NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.

Fungal infection has become one of the leading causes of hospital-acquired infections with high mortality rates. Furthermore, drug resistance is common for fungus-causing diseases. Synergistic drug combinations could provide an effective strategy to overcome drug resistance. Meanwhile, synergistic d...

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Main Authors: Xing Chen, Biao Ren, Ming Chen, Quanxin Wang, Lixin Zhang, Guiying Yan
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-07-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC4945015?pdf=render
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spelling doaj-d57698d5508f425a8b69592a98f2dd742020-11-25T01:44:26ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582016-07-01127e100497510.1371/journal.pcbi.1004975NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.Xing ChenBiao RenMing ChenQuanxin WangLixin ZhangGuiying YanFungal infection has become one of the leading causes of hospital-acquired infections with high mortality rates. Furthermore, drug resistance is common for fungus-causing diseases. Synergistic drug combinations could provide an effective strategy to overcome drug resistance. Meanwhile, synergistic drug combinations can increase treatment efficacy and decrease drug dosage to avoid toxicity. Therefore, computational prediction of synergistic drug combinations for fungus-causing diseases becomes attractive. In this study, we proposed similar nature of drug combinations: principal drugs which obtain synergistic effect with similar adjuvant drugs are often similar and vice versa. Furthermore, we developed a novel algorithm termed Network-based Laplacian regularized Least Square Synergistic drug combination prediction (NLLSS) to predict potential synergistic drug combinations by integrating different kinds of information such as known synergistic drug combinations, drug-target interactions, and drug chemical structures. We applied NLLSS to predict antifungal synergistic drug combinations and showed that it achieved excellent performance both in terms of cross validation and independent prediction. Finally, we performed biological experiments for fungal pathogen Candida albicans to confirm 7 out of 13 predicted antifungal synergistic drug combinations. NLLSS provides an efficient strategy to identify potential synergistic antifungal combinations.http://europepmc.org/articles/PMC4945015?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Xing Chen
Biao Ren
Ming Chen
Quanxin Wang
Lixin Zhang
Guiying Yan
spellingShingle Xing Chen
Biao Ren
Ming Chen
Quanxin Wang
Lixin Zhang
Guiying Yan
NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.
PLoS Computational Biology
author_facet Xing Chen
Biao Ren
Ming Chen
Quanxin Wang
Lixin Zhang
Guiying Yan
author_sort Xing Chen
title NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.
title_short NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.
title_full NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.
title_fullStr NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.
title_full_unstemmed NLLSS: Predicting Synergistic Drug Combinations Based on Semi-supervised Learning.
title_sort nllss: predicting synergistic drug combinations based on semi-supervised learning.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2016-07-01
description Fungal infection has become one of the leading causes of hospital-acquired infections with high mortality rates. Furthermore, drug resistance is common for fungus-causing diseases. Synergistic drug combinations could provide an effective strategy to overcome drug resistance. Meanwhile, synergistic drug combinations can increase treatment efficacy and decrease drug dosage to avoid toxicity. Therefore, computational prediction of synergistic drug combinations for fungus-causing diseases becomes attractive. In this study, we proposed similar nature of drug combinations: principal drugs which obtain synergistic effect with similar adjuvant drugs are often similar and vice versa. Furthermore, we developed a novel algorithm termed Network-based Laplacian regularized Least Square Synergistic drug combination prediction (NLLSS) to predict potential synergistic drug combinations by integrating different kinds of information such as known synergistic drug combinations, drug-target interactions, and drug chemical structures. We applied NLLSS to predict antifungal synergistic drug combinations and showed that it achieved excellent performance both in terms of cross validation and independent prediction. Finally, we performed biological experiments for fungal pathogen Candida albicans to confirm 7 out of 13 predicted antifungal synergistic drug combinations. NLLSS provides an efficient strategy to identify potential synergistic antifungal combinations.
url http://europepmc.org/articles/PMC4945015?pdf=render
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