Early prediction of diabetes diagnosis using hybrid classification techniques

L. Srinivasan, Reshma Verma, Mysore Dakshinamurthy Nandeesh
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引用次数: 2

Abstract

Diabetes can be mentioned as one of the most lethal and constant sicknesses that may cause an arise in the glucose levels. Design and development of performance efficient diagnosis tool is important and plays a vigorous role in initial prediction of disease and help medical experts to start with suitable treatment or medication. The insulin produced by pancreases in the subject’s body will be affected leading to several dysfunctionalities to various body organs such as kidney, heart eyes and nervous system with their normal functionalities. Hence, preliminary stage detection with proper care and medication could reduce the risk of these problems. In the area of medicine to discover patient’s data as well as to attain a predictive model or a set of rules, classification techniques have been continuously used. This study helped diagnose diabetes by selecting three important artificial intelligence techniques namely the optimal decision tree algorithm model, Type-2 fuzzy expert system and adaptive neuro fuzzy inference system which is modified. In the present research work, a hybrid model is proposed in order to improve the classification prediction and accuracy. The Pima Indian diabetes dataset from machine learning repository dataset was used to carry out validation and predication of the model accuracy.
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利用混合分类技术早期预测糖尿病诊断
糖尿病被认为是最致命的疾病之一,它可能导致血糖水平升高。高性能高效诊断工具的设计和开发对于疾病的早期预测和帮助医学专家开始适当的治疗或药物治疗具有重要的作用。受试者体内胰腺产生的胰岛素会受到影响,导致正常功能的机体各器官如肾、心、眼、神经系统等出现多种功能障碍。因此,通过适当的护理和药物治疗进行初步检测可以减少这些问题的风险。在医学领域,为了发现病人的数据以及获得预测模型或一套规则,分类技术一直在使用。本研究选择了三种重要的人工智能技术,即最优决策树算法模型、2型模糊专家系统和改进的自适应神经模糊推理系统来帮助诊断糖尿病。为了提高分类预测精度,本文提出了一种混合模型。使用机器学习存储库数据集中的皮马印第安人糖尿病数据集对模型的准确性进行验证和预测。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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