Mitochondrial DNA (mtDNA) shares characteristics with bacterial DNA and activates immune cells via TLR9 Extracellular vesicles (EVs) and mtDNA have been found in blood products and can activate immune cells; we sought to characterize their evolution in stored blood products. From a previous study of hemolysis in 13,403 blood donors, a second blood unit was drawn from 651 donors and sampled at days 10, 21, and 42. EV counts and RBC-EVs increased with storage time, and EV levels were higher in males and in RBC units processed in AS-1 compared with AS-3. mtDNA levels were higher in females and RBC units processed in AS-3. EV populations and mtDNA levels were highly correlated within donors for 98 donations obtained 2–12 months apart. Quantitative trait locus analysis revealed several genetic associations, most notably linking mtDNA levels with polymorphisms in ANKLE1, which encodes an erythroid-specific protein that preferentially cleaves mtDNA. These data suggest that donor-intrinsic factors may influence mtDNA and EV levels found in RBC units. This finding lends impetus to determining if genetic or environmental factors control levels of these immune mediators in blood donors.
Xutao Deng, Clara Di Germanio, Erika G. Marques de Menezes, Pamela Milani, Mars Stone, Heather Tanner, Sonia Coco Bakkour, Daniel M. Chafets, Sarah E. Reese, Nareg H. Roubinian, Steven Kleinman, Tamir Kanias, Michael P. Busch, Eric J. Earley, Grier P. Page, Travis Nemkov, Angelo D’Alessandro, Philip J. Norris, for the Recipient Epidemiology and Donor Evaluation Study-IV-Pediatric (REDS-IV-P)
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