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Whole-genome sequence-based analysis of thyroid function

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Academic year: 2021

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Table shows the association results for SNPs that reached genome-wide level significance in the final meta-analysis
Figure 1 | Regional and genome-wide association plots for TSH. (a) Regional association plot showing genome-wide significant locus for serum TSH at the SYN2, TIMP4 gene region
Figure 2 | Regional and conditional plots for FT4. (a) Regional association plot showing genome-wide significant locus for serum FT4 at the B4GALT6, SLC25A52 region (overall meta-analysis)
Figure 4 | Plots showing NRG1 region with significant associations with FT4 from SKAT analysis

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