Patient Friendly Language
Patient-friendly language research focuses on improving communication between healthcare providers and patients, primarily by leveraging artificial intelligence to process and translate complex medical information into easily understandable formats. Current research employs various machine learning models, including deep neural networks (like CNNs, LSTMs, and transformers), graph neural networks, and ensemble methods, to analyze patient data (e.g., EHRs, imaging, social media posts) and predict outcomes, personalize treatment, and enhance patient understanding of their conditions. This work holds significant implications for improving patient care, facilitating more informed decision-making, and potentially reducing healthcare disparities by addressing communication barriers and improving access to information.
Papers
A Novel Approach to Image EEG Sleep Data for Improving Quality of Life in Patients Suffering From Brain Injuries Using DreamDiffusion
David Fahim, Joshveer Grewal, Ritvik Ellendula
Deep Learning Based Apparent Diffusion Coefficient Map Generation from Multi-parametric MR Images for Patients with Diffuse Gliomas
Zach Eidex, Mojtaba Safari, Jacob Wynne, Richard L. J. Qiu, Tonghe Wang, David Viar Hernandez, Hui-Kuo Shu, Hui Mao, Xiaofeng Yang