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Review
. 2018 Apr:194:36-55.
doi: 10.1016/j.trsl.2017.12.004. Epub 2018 Jan 12.

Image analysis and machine learning for detecting malaria

Affiliations
Review

Image analysis and machine learning for detecting malaria

Mahdieh Poostchi et al. Transl Res. 2018 Apr.

Abstract

Malaria remains a major burden on global health, with roughly 200 million cases worldwide and more than 400,000 deaths per year. Besides biomedical research and political efforts, modern information technology is playing a key role in many attempts at fighting the disease. One of the barriers toward a successful mortality reduction has been inadequate malaria diagnosis in particular. To improve diagnosis, image analysis software and machine learning methods have been used to quantify parasitemia in microscopic blood slides. This article gives an overview of these techniques and discusses the current developments in image analysis and machine learning for microscopic malaria diagnosis. We organize the different approaches published in the literature according to the techniques used for imaging, image preprocessing, parasite detection and cell segmentation, feature computation, and automatic cell classification. Readers will find the different techniques listed in tables, with the relevant articles cited next to them, for both thin and thick blood smear images. We also discussed the latest developments in sections devoted to deep learning and smartphone technology for future malaria diagnosis.

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Conflict of interest statement

Conflicts of Interest: All authors have read the journals policy on disclosure of potential conflicts of interest and have none to declare. All authors have read the journals authorship agreement and the manuscript has been reviewed and approved by all authors.

Figures

Fig 1
Fig 1
Worldwide malaria death rates (Source: WHO World Malaria Report 2012).
Fig 2
Fig 2
Five different human malaria Plasmodium species and their life stages in thin blood film (Source: K. Silamut and CDC).
Fig 3
Fig 3
Parasite stages in a single thin blood smear.

References

    1. WHO. Malaria microscopy quality assurance manual-version 2. World Health Organization; 2016.
    1. WHO. World malaria report 2016. World Health Organization; 2016.
    1. Tek FB, Dempster AG, Kale I. Computer vision for microscopy diagnosis of malaria. Malar J. 2009;8:153. - PMC - PubMed
    1. Das D, Mukherjee R, Chakraborty C. Computational microscopic imaging for malaria parasite detection: a systematic review. J Microsc. 2015;260:1–19. - PubMed
    1. Jan Z, Khan A, Sajjad M, Muhammad K, Rho S, Mehmood I. A review on automated diagnosis of malaria parasite in microscopic blood smears images. Multimedia Tools Appl. 2017:1–26.

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