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Erasable Synthetic Serum Markers

Nouraein, S.; Lee, S.; Li, H.; Saenz, V.; Raisley, E. K.; Costa, V. D.; Szablowski, J. O.

2025-05-09 bioengineering
10.1101/2025.05.08.652140 bioRxiv
Show abstract

Gene expression in the brain is typically evaluated using invasive biopsy or postmortem histology. Serum markers provide an alternative way to monitor the brain, but relatively few such markers exist. Additionally, the origin of serum markers often cannot be localized to a specific cell population, and monitoring dynamic changes in their gene expression is compromised by the same factor that makes the markers detectable - long serum half-life. Here we propose a paradigm to improve the sensitivity of serum marker measurement by modifying the markers in vivo, called erasable serum markers, or ESM. As a proof of concept, we use a well-controlled system with known half-life and tunable serum levels. This system, released markers of activity, or RMAs enable measurement of transgene expression in the brain through a simple blood test. RMAs are stable in blood, with a half-life of >100 h and can detect expression from as few as 12 neurons in mice. However, their long serum half-life also generates long-lasting background signals when RMA are used to track temporal changes in gene expression. By engineering on-demand erasable RMAs and injecting an intravenous targeted protease, we reduced RMA background signal by more than an order of magnitude without compromising the detection sensitivity. Similarly to previous RMA iteration, our approach showed a 65,000-fold increase in their signal over the baseline when expressed in a single brain region. Furthermore, we demonstrated that this erasable RMA system improves the dynamic range of detection for low-level promoter activity that is driven by physiological levels of c-Fos.

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