CVAIFeb 7, 2020

Deepfakes for Medical Video De-Identification: Privacy Protection and Diagnostic Information Preservation

arXiv:2003.00813v173 citationsHas Code
AI Analysis

This work addresses privacy concerns for medical researchers and patients, enabling more feasible open-source high-quality medical video datasets, though it is incremental as it applies existing deepfake technology to a new domain.

The study tackled the problem of patient privacy in medical video data sharing by using deepfake face-swapping for de-identification, showing that this method reliably protects privacy while preserving body keypoints almost invariantly, significantly outperforming traditional methods.

Data sharing for medical research has been difficult as open-sourcing clinical data may violate patient privacy. Traditional methods for face de-identification wipe out facial information entirely, making it impossible to analyze facial behavior. Recent advancements on whole-body keypoints detection also rely on facial input to estimate body keypoints. Both facial and body keypoints are critical in some medical diagnoses, and keypoints invariability after de-identification is of great importance. Here, we propose a solution using deepfake technology, the face swapping technique. While this swapping method has been criticized for invading privacy and portraiture right, it could conversely protect privacy in medical video: patients' faces could be swapped to a proper target face and become unrecognizable. However, it remained an open question that to what extent the swapping de-identification method could affect the automatic detection of body keypoints. In this study, we apply deepfake technology to Parkinson's disease examination videos to de-identify subjects, and quantitatively show that: face-swapping as a de-identification approach is reliable, and it keeps the keypoints almost invariant, significantly better than traditional methods. This study proposes a pipeline for video de-identification and keypoint preservation, clearing up some ethical restrictions for medical data sharing. This work could make open-source high quality medical video datasets more feasible and promote future medical research that benefits our society.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes