You are in:Home/Publications/Enhancing COVID-19 Diagnosis based on Feature Extraction of Complete Blood Count Tests

Ass. Lect. Manar Ahmed Metwally Ahmed Elfakahany :: Publications:

Title:
Enhancing COVID-19 Diagnosis based on Feature Extraction of Complete Blood Count Tests
Authors: Manar Ahmed Elfakahany, Mahmoud Adel Hassan, Mona A. Bayoumi, Omar M. Salim
Year: 2025
Keywords: COVID-19, Machine Learning, Feature Selection, CBC test
Journal: Engineering Research Journal (Shoubra)
Volume: Not Available
Issue: Not Available
Pages: Not Available
Publisher: Not Available
Local/International: Local
Paper Link: Not Available
Full paper Manar Ahmed Metwally Ahmed Elfakahany_Enhancing COVID-19 Diagnosis based on Feature Extraction of Complete Blood Count Tests..pdf
Supplementary materials Not Available
Abstract:

Early and effective identification of COVID-19 is fundamental for effective treatment and virus control. Classifying the COVID-19 disease is based on lab work of common complete blood count (CBC) data that became a focal point of interest. CBC testing is inexpensive, broadly available, and may provide useful indicators for identifying COVID-19. Although CBC provides useful diagnostic data, not every feature has the same influence on classification performance. In that belief, machine learning (ML) algorithms have been applied to study CBC datasets and help in screening COVID-19 in the persons who may catch the disease. In ML, feature selection (FS) is one of the greatest essential challenges. Several real-world datasets include several redundant or unnecessary features, which reduce a classifier's performance. In this paper, five ML algorithms are used to improve the classifier performance. FS based on filter, wrapper, and hybrid methods employed to extract the most significant features of COVID-19 from a CBC test for datasets from a well-known repository while pursuing the model performance. The most relevant CBC attributes that may indicate COVID-19 are identified. Hybrid FS techniques offer the best results with fewer features. The results show that CBC features are not universally transferable across populations.

Google ScholarAcdemia.eduResearch GateLinkedinFacebookTwitterGoogle PlusYoutubeWordpressInstagramMendeleyZoteroEvernoteORCIDScopus