首页> 外文期刊>International Journal of Computational Intelligence and Applications >NON-INVASIVE NOCTURNAL HYPOGLYCEMIA DETECTION FOR INSULIN-DEPENDENT DIABETES MELLITUS USING GENETIC FUZZY LOGIC METHOD
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NON-INVASIVE NOCTURNAL HYPOGLYCEMIA DETECTION FOR INSULIN-DEPENDENT DIABETES MELLITUS USING GENETIC FUZZY LOGIC METHOD

机译:遗传模糊逻辑方法用于非胰岛素依赖型糖尿病的夜间无创低血糖检测

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摘要

Hypoglycemia, or low blood glucose, is the most common complication experienced by Type 1 diabetes mellitus (T1DM) patients. It is dangerous and can result in unconsciousness, seizures and even death. The most common physiological parameter to be effected from hypoglycemic reaction are heart rate (HR) and correct QT interval (QTc) of the electrocardiogram (ECG) signal. Based on physiological parameters, a genetic algorithm based fuzzy reasoning model is developed to recognize the presence of hypoglycemia. To optimize the parameters of the fuzzy model in the membership functions and fuzzy rules, a genetic algorithm is used. A validation strategy based adjustable fitness is introduced in order to prevent the phenomenon of overtraining (over-fitting). For this study, 15 children with 569 sampling data points with Type 1 diabetes volunteered for an overnight study. The effectiveness of the proposed algorithm is found to be satisfactory by giving better sensitivity and specificity compared with other existing methods for hypoglycemia detection.
机译:低血糖或低血糖是1型糖尿病(T1DM)患者最常见的并发症。这是危险的,可能导致昏迷,癫痫发作甚至死亡。降血糖反应最常见的生理参数是心率(HR)和心电图(ECG)信号的正确QT间隔(QTc)。基于生理参数,开发了一种基于遗传算法的模糊推理模型来识别低血糖症的存在。为了优化隶属函数和模糊规则中模糊模型的参数,使用了遗传算法。为了防止过度训练(过度拟合)的现象,引入了基于可调整适应性的验证策略。在本研究中,有15个儿童的569个采样数据点患有1型糖尿病,他们自愿参加了一项过夜研究。与其他现有的低血糖检测方法相比,通过提供更好的灵敏度和特异性,发现该算法的有效性令人满意。

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