Abstract

Today, patients generate a massive amount of health records through electronic health records (EHRs). Extracting usable knowledge of patients’ pathological conditions or diagnoses is essential for the reasoning process in rule-based systems to support the process of clinical decision making. Association rule mining is capable of discovering hidden interesting knowledge and relations among attributes in datasets, including medical datasets, yet is more likely to produce many anomalous rules (i.e., subsumption and circular redundancy) depends on the predefined threshold, which lead to logical errors and affects the reasoning process of rule-based systems. Therefore, the challenge is to develop a method to extract concise rule bases and improve the coverage of non-anomalous rule bases, i.e., one that not only reduces anomalous rules but also finds the most comprehensive rules from the dataset. In this study, we generated non-anomalous association rules (NAARs) from a cerebrovascular examination dataset through several steps: obtaining a frequent closed itemset, generating association rule bases, subsumption checking, and circularity checking, to fit production rules (PRs) in rule-based systems. Toward the end, the rule inferencing part was performed by PROLOG to obtain possible conclusions toward a specific query given by a user. The experiment shows that compared with the traditional method, the proposed method eliminated a significant number of anomalous rules while improving computational time.

Highlights

  • Gathering from datadata using intelligent data analysesGathering knowledge knowledgedirectly directly from using intelligent data has garnered increasing interest, especially in medical domains, due to their complexity and the large analyses has garnered increasing interest, especially in medical domains, due to their complexity and amounts data availableThe growth of observational data, due todata, the widespread use of electronic the large of amounts of data[1].available [1]

  • Verification of the knowledge was computed inside the proposed method to extract a set of non-anomalous association rules (NAARs) by detecting redundancies or anomalies among the generated rules and eliminate them in accordance with certainty factor measurements to ensure the reliability of the production rules (PRs)

  • This study presents concise and anomalous-free of association rules, which can more effectively discover the correlation between pathological conditions of a cerebrovascular examination of a patients’

Read more

Summary

Introduction

Gathering from datadata (data-driven knowledge) using intelligent data analysesGathering knowledge knowledgedirectly directly from using intelligent data has garnered increasing interest, especially in medical domains, due to their complexity and the large analyses has garnered increasing interest, especially in medical domains, due to their complexity and amounts data availableThe growth of observational data, due todata, the widespread use of electronic the large of amounts of data[1].available [1]. Gathering knowledge knowledgedirectly directly from using intelligent data has garnered increasing interest, especially in medical domains, due to their complexity and the large analyses has garnered increasing interest, especially in medical domains, due to their complexity and amounts data available. The growth of observational data, due todata, the widespread use of electronic the large of amounts of data[1]. The growth of observational due to the widespread use health records (EHRs), generates massive amount of medical storage. Extracting of electronic health records (EHRs), generates massive amountdata of medical data storage. Is supporting theclinical process of clinical decision making andrelated knowledge relatedpathological to patients’ conditions pathological criticalisfor research medical [2,3,4,5,6,7,8]. Association mining is common research objectives that generally generates a pattern of disease based on patients’

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call