Disease Detection
Disease detection research focuses on developing accurate and efficient methods for identifying various illnesses, leveraging diverse data sources like medical images, speech patterns, and satellite imagery. Current efforts concentrate on applying and refining machine learning models, including convolutional neural networks (CNNs), transformers, and graph neural networks, often incorporating techniques like transfer learning and contrastive learning to improve performance and interpretability. These advancements hold significant promise for improving diagnostic accuracy, enabling earlier disease detection, optimizing resource allocation in healthcare, and facilitating more effective disease surveillance and management across various sectors, including agriculture and public health.
Papers
Efficiently Training Vision Transformers on Structural MRI Scans for Alzheimer's Disease Detection
Nikhil J. Dhinagar, Sophia I. Thomopoulos, Emily Laltoo, Paul M. Thompson
Leveraging Pretrained Representations with Task-related Keywords for Alzheimer's Disease Detection
Jinchao Li, Kaitao Song, Junan Li, Bo Zheng, Dongsheng Li, Xixin Wu, Xunying Liu, Helen Meng
Cross-lingual Alzheimer's Disease detection based on paralinguistic and pre-trained features
Xuchu Chen, Yu Pu, Jinpeng Li, Wei-Qiang Zhang
Learning to Generalize towards Unseen Domains via a Content-Aware Style Invariant Model for Disease Detection from Chest X-rays
Mohammad Zunaed, Md. Aynal Haque, Taufiq Hasan
Curriculum Based Multi-Task Learning for Parkinson's Disease Detection
Nikhil J. Dhinagar, Conor Owens-Walton, Emily Laltoo, Christina P. Boyle, Yao-Liang Chen, Philip Cook, Corey McMillan, Chih-Chien Tsai, J-J Wang, Yih-Ru Wu, Ysbrand van der Werf, Paul M. Thompson