TY - JOUR AU - Schrodi, Steven J. AU - Mukherjee, Shubhabrata AU - Shan, Ying AU - Tromp, Gerard AU - Sninsky, John J. AU - Callear, Amy P. AU - Carter, Tonia C. AU - Ye, Zhan AU - Haines, Jonathan L. AU - Brilliant, Murray H. AU - Crane, Paul K. AU - Smelser, Diane T. AU - Elston, Robert C. AU - Weeks, Daniel E. PY - 2014 M3 - Review TI - Genetic-based prediction of disease traits: prediction is very difficult, especially about the futureā€  JO - Frontiers in Genetics UR - https://www.frontiersin.org/articles/10.3389/fgene.2014.00162 VL - 5 SN - 1664-8021 N2 - Translation of results from genetic findings to inform medical practice is a highly anticipated goal of human genetics. The aim of this paper is to review and discuss the role of genetics in medically-relevant prediction. Germline genetics presages disease onset and therefore can contribute prognostic signals that augment laboratory tests and clinical features. As such, the impact of genetic-based predictive models on clinical decisions and therapy choice could be profound. However, given that (i) medical traits result from a complex interplay between genetic and environmental factors, (ii) the underlying genetic architectures for susceptibility to common diseases are not well-understood, and (iii) replicable susceptibility alleles, in combination, account for only a moderate amount of disease heritability, there are substantial challenges to constructing and implementing genetic risk prediction models with high utility. In spite of these challenges, concerted progress has continued in this area with an ongoing accumulation of studies that identify disease predisposing genotypes. Several statistical approaches with the aim of predicting disease have been published. Here we summarize the current state of disease susceptibility mapping and pharmacogenetics efforts for risk prediction, describe methods used to construct and evaluate genetic-based predictive models, and discuss applications. ER -