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Intelligent Fuzzy System to Predict the Wisconsin Breast Cancer Dataset.

Yamid Fabián Hernández-JulioLeonardo Antonio Díaz-PertuzMartha Janeth Prieto-GuevaraMauricio Andrés Barrios-BarriosWilson Nieto-Bernal
Published in: International journal of environmental research and public health (2023)
Decision Support Systems (DSSs) are solutions that serve decision-makers in their decision-making process. For the development of these intelligent systems, two primary components are needed: the knowledge database and the knowledge rule base. The objective of this research work was to implement and validate diverse clinical decision support systems supported by Mamdani-type fuzzy set theory using clustering and dynamic tables. The outcomes were evaluated with other works obtained from the literature to validate the suggested fuzzy systems for categorizing the Wisconsin breast cancer dataset. The fuzzy Inference Systems worked with different input features, according to the studies obtained from the literature. The outcomes confirm that most performance' metrics in several cases were greater than the achieved results from the literature for the output variable for the different Fuzzy Inference Systems-FIS, demonstrating superior precision.
Keyphrases
  • systematic review
  • decision making
  • healthcare
  • clinical decision support
  • neural network
  • type diabetes
  • young adults
  • skeletal muscle
  • adipose tissue
  • electronic health record
  • weight loss