, et al. Sample size estimation for comparing dynamic treatment regimens in a SMART: A Monte Carlo-based approach and case study with longitudinal overdispersed count outcomes. Stat Methods Med Res. 2023 Jul;32(7):1267–83.
Yap, Jamie, et al. “Sample size estimation for comparing dynamic treatment regimens in a SMART: A Monte Carlo-based approach and case study with longitudinal overdispersed count outcomes.Stat Methods Med Res, vol. 32, no. 7, July 2023, pp. 1267–83. Pubmed, doi:10.1177/09622802231167435.
Yap J, J Dziak J, Maiti R, Lynch K, McKay JR, Chakraborty B, Nahum-Shani I. Sample size estimation for comparing dynamic treatment regimens in a SMART: A Monte Carlo-based approach and case study with longitudinal overdispersed count outcomes. Stat Methods Med Res. 2023 Jul;32(7):1267–1283.
Journal cover image

Published In

Stat Methods Med Res

DOI

EISSN

1477-0334

Publication Date

July 2023

Volume

32

Issue

7

Start / End Page

1267 / 1283

Location

England

Related Subject Headings

  • Statistics & Probability
  • Sample Size
  • Research Design
  • Randomized Controlled Trials as Topic
  • Humans
  • Clinical Protocols
  • Algorithms
  • 4905 Statistics
  • 4202 Epidemiology
  • 1117 Public Health and Health Services