PLoS ONE (Dec 2010)
Aptamer-based multiplexed proteomic technology for biomarker discovery.
- Larry Gold,
- Deborah Ayers,
- Jennifer Bertino,
- Christopher Bock,
- Ashley Bock,
- Edward N Brody,
- Jeff Carter,
- Andrew B Dalby,
- Bruce E Eaton,
- Tim Fitzwater,
- Dylan Flather,
- Ashley Forbes,
- Trudi Foreman,
- Cate Fowler,
- Bharat Gawande,
- Meredith Goss,
- Magda Gunn,
- Shashi Gupta,
- Dennis Halladay,
- Jim Heil,
- Joe Heilig,
- Brian Hicke,
- Gregory Husar,
- Nebojsa Janjic,
- Thale Jarvis,
- Susan Jennings,
- Evaldas Katilius,
- Tracy R Keeney,
- Nancy Kim,
- Tad H Koch,
- Stephan Kraemer,
- Luke Kroiss,
- Ngan Le,
- Daniel Levine,
- Wes Lindsey,
- Bridget Lollo,
- Wes Mayfield,
- Mike Mehan,
- Robert Mehler,
- Sally K Nelson,
- Michele Nelson,
- Dan Nieuwlandt,
- Malti Nikrad,
- Urs Ochsner,
- Rachel M Ostroff,
- Matt Otis,
- Thomas Parker,
- Steve Pietrasiewicz,
- Daniel I Resnicow,
- John Rohloff,
- Glenn Sanders,
- Sarah Sattin,
- Daniel Schneider,
- Britta Singer,
- Martin Stanton,
- Alana Sterkel,
- Alex Stewart,
- Suzanne Stratford,
- Jonathan D Vaught,
- Mike Vrkljan,
- Jeffrey J Walker,
- Mike Watrobka,
- Sheela Waugh,
- Allison Weiss,
- Sheri K Wilcox,
- Alexey Wolfson,
- Steven K Wolk,
- Chi Zhang,
- Dom Zichi
Affiliations
- Larry Gold
- Deborah Ayers
- Jennifer Bertino
- Christopher Bock
- Ashley Bock
- Edward N Brody
- Jeff Carter
- Andrew B Dalby
- Bruce E Eaton
- Tim Fitzwater
- Dylan Flather
- Ashley Forbes
- Trudi Foreman
- Cate Fowler
- Bharat Gawande
- Meredith Goss
- Magda Gunn
- Shashi Gupta
- Dennis Halladay
- Jim Heil
- Joe Heilig
- Brian Hicke
- Gregory Husar
- Nebojsa Janjic
- Thale Jarvis
- Susan Jennings
- Evaldas Katilius
- Tracy R Keeney
- Nancy Kim
- Tad H Koch
- Stephan Kraemer
- Luke Kroiss
- Ngan Le
- Daniel Levine
- Wes Lindsey
- Bridget Lollo
- Wes Mayfield
- Mike Mehan
- Robert Mehler
- Sally K Nelson
- Michele Nelson
- Dan Nieuwlandt
- Malti Nikrad
- Urs Ochsner
- Rachel M Ostroff
- Matt Otis
- Thomas Parker
- Steve Pietrasiewicz
- Daniel I Resnicow
- John Rohloff
- Glenn Sanders
- Sarah Sattin
- Daniel Schneider
- Britta Singer
- Martin Stanton
- Alana Sterkel
- Alex Stewart
- Suzanne Stratford
- Jonathan D Vaught
- Mike Vrkljan
- Jeffrey J Walker
- Mike Watrobka
- Sheela Waugh
- Allison Weiss
- Sheri K Wilcox
- Alexey Wolfson
- Steven K Wolk
- Chi Zhang
- Dom Zichi
- DOI
- https://doi.org/10.1371/journal.pone.0015004
- Journal volume & issue
-
Vol. 5,
no. 12
p. e15004
Abstract
The interrogation of proteomes ("proteomics") in a highly multiplexed and efficient manner remains a coveted and challenging goal in biology and medicine.We present a new aptamer-based proteomic technology for biomarker discovery capable of simultaneously measuring thousands of proteins from small sample volumes (15 µL of serum or plasma). Our current assay measures 813 proteins with low limits of detection (1 pM median), 7 logs of overall dynamic range (~100 fM-1 µM), and 5% median coefficient of variation. This technology is enabled by a new generation of aptamers that contain chemically modified nucleotides, which greatly expand the physicochemical diversity of the large randomized nucleic acid libraries from which the aptamers are selected. Proteins in complex matrices such as plasma are measured with a process that transforms a signature of protein concentrations into a corresponding signature of DNA aptamer concentrations, which is quantified on a DNA microarray. Our assay takes advantage of the dual nature of aptamers as both folded protein-binding entities with defined shapes and unique nucleotide sequences recognizable by specific hybridization probes. To demonstrate the utility of our proteomics biomarker discovery technology, we applied it to a clinical study of chronic kidney disease (CKD). We identified two well known CKD biomarkers as well as an additional 58 potential CKD biomarkers. These results demonstrate the potential utility of our technology to rapidly discover unique protein signatures characteristic of various disease states.We describe a versatile and powerful tool that allows large-scale comparison of proteome profiles among discrete populations. This unbiased and highly multiplexed search engine will enable the discovery of novel biomarkers in a manner that is unencumbered by our incomplete knowledge of biology, thereby helping to advance the next generation of evidence-based medicine.