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使用智能手表对1型糖尿病患者进行无创低血糖检测的个性化机器学习模型:关于清醒和睡眠时间特征重要性的见解

Personalized machine learning models for noninvasive hypoglycemia detection in people with type 1 diabetes using a smartwatch: Insights into feature importance during waking and sleeping times.

作者信息

Mohamed Yasmine M, Mancera José, Brandenberg Andreas, Fischli Stefan, Havranek Michael M

机构信息

Lucerne University of Applied Sciences and Arts, Lucerne, Switzerland.

Division of Endocrinology, Diabetes and Clinical Nutrition, Lucerne Cantonal Hospital, Lucerne, Switzerland.

出版信息

PLoS One. 2025 Jun 25;20(6):e0325956. doi: 10.1371/journal.pone.0325956. eCollection 2025.

Abstract

Hypoglycemia is a major challenge for people with diabetes. Therefore, glycemic monitoring is an important aspect of diabetes management. However, current methods such as finger pricking and continuous glucose monitoring systems (CGMS) are invasive, and hypoglycemia has still been shown to occur despite advancements in CGMS. Consequently, a growing body of research has been directed toward noninvasive hypoglycemia detection, relying on data from medical devices and wearables that can record physiological changes elicited by hypoglycemia. Consumer-grade wearables such as smartwatches remain an attractive yet underexplored candidate for such applications. Therefore, we explored the potential of a consumer-grade wearable for hypoglycemia prediction and investigated differing feature importance during waking and sleeping times. Smartwatch data from 18 adults with type 1 diabetes was collected, preprocessed, and imputed. Machine learning (ML) models were built using a tree-based ensemble algorithm to detect hypoglycemic events registered by CGMS. Models were built in a personalized manner using the same participant's data for training and testing, with separate modeling for daytime and nighttime. The relative importance of input features on model decisions was analyzed using SHAP (SHapley Additive exPlanations). Seventeen personalized models were built with an average area under the receiver operating characteristic curve (AUROC) score of 0.74 ± 0.08. Average specificity and sensitivity were 0.76 ± 0.18 and 0.71 ± 0.15, respectively. Time-of-day, activity, and cardiac features showed comparable importance in daytime models (29.9%, 28.5%, and 24%, respectively), while in nighttime models, cardiac features demonstrated the highest importance (42.2%) followed by time-of-day features (37.5%) and respiratory features (15.2%). In summary, we demonstrate the potential of consumer-grade wearables in noninvasive hypoglycemia detection. By additionally considering different physiological states (waking and sleeping) during modeling, our results offer further insights into differences in relative feature importance influencing the model's decision, guiding future research in this area.

摘要

低血糖是糖尿病患者面临的一项重大挑战。因此,血糖监测是糖尿病管理的一个重要方面。然而,目前诸如手指采血和连续血糖监测系统(CGMS)等方法具有侵入性,而且尽管CGMS有了进步,但低血糖仍时有发生。因此,越来越多的研究致力于非侵入性低血糖检测,依靠来自医疗设备和可穿戴设备的数据来记录低血糖引发的生理变化。消费级可穿戴设备,如智能手表,仍然是这类应用中一个有吸引力但尚未得到充分探索的候选者。因此,我们探索了消费级可穿戴设备用于低血糖预测的潜力,并研究了清醒和睡眠期间不同特征的重要性。收集了18名1型糖尿病成年人的智能手表数据,进行了预处理和插补。使用基于树的集成算法构建机器学习(ML)模型,以检测CGMS记录的低血糖事件。使用同一参与者的数据进行个性化建模,用于训练和测试,白天和夜间分别建模。使用SHAP(SHapley Additive exPlanations)分析输入特征对模型决策的相对重要性。构建了17个个性化模型,接收器操作特征曲线(AUROC)得分的平均面积为0.74±0.08。平均特异性和敏感性分别为0.76±0.18和0.71±0.15。白天模型中,时间、活动和心脏特征的重要性相当(分别为29.9%、28.5%和24%),而在夜间模型中,心脏特征的重要性最高(42.2%),其次是时间特征(37.5%)和呼吸特征(15.2%)。总之,我们证明了消费级可穿戴设备在非侵入性低血糖检测中的潜力。通过在建模过程中额外考虑不同的生理状态(清醒和睡眠),我们的结果进一步深入了解了影响模型决策的相对特征重要性的差异,为该领域的未来研究提供了指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e8e9/12193853/3c634f9380b8/pone.0325956.g001.jpg

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