50 research outputs found
A highly automated, continuous method for developing active controllers of product quality attributes in early phase clinical development
The biotherapeutics industry is aggressively targeting increases in product quality. It has been recently suggested that a 10x increase in robustness of product quality will be required in the next 5-10 years to meet the changing market forces of our industry1. This step-increase in quality will likely only be achieved by actively controlling product quality attributes in bioproduction processes, using techniques like model predictive control (MPC)2. Adoption of MPC of product quality attributes in bioproduction processes has been somewhat sluggish, despite the recent introduction of enabling technologies, such as aseptic auto samplers. One barrier for adoption of MPC is the current difficulty involved in developing MPC controllers. This difficulty stems from the fact that critical to quality process technologies like MPC must be adopted early in the drug development process to achieve consistent clinical material throughout the drug development process. There remains a need for a method to quickly and cheaply develop MPC strategies during early phase development for biomanufacturing processes
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Feedback control of intensified fed-batch mammalian cell culture using inline raman spectroscopy
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Data integration methodology that couples novel bioreactor monitoring tools, automated sampling, and applied mathematics to redefine bioproduction processes
International audienc
Use of an automated, integrated laboratory environment to enable predictive modeling approaches for identifying critical process parameters and controlling key quality attributes
An essential part of ensuring a high quality medicine is being able to reliably control Critical Quality Attributes (CQA’s). In the cell culture process, bioreactor conditions, feeds, cell state are some of the many variables that affect CQA’s. Out of this very large set of possible variables, the small subset of these (i.e., critical process parameters, or CPP’s) that have a large effect on the CQA’s must be identified and understood such that those CPP’s can be controlled to ensure quality product. Here, we demonstrate the use of predictive modeling techniques to supplement experimental bioreactor studies when defining critical process parameters (CPP’s) and generating process control strategies. Using predictive models to relate culture process conditions to CQA’s has the benefit of enabling both: 1) using model predictions to supplement experimental data when determining critical process parameters (CPP’s) and the resulting control strategy, and 2) active control of CQA’s based on model forecasts to achieve finer control of CQA’s. In order to support this predictive forecasting approach for bioreactor process definition and control, Bend Research has developed a new bioreactor laboratory environment that allows us to run the right experiments, take the right data, and determine which measurements are actually important in determining CQA’s, and to generate model predictions based on those data sets. Here we demonstrate the application of this new laboratory paradigm in practice, using galactosylation, an important product quality attribute, as the “CQA” of interest. We show how through using automated, perfusion-type systems identification experiments, combined with automated data-generation and reduction tools, we can generate a prediction of the effect of galactose feeding on product qualit
A completely automated high inoculation density fed batch process that accommodates clonal diversity and routinely doubles space time yield as compared to low inoculation density processes
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Ten Questions Concerning the Implications of Carpet on Indoor Chemistry and Microbiology
Carpet and rugs currently represent about half of the United States flooring market and offer many benefits as a flooring type. How carpets influence our exposure to both microorganisms and chemicals in indoor environments has important health implications but is not well understood. The goal of this manuscript is to consolidate what is known about how carpet impacts indoor chemistry and microbiology, as well as to identify the important research gaps that remain. After describing the current use of carpet indoors, questions focus on five specific areas: 1) indoor chemistry, 2) indoor microbiology, 3) resuspension and exposure, 4) current practices and future needs, and 5) sustainability. Overall, it is clear that carpet can influence our exposures to particles and volatile compounds in the indoor environment by acting as a direct source, as a reservoir of environmental contaminants, and as a surface supporting chemical and biological transformations. However, the health implications of these processes are not well known, nor how cleaning practices could be optimized to minimize potential negative impacts. Current standards and recommendations focus largely on carpets as a primary source of chemicals and on limiting moisture that would support microbial growth. Future research should consider enhancing knowledge related to the impact of carpet in the indoor environment and how we might improve the design and maintenance of this common material to reduce our exposure to harmful contaminants while retaining the benefits to consumers