Patel Mitesh S, Polsky Daniel, Small Dylan S, Park Sae-Hwan, Evans Chalanda N, Harrington Tory, Djaraher Rachel, Changolkar Sujatha, Snider Christopher K, Volpp Kevin G
Ascension, 4600 Edmundson Rd, St. Louis, MO, 63134, USA.
Perelman School of Medicine, University of Pennsylvania, 3400 Civic Center Blvd, Philadelphia, PA, 19104, USA.
NPJ Digit Med. 2021 Dec 21;4(1):172. doi: 10.1038/s41746-021-00541-1.
The use of wearables is increasing and data from these devices could improve the prediction of changes in glycemic control. We conducted a randomized trial with adults with prediabetes who were given either a waist-worn or wrist-worn wearable to track activity patterns. We collected baseline information on demographics, medical history, and laboratory testing. We tested three models that predicted changes in hemoglobin A1c that were continuous, improved glycemic control by 5% or worsened glycemic control by 5%. Consistently in all three models, prediction improved when (a) machine learning was used vs. traditional regression, with ensemble methods performing the best; (b) baseline information with wearable data was used vs. baseline information alone; and (c) wrist-worn wearables were used vs. waist-worn wearables. These findings indicate that models can accurately identify changes in glycemic control among prediabetic adults, and this could be used to better allocate resources and target interventions to prevent progression to diabetes.
可穿戴设备的使用正在增加,这些设备的数据可以改善对血糖控制变化的预测。我们对患有糖尿病前期的成年人进行了一项随机试验,为他们提供腰部佩戴或手腕佩戴的可穿戴设备,以跟踪活动模式。我们收集了有关人口统计学、病史和实验室检测的基线信息。我们测试了三种预测糖化血红蛋白变化的模型,这些变化是连续的,血糖控制改善了5%或血糖控制恶化了5%。在所有三个模型中,当(a)使用机器学习而非传统回归时,预测得到改善,集成方法表现最佳;(b)使用基线信息和可穿戴设备数据而非仅使用基线信息时;以及(c)使用手腕佩戴的可穿戴设备而非腰部佩戴的可穿戴设备时,预测均得到改善。这些发现表明,模型可以准确识别糖尿病前期成年人的血糖控制变化,这可用于更好地分配资源和确定干预目标,以预防糖尿病进展。