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Company Information:

Company Name:
FLASHBACK TECHNOLOGIES, LLC
Address:
8127 ALFALFA CT
LONGMONT, CO 80503-8518
Phone:
(720) 204-2575
URL:
N/A
EIN:
264231709
DUNS:
829592935
Number of Employees:
2
Woman-Owned?:
No
Minority-Owned?:
No
HUBZone-Owned?:
No

Commercialization:

Has been acquired/merged with?:
N/A
Has had Spin-off?:
N/A
Has Had IPO?:
N/A
Year of IPO:
N/A
Has Patents?:
N/A
Number of Patents:
N/A
Total Sales to Date $:
$ 0.00
Total Investment to Date $
$ 0.00
POC Title:
N/A
POC Name:
N/A
POC Phone:
N/A
POC Email:
N/A
Narrative:
N/A

Award Totals:

Program/Phase Award Amount ($) Number of Awards
STTR Phase I $100,000.00 1
STTR Phase II $750,000.00 1

Award List:

A Real-Time, Non-Invasive Monitoring System of Combat Casualties for Early Detection of Hemorrhagic Shock During Transport and Higher Echelon Medical

Award Year / Program / Phase:
2009 / STTR / Phase I
Award Amount:
$100,000.00
Agency / Branch:
DOD / DARPA
Principal Investigator:
Greg Grudic, Chief Technical Officer
Research Institution:
University of Colorado
RI Contact:
Randall W. Draper
Abstract:
The proposed research has two aims: 1) to develop a real-time algorithm that uses non-invasive physiological signals to quickly and accurately detect severity of acute blood loss; and 2) to develop a complimentary algorithm that uses all or a subset of these signals (depending on their availability… More

A Real-Time, Non-Invasive Monitoring System of Combat Casualties for Early Detection of Hemorrhagic Shock During Transport and Higher Echelon Medical

Award Year / Program / Phase:
2011 / STTR / Phase II
Award Amount:
$750,000.00
Agency / Branch:
DOD / ARMY
Principal Investigator:
Greg Grudic, Chief Technical Officer – (720) 204-2575
Research Institution:
University of Colorado
RI Contact:
Randall W. Draper
Abstract:
On the battlefield, medics must quickly determine injury severity, treat the greatest threats to life, diagnose hemorrhage and establish a triage order. The objective of this research project is to apply our active, long-term learning technology to the task of modeling and prediction of central… More