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首页> 外文期刊>Journal of ambient intelligence and smart environments >Modelling, simulation, and optimization of diabetes type II prediction using deep extreme learning machine
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Modelling, simulation, and optimization of diabetes type II prediction using deep extreme learning machine

机译:深度极端学习机的糖尿病II型预测建模,仿真和优化

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摘要

Diabetes is among the most common medical issues which people are facing nowadays. It may cause physical incapacity or even death in some cases. It has two core types, namely type I and type II. Both types are chronic and influence the functions of the human body that regulate blood sugar. In the human body, glucose is the main element that boosts cells. However, insulin is a key that enters the cells to control blood sugar. People with diabetes type I do not have the ability to produce insulin. Whereas people with diabetes type II lack the ability to react to insulin and frequently do not make enough insulin. For adequate analysis of such a fatal disease, techniques with a minimum error rate must be utilized. In this regard, different models of artificial neural network (ANN) have been investigated in the literature to diagnose/predict the condition with a minimum error rate, however, there is a need for improvement. To further advance the accuracy, a deep extreme learning machine (DELM) based prediction model is proposed and investigated in this research. By using the DELM approach, a high level of reliability with a minimum error rate is achieved. The approach shows significant improvement in results compared to previous investigations. It is observed that during the investigation the proposed approach has the highest accuracy rate of 92.8% with 70% of training (9500 samples) and 30% of test and validation (4500 examples). Simulation results validate the prediction effectiveness of the proposed scheme.
机译:糖尿病是人们所面临的最常见的医学问题之一。在某些情况下,它可能会导致物理无能力甚至死亡。它有两个核心类型,即I型和II型。两种类型是慢性的,影响人体调节血糖的功能。在人体中,葡萄糖是促进细胞的主要元素。然而,胰岛素是进入细胞以控制血糖的键。患有糖尿病类型的人我没有能够产生胰岛素的能力。虽然糖尿病类型II缺乏对胰岛素的反应的能力,并且经常不会产生足够的胰岛素。对于对这种致命疾病的充分分析,必须利用最小误差率的技术。在这方面,在文献中研究了不同模型的人工神经网络(ANN)以诊断/预测具有最小误差率的条件,然而,需要改进。为了进一步提前准确性,在本研究中提出并研究了基于深度的极端学习机(DELM)的预测模型。通过使用DELM方法,实现了具有最小错误率的高水平的可靠性。与先前的调查相比,该方法显示出结果的显着改善。观察到,在调查期间,拟议的方法具有92.8%的最高精度率,70%的培训(9500个样本)和30%的测试和验证(4500示例)。仿真结果验证了所提出的方案的预测效率。

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