Cambridge Healthtech Institute’s Kent Simmons recently spoke with Richard D. Braatz about his upcoming presentation “Plant-Wide Process Control Model for Biological Manufacturing,” to be held August 19 in Boston as part of the Process Characterization, Qualification and Control conference at the 8th Annual Bioprocessing Summit.
Richard D. Braatz is the Edwin R. Gilliland Professor of
Chemical Engineering at MIT. His expertise is in process
systems and control (BS 1984, Oregon State University; MS
1991 and PhD 1993, California Institute of Technology).
After a postdoc at DuPont, a faculty position at the
University of Illinois at Urbana-Champaign, and a Visiting Scholar
position at Harvard University, he joined the faculty at MIT where he
does research in (bio)pharmaceutical manufacturing. He leads the
Quality-by-Design and control systems activities in the Novartis-MIT
Center for Continuous Manufacturing and in the development of the
Integrated and Scalable Cyto-technology (InSCyT) Platform for
Biopharmaceutical Manufacturing on Demand. He has consulted or
collaborated with more than 20 companies including Novartis, Pfizer,
Merck, Bristol-Myers Squibb, Biogen, and Abbott Laboratories. His
pharmaceuticals research has been recognized by the AIChE PD2M
Award for Outstanding Contribution to QbD for Drug Substance, the
ISA Technical Innovation Award, IEEE Control Systems Society Transition
to Practice Award, and the AIChE Excellence in Process Development
Research Award.
Plant-Wide Process Control Model for Biological Manufacturing
Richard D. Braatz is the Edwin R. Gilliland Professor of Chemical Engineering at MIT.

Define a “plant-wide” strategy for the control of
critical quality attributes.
The attributes of any material produced by a manufacturing unit operation
is affected by variations in feed compositions and operations. As
the material from one unit operation is fed into the next unit operation
and so forth through a manufacturing plant, the variations in material
attributes are coupled in their effects on the critical quality attributes
(CQAs) of the final drug product. A plant-wide strategy systematically
takes all of the unit operations and their interconnections into account
when designing the control systems to ensure that all of the product
CQA specifications are satisfied.

What approaches are used to ensure that all of the
CQA specifications are met?
For each CQA, the four approaches to consider for its control are: (1)
direct measurement of the CQA, (2) prediction of the CQA based on a
mechanistic model that is fed measurements of related variables and is
running in parallel with operations, (3) prediction of the CQA based on
an empirical or semiempirical model (e.g., response surface map, chemometrics
model) that is fed measurements of other variables, and (4)
operation of the related variables known as critical process parameters
(CPPs) to lie within a design space, that is, some specified set shown in
offline studies to provide quality assurance. While at least one approach
is needed for each CQA, employing multiple approaches can provide
further quality assurance.

What was the first implementation of plant-wide
modeling and control to a continuous
manufacturing plant?
The Novartis-MIT Center for Continuous Manufacturing completed the
design and implementation of the first end-to-end integrated continuous
manufacturing plant for a pharmaceutical product in 2012. The
plant started from a chemical intermediate and performed all of the
intermediate reactions, separations, crystallization, drying, and formulation
to form final tablets in one tightly controlled process. A mathematical
model of the entire plant was used to design the control systems to
ensure that the critical quality attributes were satisfied.

How does plant-wide modeling and control differ
from small-molecule to biologic drug
manufacturing?
Although the details of the unit operations are different, the overall
strategy is the same. First mathematical models that include process
dynamics, disturbances, and uncertainty estimates are constructed and
validated for each unit operation. Mechanistic models are preferred
although sometimes (semi)empirical models are required. The second
step is to apply the models to design and verify the control systems for
each unit operation to satisfy local material attributes. The third step is
to combine the models into a process simulation platform to create a
plant-wide model for the entire manufacturing chain. Then sensitivity
analysis is applied in the virtual plant simulations to design and evaluate
the effectiveness of the plantwide control system in meeting the product
CQA specifications.
To learn more about his presentation and The Bioprocessing Summit, visit www.bioprocessingsummit.com/Process-Characterization/