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Main Authors: Venugopalan, Hari, Vijayanand, Shreyas Madhav Ambattur, Stanford, Caleb, Crossen, Stephanie, King, Samuel T.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.18262
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author Venugopalan, Hari
Vijayanand, Shreyas Madhav Ambattur
Stanford, Caleb
Crossen, Stephanie
King, Samuel T.
author_facet Venugopalan, Hari
Vijayanand, Shreyas Madhav Ambattur
Stanford, Caleb
Crossen, Stephanie
King, Samuel T.
contents We present GlucOS, a novel system for trustworthy automated insulin delivery. Fundamentally, this paper is about a system we designed, implemented, and deployed on real humans and the lessons learned from our experiences. GlucOS introduces a novel architecture that allows users to personalize diabetes management using any predictive model (including ML) for insulin dosing while simultaneously protecting them against malicious models. We also introduce a novel holistic security mechanism that adapts to unprecedented changes to human physiology. We use formal methods to prove correctness of critical components and incorporate humans as part of our defensive strategy. Our evaluation includes both a real-world deployment with seven individuals and results from simulation to show that our techniques generalize. We highlight that our results are not from a lab study, with people using GlucOS to manage Type 1 Diabetes in their daily lives. Our results show that GlucOS maintains safety and improves glucose control even under attack conditions. This work demonstrates the potential for secure, personalized, automated healthcare systems. Our entire source code is available at this link.
format Preprint
id arxiv_https___arxiv_org_abs_2406_18262
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle GlucOS: Security, correctness, and simplicity for automated insulin delivery
Venugopalan, Hari
Vijayanand, Shreyas Madhav Ambattur
Stanford, Caleb
Crossen, Stephanie
King, Samuel T.
Cryptography and Security
We present GlucOS, a novel system for trustworthy automated insulin delivery. Fundamentally, this paper is about a system we designed, implemented, and deployed on real humans and the lessons learned from our experiences. GlucOS introduces a novel architecture that allows users to personalize diabetes management using any predictive model (including ML) for insulin dosing while simultaneously protecting them against malicious models. We also introduce a novel holistic security mechanism that adapts to unprecedented changes to human physiology. We use formal methods to prove correctness of critical components and incorporate humans as part of our defensive strategy. Our evaluation includes both a real-world deployment with seven individuals and results from simulation to show that our techniques generalize. We highlight that our results are not from a lab study, with people using GlucOS to manage Type 1 Diabetes in their daily lives. Our results show that GlucOS maintains safety and improves glucose control even under attack conditions. This work demonstrates the potential for secure, personalized, automated healthcare systems. Our entire source code is available at this link.
title GlucOS: Security, correctness, and simplicity for automated insulin delivery
topic Cryptography and Security
url https://arxiv.org/abs/2406.18262