Vu Long, Kefayati Sarah, Idé Tsuyoshi, Pavuluri Venkata, Jackson Gretchen, Latts Lisa, Zhong Yuxiang, Agrawal Pratik, Chang Yuan-Chi
IBM Research AI, Yorktown Heights, NY, USA.
IBM Watson Health, Cambridge, MA, USA.
AMIA Annu Symp Proc. 2020 Mar 4;2019:874-882. eCollection 2019.
Nocturnal hypoglycemia is a serious complication of insulin-treated diabetes, which commonly goes undetected. Continuous glucose monitoring (CGM) devices have enabled prediction of impending nocturnal hypoglycemia, however, prior efforts have been limited to a short prediction horizon (~ 30 minutes). To this end, a nocturnal hypoglycemia prediction model with a 6-hour horizon (midnight-6 am) was developed using a random forest machine- learning model based on data from 10,000 users with more than 1 million nights of CGM data. The model demonstrated an overall nighttime hypoglycemia prediction performance of ROC AUC = 0.84, with AUC = 0.90 for early night (midnight-3 am) and AUC = 0.75 for late night (prediction at midnight, looking at 3-6 am window). While instabilities and the absence of late-night blood glucose patterns introduce predictability challenges, this 6-hour horizon model demonstrates good performance in predicting nocturnal hypoglycemia. Additional study and specific patient-specific features will provide refinements that further ensure safe overnight management of glycemia.
夜间低血糖是胰岛素治疗糖尿病的一种严重并发症,通常未被察觉。连续血糖监测(CGM)设备能够预测即将发生的夜间低血糖,然而,之前的努力仅限于较短的预测时间范围(约30分钟)。为此,基于来自10000名用户超过100万晚的CGM数据,使用随机森林机器学习模型开发了一种具有6小时时间范围(午夜至凌晨6点)的夜间低血糖预测模型。该模型的总体夜间低血糖预测性能为ROC AUC = 0.84,夜间早期(午夜至凌晨3点)的AUC = 0.90,夜间晚期(午夜进行预测,观察凌晨3点至6点的时间段)的AUC = 0.75。虽然不稳定性和缺乏深夜血糖模式带来了预测挑战,但这个6小时时间范围的模型在预测夜间低血糖方面表现出良好的性能。进一步的研究和特定患者的特征将提供改进,进一步确保夜间血糖的安全管理。