原创 MICS 医学图像计算青年研讨会2018年12月16日 23:17
| 嘉宾 | Prof. Dinggang Shen University of North Carolina at Chapel Hill |
| 时间 | 2018年12月18日(星期二)下午20:00(北京时间) |
| 题目 | Deep Learning in Brain Quantification and Cancer Radiotherapy |
| 主持 | 何晖光(中国科学院自动化研究所) |
报告摘要
This talk will introduce our recent deep learning work in 2018 on brain quantification and prostate cancer radiotherapy. Specifically, for automatic quantification of early brain development in the first year of life, i.e., with the goal of early identification of brain diseases such as autism, deep learning based brain image segmentation and cortical surface parcellation have been developed. For early diagnosis of Alzheimer’s Disease (AD) with the goal of possible early treatment, deep learning has been applied to unsupervised brain registration for precise inter-subject comparison and distinctive-regions based disease diagnosis. Besides, for effective treatment of prostate cancer, especially for MRI-based cancer treatment, a novel context-aware GAN (Generative Adversarial Networks) has been developed for synthesizing CT from MRI. Also, two novel deep learning techniques have been developed for automatic and precise segmentation of pelvic organs from the planning CT images to better guide radiotherapy. Both the clinical significance of each medical problem and the motivation of each developed technique will be clarified in this talk.
嘉宾简介
Dinggang Shen is Jeffrey Houpt Distinguished Investigator, and a Professor of Radiology, Biomedical Research Imaging Center (BRIC), Computer Science, and Biomedical Engineering in the University of North Carolina at Chapel Hill (UNC-CH). He is currently directing the Center for Image Analysis and Informatics, the Image Display, Enhancement, and Analysis (IDEA) Lab in the Department of Radiology, and also the medical image analysis core in the BRIC. He was a tenure-track assistant professor in the University of Pennsylvanian (UPenn), and a faculty member in the Johns Hopkins University. Dr. Shen’s research interests include medical image analysis, computer vision, and pattern recognition. He has published more than 900 papers in the international journals and conference proceedings, with H-index 84. He serves as an editorial board member for eight international journals. He has also served in the Board of Directors, The Medical Image Computing and Computer Assisted Intervention (MICCAI) Society, in 2012-2015. He will be General Chair for MICCAI 2019. He is Fellow of IEEE, Fellow of The American Institute for Medical and Biological Engineering (AIMBE), and Fellow of The International Association for Pattern Recognition (IAPR).

https://www.med.unc.edu/bric/ideagroup
特别鸣谢本次Webinar主要组织者:
MICS Webinar责任委员:何晖光(中国科学院自动化研究所)
活动须知
- MICS在线学术讲座依托在线直播平台进行,听众请点击直播链接https://live.polyv.cn/watch/267842(注:该链接为12月18日报告链接,该链接每期会和讲者信息一起更新)参加活动,支持安装 Windows 系统的电脑、MAC 电脑、手机等设备;手机客户端也可直接扫描二维码进入直播;

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3. 活动过程中,请不要说无关话语,以免影响活动正常进行;活动过程中,如出现听不到或看不到视频等问题,建议退出再重新进入,一般都能解决问题;建议通过速度较快的网络参加活动,优先采用有线网络连接;活动过程中,请不要说无关话语,以免影响活动正常进行;
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“医学图像计算青年研讨会”微信公众号
MICS在线学术讲座的模式和组织方式借鉴了很多 VALSE 的经验, 从 VALSE 得到了很多的启发,在此对 VALSE 组委会表示衷心的感谢,也祝愿 MICS 和 VALSE越办越好!
