Quantifying the deformability of malaria-infected red blood cells using deep learning trained on synthetic cells.
Publication year
2023Source
iScience, 26, 12, (2023), pp. 108542, article 108542ISSN
Publication type
Article / Letter to editor
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Organization
CMBI
Physical Organic Chemistry
Bioinformatics
Medical Microbiology
Journal title
iScience
Volume
vol. 26
Issue
iss. 12
Page start
p. 108542
Subject
Bioinformatics; Physical Organic Chemistry; Radboudumc 19: Nanomedicine CMBI; Radboudumc 2: Cancer development and immune defence CMBI; Radboudumc 4: lnfectious Diseases and Global Health Medical Microbiology; Radboudumc 6: Metabolic Disorders CMBI; Radboud University Medical CenterAbstract
Several hematologic diseases, including malaria, diabetes, and sickle cell anemia, result in a reduced red blood cell deformability. This deformability can be measured using a microfluidic device with channels of varying width. Nevertheless, it is challenging to algorithmically recognize large numbers of red blood cells and quantify their deformability from image data. Deep learning has become the method of choice to handle noisy and complex image data. However, it requires a significant amount of labeled data to train the neural networks. By creating images of cells and mimicking noise and plasticity in those images, we generate synthetic data to train a network to detect and segment red blood cells from video-recordings, without the need for manually annotated labels. Using this new method, we uncover significant differences between the deformability of RBCs infected with different strains of Plasmodium falciparum, providing clues to the variation in virulence of these strains.
This item appears in the following Collection(s)
- Academic publications [246164]
- Electronic publications [133781]
- Faculty of Medical Sciences [93268]
- Faculty of Science [37927]
- Open Access publications [107301]
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