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Managing Boundary Uncertainty in Diagnosing the Patients of Rural Area Using Fuzzy and Rough Set

机译:在使用模糊和粗糙集中诊断农村地区患者时管理边界不确定性

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People of rural India often suffer from acute health conditions like diarrhea, flu, lung congestion, and anemia, but they are not receiving treatment even at primary level due to scarcity of doctors and health infrastructure in remote villages. Health workers are involved in diagnosing the patients based on the symptoms and physiological signs. However, due to inadequate domain knowledge, lack of expertise, and error in measuring the health data, uncertainty creeps in the decision space, resulting many false cases in predicting the diseases. The paper proposes an uncertainty management technique using fuzzy and rough set theory to diagnose the patients with minimum false-positive and false-negative cases. We use fuzzy variables with proper semantic to represent the vagueness of input data, appearing due to measurement error. We derive initial degree of belonging of each patient in two different disease class labels (YES/NO) using the fuzzified input data. Next, we apply rough set theory to manage uncertainty in diagnosing the diseases by learning approximations of the decision boundary between the two class labels. The optimum lower and upper approximation membership functions for each disease class label have been obtained using Non-dominated Sorting Genetic Algorithm-II (NSGA-II). Finally, using the proposed disease_similarity_factor, new patients are diagnosed precisely with 98% accuracy and minimum false cases.
机译:印度农村地区的人们经常患有急性健康状况,例如腹泻,流感,肺部充血和贫血,但由于偏远村庄的医生和健康基础设施的稀缺,他们即使在初级阶段也没有接受治疗。卫生工作者正在根据症状和生理体征参与诊断患者。但是,由于领域知识不足,缺乏专业知识和衡量健康数据的错误,决策空间中的不确定性蔓延,导致许多错误病例预测疾病。本文提出了一种使用模糊和粗糙集理论的不确定性管理技术,以诊断患有最小阳性和假阴性病例的患者。我们使用具有适当语义的模糊变量来表示输入数据的模糊性,这是由于测量误差而出现的。我们使用模糊输入数据来得出每个患者在两个不同的疾病类标签中的初始归属度(是/否)。接下来,我们将粗糙集理论应用于通过学习两个类标签之间决策边界的近似值来管理疾病的不确定性。使用非主导分类遗传算法II(NSGA-II)获得了每个疾病类标签的最佳下层和上部近似构件功能。最后,使用拟议的疾病_SIMIRARITY_FACTOR,将新患者精确地诊断出98%的精度和最低的错误病例。

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