Conference paper accepted: Recommendations in CDSS using Fuzzy Formal Concept Analysis

Formal concept analysis
Fuzzy logic
Author

P. Cordero, M. Enciso, Domingo López-Rodríguez, A. Mora

Published

1 July 2019

The work Recommendations in CDSS using Fuzzy Formal Concept Analysis has been published in International Conference on Computational and Mathematical Methods in Science and Engineering (CMMSE) 2019.

Abstract:

One of the hot topics in clinical research is hidden knowledge discovery in datasets with a high number of features (variables or attributes). We approach how to provide recommendations in Clinical Decision Support Systems (CDSS) to guide the experts in the diagnostic process. The dataset used for this work is an openly sharing neuroimaging data from 1100 subjects with 162 graded attributes, that is, features with a degree of certainty. The knowledge retrieved from the dataset is shaped like graded implications which will be manipulated using some automated methods based on logic. These methods guide the experts in the diagnostic process establishing a recommendation. In this paper, we work under the Fuzzy Formal Concept Analysis (FCA) framework. The first result is the mining of the graded implications from the dataset using the NEXTCLOSURE for Graded Attributes. The problem of reasoning with these graded implications is approached with the so-called Fuzzy Attribute Simplification Logic. This logic leads to some automatic reasoning methods for implications in data with grades. As the number of graded implications mined from the fuzzy formal context is huge and with a high degree of redundancy, the objective is to obtain a equivalent set without redundancy, by applying the rules of our logic. Finally, we approach the medical diagnosis problem in datasets with graded attributes using FASL to obtain a CDSS system, being able to offer the expert a recommendation about the diagnosis process. We propose to use SLFD attribute closure algorithm as the engine for the recommendation system based on features (symptoms, phenotypes, signs) of the items (diseases) in the dataset.

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