# An Enzyme Self-Amplification System for Ultrasensitive Detection of Biomarkers at the Point of Care

> **NIH NIH F32** · NORTHWESTERN UNIVERSITY · 2022 · $64,981

## Abstract

PROJECT SUMMARY
Rapid, inexpensive detection of biomarkers at the point of care is vital for many clinical purposes. However,
limitations in current detection platforms have prevented the sensitive detection of many protein and small
molecule biomarkers, forcing clinicians to rely either potentially inaccurate empirical diagnosis or expensive lab
tests to make critical treatment decisions. Sensitive detection of nucleic acid targets has been readily achieved
by exploiting Watson-Crick base pairing to amplify signals (PCR, LAMP, Cas9, etc.), but there has been a lack
of innovation for detection of low concentration antigens and small molecules at the point of care. Biology has
evolved intricate mechanisms for rapidly amplifying protein signals in vivo via post-translational modification
and protein based signaling networks. Towards the goal of developing novel, rapid, ultrasensitive diagnostics,
the central hypothesis of this project is that in vitro, protein-based signaling networks incorporating self-
amplifying enzymatic pathways will result in biomarker detection platforms with unparalleled sensing
capabilities. Specifically, we plan to investigate two mechanisms of protein signaling networks with potential for
diagnostics: split enzyme reconstitution and autocatalytic positive feedback loops. First, we will investigate the
in vitro use of split adenylate cyclase for small molecule detection. Detection of the analyte will be
accomplished by the simultaneously binding two proteins (i.e. a sandwich assay in solution), bringing two
halves of adenylate cyclase together and producing cAMP. Second, we will investigate fusions of split
adenylate cyclase and cAMP receptor protein to create an autocatalytic feedback loop in vitro. This loop will
respond to cAMP by producing more cAMP. Finally, we will develop ordinary differential equation-based
models to understand and engineer diagnostic properties. Dynamic models of these protein-signaling networks
will be informed by measured experimental parameters. These models will be used to create a combined
model for a high sensitivity, fast small molecule sensor as a proof-of-principle for future work. If successful, this
system would be broadly applicable for protein and small molecule detection and could be used to detect a
wide range of target analytes with known antibody binding domains. As such, this system could be used as a
platform for the detection of many protein and small molecule analytes currently unable to be rapidly detected
at the point of care. Over the course of the project the fellow will receive technical training in synthetic biology
methods, protein engineering, and kinetics computational modeling, in addition to career training in teaching
and mentorship best practices, manuscript preparation, grantsmanship, and research communication from the
sponsor and co-sponsor and resources available through institutes at Northwestern University. Additionally, the
trainee will have the opportunit...

## Key facts

- **NIH application ID:** 10463564
- **Project number:** 5F32EB031608-02
- **Recipient organization:** NORTHWESTERN UNIVERSITY
- **Principal Investigator:** Catherine E. Majors
- **Activity code:** F32 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2022
- **Award amount:** $64,981
- **Award type:** 5
- **Project period:** 2021-08-01 → 2023-06-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10463564

## Citation

> US National Institutes of Health, RePORTER application 10463564, An Enzyme Self-Amplification System for Ultrasensitive Detection of Biomarkers at the Point of Care (5F32EB031608-02). Retrieved via AI Analytics 2026-05-22 from https://api.ai-analytics.org/grant/nih/10463564. Licensed CC0.

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