Publication | Open Access
Fuzzy inference system with interpretable fuzzy rules: Advancing explainable artificial intelligence for disease diagnosis—A comprehensive review
57
Citations
36
References
2024
Year
Artificial IntelligenceFuzzy SystemsEngineeringIntelligent DiagnosticsInterpretable Artificial IntelligenceDiagnosisBiomedical Artificial IntelligenceData ScienceFuzzy Inference SystemMedical Expert SystemInterpretable Fuzzy RulesBiostatisticsAi HealthcareDisease DiagnosisFuzzy LogicFuzzy RulesDecision Support SystemsInterpretable AiClinical DataEpidemiologyFuzzy Inference SystemsFuzzy Expert SystemPatient SafetyMedicineClinical Decision Support SystemHealth InformaticsEmergency Medicine
Interpretable artificial intelligence (AI), also known as explainable AI, is indispensable in establishing trustable AI for bench-to-bedside translation, with substantial implications for human well-being. However, the majority of existing research in this area has centered on designing complex and sophisticated methods, regardless of their interpretability. Consequently, the main prerequisite for implementing trustworthy AI in medical domains has not been met. Scientists have developed various explanation methods for interpretable AI. Among these methods, fuzzy rules embedded in a fuzzy inference system (FIS) have emerged as a novel and powerful tool to bridge the communication gap between humans and advanced AI machines. However, there have been few reviews of the use of FISs in medical diagnosis. In addition, the application of fuzzy rules to different kinds of multimodal medical data has received insufficient attention, despite the potential use of fuzzy rules in designing appropriate methodologies for available datasets. This review provides a fundamental understanding of interpretability and fuzzy rules, conducts comparative analyses of the use of fuzzy rules and other explanation methods in handling three major types of multimodal data (i.e., sequence signals, medical images, and tabular data), and offers insights into appropriate fuzzy rule application scenarios and recommendations for future research.
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