Saved in:
Bibliographic Details
Main Authors: Van der Goten, Lennart Alexander, Smith, Kevin
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.15778
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929280565379072
author Van der Goten, Lennart Alexander
Smith, Kevin
author_facet Van der Goten, Lennart Alexander
Smith, Kevin
contents MRI scans provide valuable medical information, however they also contain sensitive and personally identifiable information that needs to be protected. Whereas MRI metadata is easily sanitized, MRI image data is a privacy risk because it contains information to render highly-realistic 3D visualizations of a patient's head, enabling malicious actors to possibly identify the subject by cross-referencing a database. Data anonymization and de-identification is concerned with ensuring the privacy and confidentiality of individuals' personal information. Traditional MRI de-identification methods remove privacy-sensitive parts (e.g. eyes, nose etc.) from a given scan. This comes at the expense of introducing a domain shift that can throw off downstream analyses. In this work, we propose CP-MAE, a model that de-identifies the face by remodeling it (e.g. changing the face) rather than by removing parts using masked autoencoders. CP-MAE outperforms all previous approaches in terms of downstream task performance as well as de-identification. With our method we are able to synthesize high-fidelity scans of resolution up to $256^3$ -- compared to $128^3$ with previous approaches -- which constitutes an eight-fold increase in the number of voxels.
format Preprint
id arxiv_https___arxiv_org_abs_2310_15778
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Privacy Protection in MRI Scans Using 3D Masked Autoencoders
Van der Goten, Lennart Alexander
Smith, Kevin
Computer Vision and Pattern Recognition
Artificial Intelligence
MRI scans provide valuable medical information, however they also contain sensitive and personally identifiable information that needs to be protected. Whereas MRI metadata is easily sanitized, MRI image data is a privacy risk because it contains information to render highly-realistic 3D visualizations of a patient's head, enabling malicious actors to possibly identify the subject by cross-referencing a database. Data anonymization and de-identification is concerned with ensuring the privacy and confidentiality of individuals' personal information. Traditional MRI de-identification methods remove privacy-sensitive parts (e.g. eyes, nose etc.) from a given scan. This comes at the expense of introducing a domain shift that can throw off downstream analyses. In this work, we propose CP-MAE, a model that de-identifies the face by remodeling it (e.g. changing the face) rather than by removing parts using masked autoencoders. CP-MAE outperforms all previous approaches in terms of downstream task performance as well as de-identification. With our method we are able to synthesize high-fidelity scans of resolution up to $256^3$ -- compared to $128^3$ with previous approaches -- which constitutes an eight-fold increase in the number of voxels.
title Privacy Protection in MRI Scans Using 3D Masked Autoencoders
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2310.15778