Multi-Institution Encrypted Medical Imaging Ai Validation Without Data Sharing

Published: Jan 1, 2021
Abstract
Adoption of artificial intelligence medical imaging applications is often impeded by barriers between healthcare systems and algorithm developers given that access to both private patient data and commercial model IP is important to perform pre-deployment evaluation. This work investigates a framework for secure, privacy-preserving and AI-enabled medical imaging inference using CrypTFlow2, a state-of-the-art end-to-end compiler allowing...
Paper Details
Title
Multi-Institution Encrypted Medical Imaging Ai Validation Without Data Sharing
Published Date
Jan 1, 2021
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