A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria

Abstract Background Nearly half of the world’s population (3.2 billion people) were at risk of malaria in 2015, and resistance to current therapies is a major concern. While the standard of care includes drug combinations, there is a pressing need to identify new combinations that can bypass current...

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Main Authors: Yasaman KalantarMotamedi, Richard T. Eastman, Rajarshi Guha, Andreas Bender
Format: Article
Language:English
Published: BMC 2018-04-01
Series:Malaria Journal
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12936-018-2294-5
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spelling doaj-1a2996ddff6044af88d621bd752446f52020-11-25T00:28:28ZengBMCMalaria Journal1475-28752018-04-0117111510.1186/s12936-018-2294-5A systematic and prospectively validated approach for identifying synergistic drug combinations against malariaYasaman KalantarMotamedi0Richard T. Eastman1Rajarshi Guha2Andreas Bender3Centre for Molecular Informatics, Department of Chemistry, University of CambridgeDivision of Preclinical Innovation, National Center for Advancing Translational Sciences, National Institutes of HealthDivision of Preclinical Innovation, National Center for Advancing Translational Sciences, National Institutes of HealthCentre for Molecular Informatics, Department of Chemistry, University of CambridgeAbstract Background Nearly half of the world’s population (3.2 billion people) were at risk of malaria in 2015, and resistance to current therapies is a major concern. While the standard of care includes drug combinations, there is a pressing need to identify new combinations that can bypass current resistance mechanisms. In the work presented here, a combined transcriptional drug repositioning/discovery and machine learning approach is proposed. Methods The integrated approach utilizes gene expression data from patient-derived samples, in combination with large-scale anti-malarial combination screening data, to predict synergistic compound combinations for three Plasmodium falciparum strains (3D7, DD2 and HB3). Both single compounds and combinations predicted to be active were prospectively tested in experiment. Results One of the predicted single agents, apicidin, was active with the AC50 values of 74.9, 84.1 and 74.9 nM in 3D7, DD2 and HB3 P. falciparum strains while its maximal safe plasma concentration in human is 547.6 ± 136.6 nM. Apicidin at the safe dose of 500 nM kills on average 97% of the parasite. The synergy prediction algorithm exhibited overall precision and recall of 83.5 and 65.1% for mild-to-strong, 48.8 and 75.5% for moderate-to-strong and 12.0 and 62.7% for strong synergies. Some of the prospectively predicted combinations, such as tacrolimus-hydroxyzine and raloxifene-thioridazine, exhibited significant synergy across the three P. falciparum strains included in the study. Conclusions Systematic approaches can play an important role in accelerating discovering novel combinational therapies for malaria as it enables selecting novel synergistic compound pairs in a more informed and cost-effective manner.http://link.springer.com/article/10.1186/s12936-018-2294-5Synergy predictionMalariaMachine learningCompound combination modellingTranscriptional drug repositioningSynergistic anti-malaria compound combinations
collection DOAJ
language English
format Article
sources DOAJ
author Yasaman KalantarMotamedi
Richard T. Eastman
Rajarshi Guha
Andreas Bender
spellingShingle Yasaman KalantarMotamedi
Richard T. Eastman
Rajarshi Guha
Andreas Bender
A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
Malaria Journal
Synergy prediction
Malaria
Machine learning
Compound combination modelling
Transcriptional drug repositioning
Synergistic anti-malaria compound combinations
author_facet Yasaman KalantarMotamedi
Richard T. Eastman
Rajarshi Guha
Andreas Bender
author_sort Yasaman KalantarMotamedi
title A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
title_short A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
title_full A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
title_fullStr A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
title_full_unstemmed A systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
title_sort systematic and prospectively validated approach for identifying synergistic drug combinations against malaria
publisher BMC
series Malaria Journal
issn 1475-2875
publishDate 2018-04-01
description Abstract Background Nearly half of the world’s population (3.2 billion people) were at risk of malaria in 2015, and resistance to current therapies is a major concern. While the standard of care includes drug combinations, there is a pressing need to identify new combinations that can bypass current resistance mechanisms. In the work presented here, a combined transcriptional drug repositioning/discovery and machine learning approach is proposed. Methods The integrated approach utilizes gene expression data from patient-derived samples, in combination with large-scale anti-malarial combination screening data, to predict synergistic compound combinations for three Plasmodium falciparum strains (3D7, DD2 and HB3). Both single compounds and combinations predicted to be active were prospectively tested in experiment. Results One of the predicted single agents, apicidin, was active with the AC50 values of 74.9, 84.1 and 74.9 nM in 3D7, DD2 and HB3 P. falciparum strains while its maximal safe plasma concentration in human is 547.6 ± 136.6 nM. Apicidin at the safe dose of 500 nM kills on average 97% of the parasite. The synergy prediction algorithm exhibited overall precision and recall of 83.5 and 65.1% for mild-to-strong, 48.8 and 75.5% for moderate-to-strong and 12.0 and 62.7% for strong synergies. Some of the prospectively predicted combinations, such as tacrolimus-hydroxyzine and raloxifene-thioridazine, exhibited significant synergy across the three P. falciparum strains included in the study. Conclusions Systematic approaches can play an important role in accelerating discovering novel combinational therapies for malaria as it enables selecting novel synergistic compound pairs in a more informed and cost-effective manner.
topic Synergy prediction
Malaria
Machine learning
Compound combination modelling
Transcriptional drug repositioning
Synergistic anti-malaria compound combinations
url http://link.springer.com/article/10.1186/s12936-018-2294-5
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