An SSD Multi-box Approach to Automated Malaria Diagnosis on Thick Blood Smears
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2018-08-03
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en
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Abstract
In 2017, the World Health Organization (WHO) reported 216 million cases of malaria worldwide (91 coun-
tries), an increase of about 5 million cases over the year 2015. An early diagnosis is the best prevention against
malaria, and microscopy remains to date the gold standard for malaria diagnosis. Yet, in most a ected regions,
shortage in expertise and costly laboratory equipment grant limited access to an adequate diagnosis. This
thesis introduces a high-performing, state-of-the-art, real-time object detector (SSD Multi-box) to the prob-
lem of malaria detection. Using deep convolutional networks, it responds to the presence of trophozoites of
P. falciparum and white blood cells in Field-stained thick blood smears. The detection of white blood cells
allows for parasitaemia estimation, a requirement to assess the severity of the infection, and in turn, the type of
treatment. SSD Multi-box localizes and recognizes P. falciparum (recall: 87.52%; precision: 90.72%) and white
blood cells (recall: 97.54%; precision: 81.27%) on a single feed-forward pass of network at a rate of 9 FPS. Our
model outperforms results from similar multi-class studies, yet o ering unprecedented time performance even
on low-res image sets, such as the one used here. Transfer learning did not show great improvement, yet results
suggest that transferring features extractors from early layers can be bene cial.
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Faculteit der Sociale Wetenschappen