Abstract
Genome-wide association studies are becoming an increasingly effective tool for identifying genetic factors contributing to complex diseases. In this review, I discuss two sets of genome-wide association studies that identified novel genetic factors for age-related macular degeneration and genetic factors for type II diabetes. In reviewing these sets of studies, my goal is to identify factors that contributed to the success of these studies. Design-related factors include the selection of traits that show strong familiality, the selection of clinically homogeneous populations and the selection of cases that have a family history. Ethnic stratification within the study sample can lead to biases, and methods to control for stratification are briefly reviewed. Finally, the impact of single nucleotide polymorphism selection on the power of a study and procedures for improving power by inferring genotypes, by combining data across studies and by performing multistage analyses are discussed. The continuing success of genome-wide association studies depends on careful selection of populations for study and on collaborative analytical approaches.