Bio-Inspired PSO for Improving Neural Based Diabetes Prediction System

Q3 Decision Sciences
Mohammad Zubair Khan;R. Mangayarkarasi;C. Vanmathi;M. Angulakshmi
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引用次数: 0

Abstract

A high level of glucose in the blood over a long period creates diabetes disease. Undiagnosed diabetes may trigger other complications such as cardiovascular disease, nerve damage, renal failure, and so on. There are many factors age, blood pressure, food habits, lifestyle changes are some of the reasons for diabetes. With increasing cases of diabetes in the smart Internet world, there is a need for an automated prediction system to facilitate the patients, to get know, whether they are affected by the disease or not. There are many diabetes prediction software that is already in use, still, the accurateness of a diabetes prediction is not complete. This paper presents a robust framework (PSO-NNDP), employs a novel hybrid feature selector to improvise the neural-based diabetes prediction system. The novel hybrid feature selector presented in this paper comprises the merits of the correlation coefficient, F-score, and particle swarm optimization methods to influence the feature selection process. The reliability of the proposed framework has been experimented on the benchmarking dataset. By establishing the clear steps, for the replacement of missing values, removal of outliers, the proposed framework obtains 99.5% accuracy. Moreover, the experimented machine learning models also show a great improvement upon the usage of the proposed feature selector.
基于生物启发的PSO算法改进基于神经网络的糖尿病预测系统
血液中长期高水平的葡萄糖会导致糖尿病。未确诊的糖尿病可能会引发其他并发症,如心血管疾病、神经损伤、肾衰竭等。年龄、血压、饮食习惯、生活方式的改变是导致糖尿病的许多因素。随着智能互联网世界中糖尿病病例的增加,需要一个自动预测系统来帮助患者了解他们是否受到疾病的影响。有许多糖尿病预测软件已经在使用,但糖尿病预测的准确性并不完全。本文提出了一个鲁棒框架(PSO-NNDP),采用一种新的混合特征选择器来改进基于神经的糖尿病预测系统。本文提出的新的混合特征选择器包括相关系数、F分数和粒子群优化方法的优点,以影响特征选择过程。所提出的框架的可靠性已经在基准数据集上进行了实验。通过建立清晰的步骤,对于缺失值的替换、异常值的去除,所提出的框架获得了99.5%的准确率。此外,实验的机器学习模型也显示出对所提出的特征选择器的使用有很大的改进。
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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来源期刊
Journal of ICT Standardization
Journal of ICT Standardization Computer Science-Information Systems
CiteScore
2.20
自引率
0.00%
发文量
18
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