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Intuitionistic fuzzy set vs. fuzzy set application in medical pattern recognition

机译:直觉模糊集与模糊集在医学模式识别中的应用

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Objective: One of the toughest challenges in medical diagnosis is uncertainty handling. The detection of intestinal bacteria such as Salmonella and Shigella which cause typhoid fever and dysentery, respectively, is one such challenging problem for microbiologists. They detect the bacteria by the comparison with predefined classes to find the most similar one. Consequently, we observe uncertainty in determining the similarity degrees, and therefore, in the bacteria classification. In this paper, we take an intelligent approach towards the bacteria classification problem by using five similarity measures of fuzzy sets (FSs) and intuitionistic fuzzy sets (IFSs) to examine their capabilities in encountering uncertainty in the medical pattern recognition. Methods: FSs and IFSs are two strong frameworks for uncertainty handling. The membership degree in FSs and both membership and non-membership degrees in IFSs are the operators that these frameworks use to represent the degree of which a member of the universe of discourse belongs to a subset of it. In this paper, the similarity measures, which both frameworks provide are used, so as the intestinal bacteria are detected and classified through uncertainty quantification in feature vectors. Also, the experimental results of using the measures are illustrated and compared. Results: We obtained 263 unknown bacteria from microbiology section of Resalat laboratory in Tehran to examine the similarity measures in practice. Finally, the detection rates of the measures were calculated between which IFS Hausdorf and Mitchel similarity measures scored the best results with 95.27% and 94.48% detection rates, respectively. On the other hand, FS Euclidean distance yielded only 85% detection rate. Conclusions: Our investigation shows that both frameworks have powerful capabilities to cope with the uncertainty in the medical pattern recognition problems. But, IFSs yield better detection rate as a result of more accurate modeling which is involved with incurring more computational cost. Our research also shows that among different IFS similarity measures, IFS Hausdorf and Mitchel ones score the best results.
机译:目的:医学诊断中最困难的挑战之一是不确定性处理。对于微生物学家来说,分别检测引起伤寒和痢疾的肠细菌如沙门氏菌和志贺氏菌是一种具有挑战性的问题。他们通过与预定类别的比较来检测细菌,以找到最相似的细菌。因此,我们在确定相似度以及细菌分类时观察到不确定性。在本文中,我们通过使用模糊集(FSs)和直觉模糊集(IFSs)的五个相似性度量来检查细菌在医学模式识别中遇到不确定性的能力,从而针对细菌分类问题采取了一种智能方法。方法:FS和IFS是不确定性处理的两个强大框架。 FS中的隶属度以及IFS中的隶属度和非隶属度都是这些框架用来表示话语范围中的成员属于其子集的程度的运算符。在本文中,使用了两个框架提供的相似性度量,以便通过特征向量中的不确定性量化来检测和分类肠道细菌。此外,说明并比较了使用这些措施的实验结果。结果:我们从德黑兰Resalat实验室的微生物学科获得了263种未知细菌,以检验实际中的相似性措施。最终,计算出这些措施的检出率,IFS Hausdorf和Mitchel相似性措施之间的检出率最高,分别为95.27%和94.48%。另一方面,FS欧几里得距离仅产生85%的检测率。结论:我们的调查表明,两个框架都具有强大的功能来应对医学模式识别问题中的不确定性。但是,由于更精确的建模会导致更高的计算成本,因此IFS可以产生更好的检测率。我们的研究还表明,在不同的IFS相似性度量中,IFS Hausdorf和Mitchel得分最高。

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