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Abstract
Malaria is an extremely malignant disease and is caused by the bites of infected female mosquitoes. This disease is not only infectious among humans, but among animals as well. Malaria causes mild symptoms like fever, headache, sweating and vomiting, and muscle discomfort; severe symptoms include coma, seizures, and kidney failure. The timely identification of malaria parasites is a challenging and chaotic endeavor for health staff. An expert technician examines the schematic blood smears of infected red blood cells through a microscope. The conventional methods for identifying malaria are not efficient. Machine learning approaches are effective for simple classification challenges but not for complex tasks. Furthermore, machine learning involves rigorous feature engineering to train the model and detect patterns in the features. On the other hand, deep learning works well with complex tasks and automatically extracts low and high-level features from the images to detect disease. In this paper, EfficientNet, a deep learning-based approach for detecting Malaria, is proposed that uses red blood cell images. Experiments are carried out and performance comparison is made with pre-trained deep learning models. In addition, k-fold cross-validation is also used to substantiate the results of the proposed approach. Experiments show that the proposed approach is 97.57% accurate in detecting Malaria from red blood cell images and can be beneficial practically for medical healthcare staff.
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Details
1 Prince Sultan University, Artificial Intelligence and Data Analytics (AIDA) Lab, CCIS, Riyadh, Saudi Arabia (GRID:grid.443351.4) (ISNI:0000 0004 0367 6372)
2 University College Dublin, School of Computer Science, Dublin, Ireland (GRID:grid.7886.1) (ISNI:0000 0001 0768 2743)
3 Yeungnam University, Department of Information and Communication Engineering, Gyeongsan, Republic of Korea (GRID:grid.413028.c) (ISNI:0000 0001 0674 4447)
4 Universidad Europea del Atlantico, Santander, Spain (GRID:grid.512306.3) (ISNI:0000 0004 4681 9396); Universidad Internacional Iberoamericana Arecibo, Puerto Rico, USA (GRID:grid.512306.3) (ISNI:0000 0004 0459 7019); Universidade Internacional do Cuanza, Cuito, Angola (GRID:grid.512306.3) (ISNI:0000 0004 9335 6881)
5 Universidad Europea del Atlantico, Santander, Spain (GRID:grid.512306.3) (ISNI:0000 0004 4681 9396); Universidad Internacional Iberoamericana, Campeche, Mexico (GRID:grid.512306.3) (ISNI:0000 0004 9335 3701); Universidad de La Romana, La Romana, República Dominicana (GRID:grid.512306.3)
6 University of Valladolid, Department of Signal Theory, Communications and Telematics Engineering, Valladolid, Spain (GRID:grid.5239.d) (ISNI:0000 0001 2286 5329)




