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Optimum study design for detecting imprinting and maternal effects based on partial likelihood

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  • Fangyuan Zhang
  • Abbas Khalili
  • Shili Lin

Abstract

type="main" xml:lang="en"> Despite spectacular advances in molecular genomic technologies in the past two decades, resources available for genomic studies are still finite and limited, especially for family-based studies. Hence, it is important to consider an optimum study design to maximally utilize limited resources to increase statistical power in family-based studies. A particular question of interest is whether it is more profitable to genotype siblings of probands or to recruit more independent families. Numerous studies have attempted to address this study design issue for simultaneous detection of imprinting and maternal effects, two important epigenetic factors for studying complex diseases. The question is far from settled, however, mainly due to the fact that results and recommendations in the literature are based on anecdotal evidence from limited simulation studies rather than based on rigorous statistical analysis. In this article, we propose a systematic approach to study various designs based on a partial likelihood formulation. We derive the asymptotic properties and obtain formulas for computing the information contents of study designs being considered. Our results show that, for a common disease, recruiting additional siblings is beneficial because both affected and unaffected individuals will be included. However, if a disease is rare, then any additional siblings recruited are most likely to be unaffected, thus contributing little additional information; in such cases, additional families will be a better choice with a fixed amount of resources. Our work thus offers a practical strategy for investigators to select the optimum study design within a case-control family scheme before data collection.

Suggested Citation

  • Fangyuan Zhang & Abbas Khalili & Shili Lin, 2016. "Optimum study design for detecting imprinting and maternal effects based on partial likelihood," Biometrics, The International Biometric Society, vol. 72(1), pages 95-105, March.
  • Handle: RePEc:bla:biomet:v:72:y:2016:i:1:p:95-105
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