Department of Electrical and Information Engineering, Shaoxing University, 508 Huancheng West Road, Shaoxing, Zhejiang 312000, PR China.
Shaoxing Second Hospital, 123 Yanan Road, Shaoxing, Zhejiang 312000, PR China.
Comput Methods Programs Biomed. 2016 Jan;123:142-9. doi: 10.1016/j.cmpb.2015.10.002. Epub 2015 Oct 14.
Because of the increased volume of information available to physicians from advanced medical technology, the obtained information of each symptom with respect to a disease may contain truth, falsity and indeterminacy information. Since a single-valued neutrosophic set (SVNS) consists of the three terms like the truth-membership, indeterminacy-membership and falsity-membership functions, it is very suitable for representing indeterminate and inconsistent information. Then, similarity measure plays an important role in pattern recognition and medical diagnosis. However, existing medical diagnosis methods can only handle the single period medical diagnosis problem, but cannot deal with the multi-period medical diagnosis problems with neutrosophic information. Hence, the purpose of this paper was to propose similarity measures between SVNSs based on tangent function and a multi-period medical diagnosis method based on the similarity measure and the weighted aggregation of multi-period information to solve multi-period medical diagnosis problems with single-valued neutrosophic information. Then, we compared the tangent similarity measures of SVNSs with existing similarity measures of SVNSs by a numerical example about pattern recognitions to indicate the effectiveness and rationality of the proposed similarity measures. In the multi-period medical diagnosis method, we can find a proper diagnosis for a patient by the proposed similarity measure between the symptoms and the considered diseases represented by SVNSs and the weighted aggregation of multi-period information. Then, a multi-period medical diagnosis example was presented to demonstrate the application of the proposed diagnosis method and to indicate the effectiveness of the proposed diagnosis method by the comparative analysis. The diagnosis results showed that the developed multi-period medical diagnosis method can help doctors make a proper diagnosis by the comprehensive information of multi-periods.
由于先进的医疗技术为医生提供了更多的信息,每个症状与疾病相关的获得的信息可能包含真理、谬误和不确定性信息。由于单个值 neutrosophic 集 (SVNS) 由真理成员函数、不确定性成员函数和谬误成员函数这三个术语组成,因此它非常适合表示不确定和不一致的信息。然后,相似性度量在模式识别和医学诊断中起着重要作用。然而,现有的医学诊断方法只能处理单期医学诊断问题,而不能处理具有 neutrosophic 信息的多期医学诊断问题。因此,本文的目的是提出基于正切函数的 SVNS 之间的相似性度量以及基于相似性度量和多期信息加权聚合的多期医学诊断方法,以解决具有单值 neutrosophic 信息的多期医学诊断问题。然后,我们通过一个关于模式识别的数值实例,将 SVNS 的正切相似性度量与现有的 SVNS 相似性度量进行比较,以表明所提出的相似性度量的有效性和合理性。在多期医学诊断方法中,我们可以通过所提出的 SVNS 之间的症状与所考虑疾病之间的相似性度量以及多期信息的加权聚合,为患者找到合适的诊断。然后,提出了一个多期医学诊断实例,以演示所提出的诊断方法的应用,并通过对比分析表明所提出的诊断方法的有效性。诊断结果表明,所开发的多期医学诊断方法可以帮助医生通过多期的综合信息做出适当的诊断。