Common Disease
Research on common diseases like Alzheimer's and Parkinson's is intensely focused on developing accurate and accessible diagnostic tools using machine learning. Current efforts leverage multimodal data (MRI, EEG, genomics, voice analysis) and advanced architectures like graph neural networks, convolutional neural networks, transformers, and state space models to improve diagnostic accuracy and identify disease subtypes. These advancements aim to enable earlier diagnosis, personalized treatment strategies, and improved patient outcomes, particularly in resource-limited settings. Furthermore, research emphasizes the development of robust and interpretable models that address data privacy and bias concerns within healthcare applications.
Papers
Don't PANIC: Prototypical Additive Neural Network for Interpretable Classification of Alzheimer's Disease
Tom Nuno Wolf, Sebastian Pölsterl, Christian Wachinger
Deep Learning-based Eye-Tracking Analysis for Diagnosis of Alzheimer's Disease Using 3D Comprehensive Visual Stimuli
Fangyu Zuo, Peiguang Jing, Jinglin Sun, Jizhong, Duan, Yong Ji, Yu Liu
Machine Learning-Based Detection of Parkinson's Disease From Resting-State EEG: A Multi-Center Study
Anna Kurbatskaya, Alberto Jaramillo-Jimenez, John Fredy Ochoa-Gomez, Kolbjørn Brønnick, Alvaro Fernandez-Quilez
Evidence-empowered Transfer Learning for Alzheimer's Disease
Kai Tzu-iunn Ong, Hana Kim, Minjin Kim, Jinseong Jang, Beomseok Sohn, Yoon Seong Choi, Dosik Hwang, Seong Jae Hwang, Jinyoung Yeo