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Resource Profile and User Guide of the Polygenic Index Repository

Authors :
Magnus Johannesson
Hariharan Jayashankar
Avshalom Caspi
David Laibson
Matt McGue
Sven Oskarsson
Alexander I. Young
Nancy Wang
Jeremy Freese
David A. Hinds
William G. Iacono
Andrew Steptoe
Lili Milani
Casper A.P. Burik
Aysu Okbay
Grant Goldman
K. Paige Harden
Jonathan P. Beauchamp
Elliot M. Tucker-Drob
Rafael Ahlskog
Peter M. Visscher
Michael Bennett
Aaron Kleinman
Patrick Turley
Travis T. Mallard
Philipp Koellinger
Olesya Ajnakina
David Cesarini
Tõnu Esko
Michelle N. Meyer
Daniel J. Benjamin
Joel Becker
Benjamin Williams
Kathleen Mullan Harris
Terrie E. Moffitt
Richie Poulton
Richard Karlsson Linnér
Pamela Herd
David L. Corcoran
Patrik K. E. Magnusson
Karen Sugden
Daniel W. Belsky
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

Polygenic indexes (PGIs) are DNA-based predictors. Their value for research in many scientific disciplines is rapidly growing. As a resource for researchers, we used a consistent methodology to construct PGIs for 47 phenotypes in 11 datasets. To maximize the PGIs’ prediction accuracies, we constructed them using genome-wide association studies—some of which are novel—from multiple data sources, including 23andMe and UK Biobank. We present a theoretical framework to help interpret analyses involving PGIs. A key insight is that a PGI can be understood as an unbiased but noisy measure of a latent variable we call the “additive SNP factor.” Regressions in which the true regressor is the additive SNP factor but the PGI is used as its proxy therefore suffer from errors-in-variables bias. We derive an estimator that corrects for the bias, illustrate the correction, and make a Python tool for implementing it publicly available.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........f578513b1b3fadbab5e14ff2f9ad1039