No
Yes
View More
View Less
Working...
Close
OK
Cancel
Confirm
System Message
Delete
Schedule
An unknown error has occurred and your request could not be completed. Please contact support.
Scheduled
Wait Listed
Personal Calendar
Speaking
Conference Event
Meeting
Interest
Schedule TBD
Conflict Found
This session is already scheduled at another time. Would you like to...
Loading...
Please enter a maximum of {0} characters.
Please enter a maximum of {0} words.
must be 50 characters or less.
must be 40 characters or less.
Session Summary
We were unable to load the map image.
This has not yet been assigned to a map.
Search Catalog
Reply
Replies ()
Search
New Post
Microblog
Microblog Thread
Post Reply
Post
Your session timed out.
This web page is not optimized for viewing on a mobile device. Visit this site in a desktop browser to access the full set of features.
2017 GTC San Jose

S7560 - Machine Learning Applications in the Radiology Department and Beyond

Session Speakers
Session Description

Learn about state-of-art and practical medical image machine learning projects, which will be tested in hospitals. Presently, high performance computing systems are the most crucial components of the machine learning system. They are relatively inexpensive and very efficient tool in the medical imaging. In addition, there are many open-source algorithms, published network topologies, and pre-trained parameters of neural network. You can also find solutions to error messages or tough questions through online communities. These novel tools and techniques are a great opportunity for people who are in medical imaging, bioinformatics, and radiology practices to expand their horizons. We'll discuss three topics: (1) Projects and applications that can be developed and easily implemented. (2) Challenging projects with current technologies and how to overcome them. (3) Exciting new fields that we can tackle together.


Additional Session Information
All
Talk
AI in Healthcare Summit Deep Learning and AI Healthcare and Life Sciences Medical Imaging
Healthcare & Life Sciences Higher Education / Research
25 minutes
Session Schedule