Parkinson'S Disease
Parkinson's Disease (PD) research focuses on developing accurate and accessible diagnostic tools, primarily targeting early detection to enable timely intervention. Current efforts leverage diverse data sources, including speech, gait analysis from video and wearable sensors, EEG, and MRI scans, employing machine learning models such as convolutional neural networks (CNNs), graph convolutional networks (GCNs), transformers, and ensemble methods for classification and severity prediction. These advancements aim to improve diagnostic accuracy, reduce reliance on subjective clinical assessments, and facilitate earlier and more efficient PD diagnosis, ultimately improving patient outcomes and healthcare resource allocation. The development of accessible at-home diagnostic tools is a particularly significant area of focus.
Papers
Investigating the Effectiveness of Explainability Methods in Parkinson's Detection from Speech
Eleonora Mancini, Francesco Paissan, Paolo Torroni, Cem Subakan, Mirco Ravanelli
AI enhanced diagnosis of Peyronies disease a novel approach using Computer Vision
Yudara Kularathne, Janitha Prathapa, Prarththanan Sothyrajah, Salomi Arasaratnam, Sithira Ambepitiya, Thanveer Ahamed, Dinuka Wijesundara
Parkinson's Disease Detection from Resting State EEG using Multi-Head Graph Structure Learning with Gradient Weighted Graph Attention Explanations
Christopher Neves, Yong Zeng, Yiming Xiao
Investigating Brain Connectivity and Regional Statistics from EEG for early stage Parkinson's Classification
Amarpal Sahota, Amber Roguski, Matthew W Jones, Zahraa S. Abdallah, Raul Santos-Rodriguez