Cees Haringa
Delft University of Technology
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Featured researches published by Cees Haringa.
Engineering in Life Sciences | 2016
Cees Haringa; Wenjun Tang; Amit T. Deshmukh; Jianye Xia; Matthias Reuss; Joseph J. Heijnen; Robert F. Mudde; Henk Noorman
The trajectories, referred to as lifelines, of individual microorganisms in an industrial scale fermentor under substrate limiting conditions were studied using an Euler‐Lagrange computational fluid dynamics approach. The metabolic response to substrate concentration variations along these lifelines provides deep insight in the dynamic environment inside a large‐scale fermentor, from the point of view of the microorganisms themselves. We present a novel methodology to evaluate this metabolic response, based on transitions between metabolic “regimes” that can provide a comprehensive statistical insight in the environmental fluctuations experienced by microorganisms inside an industrial bioreactor. These statistics provide the groundwork for the design of representative scale‐down simulators, mimicking substrate variations experimentally. To focus on the methodology we use an industrial fermentation of Penicillium chrysogenum in a simplified representation, dealing with only glucose gradients, single‐phase hydrodynamics, and assuming no limitation in oxygen supply, but reasonably capturing the relevant timescales. Nevertheless, the methodology provides useful insight in the relation between flow and component fluctuation timescales that are expected to hold in physically more thorough simulations. Microorganisms experience substrate fluctuations at timescales of seconds, in the order of magnitude of the global circulation time. Such rapid fluctuations should be replicated in truly industrially representative scale‐down simulators.
Biotechnology and Bioengineering | 2017
Wenjun Tang; Amit T. Deshmukh; Cees Haringa; Guan Wang; Walter M. van Gulik; Wouter A. van Winden; Matthias Reuss; Joseph J. Heijnen; Jianye Xia; Ju Chu; Henk Noorman
A powerful approach for the optimization of industrial bioprocesses is to perform detailed simulations integrating large‐scale computational fluid dynamics (CFD) and cellular reaction dynamics (CRD). However, complex metabolic kinetic models containing a large number of equations pose formidable challenges in CFD‐CRD coupling and computation time afterward. This necessitates to formulate a relatively simple but yet representative model structure. Such a kinetic model should be able to reproduce metabolic responses for short‐term (mixing time scale of tens of seconds) and long‐term (fed‐batch cultivation of hours/days) dynamics in industrial bioprocesses. In this paper, we used Penicillium chrysogenum as a model system and developed a metabolically structured kinetic model for growth and production. By lumping the most important intracellular metabolites in 5 pools and 4 intracellular enzyme pools, linked by 10 reactions, we succeeded in maintaining the model structure relatively simple, while providing informative insight into the state of the organism. The performance of this 9‐pool model was validated with a periodic glucose feast–famine cycle experiment at the minute time scale. Comparison of this model and a reported black box model for this strain shows the necessity of employing a structured model under feast–famine conditions. This proposed model provides deeper insight into the in vivo kinetics and, most importantly, can be straightforwardly integrated into a computational fluid dynamic framework for simulating complete fermentation performance and cell population dynamics in large scale and small scale fermentors. Biotechnol. Bioeng. 2017;114: 1733–1743.
Biotechnology and Bioengineering | 2018
Guan Wang; Baofeng Wu; Junfei Zhao; Cees Haringa; Jianye Xia; Ju Chu; Yingping Zhuang; Siliang Zhang; Joseph J. Heijnen; Walter M. van Gulik; Amit T. Deshmukh; Henk Noorman
In the present work, by performing chemostat experiments at 400 and 600 RPM, two typical power inputs representative of industrial penicillin fermentation (P/V, 1.00 kW/m3 in more remote zones and 3.83 kW/m3 in the vicinity of the impellers, respectively) were scaled‐down to bench‐scale bioreactors. It was found that at 400 RPM applied in prolonged glucose‐limited chemostat cultures, the previously reported degeneration of penicillin production using an industrial Penicillium chrysogenum strain was virtually absent. To investigate this, the cellular response was studied at flux (stoichiometry), residual glucose, intracellular metabolite and transcript levels. At 600 RPM, 20% more cell lysis was observed and the increased degeneration of penicillin production was accompanied by a 22% larger ATP gap and an unexpected 20‐fold decrease in the residual glucose concentration (Cs,out). At the same time, the biomass specific glucose consumption rate (qs) did not change but the intracellular glucose concentration was about sixfold higher, which indicates a change to a higher affinity glucose transporter at 600 RPM. In addition, power input differences cause differences in the diffusion rates of glucose and the calculated Batchelor diffusion length scale suggests the presence of a glucose diffusion layer at the glucose transporting parts of the hyphae, which was further substantiated by a simple proposed glucose diffusion‐uptake model. By analysis of calculated mass action ratios (MARs) and energy consumption, it indicated that at 600 RPM glucose sensing and signal transduction in response to the low Cs,out appear to trigger a gluconeogenic type of metabolic flux rearrangement, a futile cycle through the pentose phosphate pathway (PPP) and a declining redox state of the cytosol. In support of the change in glucose transport and degeneration of penicillin production at 600 RPM, the transcript levels of the putative high‐affinity glucose/hexose transporter genes Pc12g02880 and Pc06g01340 increased 3.5‐ and 3.3‐fold, respectively, and those of the pcbC gene encoding isopenicillin N‐synthetase (IPNS) were more than twofold lower in the time range of 100–200 hr of the chemostat cultures. Summarizing, changes at power input have unexpected effects on degeneration and glucose transport, and result in significant metabolic rearrangements. These findings are relevant for the industrial production of penicillin, and other fermentations with filamentous microorganisms.
Microbial Biotechnology | 2018
Guan Wang; Junfei Zhao; Cees Haringa; Wenjun Tang; Jianye Xia; Ju Chu; Yingping Zhuang; Siliang Zhang; Amit T. Deshmukh; Walter M. van Gulik; Joseph J. Heijnen; Henk Noorman
In a 54 m3 large‐scale penicillin fermentor, the cells experience substrate gradient cycles at the timescales of global mixing time about 20–40 s. Here, we used an intermittent feeding regime (IFR) and a two‐compartment reactor (TCR) to mimic these substrate gradients at laboratory‐scale continuous cultures. The IFR was applied to simulate substrate dynamics experienced by the cells at full scale at timescales of tens of seconds to minutes (30 s, 3 min and 6 min), while the TCR was designed to simulate substrate gradients at an applied mean residence time ( τc ) of 6 min. A biological systems analysis of the response of an industrial high‐yielding P. chrysogenum strain has been performed in these continuous cultures. Compared to an undisturbed continuous feeding regime in a single reactor, the penicillin productivity (qPenG) was reduced in all scale‐down simulators. The dynamic metabolomics data indicated that in the IFRs, the cells accumulated high levels of the central metabolites during the feast phase to actively cope with external substrate deprivation during the famine phase. In contrast, in the TCR system, the storage pool (e.g. mannitol and arabitol) constituted a large contribution of carbon supply in the non‐feed compartment. Further, transcript analysis revealed that all scale‐down simulators gave different expression levels of the glucose/hexose transporter genes and the penicillin gene clusters. The results showed that qPenG did not correlate well with exposure to the substrate regimes (excess, limitation and starvation), but there was a clear inverse relation between qPenG and the intracellular glucose level.
Chemical Engineering Journal | 2014
Duong A. Hoang; Cees Haringa; L.M. Portela; Michiel T. Kreutzer; Chris R. Kleijn; Volkert van Steijn
Chemical Engineering Science | 2017
Cees Haringa; Amit T. Deshmukh; Robert F. Mudde; Henk Noorman
Biochemical Engineering Journal | 2016
Yu Liu; Ze-Jian Wang; Jianye Xia; Cees Haringa; Ya-ping Liu; Ju Chu; Yingping Zhuang; Siliang Zhang
Chemical Engineering Science | 2017
Cees Haringa; Henk Noorman; Robert F. Mudde
International Journal of Heat and Fluid Flow | 2018
Siddhartha Mukherjee; Ahad Zarghami; Cees Haringa; Kevin van As; Sasa Kenjeres; Harry E.A. Van den Akker
Chemical Engineering Science | 2018
Cees Haringa; Wenjun Tang; Guan Wang; Amit T. Deshmukh; Wouter A. van Winden; Ju Chu; Walter M. van Gulik; Joseph J. Heijnen; Robert F. Mudde; Henk Noorman