Detection of the patient with COVID-19 relying on ML technology and FAST algorithms to extract the features
- 1. Institute of Medical Technology Al-Mansour, Middle Technical University, Baghdad, Iraq
- 2. Department of Computer Techniques Engineering, Al-Mustaqbal University College, Hillah, Iraq
- 3. Department of Computer Engineering Techniques, Baghdad College of Economic Sciences University, Baghdad, Iraq
Description
COVID-19 is unquestionably one of the most hazardous health issues of our century, and it is a significant cause of mortality for both men and women throughout the globe. Even with the most advanced pharmacological and technical innovations, cancer oncologists, and biologists still have a substantial problem treating COVID-19. For patients with COVID-19, it is critical to offer initial, precise, and effective indicative procedures to increase their survival and minimize morbidity and mortality, which is currently lacking. A COVID-19 detection method has been presented in this paper for the initial identification of COVID-19 hazard factors. Features from accelerated segment test (FAST), a robust feature was used to extract features in this suggested method. The experiments show that it is possible to identify FAST traits efficiently. A consequence was a high success rate (98%) for accuracy performance.
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