基于CGM的LSTM预测糖尿病的实现

Sunny Arora, Shailender Kumar, Pardeep Kumar
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引用次数: 0

摘要

深度学习为各种疾病的诊断和预测增加了便利,对医疗设施产生了影响。糖尿病是全球许多人面临的主要健康问题。患有这种疾病的人数从1980年的1.08亿人增加到600人,到2019年增加到4.6亿人。利用深度学习方法预测血糖预测的趋势,使疾病的管理变得更加容易。在这项工作中,我们正在使用训练数据预测疾病的未来趋势。我们在这项工作中使用了公开可用的数据集Ohio T1DM数据集。在本文中,我们实现了LSTM来预测未来的趋势。采用均方根误差作为本工作的绩效评价指标。
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Implementation of LSTM for Prediction of Diabetes using CGM
Deep learning has added conveniences for the diagnosis and prediction of various diseases making an influence in healthcare facilities. Diabetes mellitus is a dominant health issue faced by many around the globe. The number of people with this disease went up from one hundred eight million to six hundred in 1980, to four sixty million in 2019. Predicting trends of blood glucose prediction using deep learning methods make the management of the disease much easier. In this work, we are predicting future trends of the disease using training data. We have used the publically available dataset Ohio T1DM dataset in this work. In this paper, we have implemented LSTM to predict future trends. Root mean square error is used as the performance evaluation measure for this work.
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