英国帝国理工大学 杨光研究员给我院师生做学术报告

发布者:杨淳沨发布时间:2021-12-16浏览次数:624

应中法生物医学信息研究中心与江苏省医学信息处理国合实验室邀请,1217日(周五)晚上19:00 –20:00,英国帝国理工大学 杨光研究员给我院师生做学术报告,具体情况如下: 

报告题目:Data-Driven Deep Learning Frameworks for Cardiac MRI 

报告人:英国帝国理工大学 杨光 研究员 

北京时间:20211217日(周五)晚上19:00 – 20:00 

地点:东南大学四牌楼校区群贤楼影像实验室会议室 

Zoom Meeting 链接: 

Topic: Webinar at Southeast University

Time: Dec 17, 2021 11:00 AM London 

Join Zoom Meeting

https://imperial-ac-uk.zoom.us/j/94226569842?pwd=YXB6NUZQdnNCY04raUVJRGErTFhnUT09 

Meeting ID: 942 2656 9842

Passcode: P9N1i^ 

摘要:

In recent years, major advancements have been made in Artificial Intelligence (AI), which are rising in sophistication, complexity and autonomy. A continually veritable and explosive data growth with a rapid iteration of the innovation of computer hardware provides a turbo boost for AI development. AI is an overarching term in computer science and an umbrella concept that provides means to imbue machines with human-like “general” intelligence with minimal human intervention. It encompasses a wide variety of research studies, from computer vision, natural language processing, and robotics to medical data analysis, including both theoretical and practical development of machine learning and newly rebranded and prosperous deep learning. Cardiovascular disorders are the leading cause of death and morbidity worldwide. AI approaches, in particular, deep learning, are especially suited to solving the problems of scalability and high data dimensionality and are showing great potential in the research of cardiac image analysis; however, imaging technology and image quality are the main hurdles for downstream analysis. In this talk, I will share some of the insights in novel imaging technologies, e.g., advanced cardiac MRI and fast imaging using data-driven deep learning frameworks.

 

报告人简历


Dr Guang Yang is a Future Leaders Fellow (Tenured Senior Research Fellow) in the National Heart and Lung Institute at Imperial College London. He is also an Honorary Senior Lecturer in the School of Biomedical Engineering & Imaging Sciences at King's College London. His research group is interested in developing novel and translational techniques for imaging and biomedical data analysis. His group focuses on the research and development on data-driven fast imaging, data harmonisation, image segmentation, image synthesis, federated learning, explainable AI etc. He is currently working on a wide range of clinical applications in cardiovascular disease, lung disease and oncology. Read more information about Yang’s Lab at: https://www.yanglab.fyi/