arXiv
- J. Maeng, K. Oh, W. Jung, and H.-I. Suk, “IdenBAT: Disentangled Representation Learning for Identity-Preserved Brain Age Transformation,” arXiv:2410.16945, 2024. [paper]
- Y. Shin*, K. Oh*, and H.-I. Suk, “DyMix: Dynamic Frequency Mixup Scheduler-based Unsupervised Domain Adaptation for Enhancing Alzheimer’s Disease Identification,” arXiv:2410.12827, 2024. (*: equally contributed) [paper]
- K. Oh, E. Jeon, D.W. Heo, Y. Shin, and H.-I. Suk, “FIESTA: Fourier-Based Semantic Augmentation with Uncertainty Guidance for Enhanced Domain Generalizability in Medical Image Segmentation,” arXiv:2406.14308, 2024. [paper]
- K. Oh*, J. Lee*, D.W. Heo, D. Shen, and H.-I. Suk, “Transferring Ultrahigh-Field Representations for Intensity-Guided Brain Segmentation of Low-Field Magnetic Resonance Imaging,” arXiv:2402.08409, 2024. (*: equally contributed) [paper]
- A. W. Mulyadi and H.-I. Suk, “KindMed: Knowledge-Induced Medicine Prescribing Network for Medication Recommendation,” arXiv:2310.14552, 2023. [paper]
- J.S. Yoon, K. Oh, Y. Shin, M. A. Mazurowski, and H.-I. Suk, “Domain Generalization for Medical Image Analysis: A Survey,” arXiv:2310.08598, 2023. [paper]
- K. Oh, D.-W. Heo, A. W. Mulyadi, W. Jung, E. Kang, K.H. Lee, and H.-I. Suk, “A Quantitatively Interpretable Model for Alzheimer’s Disease Prediction Using Deep Counterfactuals,” Research Square, 2022 [paper]; arXiv:2310.03457, 2023. [code]/[paper]
2024
Journal
E. Kang, B. Yun, J. Cha, and H.-I. Suk, “Neurodevelopmental imprints of sociomarkers in adolescent brain connectomes,” Scientific Reports, September, 2024. (2023-JCR-IF: 3.8, MULTIDISCIPLINARY SCIENCES 25/134)
E. Jeon, J.-H. Choi, and H.-I. Suk, “ADT2R: Adaptive Decision Transformer for Dynamic Treatment Regimes in Sepsis,” IEEE Transactions on Neural Networks and Learning Systems, August, 2024. (Early Access)(2023-JCR-IF: 10.2, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 13/197, COMPUTER SCIENCE, THEORY & METHODS: 7/143, ENGINEERING, ELECTRICAL & ELECTRONIC: 11/352)
W.-S. Kim#, D.-W. Heo#, J. Maeng, J. Shen, U. Tsogt, S. Odkhuu, X. Zhang, S. Cheraghi, S.-W. Kim, B.-J. Ham, F.Z. Rami, J. Sui, C.Y. Kang, H.-I. Suk*, and Y.-C. Chung*, "Deep Learning-based Brain Age Prediction in Patients with Schizophrenia Spectrum Disorders," Schizophrenia Bulletin, July, 2024. (2022-JCR-IF: 6.6, PSYCHIATRY: 32/155) (*: Co-first, *: Co-corresponding)
W. Ko, S. Jeong, S. K. Song, and H.-I. Suk, "EEG-Oriented Self-Supervised Learning with Triple Information Pathways Network," IEEE Transactions on Cybernetics, Vol. 54, No. 11, pp. 6495-6508, November, 2024. (2023-JCR-IF: 9.4, COMPUTER SCIENCE, ARTIFICIAL INTERLLIGENCE: 16/197, COMPUTER SCIENCE, CYBERNETICS: 2/32, AUTOMATION & CONTROL SYSTEMS: 4/84)
S. Jeong*, W. Jung*, J. Sohn, and H.-I. Suk, "Deep Geometric Learning with Monotonicity Constraints for Alzheimer's Disease Progression," IEEE Transactions on Neural Networks and Learning Systems, 2024. (2023-JCR-IF: 10.2, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 13/197, COMPUTER SCIENCE, THEORY & METHODS: 7/143, ENGINEERING, ELECTRICAL & ELECTRONIC: 11/352) (*: equally contributed)
W. Jung*, S.E. Kim*, J Kim, H. Jang, C.J. Park, H.J. Kim, D.L. Na, S.W. Seo†, and H.-I. Suk†, “Deep Learning Model for Individualized Trajectory Prediction of Clinical Outcomes in Mild Cognitive Impairment,” Frontiers in Aging Neuroscience, 2024. (2023-JCR-IF: 4.1) (*: Equally contributed, †: co-corresponding)
E. Kang, D. Heo, J. Lee, and H.-I. Suk, "A Learnable Counter-condition Analysis Framework for Functional Connectivity-based Neurological Disorder Diagnosis," IEEE Transactions on Medical Imaging, Vol. 43, No. 4, 2024. (2022-JCR-IF: 10.6, COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS: 6/110)
W. Jung, E. Jeon, E. Kang, and H.-I. Suk, "EAG-RS: A Novel Explainability-guided ROI-Selection Framework for ASD Diagnosis via Inter-regional Relation Learning," IEEE Transactions on Medical Imaging, Vol. 43, No. 4, 2024. (2022-JCR-IF: 10.6, COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS: 6/110)
Conference
- A. Jeong*, D.-W. Heo*, Eunsong Kang, and H.-I. Suk, “BrainWaveNet: Wavelet-based Transformer for Autism Spectrum Disorder Diagnosis,” 27th International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI), Marrakesh, Morocco, October 6-10, 2024. (*Equally contributed, Oral presentation, <3%)
- W. Park, A. W. Mulyadi, E. Kang, and H.-I. Suk, “Prototype-Guided Contrastive Knowledge Graph Representation Learning for Diagnosis Prediction,” International Conference on Pattern Recognition and Artificial Intelligence (ICPRAI), Jeju Island, Korea, July 3-6, 2024.
- W. Jung and H.-I. Suk, “Enhanced Functional Connectivity Representation by Contrastive Learning for Brain Disease Diagnosis,” Organization for Human Brain Mapping (OHBM), Seoul, Korea, June 23-27, 2024
- J. Kim, S. Jeong, J. Jeon, and H.-I. Suk, “Unveiling Diagnostic Potential: EEG Microstate Representation Model for Alzheimer’s Disease and Frontotemporal Dementia,” 12th International Winter Conference on Brain-Computer Interface (BCI), High1 Resort, Korea, February 26-28, 2024.
- S. Jo, S. Jeong, J. Jeon, and H.-I. Suk, “Enhancing EEG Domain Generalization via Weighted Contrastive Learning,” 12th International Winter Conference on Brain-Computer Interface (BCI), High1 Resort, Korea, February 26-28, 2024.
- J. Lee, E. Kang, J. Maeng, and H.-I. Suk, “Eigendecomposition-Based Spatial-Temporal Attention for Brain Cognitive States Identification,” In ICASSP 2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Seoul, Korea, April 14-19, 2024 (Oral presentation).
2023
Journal
J. Sohn, E. Jeon, W. Jung, E. Kang, and H.-I. Suk, “Module of Axis-based Nexus Attention for Weakly Supervised Object Localization,” Scientific Reports, Vol. 13, No. 18588, October, 2023. (2022-JCR-IF: 4.6, MULTIDISCIPLINARY SCIENCES 22/73)
S. Jeong, W. Ko, A. W. Mulyadi, and H.-I. Suk, “Deep Efficient Continuous Manifold Learning for Time Series Modeling,” IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 46, No. 1, pp. 171-184, January, 2024. (Early Access: September, 2023)(2022-JCR-IF: 23.6, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 2/145, ENGINEERING, ELECTRICAL & ELECTRONIC: 2/275)
D.-Y. Kim, D.-Y. Jin, and H.-I. Suk, “Spatiotemporal graph neural networks for predicting mid-to-long-term PM2.5 concentrations,” Journal of Cleaner Production, Vol. 425, p. 138880, September, 2023. (Early Access: September, 2023)(2022-JCR-IF: 11.1, ENVIRONMENTAL SCIENCES: 22/274)
J. Lee, E. Kang, D.-W. Heo, and H.-I. Suk, “Site-invariant meta-modulation learning for multisite autism spectrum disorders diagnosis,” IEEE Transactions on Neural Networks and Learning Systems, early access, September, 2023. (2022-JCR-IF: 10.4, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 14/145, COMPUTER SCIENCE, HARDWARE & ARCHITECTURE: 3/54)
E. Jun, S. Jeong, D.-W. Heo, and H.-I. Suk, “Medical transformer: Universal encoder for 3-D brain MRI analysis,” IEEE Transactions on Neural Networks and Learning Systems, early access, September, 2023. (2022-JCR-IF: 10.4, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 14/145, COMPUTER SCIENCE, HARDWARE & ARCHITECTURE: 3/54)
C. Park*, W. Jung*, and H.-I. Suk, “Deep joint learning of pathological region localization and alzheimer’s disease diagnosis,” Scientific Reports, Vol. 13, No. 11664, 2023. (2021-JCR-IF: 4.997, MULTIDISCIPLINARY SCIENCES: 22/73)(*: Equally contributed)
A. W. Mulyadi, W. Jung, K. Oh, J. S. Yoon, K. H. Lee, and H.-I. Suk, “Estimating Explainable Alzheimer’s Disease Likelihood Map via Clinically-guided Prototype Learning,” NeuroImage, Vol. 273, p. 120073, June, 2023. (2021-JCR-IF: 7.400, NEUROSCIENCES: 38/275, NEUROIMAGING: 2/14, RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING: 15/136)
J.Y. Choi, S.S. Lee, N.Y. Kim, H.J. Park, Y.S. Sung, Y. Lee, J.S. Yoon, and H.-I. Suk, "The Effect of Hepatic Steatosis on Liver Volume Determined by Proton Density Fat Fraction and Deep Learning–Measured Liver Volume," European Radiology, pp. 1-9, April, 2023 (2021-JCR-IF: 7.034).
W.-S. Kim, D.-W. Heo, J. Shen, U. Tsogt, S. Odkhuu, S.-W. Kim, H.-I. Suk, B.-J. Ham, F.Z. Rami, C.Y. Kang, J. Sui, and Y.-C. Chung, "Stage-Specific Brain Aging in First-Episode Schizophrenia and Treatment-Resistant Schizophrenia," International Journal of Neuropsychopharmacology, Vol. 26, No. 3, pp. 207-216, March 2023 (2021-JCR-IF: 5.310).
Conference
- Y. Shin, J. Maeng, K. Oh, and H.-I. Suk, “Frequency Mixup Manipulation based Unsupervised Domain Adaptation for Brain Disease Identification,” 7th Asian Conference on Pattern Recognition (ACPR 2023), Kitakyushu, Japan, November 5-8, 2023 (Oral Presentation). [code]
- J. Maeng†, K. Oh†, and H.-I. Suk, “Age-Aware Guidance via Masking-Based Attention in Face Aging,” 32nd ACM International Conference on Information and Knowledge Management (CIKM), Birmingham, UK, October 21-25, 2023 (†: equally contributed). [code]
- J.S. Yoon, C. Zhang, H.-I. Suk, J. Guo, X. Li, “SADM: Sequence-Aware Diffusion Model for Longitudinal Medical Image Generation,” Information Processing in Medical Imaging (IPMI), 2023
- S. Jo†, J. Jeon†, S. Jeong, and H.-I. Suk, “Channel-Aware Self-Supervised Learning for EEG-based BCI,” 11th International Winter Conference on Brain-Computer Interface (BCI), High1 Resort, Korea, February 20-22, 2023 (†: equally contributed).
- S. Jeong, E. Jeon, S. Noh, J. Lee, H. Kim, S. Kim, and H.-I. Suk, “Learning-based Sleep Quality Evaluation,” 11th International Winter Conference on Brain-Computer Interface (BCI), High1 Resort, Korea, February 20-22, 2023.
2022
Journal
S. Heo, S. S. Lee, S. Y. Kim, Y.-S. Lim, H. J. Park, J. S. Yoon, H.-I. Suk, Y. S. Sung, B. Park, J. S. Lee, “Prediction of Decompensation and Death in Advanced Chronic Liver Disease Using Deep Learning Analysis of Gadoxetic Acid-Enhanced MRI,” Korean Journal of Radiology, Vol. 23, No. 12, p. 1269, December, 2022. (2022-JCR-IF: 4.48, RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING: 46/136)
W.-S. Kim#, D.-W. Heo#, J. Shen, U. Tsogt, S Odkhuu, J. Lee, E. Kang, S.-W. Kim, H.-I. Suk*, Y.-C. Chung*, “Altered functional connectivity in psychotic disorder not otherwise specified,” Psychiatry Research, Vol. 317, p. 114871, November, 2022. (JCR-IF: 11.225, Psychiatry: 9/145) (#: Co-first, *: Co-corresponding)
J. Phyo, W. Ko, E. Jeon, and H.-I. Suk, “TransSleep: Transitioning-Aware Attention-Based Deep Neural Network for Sleep Staging,” IEEE Transactions on Cybernetics, Vol. 53, No. 7, pp. 4500–4510, July, 2023. (2021-JCR-IF: 19.118, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 3/145, AUTOMATION & CONTROL SYSTEMS: 1/65, COMPUTER SCIENCE, CYBERNETICS: 1/24)
K. Oh*, J.S. Yoon*, and H.-I. Suk, “Learn-Explain-Reinforce: Counterfactual Reasoning and Its Guidance to Reinforce an Alzheimer’s Disease Diagnosis Model,” IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 45, No. 4, pp. 4843-4857, April, 2023. (Early Access: August, 2022)(2021-JCR-IF: 24.314, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 2/144, ENGINEERING, ELECTRICAL & ELECTRONIC: 2/276) (*: Equally contributed)
Y. Lee*, E. Jun*, J. Choi and H.-I. Suk, “Multi-View Integrative Attention-Based Deep Representation Learning for Irregular Clinical Time-Series Data,” IEEE Journal of Biomedical and Health Informatics, Vol. 26, No. 8, pp. 4270–4280, August, 2022. (Early Access: May, 2022)(2021-JCR-IF: 7.021, COMPUTER SCIENCE, INFORMATION SYSTEMS: 23/164, COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS: 21/113, MATHEMATICAL & COMPUTATIONAL BIOLOGY: 4/57, MEDICAL INFORMATICS: 7/31) (* Equally contributed)
W. Ko, W. Jung, E. Jeon, and H.-I. Suk, “A Deep Generative–Discriminative Learning for Multi-modal Representation in Imaging Genetics,” IEEE Transactions on Medical Imaging, Vol. 41, No. 9, pp. 2348-2359, September, 2022. (Early Access: March, 2022)(2020-JCR-IF: 10.048, COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS: 5/111, ENGINEERING, BIOMEDICAL: 6/89, RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING: 4/133)
H.J. Park*, J.-S. Yoon*, S.S. Lee†, H.-I. Suk†, B. Park, Y.S. Sung, S.B. Hong, H. Ryu, “Deep Learning-Based Assessment of Functional Liver Capacity Using Gadoxetic Acid-Enhanced Hepatobiliary Phase MRI,” Korean Journal of Radiology, Vol. 23, No. 7, p. 720, April, 2022. (*: Equally contributed, †: co-corresponding) (2020-JCR-IF: 3.500, RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING: 48/133)
A. W. Mulyadi, E. Jun, and H.-I. Suk, “Uncertainty-Aware Variational-Recurrent Imputation Network for Clinical Time Series,” IEEE Transactions on Cybernetics, Vol. 52, No. 9, pp. 9684-9694, September, 2022. (2021-JCR-IF: 19.118, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 3/145, AUTOMATION & CONTROL SYSTEMS: 1/65, COMPUTER SCIENCE, CYBERNETICS: 1/24)
J.S. Yoon, M.C. Roh, and H.-I. Suk, “A Plug-in Method for Representation Factorization in Connectionist Models,” IEEE Transactions on Neural Networks and Learning Systems, Vol. 33, No. 8, pp. 3792-3803, August, 2022. (2021-JCR-IF: 14.255, COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 6/144, COMPUTER SCIENCE, THEORY & METHODS: 4/109, COMPUTER SCIENCE, HARDWARE & ARCHITECTURE: 1/54, ENGINEERING, ELECTRICAL & ELECTRONIC: 5/276)
S.S. Lee*, R. Park, Y.S. Sung, J.S. Yoon, H.-I. Suk, H.J. Kim, and S.H. Choi, “Accuracy and efficiency of right-lobe graft weight estimation using deep learning-assisted CT volumetry for living donor liver transplantation,” Diagnostics, Vol. 12, No. 3, p. 590, February, 2022. (2020-JCR-IF: 3.706, MEDICINE, GENERAL & INTERNAL: 45/167)
W. Ko, E. Jeon, and H.-I. Suk, “A Novel RL-assisted Deep Learning Framework for Task-informative Signals Selection and Classification for Spontaneous BCIs,” IEEE Transactions on Industrial Informatics, Vol. 18, No. 3, pp. 1873-1882, March, 2022. (2020-JCR-IF: 10.215, AUTOMATION & CONTROL SYSTEMS: 4/63, COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS: 3/111, ENGINEERING, INDUSTRIAL: 1/49)
Conference
- A. W. Mulyadi, W. Jung, K. Oh, J.S. Yoon, and H.-I. Suk, “Clinically-guided Prototype Learning and Its Use for Explanation in Alzheimer’s Disease Identification,” 2022 NeurIPS Workshop: Medical Imaging meets NeurIPS (MedNeurIPS), New Orleans, USA, November 28-December 3, 2022. (Oral Presentation)
- K. Oh, D.-W. Heo, A. W. Mulyadi, W. Jung, E. Kang, and H.-I. Suk, “Quantifying Explainability of Counterfactual-Guided MRI Feature for Alzheimer’s Disease Prediction,” 2022 NeurIPS Workshop: Medical Imaging meets NeurIPS (MedNeurIPS), New Orleans, USA, November 28-December 3, 2022.
- S. Jeong, W. Jung, J. Sohn, and H.-I. Suk, “Deep Geometrical Learning for Alzheimer’s Disease Progression Modeling,” Proc. 22nd IEEE International Conference on Data Mining (ICDM), Orlando, USA, November 28-December 1, 2022. (Acceptance Rate=9.77%)
- W. Ko and H.-I. Suk, “EEG-Oriented Self-Supervised Learning and Cluster-Aware Adaptation,” 31st ACM International Conference on Information and Knowledge Management (CIKM), USA, October 17-21, 2022.
- E. Kang, D.-W. Heo, and H.-I. Suk, “Prototype Learning of Inter-network Connectivity for ASD Diagnosis and Personalized Analysis,” 25th International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI), Singapore, September 18-22, 2022. (Early Accept)
- J. Lee, K. Oh, D. Shen, and H.-I. Suk, “A Novel Knowledge Keeper Network for 7T-Free But 7T-Guided Brain Tissue Segmentation,” 25th International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI), Singapore, September 18-22, 2022. (Early Accept)
- J. Phyo, W. Ko, E. Jeon, and H.-I. Suk, “Enhancing Contextual Encoding with Stage-Confusion and Stage-Transition Estimation for EEG-Based Sleep Staging,” 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Singapore, May 22-27, 2022.
- S. Jeong, W. Ko, and H.-I. Suk, “Continuous Riemannian Geometric Learning for Sleep Staging Classification,” 10th International Winter Conference on Brain-Computer Interface (BCI), High1 Resort, Korea, February 21-23, 2022.
Thesis
- J. Phyo, “Context-aware Multi-task Learning for EEG-based Sleep Stage Classification,” 2022 (Master Degree).