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Myoglobin leaching into the serum of IDA mice is driven by the high activation of sGC under anemic conditions which induces myoglobin expression

Ghosh, A.; Das, N. K.; Sumi, M. P.; Tupta, B.; Ghosh, C.; Stuehr, D. J.; Shah, Y. M.

2025-10-04 biochemistry
10.1101/2025.10.03.680120 bioRxiv
Show abstract

Our study reveals that status of the sGC heterodimer or its subsequent activation aligns with active erythropoiesis, and this heterodimer also correlates with the expression of myoglobin (Mb) or HO1. In this study we found that Mb expression which is driven by iron restriction and high sGC activation in iron deficiency anemia (IDA) leaches out more into the serum relative to non-anemic WTs. Tissues from IDA mice of both models developed either by nutritional iron deprivation or by ablation of ferroportin (Fpn) gene or from iron refractory iron deficiency anemia (IRIDA) mice found that Mb expression follows a variable pattern in different tissues but always correlates to the status of the sGC heterodimer or its subsequent activation. Here higher Mb expression happening in anemic (IDA, Fe<5 ppm or IDA, Fpn) or non-anemic WT mice is both due to iron restriction and an elevated sGC heterodimer that corroborated with greater sGC activation. More importantly we find significant leaching of Mb into the serum of these anemic (IDA) mice from both models and our spectral data suggests that this Mb is heme-free. This Mb leaching in anemia is a cumulative impact of Mb secreting out from various tissues including lungs, spleen, skeletal or cardiac muscles where Mb is expressed and not just in the skeletal muscles where Mb expression is low. Based on these findings we construct a working model of anemia, where high activation of sGC under anemic conditions (Fpn ablation or restricted Fe diet) induces Apo-Mb or heme-free Mb expression which can then leach out into the serum. Our findings of Mb leaching are novel and can find further application as a diagnostic strategy in anemia.

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