基于交替学习和推理方法的低周期血糖水平数据人工智能边缘智能低血糖预测系统

Tran Minh Quan, Takuyoshi Doike, C. D. Bui, K. Hayashi, S. Arata, A. Kobayashi, Md. Zahidul Islam, K. Niitsu
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引用次数: 10

摘要

本研究针对低周期血糖环境,开发了一种基于人工智能的边缘智能低血糖预测系统。通过使用长短期记忆(LSTM),一种在神经网络中处理时间序列数据的专门网络,以及引入交替学习和推理,可以高精度地预测BG水平。为此,采用LSTM方法构建了血糖水平预测系统,并采用分类问题的方法对系统的性能进行了评价。该系统成功预测30分钟后低血糖发生的概率约为80%。此外,通过交替进行学习和预测,可以提高准确率。
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AI-Based Edge-Intelligent Hypoglycemia Prediction System Using Alternate Learning and Inference Method for Blood Glucose Level Data with Low-periodicity
In this study, we developed an AI-based edge-intelligent hypoglycemia prediction system for the environment with low-periodic blood glucose level. By using long-short-term memory (LSTM), a specialized network for handling time series data among neural networks along with introducing alternate learning and inference, it was possible to predict the BG level with high accuracy. In order to achieve, the system for predicting the blood glucose level was created using LSTM, and the performance of the system was evaluated using the method of the classification problem. The system was successfully predicted the probability of occurrence of hypoglycemia after 30 min at approximately 80% times. Furthermore, it was demonstrated that accuracy is improved by alternately performing learning and prediction.
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