Performance Analysis of Deep Learning Algorithms in Diagnosis of Malaria Disease

Author:

Hemachandran K.1,Alasiry Areej2,Marzougui Mehrez2,Ganie Shahid Mohammad1ORCID,Pise Anil Audumbar345ORCID,Alouane M. Turki-Hadj2ORCID,Chola Channabasava6ORCID

Affiliation:

1. Department of Analytics, School of Business, Woxsen University, Hyderabad 502345, Telangana, India

2. College of Computer Science, King Khalid University, Abha 62529, Saudi Arabia

3. Siatik Premier Google Cloud Platform Partner, Johannesburg 2000, South Africa

4. School of Computer Science and Applied Mathematics, University of the Witwatersrand, Johannesburg 2000, South Africa

5. School Saveetha School of Engineering, Chennai 600124, Tamil Nadu, India

6. Department of Studies in Computer Science, University of Mysore, Manasagangothri, Mysore 570006, Karnataka, India

Abstract

Malaria is predominant in many subtropical nations with little health-monitoring infrastructure. To forecast malaria and condense the disease’s impact on the population, time series prediction models are necessary. The conventional technique of detecting malaria disease is for certified technicians to examine blood smears visually for parasite-infected RBC (red blood cells) underneath a microscope. This procedure is ineffective, and the diagnosis depends on the individual performing the test and his/her experience. Automatic image identification systems based on machine learning have previously been used to diagnose malaria blood smears. However, so far, the practical performance has been insufficient. In this paper, we have made a performance analysis of deep learning algorithms in the diagnosis of malaria disease. We have used Neural Network models like CNN, MobileNetV2, and ResNet50 to perform this analysis. The dataset was extracted from the National Institutes of Health (NIH) website and consisted of 27,558 photos, including 13,780 parasitized cell images and 13,778 uninfected cell images. In conclusion, the MobileNetV2 model outperformed by achieving an accuracy rate of 97.06% for better disease detection. Also, other metrics like training and testing loss, precision, recall, fi-score, and ROC curve were calculated to validate the considered models.

Funder

Deanship of Scientific Research at King Khalid University

Publisher

MDPI AG

Subject

Clinical Biochemistry

Reference55 articles.

1. (2023, January 07). World malaria report 2022. Available online: https://www.who.int/teams/global-malaria-programme/reports/world-malaria-report-2022.

2. Wongsrichanalai, C., Barcus, M.J., Muth, S., Sutamihardja, A., and Wernsdorfer, W.H. (2007). Defining and Defeating the Intolerable Burden of Malaria III: Progress and Perspectives, American Society of Tropical Medicine and Hygiene.

3. Polymerase chain reaction;Schochetman;J. Infect. Dis.,1988

4. A comparative laboratory diagnosis of malaria: Microscopy versus rapid diagnostic test kits;Azikiwe;Asian Pac. J. Trop Biomed.,2021

5. Detection of malaria using blood smear by light microscopy, RDT and nested-PCR for suspected patients in south-eastern Iran;Mirahmadi;Gene Re,2021

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