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Published October 22, 2014 | Published + Supplemental Material
Journal Article Open

Digital, Ultrasensitive, End-Point Protein Measurements with Large Dynamic Range via Brownian Trapping with Drift

Abstract

This communication shows that the concept of Brownian trapping with drift can be applied to improve quantitative molecular measurements. It has the potential to combine the robustness of end-point spatially resolved readouts, the ultrasensitivity of digital single-molecule measurements, and the large dynamic range of qPCR; furthermore, at low concentrations of analytes, it can provide a direct comparison of the signals arising from the analyte and from the background. It relies on the finding that molecules simultaneously diffusing, drifting (via slow flow), and binding to an array of nonsaturable surface traps have an exponentially decreasing probability of escaping the traps over time and therefore give rise to an exponentially decaying distribution of trapped molecules in space. This concept was tested with enzyme and protein measurements in a microfluidic device.

Additional Information

© 2014 American Chemical Society. ACS AuthorChoice - This is an open access article published under an ACS AuthorChoice License, which permits copying and redistribution of the article or any adaptations for non-commercial purposes. Received: July 31, 2014. Publication Date (Web): October 7, 2014. This work was supported by DARPA Cooperative Agreement HR0011-11-2-0006. We thank Kevin Kan, Melissa Melendes, Shawn Hsu, Songzi Kou, Alexander Tucker-Schwartz, Mikhail Karymov, Jason Kreutz and Stephanie McCalla for discussions and experimental help, and Natasha Shelby for contributions to writing and editing this manuscript.

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Published - ja507849b.pdf

Supplemental Material - ja507849b_si_001.pdf

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