Genetic correlation (r) analysis is used to identify phenotypes that may have a shared genetic basis. Traditionally, r is studied globally, considering only the average of the shared signal across the genome, although this approach may fail when the r is confined to particular genomic regions or in opposing directions at different loci. Current tools for local r analysis are restricted to analysis of two phenotypes. Here we introduce LAVA, an integrated framework for local r analysis that, in addition to testing the standard bivariate local rs between two phenotypes, can evaluate local heritabilities and analyze conditional genetic relations between several phenotypes using partial correlation and multiple regression. Applied to 25 behavioral and health phenotypes, we show considerable heterogeneity in the bivariate local rs across the genome, which is often masked by the global r patterns, and demonstrate how our conditional approaches can elucidate more complex, multivariate genetic relations.
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http://dx.doi.org/10.1038/s41588-022-01017-y | DOI Listing |
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