Affymetrix 2.0 miRNA arrays on lung tissue RNA n=3-4 mice/strain 92 differentially expressed miRNAs 38 miRNAs both differentially and highly expressed.

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Affymetrix 2.0 miRNA arrays on lung tissue RNA n=3-4 mice/strain 92 differentially expressed miRNAs 38 miRNAs both differentially and highly expressed miRNA eQTL mapping Identify quantitative trait transcripts and quantitative trait miRNAs miRhub analyses** Colocalization of eQTL and inflammation (eosinophil, neutrophil) QTL? CC Founder Strains Exiqon locked nucleic acid based qRT-PCR of 38 miRNAs on 129 preCC mice 18 eQTL detected + 8 suggestive eQTL miR-31, miR-351, and miR-497 targets enriched among neutrophil quantitative trait transcripts Inflammation phenotype Expression mRNA microRNA OR Inflammation phenotype Expression microRNA mRNA No* Identification of putative causal variants for miR-342-3p eQTL “eQTL Approach” “Bioinformatic/ Statistical Approach” Combine with genotype data Combine with inflammation phenotype data Supplementary Figure 1.

Supplementary Figure 2.

Supplementary Figure 3. AB

Supplementary Figure 4.

Supplementary Figure 5. miR-322miR-203miR-221 miR-503miR-322*miR-351 miR-146bmiR-181d miR-187

Supplementary Figure 6.

Supplementary Figure 7. Enrichment Among Positive Quantitative Trait Transcripts Enrichment Among Negative Quantitative Trait Transcripts