R01AG068206
Project Grant
Overview
Grant Description
Protecting the Confidentiality of Participants in Studies of Alzheimer's Disease and Related Dementias by Replacing Face Imagery in MRI - Project Summary / Abstract
There exists a growing demand to share all publicly-funded research data, including magnetic resonance images (MRI). Concurrently, it has been shown that high-resolution facial reconstructions can be generated from MRI, and face recognition software can match these reconstructions with participant photos. Standard MRI de-identification removes participant names from the image header, but does nothing to prevent face recognition. Identified individual research participants would be irreversibly linked with all the collected protected health information, such as diagnoses, biomarker results, genetic risk factors, and neuropsychiatric testing.
Although data use agreements can legally protect study administrators, these legal mechanisms do not directly protect participants. If participants were publicly identified by a careless or malicious individual, this event would significantly and permanently erode public trust and participation in medical research. Many large imaging studies of Alzheimer's disease (AD) and related dementias are vulnerable to this threat.
To address this threat, we propose a novel technique that de-identifies MRI by replacing facial imagery with a generic, average face (i.e., a digital face "transplant"). Unlike existing methods that remove or blur faces, our approach minimizes added bias and noise in imaging biomarker measurements by producing a de-identified MRI that resembles a natural image. This imminent privacy threat grows with burgeoning technology and with the increased public sharing of research data.
We propose to:
1. Improve our de-identification software by collaborating with a top expert in face recognition.
2. Further reduce effects on brain measurements.
3. Large-scale test/validate on Mayo Clinic aging studies.
4. Add capability for de-facing additional imaging modalities.
5. Test and improve performance when applied to diverse populations.
6. Share the software freely for research use.
Aim 1: Refine and validate an optimized face de-identification algorithm:
1A) Further improve de-identification performance.
1B) Further reduce impacts on brain biomarker measurements.
1C) Test and validate using images from the Mayo Clinic Study of Aging and Alzheimer's Disease Research Center studies.
Aim 2: Add capability for de-identifying additional imaging sequences and modalities:
2A) Support additional MRI sequences.
2B) Support PET images.
2C) Support CT images.
Aim 3: Investigate effects of age, race, and sex:
3A) Evaluate the effects of age, race, and sex on the proposed de-identification method.
3B) Adapt software to ensure that the algorithm protects all participants equally.
Aim 4: Disseminate software and educational materials:
4A) Share the software freely for research use.
4B) Develop and disseminate materials and recommendations for research studies for the protection of participant privacy.
There exists a growing demand to share all publicly-funded research data, including magnetic resonance images (MRI). Concurrently, it has been shown that high-resolution facial reconstructions can be generated from MRI, and face recognition software can match these reconstructions with participant photos. Standard MRI de-identification removes participant names from the image header, but does nothing to prevent face recognition. Identified individual research participants would be irreversibly linked with all the collected protected health information, such as diagnoses, biomarker results, genetic risk factors, and neuropsychiatric testing.
Although data use agreements can legally protect study administrators, these legal mechanisms do not directly protect participants. If participants were publicly identified by a careless or malicious individual, this event would significantly and permanently erode public trust and participation in medical research. Many large imaging studies of Alzheimer's disease (AD) and related dementias are vulnerable to this threat.
To address this threat, we propose a novel technique that de-identifies MRI by replacing facial imagery with a generic, average face (i.e., a digital face "transplant"). Unlike existing methods that remove or blur faces, our approach minimizes added bias and noise in imaging biomarker measurements by producing a de-identified MRI that resembles a natural image. This imminent privacy threat grows with burgeoning technology and with the increased public sharing of research data.
We propose to:
1. Improve our de-identification software by collaborating with a top expert in face recognition.
2. Further reduce effects on brain measurements.
3. Large-scale test/validate on Mayo Clinic aging studies.
4. Add capability for de-facing additional imaging modalities.
5. Test and improve performance when applied to diverse populations.
6. Share the software freely for research use.
Aim 1: Refine and validate an optimized face de-identification algorithm:
1A) Further improve de-identification performance.
1B) Further reduce impacts on brain biomarker measurements.
1C) Test and validate using images from the Mayo Clinic Study of Aging and Alzheimer's Disease Research Center studies.
Aim 2: Add capability for de-identifying additional imaging sequences and modalities:
2A) Support additional MRI sequences.
2B) Support PET images.
2C) Support CT images.
Aim 3: Investigate effects of age, race, and sex:
3A) Evaluate the effects of age, race, and sex on the proposed de-identification method.
3B) Adapt software to ensure that the algorithm protects all participants equally.
Aim 4: Disseminate software and educational materials:
4A) Share the software freely for research use.
4B) Develop and disseminate materials and recommendations for research studies for the protection of participant privacy.
Awardee
Funding Goals
NOT APPLICABLE
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Rochester,
Minnesota
559050001
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the total obligations have increased 353% from $794,060 to $3,595,093.
Mayo Clinic was awarded
Privacy-Preserving MRI De-identification for Alzheimer's Research
Project Grant R01AG068206
worth $3,595,093
from National Institute on Aging in September 2021 with work to be completed primarily in Rochester Minnesota United States.
The grant
has a duration of 3 years 8 months and
was awarded through assistance program 93.866 Aging Research.
The Project Grant was awarded through grant opportunity Research Project Grant (Parent R01 Clinical Trial Not Allowed).
Status
(Complete)
Last Modified 5/20/24
Period of Performance
9/1/21
Start Date
5/31/25
End Date
Funding Split
$3.6M
Federal Obligation
$0.0
Non-Federal Obligation
$3.6M
Total Obligated
Activity Timeline
Transaction History
Modifications to R01AG068206
Additional Detail
Award ID FAIN
R01AG068206
SAI Number
R01AG068206-3487501810
Award ID URI
SAI UNAVAILABLE
Awardee Classifications
Nonprofit With 501(c)(3) IRS Status (Other Than An Institution Of Higher Education)
Awarding Office
75NN00 NIH NATIONAL INSITUTE ON AGING
Funding Office
75NN00 NIH NATIONAL INSITUTE ON AGING
Awardee UEI
Y2K4F9RPRRG7
Awardee CAGE
5A021
Performance District
MN-01
Senators
Amy Klobuchar
Tina Smith
Tina Smith
Budget Funding
Federal Account | Budget Subfunction | Object Class | Total | Percentage |
---|---|---|---|---|
National Institute on Aging, National Institutes of Health, Health and Human Services (075-0843) | Health research and training | Grants, subsidies, and contributions (41.0) | $2,008,130 | 100% |
Modified: 5/20/24