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Evolution of fuzzy logic in medical applications: methods, trends and clinical applications

  • Massimo Salvi*
  • , Sengul Dogan
  • , Mahesh Anil Inamdar*
  • , U. Raghavendra
  • , Anjan Gudigar
  • , Francesco Nitti
  • , Andrea Ferraris
  • , Turker Tuncer
  • , Prabal Datta Barua
  • , Filippo Molinari
  • , U. Rajendra Acharya
  • *Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

Abstract

BackgroundFuzzy logic techniques have gained significant prominence in healthcare, primarily due to their ability to address and manage the inherent imprecision and uncertainty in healthcare data analysis. We conducted a comprehensive review investigating how fuzzy techniques have developed and been applied in healthcare between 2017 and 2025.MethodsWe conducted a systematic literature review following PRISMA guidelines, analyzing 91 papers from major medical and engineering databases. Our analysis focused on three distinct methodological streams: classical fuzzy systems, combined fuzzy-machine learning approaches, and emerging fuzzy-enhanced deep learning frameworks. We evaluated each paper’s methodology, implementation details, and clinical relevance.ResultsThe distribution of research approaches showed a balanced landscape across methodologies, with traditional fuzzy systems comprising 30.1%, hybrid approaches 34.4%, and fuzzy-deep learning implementations 33.3% of studies. Medical imaging dominated the application domains, led by MRI studies (36.3%) and CT applications (12.1%). Biosignal analysis also showed strong representation, particularly in EEG (22%) and ECG (7.7%) applications. Performance analysis revealed that both deep learning and conventional feature engineering methods achieved comparable accuracy rates of approximately 96.5%, with some variations in consistency across different applications.ConclusionsThis research area has undergone significant evolution, particularly since 2023, with an increased emphasis on incorporating fuzzy techniques into deep learning frameworks. This transition shows that fuzzy approaches, originally designed as standalone solutions, are now becoming critical components of modern healthcare AI systems, providing unique benefits in dealing with medical data uncertainty.

Original languageEnglish
Article number132344
JournalExpert Systems with Applications
Volume321
DOIs
Publication statusPublished - 25-07-2026

All Science Journal Classification (ASJC) codes

  • General Engineering
  • Computer Science Applications
  • Artificial Intelligence

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