2020
DOI: 10.1186/s13000-020-01040-9
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Detection and stage classification of Plasmodium falciparum from images of Giemsa stained thin blood films using random forest classifiers

Abstract: Background The conventional method for the diagnosis of malaria parasites is the microscopic examination of stained blood films, which is time consuming and requires expertise. We introduce computer-based image segmentation and life stage classification with a random forest classifier. Segmentation and stage classification are performed on a large dataset of malaria parasites with ground truth labels provided by experts. Methods We made use of Giemsa stained images obtained from the blood of 16 patients infe… Show more

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Cited by 17 publications
(16 citation statements)
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“…Finally, we have introduced a staging model that recapitulates IDC progression of the parasite and allows for more refined interpretation when reading slides. Recent studies have aimed to enhance IDC life stage classification by adding early, mid, and late substages (25) . Using a regression model, we are able to differentiate the IDC stage of the parasite more precisely and prevent penalizing predictions that have been classified as a different substage of the parasite but are developmentally not far removed.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Finally, we have introduced a staging model that recapitulates IDC progression of the parasite and allows for more refined interpretation when reading slides. Recent studies have aimed to enhance IDC life stage classification by adding early, mid, and late substages (25) . Using a regression model, we are able to differentiate the IDC stage of the parasite more precisely and prevent penalizing predictions that have been classified as a different substage of the parasite but are developmentally not far removed.…”
Section: Discussionmentioning
confidence: 99%
“…Only a few studies have also combined parasite detection with the classification of the different stages of the intraerythrocytic development cycle (IDC). Furthermore, treating parasite development as a classification problem disregards information on progression within and between the individual stages; progression through the IDC is a continuous process, and experts disagree on the boundaries between the different life stages (10,21,25,26) . Automation has the potential to save time and add to the number of RBCs sampled for both diagnosis and lab usage; however, its usage in diagnosis would require confidence in the analysis process; if results are accessible for review post-analysis by a microscopist, such a system is more likely to be implemented as a robust decision support tool.…”
Section: Introductionmentioning
confidence: 99%
“…(i) All types of image sets were recorded by our group in our study, except for Giemsa-stained light microscopy data, which were taken from Abbas et al 39 .…”
Section: /15mentioning
confidence: 99%
“…For segmentation into single-RBC cutouts, that were eventually used for the NN-based four-category classification, we used 173 AFM images, 1232 fluorescence microscopy images and 792 Giemsa-stained light microscopy images [747 from Ref. 39 and 45 recorded by us]. Label-free light microscopy images were taken in a limited number to help an unambiguous stage-specific labeling of RBCs in the corresponding fluorescence images and were not used in the NN analysis.…”
Section: Rbc Imaging Techniquesmentioning
confidence: 99%
“…Only a few studies have also combined parasite detection with the classification of the different stages of the intraerythrocytic development cycle (IDC). Furthermore, treating parasite development as a classification problem disregards information on progression within and between the individual stages; progression through the IDC is a continuous process and experts disagree on the boundaries between the different life stages (10, 21, 25, 26). Automation has the potential to save time and add to number of RBCs sampled for both diagnosis and lab usage, however, its usage in diagnosis would require confidence in the analysis process; if results are accessible for review post-analysis by a microscopist, such a system is more likely to be implemented as a robust decision support tool.…”
Section: Introductionmentioning
confidence: 99%