Hybrid approach of type-2 fuzzy inference system and PSO in asthma disease

Tarun Kumar , Anirudh Kumar Bhargava , M.K. Sharma , Nitesh Dhiman , Neha Nain
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引用次数: 0

Abstract

This research work presents a hybrid approach combining a type-2 fuzzy inference system with particle swarm optimization (PSO) to develop a type-2 fuzzy optimized inference system, specifically tailored for asthma patient data. Addressing the inherent uncertainty in medical diagnostics, this model enhances traditional type-1 fuzzy logic by incorporating ambiguity into linguistic variables and utilizing type-2 fuzzy if-then rules. The system is trained to minimize diagnostic error in asthma disease identification. Applied to a dataset comprising eight medical entities from asthma patients, the model demonstrates substantial accuracy improvements. Numerical computations validate the system, showing a decrease in error rate from 1.445 to 0.03, indicating a significant enhancement in diagnostic precision. These results underscore the potential of our model in medical diagnostic problems, providing a novel and effective tool for tackling the complexities of asthma diagnosis.

哮喘病中的 2 型模糊推理系统和 PSO 混合方法
这项研究工作提出了一种混合方法,将第二类模糊推理系统与粒子群优化(PSO)相结合,开发出一种专门针对哮喘患者数据的第二类模糊优化推理系统。针对医疗诊断中固有的不确定性,该模型通过将模糊性纳入语言变量并利用第二类模糊 "如果-那么 "规则,增强了传统的第一类模糊逻辑。该系统经过训练,能最大限度地减少哮喘疾病识别中的诊断错误。该模型应用于由哮喘患者的八个医疗实体组成的数据集,其准确性有了大幅提高。数值计算验证了该系统,显示错误率从 1.445 降至 0.03,表明诊断精确度显著提高。这些结果凸显了我们的模型在医疗诊断问题上的潜力,为解决复杂的哮喘诊断问题提供了一种新颖而有效的工具。
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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CiteScore
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