Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System

Due to importance of measuring the degree of resemblance, the similarity measure is widely adopted in various areas of the information systems (e.g., medical informatics and information retrieval) and in several applications like medical diagnostic, image processing, and pattern recognition. However...

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Main Authors: Malek Alksasbeh, Mohammad Al-Kaseasbeh
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9303353/
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spelling doaj-d9dc9d12904d4f9e9876ad07ee1271112021-03-30T04:27:36ZengIEEEIEEE Access2169-35362020-01-01822868522869210.1109/ACCESS.2020.30464569303353Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction SystemMalek Alksasbeh0https://orcid.org/0000-0001-9350-4459Mohammad Al-Kaseasbeh1https://orcid.org/0000-0001-5805-7817Faculty of Information Technology, Al-Hussein Bin Talal University, Ma’an, JordanDepartment of Mathematics, Jerash University, Jerash, JordanDue to importance of measuring the degree of resemblance, the similarity measure is widely adopted in various areas of the information systems (e.g., medical informatics and information retrieval) and in several applications like medical diagnostic, image processing, and pattern recognition. However, most of the existing similarity measures focus mainly on the degree of similarity without consulting expert(s) about the results. In this paper, an efficient tool for measuring similarity and agreement of objects that embeds experts' opinions is proposed to assess similarity among features and agreement of opinions among experts. To obtain such robust measuring tool, three construction steps were followed. Firstly, adapting soft expert set as a general structure that consists of four components: objects, attributes, experts, and experts' opinions. Secondly, representing the soft expert set, without losing stored information, in such a way as to fit the proposed similarity-agreement measure and make it simpler and more meaningful than the similar existing measures. Thirdly, axiomatizing the similarity-agreement measure for the case of two experts to simplify the model. Further, a diagnostic prediction application and its algorithm is discussed in this context, along with analysis of the experimental results. Analysis of performance of the proposed similarity-agreement measure revealed that it has high accuracy, sensitivity, and value of the F-measure and that it has better performance than existing state-of-the-art tools.https://ieeexplore.ieee.org/document/9303353/Agreement measurediagnostic predictioninformation systemsKappa functionsimilarity measuresoft expert set
collection DOAJ
language English
format Article
sources DOAJ
author Malek Alksasbeh
Mohammad Al-Kaseasbeh
spellingShingle Malek Alksasbeh
Mohammad Al-Kaseasbeh
Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System
IEEE Access
Agreement measure
diagnostic prediction
information systems
Kappa function
similarity measure
soft expert set
author_facet Malek Alksasbeh
Mohammad Al-Kaseasbeh
author_sort Malek Alksasbeh
title Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System
title_short Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System
title_full Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System
title_fullStr Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System
title_full_unstemmed Similarity and Agreement Measures and Their Application in Medical Diagnostic Prediction System
title_sort similarity and agreement measures and their application in medical diagnostic prediction system
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Due to importance of measuring the degree of resemblance, the similarity measure is widely adopted in various areas of the information systems (e.g., medical informatics and information retrieval) and in several applications like medical diagnostic, image processing, and pattern recognition. However, most of the existing similarity measures focus mainly on the degree of similarity without consulting expert(s) about the results. In this paper, an efficient tool for measuring similarity and agreement of objects that embeds experts' opinions is proposed to assess similarity among features and agreement of opinions among experts. To obtain such robust measuring tool, three construction steps were followed. Firstly, adapting soft expert set as a general structure that consists of four components: objects, attributes, experts, and experts' opinions. Secondly, representing the soft expert set, without losing stored information, in such a way as to fit the proposed similarity-agreement measure and make it simpler and more meaningful than the similar existing measures. Thirdly, axiomatizing the similarity-agreement measure for the case of two experts to simplify the model. Further, a diagnostic prediction application and its algorithm is discussed in this context, along with analysis of the experimental results. Analysis of performance of the proposed similarity-agreement measure revealed that it has high accuracy, sensitivity, and value of the F-measure and that it has better performance than existing state-of-the-art tools.
topic Agreement measure
diagnostic prediction
information systems
Kappa function
similarity measure
soft expert set
url https://ieeexplore.ieee.org/document/9303353/
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