用前馈神经网络最小输入预测1型糖尿病患者血糖水平

Muhammad Asad, Usman Qamar, Babar Zeb, Aimal Khan, Younas Khan
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引用次数: 5

摘要

导读:糖尿病是世界范围内快速增长的疾病之一。研究表明,适当控制血糖水平可以减少1型糖尿病的并发症。目的:仅使用连续血糖数据,并利用既往数据预测未来血糖水平。方法:输入连续血糖监测(Continuous Glucose Monitoring, CGM)数据,采用窗口模型训练前馈神经网络,得到预测受试者血糖值的最优神经网络。通过对10个受试者的虚拟CGM数据进行研究,验证了该方法的有效性。这十个案例研究是从AIDA,即免费的数学糖尿病模拟器中编译出来的。结果:对于BGL预测,在预测范围(PH) 15分钟的最小输入已显示出改善的结果。实验结果表明,我们的人工神经网络是准确的,自适应的,可以在临床应用。此外,本研究的目标是通过减少对系统的人力投入,使T1D患者的生活更轻松。结论和未来的工作:我们得出结论,前馈在最小的输入下得到更好的结果,而其他方法在多输入下得到更好的结果。在未来,我们打算研究更多的AIDA场景集合,并针对真实的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blood Glucose Level Prediction with Minimal Inputs Using Feedforward Neural Network for Diabetic Type 1 Patients
Introduction: Diabetes mellitus is one of the rapidly increasing diseases throughout the world. Studies reveal that proper management of blood glucose levels can reduce the complications associated with diabetes type 1. Objective: We use only continuous blood glucose data and predicted future blood glucose level using the previous data. Method: In this research, we input Continuous Glucose Monitoring (CGM) data to train a feedforward neural network using window model, to get optimal neural network for each subject in predicting prior blood glucose values. We have investigated virtual CGM data of 10 subjects in order to depict the efficiency of the proposed method and to validate the ANN. These ten case studies have been compiled from AIDA i.e. the freeware mathematical diabetes simulator. Results: For BGL predictions, improved results have been shown for minimal inputs in the prediction horizon (PH) of 15 minutes. Results produced by experimentation reveal that our ANN is accurate, adaptive, and can be implemented in clinics. Moreover, this study targets to make life easier for T1D patients by minimizing human input to the system. Conclusion and Future work: We conclude that feedforward gives better results for minimal inputs while other methods have better results for multiple inputs. In the future, we intend to investigate a larger collection of AIDA scenarios, and for real patients.
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