Abstract

BackgroundTriad families are routinely used to test association between genetic variants and complex diseases. Triad studies are important and popular since they are robust in terms of being less prone to false positives due to population structure. In practice, one may collect not only complete triads, but also incomplete families such as dyads (affected child with one parent) and singleton monads (affected child without parents). Since there is a lack of convenient algorithms and software to analyze the incomplete data, dyads and monads are usually discarded. This may lead to loss of power and insufficient utilization of genetic information in a study.ResultsWe develop likelihood-based statistical models and likelihood ratio tests to test for association between complex diseases and genetic markers by using combinations of full triads, parent-child dyads, and affected singleton monads for a unified analysis. A likelihood is calculated directly to facilitate the data analysis without imputation and to avoid computational complexity. This makes it easy to implement the models and to explain the results.ConclusionBy simulation studies, we show that the proposed models and tests are very robust in terms of accurately controlling type I error evaluations, and are powerful by empirical power evaluations. The methods are applied to test for association between transforming growth factor alpha (TGFA) gene and cleft palate in an Irish study.

Highlights

  • Triad families are routinely used to test association between genetic variants and complex diseases

  • Triad studies are important and popular since they are robust in terms of being less prone to false positive results due to population structure [2,3]

  • We develop likelihood-based statistical methods to test for association between complex diseases and genetic markers by using combinations of full triads, parent-child dyads, and affected singleton monads for a unified analysis

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Summary

Introduction

Triad families are routinely used to test association between genetic variants and complex diseases. Triad studies are important and popular since they are robust in terms of being less prone to false positives due to population structure. Since there is a lack of convenient algorithms and software to analyze the incomplete data, dyads and monads are usually discarded This may lead to loss of power and insufficient utilization of genetic information in a study. In family-based studies, one might collect triads, sibships, parent-child dyads, general pedigrees or some combinations. In our birth defects studies, almost all families contain only a single affected child with or without parents They are basically triad families allowing for missing parents [1]. Triad studies are important and popular since they are robust in terms of being less prone to false positive results due to population structure [2,3].

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