Parkinson Disease
Parkinson's Disease (PD) research focuses on improving early diagnosis and monitoring of disease progression through the analysis of diverse data modalities, including speech, handwriting, gait, EEG, and MRI. Current studies employ various machine learning techniques, such as deep convolutional neural networks, recurrent neural networks (like LSTMs), graph neural networks, and transformer architectures, often combined with ensemble methods to enhance accuracy and robustness. These advancements aim to create accessible and reliable diagnostic tools, potentially improving patient outcomes through earlier intervention and personalized treatment strategies, particularly in resource-limited settings. The development of explainable AI models is also a key focus, facilitating clinical understanding and trust in these technologies.
Papers
Unmasking Parkinson's Disease with Smile: An AI-enabled Screening Framework
Tariq Adnan, Md Saiful Islam, Wasifur Rahman, Sangwu Lee, Sutapa Dey Tithi, Kazi Noshin, Imran Sarker, M Saifur Rahman, Ehsan Hoque
Multimodal Indoor Localisation in Parkinson's Disease for Detecting Medication Use: Observational Pilot Study in a Free-Living Setting
Ferdian Jovan, Catherine Morgan, Ryan McConville, Emma L. Tonkin, Ian Craddock, Alan Whone
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
Brain subtle anomaly detection based on auto-encoders latent space analysis : application to de novo parkinson patients
Nicolas Pinon, Geoffroy Oudoumanessah, Robin Trombetta, Michel Dojat, Florence Forbes, Carole Lartizien