Meeting Banner
Abstract #3168

Data Selection for Deep Learning via diversity visualization and scoring

Deepa Anand1, Dattesh Dayanand Shanbhag1, and Rakesh Mullick1
1Advanced Technology Group, GE Healthcare, Bangalore, India

Synopsis

Data diversity is a key ingredient for robust deep learning models, especially in the medical domain. We present a diversity visualization and quantification scheme which enables decisions on data selection different enough from already existing data. Out experiments amply validate the usefulness of the proposed diversity metric in terms of enhancement in accuracy of models resulting from using them in data selection decision process with accuracy improvement from 3%->10% across different sites.

How to access this content:

For one year after publication, abstracts and videos are only open to registrants of this annual meeting. Registrants should use their existing login information. Non-registrant access can be purchased via the ISMRM E-Library.

After one year, current ISMRM & ISMRT members get free access to both the abstracts and videos. Non-members and non-registrants must purchase access via the ISMRM E-Library.

After two years, the meeting proceedings (abstracts) are opened to the public and require no login information. Videos remain behind password for access by members, registrants and E-Library customers.

Click here for more information on becoming a member.

Keywords