1型糖尿病血糖水平预测:可解释人工智能方法的比较分析

IF 7.9 Q1 ENGINEERING, MULTIDISCIPLINARY Results in Engineering Pub Date : 2025-03-01 Epub Date: 2024-12-11 DOI:10.1016/j.rineng.2024.103681
Ilaria Basile, Giovanna Sannino
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引用次数: 0

摘要

本研究探讨了不同可解释人工智能模型在预测1型糖尿病患者短期血糖水平中的应用。人工智能模型的可解释性是一个关键概念,特别是在医疗领域,因为它可以防止所谓的“黑盒子”的发展,并提供患者和医疗保健专业人员完全可以理解的决策。这项工作的最终目的是将这些完全可理解的模型整合到葡萄糖监测系统中,以确保胰岛素治疗的管理更加透明,并提高患者的依从性。使用包含葡萄糖水平和心率变异性特征的数据集评估了模型的预测能力,这些数据集是从开放的D1NAMO数据集中选择的某些患者。预测问题最初被视为一个多序列回归问题,然后被重新评估为一个准确划分为七个血糖范围的问题。从正确分类的角度评估模型的预测能力,我们发现Decision Tree在分析对象上优于其他模型,最佳运行的加权F1得分为0.87。最后,实验还表明,整合心率变异性特征为开发非侵入性监测系统开辟了可能性,减轻了患者的负担,提高了他们的生活质量。
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Blood glucose level prediction in type 1 diabetes: A comparative analysis of interpretable artificial intelligence approaches
This study examines the use of different interpretable Artificial Intelligence models in predicting short-term blood glucose levels in subjects with Type 1 Diabetes. The interpretability of Artificial Intelligence models is a critical concept, especially in the medical context, because it prevents the development of the so-called “black boxes” and provides decisions that are fully understandable by both patients and healthcare professionals. The final aim of this work is to integrate such fully comprehensible models within a glucose monitoring system to ensure a more transparent management of insulin therapy and an improved patient adherence. The predictive ability of the models has been assessed using a dataset containing glucose levels and heart rate variability features for certain patients selected from the open D1NAMO dataset. The prediction problem was initially approached as a multi-series regression issue and then re-evaluated as a problem of accurate classification into seven glycemic ranges. Evaluating the predictive abilities of the models in terms of correct classifications, we show that Decision Tree outperforms the other models for the analyzed subjects, achieving a weighted F1 score of 0.87 for the best run. Finally, the experiments have also shown that integrating heart rate variability features opens up the possibility of developing non-invasive monitoring systems, reducing the burden on patients and improving their quality of life.
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来源期刊
Results in Engineering
Results in Engineering Engineering-Engineering (all)
CiteScore
5.80
自引率
34.00%
发文量
441
审稿时长
47 days
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