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Maybe Small Is Too Small a Term: Introduction to Advancing Small Sample Prevention Science. | LitMetric

Maybe Small Is Too Small a Term: Introduction to Advancing Small Sample Prevention Science.

Prev Sci

Department of Biobehavioral Health and Population Sciences, University of Minnesota Medical School, Duluth Campus, Duluth, USA.

Published: October 2015

AI Article Synopsis

  • This special section focuses on advancing prevention research that targets health disparities in small population groups, highlighting key challenges in research design and analysis.
  • It aims to offer innovative, practical solutions to these issues and explore their broader applications in prevention research across various fields.
  • The section is divided into two parts: one assists researchers in the design phase, while the other addresses analysis challenges, concluding with a summary of implications and future directions in small sample research.

Article Abstract

Prevention research addressing health disparities often involves work with small population groups experiencing such disparities. The goals of this special section are to (1) address the question of what constitutes a small sample; (2) identify some of the key research design and analytic issues that arise in prevention research with small samples; (3) develop applied, problem-oriented, and methodologically innovative solutions to these design and analytic issues; and (4) evaluate the potential role of these innovative solutions in describing phenomena, testing theory, and evaluating interventions in prevention research. Through these efforts, we hope to promote broader application of these methodological innovations. We also seek whenever possible, to explore their implications in more general problems that appear in research with small samples but concern all areas of prevention research. This special section includes two sections. The first section aims to provide input for researchers at the design phase, while the second focuses on analysis. Each article describes an innovative solution to one or more challenges posed by the analysis of small samples, with special emphasis on testing for intervention effects in prevention research. A concluding article summarizes some of their broader implications, along with conclusions regarding future directions in research with small samples in prevention science. Finally, a commentary provides the perspective of the federal agencies that sponsored the conference that gave rise to this special section.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4943852PMC
http://dx.doi.org/10.1007/s11121-015-0584-5DOI Listing

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