Foretelling Diabetic Disease Using a Machine Learning Algorithms

Layla Abd-Al-Sattar Sadiq Laylani, Ali Nasret Najdet Coran, Zuhair Shakor Mahmood
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引用次数: 1

Abstract

Continuous monitoring and adjustment of insulin dosages are necessary for diabetics in order to maintain diabetics levels as near to normal levels possible. long-term and short-term complications might result from blood glucose levels that are out of the usual range. If a person's blood glucose levels were predicted automatically, they would be able to take preventative measures before they had a problem. Here, in this study provide a strategy that leverages a general To generate features for a (SVM) model trained on specific patient data sets, we used a physiological model of blood glucose dynamics. Almost a quarter of hypoglycemia incidents may be predicted 30 minutes in advance using a novel algorithm that beats diabetes specialists. There are now only 42 percent false alarms, but the vast majority of them occur in near-hypoglycemia regions, so patients who react to these hypoglycemic warnings would not be harmed by action.
利用机器学习算法预测糖尿病疾病
为了使糖尿病水平尽可能接近正常水平,糖尿病患者需要持续监测和调整胰岛素剂量。长期和短期的并发症可能会导致血糖水平超出正常范围。如果一个人的血糖水平被自动预测,他们就能在出现问题之前采取预防措施。在这里,本研究提供了一种策略,利用一般的方法为特定患者数据集训练的(SVM)模型生成特征,我们使用了血糖动力学的生理模型。使用一种击败糖尿病专家的新算法,近四分之一的低血糖事件可以提前30分钟预测到。现在只有42%的假警报,但其中绝大多数发生在接近低血糖的区域,因此对这些低血糖警告作出反应的患者不会受到行动的伤害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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