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Multisite Comparison of MRI Defacing Software Across Multiple Cohorts
- Source :
- Frontiers in Psychiatry, Medical Biophysics Publications, Frontiers in Psychiatry, Vol 12 (2021)
- Publication Year :
- 2021
- Publisher :
- Frontiers Media S.A., 2021.
-
Abstract
- With improvements to both scan quality and facial recognition software, there is an increased risk of participants being identified by a 3D render of their structural neuroimaging scans, even when all other personal information has been removed. To prevent this, facial features should be removed before data are shared or openly released, but while there are several publicly available software algorithms to do this, there has been no comprehensive review of their accuracy within the general population. To address this, we tested multiple algorithms on 300 scans from three neuroscience research projects, funded in part by the Ontario Brain Institute, to cover a wide range of ages (3–85 years) and multiple patient cohorts. While skull stripping is more thorough at removing identifiable features, we focused mainly on defacing software, as skull stripping also removes potentially useful information, which may be required for future analyses. We tested six publicly available algorithms (afni_refacer, deepdefacer, mri_deface, mridefacer, pydeface, quickshear), with one skull stripper (FreeSurfer) included for comparison. Accuracy was measured through a pass/fail system with two criteria; one, that all facial features had been removed and two, that no brain tissue was removed in the process. A subset of defaced scans were also run through several preprocessing pipelines to ensure that none of the algorithms would alter the resulting outputs. We found that the success rates varied strongly between defacers, with afni_refacer (89%) and pydeface (83%) having the highest rates, overall. In both cases, the primary source of failure came from a single dataset that the defacer appeared to struggle with - the youngest cohort (3–20 years) for afni_refacer and the oldest (44–85 years) for pydeface, demonstrating that defacer performance not only depends on the data provided, but that this effect varies between algorithms. While there were some very minor differences between the preprocessing results for defaced and original scans, none of these were significant and were within the range of variation between using different NIfTI converters, or using raw DICOM files.
- Subjects :
- lcsh:RC435-571
Computer science
Population
Facial recognition system
030218 nuclear medicine & medical imaging
facial recognition
03 medical and health sciences
DICOM
0302 clinical medicine
Software
Neuroimaging
lcsh:Psychiatry
Preprocessor
education
structural MRI
Original Research
privacy—preserving
Psychiatry
education.field_of_study
business.industry
De-identification
Pattern recognition
defacing
3D rendering
Psychiatry and Mental health
Increased risk
de-identification
Medical Biophysics
Artificial intelligence
business
030217 neurology & neurosurgery
Subjects
Details
- Language :
- English
- ISSN :
- 16640640
- Volume :
- 12
- Database :
- OpenAIRE
- Journal :
- Frontiers in Psychiatry
- Accession number :
- edsair.doi.dedup.....81d9aef1297c9be51082e57f1e34aa85