2025
Authors
Neves, I; Freitas, C; Lemos, C; Oliveira, HP; Hespanhol, V; França, M; Pereira, T;
Publication
Measurement and Evaluations in Cancer Care
Abstract
2025
Authors
Malafaia, M; Silva, F; Carvalho, DC; Martins, R; Dias, SC; Torrão, H; Oliveira, HP; Pereira, T;
Publication
2025 IEEE 25th International Conference on Bioinformatics and Bioengineering (BIBE)
Abstract
2025
Authors
Sousa, JV; Oliveira, HP; Pereira, T;
Publication
2025 IEEE 25th International Conference on Bioinformatics and Bioengineering (BIBE)
Abstract
2025
Authors
Sun, YL; Cheng, LL; Si, XP; He, RN; Pereira, T; Pang, MJ; Zhang, K; Song, X; Ming, D; Liu, XY;
Publication
EXPERT SYSTEMS WITH APPLICATIONS
Abstract
Subject-independent seizure detection algorithms are typically grounded in scalp electroencephalogram (EEG) databases, due to standardized channels and locations of EEG electrodes. Intracranial EEG (iEEG) has the characteristics of low noise and high temporal resolution compared with scalp EEG. However, it is still a big challenge for seizure detection using iEEG, because of the inconsistent number and locations of implanted electrodes in different patients, which results in a lack of unified algorithms. This study introduces an innovative approach for subject-independent seizure detection using iEEG, combining channel-wise mixup, transformer networks, and multi-task learning. Channel-wise mixup enhances data utilization by effectively leveraging information from different subjects, while multi-task learning improves the generalization of the model by concurrently optimizing both the seizure detection and the subject recognition tasks. 2983 files from two well-known epilepsy databases, i.e. SWEC-ETHZ and HUP were used in our study and the result showed that our approach surpasses currently existing methods. In terms of accuracy and generalization of seizure detection, our method achieved an area under the receiver operating characteristic curve (AUC) of 0.97 and 0.95 on the two databases respectively, which are significantly higher than the result of the currently existing methods. This study proposed anew method with great potential for surgery planning of epilepsy patients.
2025
Authors
Amaro, M; Sousa, JV; Gouveia, M; Oliveira, HP; Pereira, T;
Publication
Measurement and Evaluations in Cancer Care
Abstract
2026
Authors
Sousa, P; Campai, D; Andrade, J; Pereira, P; Goncalves, T; Teixeira, LF; Pereira, T; Oliveira, HP;
Publication
PATTERN RECOGNITION AND IMAGE ANALYSIS, IBPRIA 2025, PT II
Abstract
Cancer is a leading cause of mortality worldwide, with breast and lung cancer being the most prevalent globally. Early and accurate diagnosis is crucial for successful treatment, and medical imaging techniques play a pivotal role in achieving this. This paper proposes a novel pipeline that leverages generative artificial intelligence to enhance medical images by combining synthetic image generation and super-resolution techniques. The framework is validated in two medical use cases (breast and lung cancers), demonstrating its potential to improve the quality and quantity of medical imaging data, ultimately contributing to more precise and effective cancer diagnosis and treatment. Overall, although some limitations do exist, this paper achieved satisfactory results for an image size which is conductive to specialist analysis, and further expands upon this field's capabilities.
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