Department of Chemical and Biological Engineering, Illinois Institute of Technology, Chicago, IL, USA.
Department of Biomedical Engineering, Illinois Institute of Technology, Chicago, IL, USA.
J Diabetes Sci Technol. 2023 Nov;17(6):1482-1492. doi: 10.1177/19322968221102183. Epub 2022 Jun 15.
Predicting carbohydrate intake and physical activity in people with diabetes is crucial for improving blood glucose concentration regulation. Patterns of individual behavior can be detected from historical free-living data to predict meal and exercise times. Data collected in free-living may have missing values and forgotten manual entries. While machine learning (ML) can capture meal and exercise times, missing values, noise, and errors in data can reduce the accuracy of ML algorithms.
Two recurrent neural networks (RNNs) are developed with original and imputed data sets to assess detection accuracy of meal and exercise events. Continuous glucose monitoring (CGM) data, insulin infused from pump data, and manual meal and exercise entries from free-living data are used to predict meals, exercise, and their concurrent occurrence. They contain missing values of various lengths in time, noise, and outliers.
The accuracy of RNN models range from 89.9% to 95.7% for identifying the state of event (meal, exercise, both, or neither) for various users. "No meal or exercise" state is determined with 94.58% accuracy by using the best RNN (long short-term memory [LSTM] with 1D Convolution). Detection accuracy with this RNN is 98.05% for meals, 93.42% for exercise, and 55.56% for concurrent meal-exercise events.
The meal and exercise times detected by the RNN models can be used to warn people for entering meal and exercise information to hybrid closed-loop automated insulin delivery systems. Reliable accuracy for event detection necessitates powerful ML and large data sets. The use of additional sensors and algorithms for detecting these events and their characteristics provides a more accurate alternative.
预测糖尿病患者的碳水化合物摄入量和身体活动对于改善血糖浓度调节至关重要。可以从历史的自由生活数据中检测个体行为模式,以预测进餐和运动时间。自由生活中收集的数据可能存在缺失值和遗忘的手动输入。虽然机器学习 (ML) 可以捕捉进餐和运动时间,但数据中的缺失值、噪声和错误会降低 ML 算法的准确性。
使用原始数据集和插补数据集开发了两个递归神经网络 (RNN),以评估进餐和运动事件检测的准确性。连续血糖监测 (CGM) 数据、从泵中输注的胰岛素以及自由生活数据中的手动进餐和运动记录用于预测进餐、运动及其并发事件。它们包含各种长度的时间、噪声和异常值的缺失值。
对于不同用户,RNN 模型识别事件状态(进餐、运动、两者或两者都不是)的准确率范围为 89.9%至 95.7%。使用最佳 RNN(具有 1D 卷积的长短期记忆 [LSTM])可以以 94.58%的准确率确定“无进餐或运动”状态。该 RNN 的检测准确率为进餐 98.05%、运动 93.42%和同时进餐-运动事件 55.56%。
RNN 模型检测到的进餐和运动时间可用于警告人们输入进餐和运动信息,以实现混合闭环自动胰岛素输送系统。事件检测的可靠准确性需要强大的 ML 和大数据集。使用额外的传感器和算法来检测这些事件及其特征提供了更准确的替代方案。