Privacy-Protecting Image Classification Within the Web Browser Using Deep Learning Models from Zenodo.

Authors

Auer F,Mayer S,Kramer F

Affiliations (1)

  • IT-Infrastructure for Translational Medical Research, University of Augsburg, Germany.

Abstract

Integrating deep learning into clinical workflows for medical image analysis holds promise for improving diagnostic accuracy. However, strict data privacy regulations and the sensitivity of clinical IT infrastructure limit the deployment of cloud-based solutions. This paper introduces WebIPred, a web-based application that loads deep learning models directly within the client's web browser, protecting patient privacy while maintaining compatibility with clinical IT environments. WebIPred supports the application of pre-trained models published on Zenodo and other repositories, allowing clinicians to apply these models to real patient data without the need for extensive technical knowledge. This paper outlines WebIPred's model integration system, prediction workflow, and privacy features. Our results show that WebIPred offers a privacy-protecting and flexible application for image classification, only relying on client-side processing. WebIPred combines its strong commitment to data privacy and security with a user-friendly interface that makes it easy for clinicians to integrate AI into their workflows.

Topics

Deep LearningComputer SecurityConfidentialityWeb BrowserJournal Article
Get Started

Upload your X-ray image and get interpretation.

Upload now →

Disclaimer: X-ray Interpreter's AI-generated results are for informational purposes only and not a substitute for professional medical advice. Always consult a healthcare professional for medical diagnosis and treatment.