Skip to yearly menu bar Skip to main content


( events)   Timezone:  
Workshop
Sat Dec 14 08:00 AM -- 06:45 PM (PST) @ West 301 - 305
Medical Imaging meets NeurIPS
Hervé Lombaert · Ben Glocker · Ender Konukoglu · Marleen de Bruijne · Aasa Feragen · Ipek Oguz · Jonas Teuwen





Workshop Home Page

Medical imaging and radiology are facing a major crisis with an ever-increasing complexity and volume of data along an immense economic pressure. The current advances and widespread use of imaging technologies now overload the human capacity of interpreting medical images, dangerously posing a risk of missing critical patterns of diseases. Machine learning has emerged as a key technology for developing novel tools in computer aided diagnosis, therapy and intervention. Still, progress is slow compared to other fields of visual recognition, which is mainly due to the domain complexity and constraints in clinical applications, i.e., robustness, high accuracy and reliability.

“Medical Imaging meets NeurIPS” aims to bring researchers together from the medical imaging and machine learning communities to discuss the major challenges in the field and opportunities for research and novel applications. The proposed event will be the continuation of a successful workshop organized in NeurIPS 2017 and 2018 (https://sites.google.com/view/med-nips-2018). It will feature a series of invited speakers from academia, medical sciences and industry to give an overview of recent technological advances and remaining major challenges.

Opening Remarks (Talks)
Keynote I – Rene Vidal (Johns Hopkins University) (Talks)
Oral Session I – Methods (Talks)
Coffee Break + Poster Session I (Posters)
Keynote II – Julia Schnabel (King's College London) (Talks)
Oral Session II – Image Analysis and Segmentation (Talks)
Lunch (Break)
Keynote III – Leo Grady (Paige AI) (Talks)
Oral Session III – Imaging (Talks)
Coffee Break + Poster Session II (Posters)
Keynote IV – Daniel Sodickson (NYU Langone Health) (Talks)
fastMRI Challenge Talks (Talks)
Closing Remarks (Talks)