A cautionary note on the use of unsupervised machine learning algorithms to characterise malaria parasite population structure from genetic distance matrices
Genetic surveillance of malaria parasites supports malaria control programmes, treatment guidelines and elimination strategies. Surveillance studies often pose questions about malaria parasite ancestry (e.g. how antimalarial resistance has spread) and employ statistical methods that characterise par...
Main Authors: | Watson, JA, Taylor, AR, Ashley, EA, Dondorp, A, Buckee, CO, White, NJ, Holmes, CC |
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Format: | Journal article |
Language: | English |
Published: |
Public Library of Science
2020
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