Image features for quality analysis of thick blood smears employed in malaria diagnosis

Author:

Fong Amaris W. M.,Martinez CarolORCID,Cortés-Cortés Liliana J.,Suárez Daniel R.ORCID

Abstract

Abstract Background The World Health Organization (WHO) provides protocols for the diagnosis of malaria. One of them is related to the staining process of blood samples to guarantee the correct parasite visualization. Ensuring the quality of the staining procedure on thick blood smears (TBS) is a difficult task, especially in rural centres, where there are factors that can affect the smear quality (e.g. types of reagents employed, place of sample preparation, among others). This work presents an analysis of an image-based approach to evaluate the coloration quality of the staining process of TBS used for malaria diagnosis. Methods According to the WHO, there are different coloration quality descriptors of smears. Among those, the background colour is one of the best indicators of how well the staining process was conducted. An image database with 420 images (corresponding to 42 TBS samples) was created for analysing and testing image-based algorithms to detect the quality of the coloration of TBS. Background segmentation techniques were explored (based on RGB and HSV colour spaces) to separate the background and foreground (leukocytes, platelets, parasites) information. Then, different features (PCA, correlation, Histograms, variance) were explored as image criteria of coloration quality on the extracted background information; and evaluated according to their capability to classify images as with Good or Bad coloration quality from TBS. Results For background segmentation, a thresholding-based approach in the SV components of the HSV colour space was selected. It provided robustness separating the background information independently of its coloration quality. On the other hand, as image criteria of coloration quality, among the 19 feature vectors explored, the best one corresponds to the 15-bins histogram of the Hue component with classification rates of > 97%. Conclusions An analysis of an image-based approach to describe the coloration quality of TBS was presented. It was demonstrated that if a robust background segmentation is conducted, the histogram of the H component from the HSV colour space is the best feature vector to discriminate the coloration quality of the smears. These results are the baseline for automating the estimation of the coloration quality, which has not been studied before, but that can be crucial for automating TBS’s analysis for assisting malaria diagnosis process.

Funder

Pontificia Universidad Javeriana

Call Computer Vision for Global Challenges (CV4GC) 2019

Publisher

Springer Science and Business Media LLC

Subject

Infectious Diseases,Parasitology

Reference34 articles.

1. WHO. World malaria report 2019. Geneva: World Health Organization; 2019. https://www.who.int/publications-detail/world-malaria-report-2019.

2. WHO. Basic Malaria Microscopy, 2nd Edn, Learner’s guide. Geneva: World Health Organization; 2010.

3. WHO. Malaria Microscopy Quality Assurance Manual – Version 2. Geneva: World Health Organization; 2016.

4. WHO. Bases del diagnóstico microscópico del paludismo, 2da edición. Ginebra: Organización Mundial de la Salud; 2014.

5. WHO. Basic Malaria Microscopy, 2nd Edn, Tutor’s guide. Geneva: World Health Organization; 2010.

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