Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance
Due to slow diagnostics, physicians must optimize antibiotic therapies based on clinical evaluation of patients without specific information on causative bacteria. We have investigated metabolomic analysis of blood for the detection of acute bacterial infection and early differentiation between inef...
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Umeå universitet, Kemiska institutionen
2013
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ndltd-UPSALLA1-oai-DiVA.org-umu-668162013-06-11T16:01:29ZMetabolic profiling for detection of staphylococcus aureus infection and antibiotic resistanceengAntti, HenrikFahlgren, AnnaNäsström, ElinKouremenos, KonstantinosSundén-Cullberg, JonasGuo, YongzhiMoritz, ThomasWolf-Watz, HansJohansson, AndersFällman, MariaUmeå universitet, Kemiska institutionenUmeå universitet, Institutionen för molekylärbiologi (Teknisk-naturvetenskaplig fakultet)Umeå universitet, Kemiska institutionenUmeå universitet, Institutionen för molekylärbiologi (Teknisk-naturvetenskaplig fakultet)Umeå universitet, Institutionen för molekylärbiologi (Teknisk-naturvetenskaplig fakultet)Umeå universitet, InfektionssjukdomarUmeå universitet, Institutionen för molekylärbiologi (Teknisk-naturvetenskaplig fakultet)2013Due to slow diagnostics, physicians must optimize antibiotic therapies based on clinical evaluation of patients without specific information on causative bacteria. We have investigated metabolomic analysis of blood for the detection of acute bacterial infection and early differentiation between ineffective and effective antibiotic treatment. A vital and timely therapeutic difficulty was thereby addressed: the ability to rapidly detect treatment failures because of antibiotic-resistant bacteria. Methicillin-resistant (MRSA) and methicillin-sensitive (MSSA) were used and for infecting mice, while natural MSSA infection was studied in humans. Samples of bacterial growth media, the blood of infected mice and of humans were analyzed with combined Gas Chromatography/Mass Spectrometry. Multivariate data analysis was used to reveal the metabolic profiles of infection and the responses to different antibiotic treatments. experiments resulted in the detection of 256 putative metabolites and mice infection experiments resulted in the detection of 474 putative metabolites. Importantly, ineffective and effective antibiotic treatments were differentiated already two hours after treatment start in both experimental systems. That is, the ineffective treatment of MRSA using cloxacillin and untreated controls produced one metabolic profile while all effective treatment combinations using cloxacillin or vancomycin for MSSA or MRSA produced another profile. For further evaluation of the concept, blood samples of humans admitted to intensive care with severe sepsis were analyzed. One hundred thirty-three putative metabolites differentiated severe MSSA sepsis (n = 6) from severe sepsis (n = 10) and identified treatment responses over time. Combined analysis of human, , and mice samples identified 25 metabolites indicative of effective treatment of sepsis. Taken together, this study provides a proof of concept of the utility of analyzing metabolite patterns in blood for early differentiation between ineffective and effective antibiotic treatment in acute infections. Article in journalinfo:eu-repo/semantics/articletexthttp://urn.kb.se/resolve?urn=urn:nbn:se:umu:diva-66816doi:10.1371/journal.pone.0056971PMID 23451124PLoS ONE, 1932-6203, 2013, 8:2, s. e56971-application/pdfinfo:eu-repo/semantics/openAccess |
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English |
format |
Others
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description |
Due to slow diagnostics, physicians must optimize antibiotic therapies based on clinical evaluation of patients without specific information on causative bacteria. We have investigated metabolomic analysis of blood for the detection of acute bacterial infection and early differentiation between ineffective and effective antibiotic treatment. A vital and timely therapeutic difficulty was thereby addressed: the ability to rapidly detect treatment failures because of antibiotic-resistant bacteria. Methicillin-resistant (MRSA) and methicillin-sensitive (MSSA) were used and for infecting mice, while natural MSSA infection was studied in humans. Samples of bacterial growth media, the blood of infected mice and of humans were analyzed with combined Gas Chromatography/Mass Spectrometry. Multivariate data analysis was used to reveal the metabolic profiles of infection and the responses to different antibiotic treatments. experiments resulted in the detection of 256 putative metabolites and mice infection experiments resulted in the detection of 474 putative metabolites. Importantly, ineffective and effective antibiotic treatments were differentiated already two hours after treatment start in both experimental systems. That is, the ineffective treatment of MRSA using cloxacillin and untreated controls produced one metabolic profile while all effective treatment combinations using cloxacillin or vancomycin for MSSA or MRSA produced another profile. For further evaluation of the concept, blood samples of humans admitted to intensive care with severe sepsis were analyzed. One hundred thirty-three putative metabolites differentiated severe MSSA sepsis (n = 6) from severe sepsis (n = 10) and identified treatment responses over time. Combined analysis of human, , and mice samples identified 25 metabolites indicative of effective treatment of sepsis. Taken together, this study provides a proof of concept of the utility of analyzing metabolite patterns in blood for early differentiation between ineffective and effective antibiotic treatment in acute infections. |
author |
Antti, Henrik Fahlgren, Anna Näsström, Elin Kouremenos, Konstantinos Sundén-Cullberg, Jonas Guo, Yongzhi Moritz, Thomas Wolf-Watz, Hans Johansson, Anders Fällman, Maria |
spellingShingle |
Antti, Henrik Fahlgren, Anna Näsström, Elin Kouremenos, Konstantinos Sundén-Cullberg, Jonas Guo, Yongzhi Moritz, Thomas Wolf-Watz, Hans Johansson, Anders Fällman, Maria Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
author_facet |
Antti, Henrik Fahlgren, Anna Näsström, Elin Kouremenos, Konstantinos Sundén-Cullberg, Jonas Guo, Yongzhi Moritz, Thomas Wolf-Watz, Hans Johansson, Anders Fällman, Maria |
author_sort |
Antti, Henrik |
title |
Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
title_short |
Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
title_full |
Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
title_fullStr |
Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
title_full_unstemmed |
Metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
title_sort |
metabolic profiling for detection of staphylococcus aureus infection and antibiotic resistance |
publisher |
Umeå universitet, Kemiska institutionen |
publishDate |
2013 |
url |
http://urn.kb.se/resolve?urn=urn:nbn:se:umu:diva-66816 |
work_keys_str_mv |
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