COVID-19 Detection from CBC using Machine Learning Techniques

Authors

  • Asma Akhtar
  • Samia Akhtar
  • Birra Bakhtawar
  • Ashfaq Ali Kashif
  • Nauman Aziz
  • Muhammad Sheraz Javeid

DOI:

https://doi.org/10.54489/ijtim.v1i2.22

Abstract

Covid-19 pandemic has seriously affected the mankind with colossal loss of life around the world. There is a critical requirement for timely and reliable detection of Corona virus patients to give better and early treatment to prevent the spread of the infection. With that being said, current researches have revealed some critical benefits of utilizing complete blood count tests for early detection of COVID-19 positive individuals. In this research we employed different machine learning algorithms using full blood count for the prediction of COVID-19. These algorithms include: “K Nearest Neighbor, Radial Basis Function, Naive Bayes, kStar, PART, Random Forest, Decision Tree, OneR, Support Vector Machine and Multi-Layer Perceptron”. Further, “Accuracy, Recall, Precision, and F-Measure” are the performance evaluation measures that are utilized in this study.

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Published

2021-12-07

How to Cite

[1]
A. . Akhtar, S. . Akhtar, B. . Bakhtawar, A. A. . Kashif, N. . Aziz, and M. S. . Javeid, “COVID-19 Detection from CBC using Machine Learning Techniques ”, Int. J. TIM, vol. 1, no. 2, pp. 65–78, Dec. 2021.