Award Abstract # 1849359
S&AS: INT: COLLAB: An Intelligence-Driven Patient Care Approach to Reduce Medical Errors (I-CARE)
NSF Org: |
IIS
Division of Information & Intelligent Systems
|
Recipient: |
TRUSTEES OF THE COLORADO SCHOOL OF MINES
|
Initial Amendment Date:
|
March 22, 2019 |
Latest Amendment Date:
|
August 28, 2024 |
Award Number: |
1849359 |
Award Instrument: |
Standard Grant |
Program Manager: |
Jie Yang
jyang@nsf.gov
(703)292-4768
IIS
Division of Information & Intelligent Systems
CSE
Directorate for Computer and Information Science and Engineering
|
Start Date: |
April 1, 2019 |
End Date: |
March 31, 2025 (Estimated) |
Total Intended Award
Amount: |
$450,000.00 |
Total Awarded Amount to
Date: |
$461,000.00 |
Funds Obligated to Date:
|
FY 2019 = $461,000.00
|
History of Investigator:
|
-
Dejun
Yang
(Principal Investigator)
djyang@mines.edu
-
Hao
Zhang
(Co-Principal Investigator)
-
Hua
Wang
(Former Principal Investigator)
|
Recipient Sponsored Research
Office: |
Colorado School of Mines
1500 ILLINOIS ST
GOLDEN
CO
US
80401-1887
(303)273-3000
|
Sponsor Congressional
District: |
07
|
Primary Place of
Performance: |
Colorado School of Mines
1500 Illinois
Golden
CO
US
80401-1887
|
Primary Place of
Performance Congressional District: |
07
|
Unique Entity Identifier
(UEI): |
JW2NGMP4NMA3
|
Parent UEI: |
JW2NGMP4NMA3
|
NSF Program(s): |
S&AS - Smart & Autonomous Syst
|
Primary Program Source:
|
01001920DB NSF RESEARCH & RELATED ACTIVIT
|
Program Reference
Code(s): |
046Z,
9251
|
Program Element Code(s):
|
039Y00
|
Award Agency Code: |
4900
|
Fund Agency Code: |
4900
|
Assistance Listing
Number(s): |
47.070
|
ABSTRACT

Imagine that in the near future a patient needing surgery will swallow a small mobile robot that can autonomously perform the procedure without any external incisions or pain. Such robots have the potential to make state-of-the-art surgical concepts a reality by providing an unconstrained mobile platform to visualize, manipulate and surgically treat tissue. The project's strategy will also harness the excitement surrounding robotics and computer science, and leverage it with the investigators' exceptional infrastructure for education innovation and outreach to provide new, inspirational educational experiences for students. Finally, the project outcomes can broadly impact a number of other areas that would benefit from the developed novel methodologies, including search and rescue, construction and maintenance, and remote imaging, where the environment is dynamic or changes upon repeated inspection.
The goal of this project is to gain a fundamental understanding of the cognition and adaptation needs of an intelligence-driven patient care approach to reduce medical errors. Realizing such an intelligent physical system would allow for augmenting physician capabilities. If one considers an operating room of the future, one can imagine scenarios where data is collected from, and shared with, all medical personnel including the surgeon, the supporting medical technicians, and anesthesiologists. In addition, artificial intelligence could be harnessed to look for unseen patterns in patient care. This operating room of the future will only be possible by establishing a new paradigm that includes medical devices with embedded smart and autonomous features. Such an intelligent physical system would gather knowledge from support personnel, sensors and diagnostics, and interpret physician intent and provide suggestions and diagnostic feedback in real-time. To provide real-world evaluation of this approach, the project will focus on robotic capsule endoscopy, with an intent to have immediate impact in conventional gastroenterology procedures. In pursuit of this goal, this project addresses three research objectives: the first objective focuses on robotic capsule endoscopy perception and control; the second objective formulates the perception and diagnostic support requirements to augment physician performance; and the third objective integrates multimodal, multi-label, temporal data analytics for intelligent physician support.
This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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