A DECISION SUPPORT SYSTEM FOR TUBERCULOSIS DIAGNOSABILITY

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.

[1]  Qeethara Al-Shayea Artificial Neural Networks in Medical Diagnosis , 2024, International Journal of Research Publication and Reviews.

[2]  Navneet Walia,et al.  ANFIS: Adaptive Neuro-Fuzzy Inference System- A Survey , 2015 .

[3]  Elpiniki I. Papageorgiou,et al.  A fuzzy cognitive map based tool for prediction of infectious diseases , 2009, 2009 IEEE International Conference on Fuzzy Systems.

[4]  Kavita Burse,et al.  A Soft Computing Genetic-Neuro fuzzy Approach for Data Mining and Its Application to Medical Diagnosis , 2013 .

[5]  Ahmet Yardimci,et al.  Soft computing in medicine , 2009, Appl. Soft Comput..

[6]  Kim Le Automated detection of early lung cancer and tuberculosis based on X-ray image analysis , 2006 .

[7]  Rahil Hosseini,et al.  A F UZZY INFERENCE SYSTEM FOR ASSESSMENT OF THE SEVERITY OF THE PEPTIC ULCERS , 2014 .

[8]  Yaduvir Singh,et al.  Genetic Algorithms: Concepts, Design for Optimization of Process Controllers , 2011, Comput. Inf. Sci..

[9]  A Fuzzy Logic Approach to Decision Support in Medicine , 2002 .

[10]  Nithya Bharathan A Survey on the Applications of Fuzzy Logic in Medical Diagnosis , 2013 .

[11]  Nidhi Mishra,et al.  Fuzzy expert system and its utility in various field , 2014 .

[12]  Yaduvir Singh,et al.  SOFT COMPUTING TECHNIQUES FOR PROCESS CONTROL APPLICATIONS , 2011 .

[13]  Oladele TinukeO,et al.  Dental Expert System , 2015 .

[14]  Amrit,et al.  Comparison of Mamdani-Type and Sugeno-Type Fuzzy Inference Systems for Air Conditioning System , 2012 .

[15]  K. V. Girija,et al.  Hybrid Learning For Adaptive Neuro Fuzzy Inference System , 2013 .

[16]  Klaus-Peter Adlassnig,et al.  Fuzzy Set Theory in Medical Diagnosis , 1986, IEEE Transactions on Systems, Man, and Cybernetics.

[17]  Neeraja Sharma,et al.  A Spectrum of Soft Computing Model for Medical Diagnosis , 2014 .

[18]  Gabriel Cristóbal,et al.  Identification of tuberculosis bacteria based on shape and color , 2004, Real Time Imaging.