An interpretable transformer based approach to classify Malaria from blood cell images
Abstract
Malaria is a disease that can be fatal, and it is spread through the bite of the female
Anopheles mosquito. The life of the sufferer is put in jeopardy as a result of the pres ence of numerous plasmodium parasites, which spread throughout their blood cells.
Malaria can potentially be fatal if it is not treated within the first few stages of the
disease. A well-known method for diagnosing malaria, microscopy involves taking
blood samples from the patient, calculating the number of parasites, and counting
the victim’s red blood cells. Nevertheless, the procedure of microscopy takes a lot of
time, and, in certain circumstances, it can produce an incorrect result. When com pared to the more conventional approach of microscopic examination, the recent
successes of deep learning (DL) in the field of medical diagnosis make it quite con ceivable to reduce the expenses associated with the diagnosis while simultaneously
improving overall detection accuracy. This study proposes a transformer-based DL
technique for diagnosing the malaria parasite using blood cell images. An explain able AI technique called Grad-CAM was applied in order to determine which aspects
of an image the proposed model paid significantly more attention to in comparison
to the other aspects of the image through saliency mapping. This was done in or der to demonstrate the usefulness of the models. According to the findings of this
research, the performance of the vision transformer and the vgg-16 are identical.
Both models have reached an accuracy score of approximately 96%, which is very
impressive.