Improving Diabetic Patient Care Through Fuzzy Logic: A Comprehensive Approach
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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
Springer, Cham
Abstract
Diabetes mellitus continues to pose a significant global health challenge, requiring creative strategies to improve patient care and treatment. This paper introduces a thorough framework that utilizes fuzzy logic to enhance the care of diabetic patients. Fuzzy logic, known for its capacity to manage imprecise and uncertain data, provides a promising solution for managing the intricate and ever-changing nature of diabetes care. The proposed approach encompasses various aspects of diabetic patient care, including risk assessment, treatment optimization, and lifestyle management. By integrating fuzzy logic with patient-specific data such as demographic information, medical history, and real-time physiological parameters, the framework facilitates personalized and adaptive interventions tailored to individual patient needs. Key components of the framework include fuzzy rule-based systems for decision support, fuzzy clustering techniques for patient stratification, and fuzzy inference systems for treatment adjustment. Furthermore, the framework continuously incorporates feedback mechanisms to refine and improve patient outcomes. Through a combination of simulation studies and real-world applications, this paper demonstrates the efficacy and feasibility of the proposed approach in enhancing diabetic patient care. By providing clinicians with intuitive decision support tools and By providing personalized self-management strategies, this extensive framework based on fuzzy logic has the potential to transform diabetes care, ultimately This leads to enhanced health results and a higher quality of life for patients worldwide.
Description
Applications of Fuzzy Logic in Decision Making and Management Science
Editors:
Subrata Jana, Biswadip Basu Mallik, Anirban Sarkar, Chiranjibe Jana
Keywords
Diabetic patient care, Fuzzy logic, Glucose monitoring, Insulin dosing, Dietary recommendations, Risk stratification
