Developing a multivariate prediction model of antibody features associated with protection of malaria-infected pregnant women from placental malaria.

Author(s)
Aitken, Elizabeth H
Damelang, Timon
Ortega-Pajares, Amaya
Alemu, Agersew
Hasang, Wina
Dini, Saber
Unger, Holger
Ome-Kaius, Maria
Nielsen, Morten A
Salanti, Ali
Smith, Joe
Kent, Stephen
Hogarth, P Mark
Wines, Bruce D
Simpson, Julie A
Chung, Amy
Rogerson, Stephen J
Publication Date
2021-06-29
Abstract
BACKGROUND: Plasmodium falciparum causes placental malaria, which results in adverse outcomes for mother and child. P. falciparum-infected erythrocytes that express the parasite protein VAR2CSA on their surface can bind to placental chondroitin sulfate A. It has been hypothesized that naturally acquired antibodies towards VAR2CSA protect against placental infection, but it has proven difficult to identify robust antibody correlates of protection from disease. The objective of this study was to develop a prediction model using antibody features that could identify women protected from placental malaria. METHODS: We used a systems serology approach with elastic net-regularized logistic regression, partial least squares discriminant analysis, and a case-control study design to identify naturally acquired antibody features mid-pregnancy that were associated with protection from placental malaria at delivery in a cohort of 77 pregnant women from Madang, Papua New Guinea. RESULTS: The machine learning techniques selected 6 out of 169 measured antibody features towards VAR2CSA that could predict (with 86% accuracy) whether a woman would subsequently have active placental malaria infection at delivery. Selected features included previously described associations with inhibition of placental binding and/or opsonic phagocytosis of infected erythrocytes, and network analysis indicated that there are not one but multiple pathways to protection from placental malaria. CONCLUSIONS: We have identified candidate antibody features that could accurately identify malaria-infected women as protected from placental infection. It is likely that there are multiple pathways to protection against placental malaria. FUNDING: This study was supported by the National Health and Medical Research Council (Nos. APP1143946, GNT1145303, APP1092789, APP1140509, and APP1104975).
Affiliation
Department of Medicine, University of Melbourne, the Doherty Institute, Melbourne, Australia.
Department of Microbiology and Immunology, University of Melbourne, the Doherty Institute, Melbourne, Australia.
Centre for Epidemiology and Biostatistics, Melbourne School of Population and Global Health, University of Melbourne, Melbourne, Australia.
Department of Obstetrics and Gynaecology, Royal Darwin Hospital, Darwin, Australia.
Menzies School of Health Research, Darwin, Australia.
Walter and Eliza Hall Institute of Medical Research, Parkville, Australia.
Centre for Medical Parasitology, Department of Microbiology and immunology, University of Copenhagen, Copenhagen, Denmark.
Department of Infectious Disease, Copenhagen University Hospital, Copenhagen, Denmark.
Seattle Children's Research Institute, Seattle, United States.
Department of Pediatrics, University of Washington, Seattle, United States.
Immune Therapies Group, Centre for Biomedical Research, Burnet Institute, Melbourne, Australia.
Department of Clinical Pathology, University of Melbourne, Melbourne, Australia.
Department of Immunology and Pathology, Monash University, Melbourne, Australia.
Citation
Elife . 2021 Jun 29:10:e65776. doi: 10.7554/eLife.65776.
OrcId
0000-0002-2677-6208
0000-0002-6150-4435
0000-0003-2668-4992
0000-0002-7915-6360
0000-0002-2660-2013
0000-0003-4287-1982
Pubmed ID
https://pubmed.ncbi.nlm.nih.gov/34181872/?otool=iaurydwlib
Link
Volume
10
Title
Developing a multivariate prediction model of antibody features associated with protection of malaria-infected pregnant women from placental malaria.
Type of document
Journal Article
Entity Type
Publication

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