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Main Authors: Bilionis, Ioannis, Berrios, Ricardo C., Fernandez-Luque, Luis, Castillo, Carlos
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.23954
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author Bilionis, Ioannis
Berrios, Ricardo C.
Fernandez-Luque, Luis
Castillo, Carlos
author_facet Bilionis, Ioannis
Berrios, Ricardo C.
Fernandez-Luque, Luis
Castillo, Carlos
contents Artificial Intelligence and Machine Learning (AI/ML) models used in clinical settings are increasingly deployed to support clinical decision-making. However, when training data become stale due to changes in demographics, environment, or patient behaviors, model performance can degrade substantially. While updating models with new training data is necessary, such updates may also introduce new risks. We evaluated the proposed monitoring framework on four publicly available U.S.-based Type 1 Diabetes datasets containing high-resolution continuous glucose monitoring (CGM) data, comprising approximately 11,300 weekly observations from 496 participants under 20 years of age. All datasets included structured sociodemographic information. Using the prediction of severe hyperglycemia events in children with type 1 diabetes as a case study, we examine how different model update strategies can adversely affect model stability (e.g., by causing predictions to "flip" for a large number of cases after an update), increase arbitrariness in predictions, or worsen accuracy equity and the balance of error rates across subpopulations. We propose multiple dimensions for continuous monitoring to detect these issues and argue that such monitoring is essential for the development of trustworthy clinical decision support systems.
format Preprint
id arxiv_https___arxiv_org_abs_2604_23954
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle An empirical evaluation of the risks of AI model updates using clinical data: stability, arbitrariness, and fairness
Bilionis, Ioannis
Berrios, Ricardo C.
Fernandez-Luque, Luis
Castillo, Carlos
Artificial Intelligence
Artificial Intelligence and Machine Learning (AI/ML) models used in clinical settings are increasingly deployed to support clinical decision-making. However, when training data become stale due to changes in demographics, environment, or patient behaviors, model performance can degrade substantially. While updating models with new training data is necessary, such updates may also introduce new risks. We evaluated the proposed monitoring framework on four publicly available U.S.-based Type 1 Diabetes datasets containing high-resolution continuous glucose monitoring (CGM) data, comprising approximately 11,300 weekly observations from 496 participants under 20 years of age. All datasets included structured sociodemographic information. Using the prediction of severe hyperglycemia events in children with type 1 diabetes as a case study, we examine how different model update strategies can adversely affect model stability (e.g., by causing predictions to "flip" for a large number of cases after an update), increase arbitrariness in predictions, or worsen accuracy equity and the balance of error rates across subpopulations. We propose multiple dimensions for continuous monitoring to detect these issues and argue that such monitoring is essential for the development of trustworthy clinical decision support systems.
title An empirical evaluation of the risks of AI model updates using clinical data: stability, arbitrariness, and fairness
topic Artificial Intelligence
url https://arxiv.org/abs/2604.23954