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Neural Fuzzy Hybrid Rule-Based Inference System with Test Cases for Prediction of Heart Attack Probability

Author

Listed:
  • Rahul Kumar Jha
  • Santosh Kumar Henge
  • Sanjeev Kumar Mandal
  • Amit Sharma
  • Supriya Sharma
  • Ashok Sharma
  • Afework Aemro Berhanu
  • Vijay Kumar

Abstract

Heart disease has reached to the number one position in last decade in terms of mortality rate, and more wretchedly, heart attack has affected life in 80% of the cases. Cardiac arrest is an incurable incongruity that requires special treatment and cure. It has been a key research area for many years, and the number of researchers across the globe is devoted toward finding the optimal solution to avoid the ill-effect of this disease. Along with predicting heart disease, if focus moves towards prevention of heart attack as well, then this could result in major life saver area for masses. This research work is fully devoted toward finding out the probability of heart attack so that people can take preventive measure before it hit the wall. This research proposed the neural fuzzy inference system (NFIS) to represent the training data formed from the n-dimensions of functions. The NFIS consists of error computing module to improve the learning instructions when the errors have been measured, initially the membership functions are defined, and the parameters of membership functions are activated and learnt through when needed for an operation. The proposed methodology has experimented with sample test cases on Cleveland heart disease dataset from University of California Irvine (UCI) repository with the integration of supporting dependable and nondependable parameters, causing-factors, and data-matrices. This research has integration more than 13000 fuzzification rules to generate best decision-making, normalization process, planting techniques to create the feasibility to compute the heart attack probability and achieved 94 percentage of accuracy. This research can be extendable to build auto-altering and advise system with integration hardware peripheral circuit devices.

Suggested Citation

  • Rahul Kumar Jha & Santosh Kumar Henge & Sanjeev Kumar Mandal & Amit Sharma & Supriya Sharma & Ashok Sharma & Afework Aemro Berhanu & Vijay Kumar, 2022. "Neural Fuzzy Hybrid Rule-Based Inference System with Test Cases for Prediction of Heart Attack Probability," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-18, September.
  • Handle: RePEc:hin:jnlmpe:3414877
    DOI: 10.1155/2022/3414877
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