循环双重潜在发现改善血糖预测通过患者-提供者互动建模:预测研究。

IF 0.2 Q3 MEDICINE, GENERAL & INTERNAL
Ewha Medical Journal Pub Date : 2025-04-01 Epub Date: 2025-04-15 DOI:10.12771/emj.2025.00332
Suyeon Park, Seoyoung Kim, Dohyoung Rim
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引用次数: 0

摘要

目的:准确预测血糖变异性对于有效的糖尿病管理至关重要,因为低血糖和高血糖都与发病率和死亡率增加有关。然而,传统的预测模型主要依赖于患者特异性的生物特征数据,往往忽略了患者-提供者互动的影响,这可能会显著影响结果。本研究引入了循环双重潜伏发现(CDLD),这是一个深度学习框架,可以明确地模拟患者与提供者的互动,以提高血糖水平的预测。通过利用现实世界的重症监护病房(ICU)数据集,该模型捕获了患者和提供者的潜在属性,从而提高了预测的准确性。方法:从MIMIC-IV v3.0重症监护数据库中获取ICU患者记录,包括约5,014例患者-提供者互动。CDLD模型使用循环训练机制交替更新患者和提供者潜在表征以优化预测性能。在预处理过程中,所有数值特征被归一化,极端葡萄糖值被限制在500 mg/dL,以减轻异常值的影响。结果:CDLD优于传统模型,验证集的均方根误差为0.0852,测试集的均方根误差为0.0899,表明泛化程度有所提高。该模型有效地捕获了潜在的患者-提供者相互作用模式,产生比基线方法更准确的血糖变异性预测。结论:将医患互动模型集成到预测框架中可以提高血糖预测的准确性。CDLD模型为糖尿病管理提供了一种新的方法,可能为人工智能驱动的个性化治疗策略铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cyclic dual latent discovery for improved blood glucose prediction through patient-provider interaction modeling: a prediction study.

Cyclic dual latent discovery for improved blood glucose prediction through patient-provider interaction modeling: a prediction study.

Cyclic dual latent discovery for improved blood glucose prediction through patient-provider interaction modeling: a prediction study.

Cyclic dual latent discovery for improved blood glucose prediction through patient-provider interaction modeling: a prediction study.

Purpose: Accurate prediction of blood glucose variability is crucial for effective diabetes management, as both hypoglycemia and hyperglycemia are associated with increased morbidity and mortality. However, conventional predictive models rely primarily on patient-specific biometric data, often neglecting the influence of patient-provider interactions, which can significantly impact outcomes. This study introduces Cyclic Dual Latent Discovery (CDLD), a deep learning framework that explicitly models patient-provider interactions to improve prediction of blood glucose levels. By leveraging a real-world intensive care unit (ICU) dataset, the model captures latent attributes of both patients and providers, thus improving forecasting accuracy.

Methods: ICU patient records were obtained from the MIMIC-IV v3.0 critical care database, including approximately 5,014 instances of patient-provider interaction. The CDLD model uses a cyclic training mechanism that alternately updates patient and provider latent representations to optimize predictive performance. During preprocessing, all numeric features were normalized, and extreme glucose values were capped at 500 mg/dL to mitigate the effect of outliers.

Results: CDLD outperformed conventional models, achieving a root mean square error of 0.0852 on the validation set and 0.0899 on the test set, which indicates improved generalization. The model effectively captured latent patient-provider interaction patterns, yielding more accurate glucose variability predictions than baseline approaches.

Conclusion: Integrating patient-provider interaction modeling into predictive frameworks can increase blood glucose prediction accuracy. The CDLD model offers a novel approach to diabetes management, potentially paving the way for artificial intelligence-driven personalized treatment strategies.

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来源期刊
Ewha Medical Journal
Ewha Medical Journal MEDICINE, GENERAL & INTERNAL-
自引率
33.30%
发文量
28
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