AUTHOR=Kochunov Peter , Patel Binish , Ganjgahi Habib , Donohue Brian , Ryan Meghann , Hong Elliot L. , Chen Xu , Adhikari Bhim , Jahanshad Neda , Thompson Paul M. , Van’t Ent Dennis , den Braber Anouk , de Geus Eco J. C. , Brouwer Rachel M. , Boomsma Dorret I. , Hulshoff Pol Hilleke E. , de Zubicaray Greig I. , McMahon Katie L. , Martin Nicholas G. , Wright Margaret J. , Nichols Thomas E. TITLE=Homogenizing Estimates of Heritability Among SOLAR-Eclipse, OpenMx, APACE, and FPHI Software Packages in Neuroimaging Data JOURNAL=Frontiers in Neuroinformatics VOLUME=13 YEAR=2019 URL=https://www.frontiersin.org/journals/neuroinformatics/articles/10.3389/fninf.2019.00016 DOI=10.3389/fninf.2019.00016 ISSN=1662-5196 ABSTRACT=
Imaging genetic analyses use heritability calculations to measure the fraction of phenotypic variance attributable to additive genetic factors. We tested the agreement between heritability estimates provided by four methods that are used for heritability estimates in neuroimaging traits. SOLAR-Eclipse and OpenMx use iterative maximum likelihood estimation (MLE) methods. Accelerated Permutation inference for ACE (APACE) and fast permutation heritability inference (FPHI), employ fast, non-iterative approximation-based methods. We performed this evaluation in a simulated twin-sibling pedigree and phenotypes and in diffusion tensor imaging (DTI) data from three twin-sibling cohorts, the human connectome project (HCP), netherlands twin register (NTR) and BrainSCALE projects provided as a part of the enhancing neuro imaging genetics analysis (ENIGMA) consortium. We observed that heritability estimate may differ depending on the underlying method and dataset. The heritability estimates from the two MLE approaches provided excellent agreement in both simulated and imaging data. The heritability estimates for two approximation approaches showed reduced heritability estimates in datasets with deviations from data normality. We propose a data homogenization approach (implemented in solar-eclipse;