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Showing 2 results for Fuzzy Logic

Fatemeh Ahouz, Amin Golabpour, Abdolhosseain Shakibaeenia,
Volume 8, Issue 2 (7-2022)
Abstract

Objective Building clinical decision support models to automatically extract knowledge from data helps physicians in early diagnosis of disease. Interpretability of the diagnostic rules of these models for understanding how they make decisions and increasing confidence in their output is a key indicator in determining their efficacy.
Methods In this retrospective study, an automated hybrid rule extraction model is proposed for type 2 diabetes. In order to evaluate the model, the PIMA Diabetes dataset including 768 records and 9 variables was used. After removing the missing and outlier data in the data preprocessing stage, a proposed fuzzy-genetic hybrid model was implemented using MATLAB software to extract the rules. A self-organizing chromosomal structure was used to eliminate the complexity of setting genetic algorithm operators and facilitate the re-implementation of the model in other applications.
Results The accuracy of the proposed model on the PIMA dataset was 79.05%. This accuracy was obtained by two fuzzy rules, each of which contained only two independent variables. In addition, two single diagnostic rules for diabetic and non-diabetic individuals were presented with accuracy of 70.83% and 81.48%, respectively. The number of pregnancies, body mass index, diastolic blood pressure, diabetes pedigree function, plasma glucose concentration, and triceps skinfold thickness were the most effective factors in having or not having diabetes in the extracted rules.
Conclusion The proposed model with high accuracy and interpretability is quite suitable in producing an accurate and highly interpretable set of rules as well as single rules for diagnosing diabetes or absence of diabetes. Due to its self-organizing ability, it can also be used for other binary classification purposes.

Alireza Barati, Majid Mirmohammadkhani, Samaneh Ghods, Esmaeil Moshiri,
Volume 9, Issue 4 (2-2024)
Abstract

Objective The healthcare referral system is one of the main factors for improving the health conditions, especially in developing countries. The present study aims to investigate the main factors for the improvement of the family physician referral system in Bojnord, Iran.
Methods This is an analytical (quantitative-qualitative) survey that was conducted in 2021. In the qualitative phase, the related components were first extracted through interviews with a panel of experts (n=24). Then, a questionnaire was created based on the extracted items (n=30). In the quantitative phase, according to the experts’ opinions, the items were weighted using the fuzzy hierarchical analysis, where higher values indicate higher weight. The reliability of the questionnaire was evaluated using Cronbach’s α coefficient in SPSS software. Also, AHP software was used to perform the fuzzy hierarchy analysis.
Results Twenty components were identified by experts, which were divided into three categories including organizational/managerial requirements, human resources management requirements, and information technology requirements, with the weight values of 0.486, 0.213 and 0.301, respectively, indicating that organizational/managerial requirements were more important. Among the organizational/managerial requirements, the component of “design and implementation of service quality improvement cycles in the referral system” had the highest weight (0.159). Among the human resources management requirements, the component of empowering human resources had the highest weight (0.412). Among the information technology requirements, improvement of the information technology infrastructure had the highest weight (0.372).
Conclusion The use of clear procedures and regulations, the digitalization of the referral system, and the staff training are among the very important factors that can lead to improving the referral system in Bojnord City.


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