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Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites

Malaria parasites (Plasmodium spp.) and related apicomplexan pathogens contain a nonphotosynthetic plastid called the apicoplast. Derived from an unusual secondary eukaryote–eukaryote endosymbiosis, the apicoplast is a fascinating organelle whose function and biogenesis rely on a complex amalgamatio...

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Autores principales: Boucher, Michael J., Ghosh, Sreejoyee, Zhang, Lichao, Lal, Avantika, Jang, Se Won, Ju, An, Zhang, Shuying, Wang, Xinzi, Ralph, Stuart A., Zou, James, Elias, Joshua E., Yeh, Ellen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6155542/
https://www.ncbi.nlm.nih.gov/pubmed/30212465
http://dx.doi.org/10.1371/journal.pbio.2005895
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author Boucher, Michael J.
Ghosh, Sreejoyee
Zhang, Lichao
Lal, Avantika
Jang, Se Won
Ju, An
Zhang, Shuying
Wang, Xinzi
Ralph, Stuart A.
Zou, James
Elias, Joshua E.
Yeh, Ellen
author_facet Boucher, Michael J.
Ghosh, Sreejoyee
Zhang, Lichao
Lal, Avantika
Jang, Se Won
Ju, An
Zhang, Shuying
Wang, Xinzi
Ralph, Stuart A.
Zou, James
Elias, Joshua E.
Yeh, Ellen
author_sort Boucher, Michael J.
collection PubMed
description Malaria parasites (Plasmodium spp.) and related apicomplexan pathogens contain a nonphotosynthetic plastid called the apicoplast. Derived from an unusual secondary eukaryote–eukaryote endosymbiosis, the apicoplast is a fascinating organelle whose function and biogenesis rely on a complex amalgamation of bacterial and algal pathways. Because these pathways are distinct from the human host, the apicoplast is an excellent source of novel antimalarial targets. Despite its biomedical importance and evolutionary significance, the absence of a reliable apicoplast proteome has limited most studies to the handful of pathways identified by homology to bacteria or primary chloroplasts, precluding our ability to study the most novel apicoplast pathways. Here, we combine proximity biotinylation-based proteomics (BioID) and a new machine learning algorithm to generate a high-confidence apicoplast proteome consisting of 346 proteins. Critically, the high accuracy of this proteome significantly outperforms previous prediction-based methods and extends beyond other BioID studies of unique parasite compartments. Half of identified proteins have unknown function, and 77% are predicted to be important for normal blood-stage growth. We validate the apicoplast localization of a subset of novel proteins and show that an ATP-binding cassette protein ABCF1 is essential for blood-stage survival and plays a previously unknown role in apicoplast biogenesis. These findings indicate critical organellar functions for newly discovered apicoplast proteins. The apicoplast proteome will be an important resource for elucidating unique pathways derived from secondary endosymbiosis and prioritizing antimalarial drug targets.
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spelling pubmed-61555422018-10-19 Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites Boucher, Michael J. Ghosh, Sreejoyee Zhang, Lichao Lal, Avantika Jang, Se Won Ju, An Zhang, Shuying Wang, Xinzi Ralph, Stuart A. Zou, James Elias, Joshua E. Yeh, Ellen PLoS Biol Methods and Resources Malaria parasites (Plasmodium spp.) and related apicomplexan pathogens contain a nonphotosynthetic plastid called the apicoplast. Derived from an unusual secondary eukaryote–eukaryote endosymbiosis, the apicoplast is a fascinating organelle whose function and biogenesis rely on a complex amalgamation of bacterial and algal pathways. Because these pathways are distinct from the human host, the apicoplast is an excellent source of novel antimalarial targets. Despite its biomedical importance and evolutionary significance, the absence of a reliable apicoplast proteome has limited most studies to the handful of pathways identified by homology to bacteria or primary chloroplasts, precluding our ability to study the most novel apicoplast pathways. Here, we combine proximity biotinylation-based proteomics (BioID) and a new machine learning algorithm to generate a high-confidence apicoplast proteome consisting of 346 proteins. Critically, the high accuracy of this proteome significantly outperforms previous prediction-based methods and extends beyond other BioID studies of unique parasite compartments. Half of identified proteins have unknown function, and 77% are predicted to be important for normal blood-stage growth. We validate the apicoplast localization of a subset of novel proteins and show that an ATP-binding cassette protein ABCF1 is essential for blood-stage survival and plays a previously unknown role in apicoplast biogenesis. These findings indicate critical organellar functions for newly discovered apicoplast proteins. The apicoplast proteome will be an important resource for elucidating unique pathways derived from secondary endosymbiosis and prioritizing antimalarial drug targets. Public Library of Science 2018-09-13 /pmc/articles/PMC6155542/ /pubmed/30212465 http://dx.doi.org/10.1371/journal.pbio.2005895 Text en © 2018 Boucher et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Methods and Resources
Boucher, Michael J.
Ghosh, Sreejoyee
Zhang, Lichao
Lal, Avantika
Jang, Se Won
Ju, An
Zhang, Shuying
Wang, Xinzi
Ralph, Stuart A.
Zou, James
Elias, Joshua E.
Yeh, Ellen
Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
title Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
title_full Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
title_fullStr Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
title_full_unstemmed Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
title_short Integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
title_sort integrative proteomics and bioinformatic prediction enable a high-confidence apicoplast proteome in malaria parasites
topic Methods and Resources
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6155542/
https://www.ncbi.nlm.nih.gov/pubmed/30212465
http://dx.doi.org/10.1371/journal.pbio.2005895
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