Predictive Model for the Monitoring and Detection of Heart Disease using Wavelet Based Machine Learning Technique
Journal: American Journal of Applied Sciences and Engineering (Vol.3, No. 5)Publication Date: 2022-09-21
Authors : Nnenna H. N. Odo H. Ozoemena P.; Uzoka E. C.;
Page : 1-12
Keywords : Heart Disease; Artificial Neural Network; Wavelet Based Machine Learning Technique; Predictive Model;
Abstract
This research paper on Predictive Model for the monitoring and detection of heart disease using wavelet-based machine learning technique is aimed at enhancing and easing the process of detecting heart diseases efficiently and in an automated manner. This paper adopts the Dynamic Systems Development Model (DSDM) methodology which was originally based on the Rapid Application Development Methodology. This methodology is applied for a fast delivery of the new system within a specified work plan, budget and time. The methodology also features iterative phases such as feasibility and business study, functional and mathematical modelling, implementation and simulations. Artificial Neural Network technique was also integrated with wavelet technique in this study for a clearer productivity and noise reduction during data processing. Results from the simulation of this work were validated using 10-fold validation technique and the Mean Squared Error of 0.0005423 on the average and a regression of 0.9978 on the average performance were achieved.
Other Latest Articles
- Offor, J. N. PhD and Chijioke, O. E. PhD
- Effect of Non – Conventional Machining Principles Instruction on Craft Students’ Achievement and Retention in Machining Practice in Government Technical Colleges in Enugu State, Nigeria
- Green Human Resource Management Practices and Corporate Performance of Access Bank Plc, Enugu
- Knowledge and Perception of Climate Change in Ethiope East Local Government Area of Delta State
- Technical and Vocational Education as a Tool for Poverty Alleviation in Ethiope East Local Government Area, Delta State, Nigeria
Last modified: 2022-10-22 01:22:24