Friday, 24 September 2021

A Decision Support System for Tuberculosis Diagnosability

Navneet Walia1, Harsukpreet Singh2, Sharad Kumar Tiwari3 and Anurag Sharma4

1, 2, 4 Department of Electronics and Communication Engineering, CT Institute of Technology and Research (PTU), Jalandhar

3Department of Electrical and Instrumentation, Thapar University, Patiala

ABSTRACT

In order to cope with real-world problems more effectively, we tend to design a decision support system for tuberculosis bacterium class identification. In this paper, we are concerned to propose a fuzzy diagnosability approach, which takes value between {0, 1} and based on observability of events, we formalized the construction of diagnoses that are used to perform diagnosis. In particular, we present a framework of the fuzzy expert system; discuss the suitability of artificial intelligence as a novel soft paradigm and reviews work from the literature for the development of a medical diagnostic system. The newly proposed approach allows us to deal with problems of diagnosability for both crisp and fuzzy value of input data. Accuracy analysis of designed decision support system based on demographic data was done by comparing expert knowledge and system generated response. This basic emblematic approach using fuzzy inference system is presented that describes a technique to forecast the existence of bacterium and provides support platform to pulmonary researchers in identifying the ailment effectively.

KEYWORDS

Expert system, fuzzy diagnosability, rulebased method, MATLAB, Tuberculosis (TB).

Original Source URL: https://airccse.org/journal/ijsc/papers/6315ijsc01.pdf

https://airccse.org/journal/ijsc/current2015.html




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