@article {M.065144, author = {Pala M. and Z. Zappala and M. Marongiu and X. Li and J.R. Davis and R. Cusano and F. Crobu and K.R. Kukurba and F. Reiner and R. Berutti and M.G. Piras and A. Mulas and M. Zoledziewska and M. Marongiu and F. Busonero and A. Maschio and M. Steri and C. Sidore and S. Sanna and E. Fiorillo and A. Battle and J. Novembre and C. Jones and A. Angius and G.R. Abecasis and D. Schlessinger and F. Cucca and S.B. Montgomery}, title = {Population and individual effects of non-coding variants inform genetic risk factors}, elocation-id = {065144}, year = {2016}, doi = {10.1101/065144}, publisher = {Cold Spring Harbor Laboratory}, abstract = {Identifying functional non-coding variants can enhance genome interpretation and inform novel genetic risk factors. We used whole genomes and peripheral white blood cell transcriptomes from 624 Sardinian individuals to identify non-coding variants that contribute to population, family, and individual differences in transcript abundance. We identified 21,183 independent expression quantitative trait loci (eQTLs) and 6,768 independent splicing quantitative trait loci (sQTLs) influencing 73 and 41\% of all tested genes. When we compared Sardinian eQTLs to those previously identified in Europe, we identified differentiated eQTLs at genes involved in malarial resistance and multiple sclerosis, reflecting the long-term epidemiological history of the island{\textquoteright}s population. Taking advantage of pedigree data for the population sample, we identify segregating patterns of outlier gene expression and allelic imbalance in 61 Sardinian trios. We identified 809 expression outliers (median z-score of 2.97) averaging 13.3 genes with outlier expression per individual. We then connected these outlier expression events to rare non-coding variants. Our results provide new insight into the effects of non-coding variants and their relationship to population history, traits and individual genetic risk.}, URL = {https://www.biorxiv.org/content/early/2016/07/21/065144}, eprint = {https://www.biorxiv.org/content/early/2016/07/21/065144.full.pdf}, journal = {bioRxiv} }