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Trustworthy AI-Based Personalized Insulin Recommender for Elderly People Who Have Type-2 Diabetes

Published: 06 March 2024 Publication History

Abstract

We propose TRAINER, a TRustworthy Artificial Intelligence-based iNsulin recommendER for elderly individuals with type 2 diabetes, ensuring reliability and trust in insulin dosage recommendations. TRAINER exemplifies this trustworthiness and addresses such concerns by offering reliable insulin recommendations supported by clinical evidence.

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cover image Computer
Computer  Volume 57, Issue 3
March 2024
130 pages

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IEEE Computer Society Press

Washington, DC, United States

Publication History

Published: 06 March 2024

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