Non Invasive
Non-invasive techniques aim to extract information from the human body without the need for surgery or invasive procedures. Current research focuses on decoding various physiological signals, including brain activity (EEG, fMRI, fNIRS) and other biosignals (gait patterns, heart rate from facial videos), using advanced machine learning models such as deep neural networks (including transformers, convolutional neural networks, and recurrent neural networks), and ensemble learning methods. These advancements hold significant promise for improving healthcare diagnostics (e.g., early cancer detection, epilepsy monitoring, sleep apnea diagnosis), creating more effective brain-computer interfaces (BCIs), and enabling personalized medicine through non-invasive monitoring and analysis of physiological data.
Papers
Resolving Domain Shift For Representations Of Speech In Non-Invasive Brain Recordings
Jeremiah Ridge, Oiwi Parker Jones
A Review of Deep Learning Approaches for Non-Invasive Cognitive Impairment Detection
Muath Alsuhaibani, Ali Pourramezan Fard, Jian Sun, Farida Far Poor, Peter S. Pressman, Mohammad H. Mahoor
Towards Non-invasive and Personalized Management of Breast Cancer Patients from Multiparametric MRI via A Large Mixture-of-Modality-Experts Model
Luyang Luo, Mingxiang Wu, Mei Li, Yi Xin, Qiong Wang, Varut Vardhanabhuti, Winnie CW Chu, Zhenhui Li, Juan Zhou, Pranav Rajpurkar, Hao Chen
Towards Linguistic Neural Representation Learning and Sentence Retrieval from Electroencephalogram Recordings
Jinzhao Zhou, Yiqun Duan, Ziyi Zhao, Yu-Cheng Chang, Yu-Kai Wang, Thomas Do, Chin-Teng Lin