Comparison of machine learning algorithms for chest X-ray image COVID-19 classification
Samsir Samsir, Jimmi Hendrik P. Sitorus, Zulkifli Zulkifli, Zuriani Ritonga, Fitri Aini Nasution, Ronal Watrianthos
Abstract
Abstract Artificial Intelligence and Machine Learning algorithms were used to identify the coronavirus (COVID-19) from X-ray photos of the chest. The authors propose a model for early coronavirus detection based on image filtering strategies and a hybrid feature selection model in this analysis. Traditional statistical and machine learning methods are used to derive these attributes from CT images. The Confusion Matrix for infected COVID-19 patients and regular patients was obtained using Support Vector Machine and K-Nearest Neighbor to classify the features chosen. The output of the two approaches can be compared. The various techniques’ performance shows that the Support Vector Machine achieves the highest precision of 97% compared to the K-Nearest Neighbor with a precision of 86%.