2020
Autores
Cardoso, JS; Nguyen, HV; Heller, N; Abreu, PH; Isgum, I; Silva, W; Cruz, R; Amorim, JP; Patel, V; Roysam, B; Zhou, SK; Jiang, SB; Le, N; Luu, K; Sznitman, R; Cheplygina, V; Mateus, D; Trucco, E; Sureshjani, SA;
Publicação
iMIMIC/MIL3ID/LABELS@MICCAI
Abstract
2022
Autores
Reyes, M; Abreu, PH; Cardoso, JS;
Publicação
iMIMIC@MICCAI
Abstract
2021
Autores
Reyes, M; Abreu, PH; Cardoso, JS; Hajij, M; Zamzmi, G; Paul, R; Thakur, L;
Publicação
iMIMIC/TDA4MedicalData@MICCAI
Abstract
2019
Autores
Araújo, RJ; Fernandes, K; Cardoso, JS;
Publicação
IEEE Trans. Image Process.
Abstract
2015
Autores
Micó, L; Sanches, JM; Cardoso, JS;
Publicação
Neurocomputing
Abstract
2023
Autores
Montenegro, H; Silva, W; Cardoso, JS;
Publicação
MEDICAL APPLICATIONS WITH DISENTANGLEMENTS, MAD 2022
Abstract
The lack of interpretability of Deep Learning models hinders their deployment in clinical contexts. Case-based explanations can be used to justify these models' decisions and improve their trustworthiness. However, providing medical cases as explanations may threaten the privacy of patients. We propose a generative adversarial network to disentangle identity and medical features from images. Using this network, we can alter the identity of an image to anonymize it while preserving relevant explanatory features. As a proof of concept, we apply the proposed model to biometric and medical datasets, demonstrating its capacity to anonymize medical images while preserving explanatory evidence and a reasonable level of intelligibility. Finally, we demonstrate that the model is inherently capable of generating counterfactual explanations.
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