Cargando…

A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation

The microbiome in silage may vary substantially from the onset to the completion of fermentation. Improved additives and inoculants are being developed to accelerate the ensiling process, to enhance fermentation quality, and to delay spoilage during feed-out. However, current methods for preselectin...

Descripción completa

Detalles Bibliográficos
Autores principales: Shan, Guilin, Rosner, Victoria, Milimonka, Andreas, Buescher, Wolfgang, Lipski, André, Maack, Christian, Berchtold, Wilfried, Wang, Ye, Grantz, David A., Sun, Yurui
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8406527/
https://www.ncbi.nlm.nih.gov/pubmed/34475854
http://dx.doi.org/10.3389/fmicb.2021.673795
_version_ 1783746521388285952
author Shan, Guilin
Rosner, Victoria
Milimonka, Andreas
Buescher, Wolfgang
Lipski, André
Maack, Christian
Berchtold, Wilfried
Wang, Ye
Grantz, David A.
Sun, Yurui
author_facet Shan, Guilin
Rosner, Victoria
Milimonka, Andreas
Buescher, Wolfgang
Lipski, André
Maack, Christian
Berchtold, Wilfried
Wang, Ye
Grantz, David A.
Sun, Yurui
author_sort Shan, Guilin
collection PubMed
description The microbiome in silage may vary substantially from the onset to the completion of fermentation. Improved additives and inoculants are being developed to accelerate the ensiling process, to enhance fermentation quality, and to delay spoilage during feed-out. However, current methods for preselecting and characterizing these amendments are time-consuming and costly. Here, we have developed a multi-sensor mini-bioreactor (MSMB) to track microbial fermentation in situ and additionally presented a mathematical model for the optimal assessment among candidate inoculants based on the Bolza equation, a fundamental formula in optimal control theory. Three sensors [pH, CO(2), and ethanol (EtOH)] provided data for assessment, with four additional sensors (O(2), gas pressure, temperature, and atmospheric pressure) to monitor/control the fermentation environment. This advanced MSMB is demonstrated with an experimental method for evaluating three typical species of lactic acid bacteria (LAB), Lentilactobacillus buchneri (LB) alone, and LB mixed with Lactiplantibacillus plantarum (LBLP) or with Enterococcus faecium (LBEF), all cultured in De Man, Rogosa, and Sharpe (MRS) broth. The fermentation process was monitored in situ over 48 h with these candidate microbial strains using the MSMB. The experimental results combine acidification characteristics with production of CO(2) and EtOH, optimal assessment of the microbes, analysis of the metabolic sensitivity to pH, and partitioning of the contribution of each species to fermentation. These new data demonstrate that the MSMB associated with the novel rapid data-processing method may expedite development of microbial amendments for silage additives.
format Online
Article
Text
id pubmed-8406527
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-84065272021-09-01 A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation Shan, Guilin Rosner, Victoria Milimonka, Andreas Buescher, Wolfgang Lipski, André Maack, Christian Berchtold, Wilfried Wang, Ye Grantz, David A. Sun, Yurui Front Microbiol Microbiology The microbiome in silage may vary substantially from the onset to the completion of fermentation. Improved additives and inoculants are being developed to accelerate the ensiling process, to enhance fermentation quality, and to delay spoilage during feed-out. However, current methods for preselecting and characterizing these amendments are time-consuming and costly. Here, we have developed a multi-sensor mini-bioreactor (MSMB) to track microbial fermentation in situ and additionally presented a mathematical model for the optimal assessment among candidate inoculants based on the Bolza equation, a fundamental formula in optimal control theory. Three sensors [pH, CO(2), and ethanol (EtOH)] provided data for assessment, with four additional sensors (O(2), gas pressure, temperature, and atmospheric pressure) to monitor/control the fermentation environment. This advanced MSMB is demonstrated with an experimental method for evaluating three typical species of lactic acid bacteria (LAB), Lentilactobacillus buchneri (LB) alone, and LB mixed with Lactiplantibacillus plantarum (LBLP) or with Enterococcus faecium (LBEF), all cultured in De Man, Rogosa, and Sharpe (MRS) broth. The fermentation process was monitored in situ over 48 h with these candidate microbial strains using the MSMB. The experimental results combine acidification characteristics with production of CO(2) and EtOH, optimal assessment of the microbes, analysis of the metabolic sensitivity to pH, and partitioning of the contribution of each species to fermentation. These new data demonstrate that the MSMB associated with the novel rapid data-processing method may expedite development of microbial amendments for silage additives. Frontiers Media S.A. 2021-08-12 /pmc/articles/PMC8406527/ /pubmed/34475854 http://dx.doi.org/10.3389/fmicb.2021.673795 Text en Copyright © 2021 Shan, Rosner, Milimonka, Buescher, Lipski, Maack, Berchtold, Wang, Grantz and Sun. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Microbiology
Shan, Guilin
Rosner, Victoria
Milimonka, Andreas
Buescher, Wolfgang
Lipski, André
Maack, Christian
Berchtold, Wilfried
Wang, Ye
Grantz, David A.
Sun, Yurui
A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation
title A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation
title_full A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation
title_fullStr A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation
title_full_unstemmed A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation
title_short A Multi-Sensor Mini-Bioreactor to Preselect Silage Inoculants by Tracking Metabolic Activity in situ During Fermentation
title_sort multi-sensor mini-bioreactor to preselect silage inoculants by tracking metabolic activity in situ during fermentation
topic Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8406527/
https://www.ncbi.nlm.nih.gov/pubmed/34475854
http://dx.doi.org/10.3389/fmicb.2021.673795
work_keys_str_mv AT shanguilin amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT rosnervictoria amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT milimonkaandreas amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT buescherwolfgang amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT lipskiandre amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT maackchristian amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT berchtoldwilfried amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT wangye amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT grantzdavida amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT sunyurui amultisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT shanguilin multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT rosnervictoria multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT milimonkaandreas multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT buescherwolfgang multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT lipskiandre multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT maackchristian multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT berchtoldwilfried multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT wangye multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT grantzdavida multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation
AT sunyurui multisensorminibioreactortopreselectsilageinoculantsbytrackingmetabolicactivityinsituduringfermentation