Publication:
Rapid profiling of Plasmodium parasites from genome sequences to assist malaria control

dc.contributor.authorPhelan, Jody E.
dc.contributor.authorGitaka, Jesse
dc.contributor.authorThieu, Nguyen Quang
dc.contributor.authorHuong Binh,Nguyen Thi
dc.contributor.authorThorpe, Joseph
dc.contributor.authorVanheer, Leen N.
dc.contributor.authorVegte-Bolmer, Marga van de
dc.contributor.authorHong Ngoc,Nguyen Thi
dc.contributor.authorManko, Emilia
dc.contributor.authorTurkiewicz,Anna
dc.contributor.authorGitaka, Jesse
dc.date.accessioned2024-06-07T08:23:04Z
dc.date.available2024-06-07T08:23:04Z
dc.date.issued2023-11-10
dc.description.abstractMalaria continues to be a major threat to global public health. Whole genome sequencing (WGS) of the underlying Plasmodium parasites has provided insights into the genomic epidemiology of malaria. Genome sequencing is rapidly gaining traction as a diagnostic and surveillance tool for clinical settings, where the profiling of co-infections, identification of imported malaria parasites, and detection of drug resistance are crucial for infection control and disease elimination. To support this informatically, we have developed the Malaria-Profiler tool, which rapidly (within minutes) predicts Plasmodium species, geographical source, and resistance to antimalarial drugs directly from WGS data. Results The online and command line versions of Malaria-Profiler detect ~ 250 markers from genome sequences covering Plasmodium speciation, likely geographical source, and resistance to chloroquine, sulfadoxine-pyrimethamine (SP), and other anti-malarial drugs for P. falciparum, but also providing mutations for orthologous resistance genes in other species. The predictive performance of the mutation library was assessed using 9321 clinical isolates with WGS and geographical data, with most being single-species infections (P. falciparum 7152/7462, P. vivax 1502/1661, P. knowlesi 143/151, P. malariae 18/18, P. ovale ssp. 5/5), but co-infections were identified (456/9321; 4.8%). The accuracy of the predicted geographical profiles was high to both continental (96.1%) and regional levels (94.6%). For P. falciparum, markers were identified for resistance to chloroquine (49.2%; regional range: 24.5% to 100%), sulfadoxine (83.3%; 35.4– 90.5%), pyrimethamine (85.4%; 80.0–100%) and combined SP (77.4%). Markers associated with the partial resistance of artemisinin were found in WGS from isolates sourced from Southeast Asia (30.6%).
dc.description.sponsorshipThis work was funded by a UKRI MRC Artificial Intelligence for Biomedical and Health Research grant (Ref. MR/X005895/1), a Wellcome iTPA Translational Accelerator Award (214227/Z/18/Z), and a UKRI EPSRC award in Artificial Intelligence innovation to accelerate health research (EP/Y018842/1). SC and TGC are funded by the UKRI MRC (MRC IAA2129, MR/R026297/1, and MR/X005895/1) grants. JG and TGC were funded by a Royal Society FLAIR Collaborative grant (FCG\R1\211029). JGD was supported by fellowships from FAPESP (2019/12068–5 and 2022/02771–3).
dc.identifier.issn1756-994X
dc.identifier.urihttps://erepository.mku.ac.ke/handle/123456789/5851
dc.language.isoen
dc.publisherGenome Medicine
dc.subjectDiagnostics
dc.subjectWhole genome sequencing
dc.subjectNATURAL SCIENCES::Chemistry::Biochemistry::Functional genomics
dc.subjectPlasmodium parasites
dc.subjectMalaria
dc.subjectDrug resistance
dc.titleRapid profiling of Plasmodium parasites from genome sequences to assist malaria control
dc.typeArticle
dspace.entity.typePublication
relation.isAuthorOfPublication2979b960-59ad-48e8-9c21-8fabdd9b8f60
relation.isAuthorOfPublication.latestForDiscovery2979b960-59ad-48e8-9c21-8fabdd9b8f60

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