Enhancing Privacy: The Utility of Stand-Alone Synthetic CT and MRI for Tumor and Bone Segmentation
Andr\'e Ferreira, Kunpeng Xie, Caroline Wilpert, Gustavo Correia, Felix Barajas Ordonez, Tiago Gil Oliveira, Maike Bode, Robert Siepmann, Frank H\"olzle, Rainer R\"ohrig, Jens Kleesiek, Daniel Truhn, Jan Egger, Victor Alves, Behrus Puladi

TL;DR
This study evaluates the realism and utility of synthetic CT and MRI data generated by advanced models for tumor and bone segmentation, highlighting current limitations and future needs.
Contribution
It provides a comprehensive assessment of synthetic medical data's quality and segmentation utility, using multiple evaluation metrics and expert visual tests.
Findings
High fidelity of synthetic MRIs confirmed by Radiomics.
Limited realism of synthetic CT tissue affects segmentation performance.
Synthetic data shows potential but requires improved generative models.
Abstract
AI requires extensive datasets, while medical data is subject to high data protection. Anonymization is essential, but poses a challenge for some regions, such as the head, as identifying structures overlap with regions of clinical interest. Synthetic data offers a potential solution, but studies often lack rigorous evaluation of realism and utility. Therefore, we investigate to what extent synthetic data can replace real data in segmentation tasks. We employed head and neck cancer CT scans and brain glioma MRI scans from two large datasets. Synthetic data were generated using generative adversarial networks and diffusion models. We evaluated the quality of the synthetic data using MAE, MS-SSIM, Radiomics and a Visual Turing Test (VTT) performed by 5 radiologists and their usefulness in segmentation tasks using DSC. Radiomics indicates high fidelity of synthetic MRIs, but fall short in…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Medical Imaging and Analysis · Privacy-Preserving Technologies in Data
MethodsDiffusion · Masked autoencoder
