How To Optimize Upstream Bioprocessing
Whitepaper
Published: January 29, 2026
Credit: iStock.
Modern upstream bioprocessing relies on tighter control strategies as regulators and manufacturers push toward real-time decision making.
Yet the inherent variability of living cell systems makes it difficult to maintain consistent performance across batches and scales. Many teams still depend on delayed sampling and indirect indicators that limit visibility into critical processes.
This whitepaper explores the role of process analytical technology (PAT) in enhancing the efficiency of upstream biomanufacturing processes.
Download this whitepaper to discover:
- Which parameters most strongly influence product quality and yield
- How PAT supports reliable measurement of critical process parameters and quality attributes
- Practical strategies for real-time monitoring and control at the bioreactor
Biopharma PAT
Quality Attributes,
Critical Process
Parameters & Key
Performance Indicators
at the Bioreactor
2
Content
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
1
3
2
4
5
6
7
8
PAT Building Blocks 5
PAT for Biopharma 8
Culture & Fermentation Process Types 11
Monitoring Methods 14
Critical Process Parameters 17
Critical Quality Attributes &
Key Performance Indicators 23
Conclusions 31
References 33
3
4
5
6
1
2
3
Intelligent Arc Sensors for pH &
DO In-Situ Measurement 18
Dissolved Oxygen User’s Experiences 19
Real-time Monitoring of DCO2 During
Cell Culture for mAb Production 20
In-Situ Cell Density for Batch &
Perfusion mAb Production 26
Validation of Density Measurement
for Different Cell Types 27
The Benefits of Monitoring Cell Density
During Various Applications 29
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Focus Spots
4
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Abstract
This white paper introduces the concepts of Process Analytical Technology (PAT) in the context of Upstream
Biopharma processes, focusing on the significance of Quality Attributes, Critical Process Parameters, and Key
Performance Indicators at the Bioreactor. The PAT initiative is recommended by the US FDA as a strategy to
minimize the risks associated with pharmaceutical product manufacturing. At Hamilton Process Analytics, we
believe that monitoring and controlling several Critical Process Parameters and Key Performance Indicators
greatly improves the reliability, efficiency, and productivity of bioproduction processes. In this white paper,
we present real-world applications and case studies, showcasing the practical implications of implementing
PAT monitoring the ubiquitous dissolved oxygen and pH, in addition to the often overlooked yet nonetheless
essential critical process parameter dissolved carbon dioxide. We further demonstrate the advantages of
monitoring key performance indicators for cell density, including both total cell density and the insightful
viable cell density, providing examples for different cell types and fermentation process. Overall, this white
paper serves as a comprehensive guide to understanding the critical elements of Biopharma PAT and its
role in enhancing the efficiency and quality of bioreactor manufacturing processes.
Keywords
Biopharma
Process Analytical Technology (PAT)
Quality Attributes
Critical Process Parameters
Key Performance Indicators
Bioreactor
Pharmaceutical cGMP
Automated Control
Monitoring Methods
Intelligent Arc Sensors
Risk Minimization
Biopharmaceutical Product Manufacturing
Process Efficiency
Process Optimization
Upstream Processes
In-situ measurement
Real-time monitoring
PAT initiative
Bioprocesses
Control systems
Sensor technology
Cell growth
Mammalian Cell Cultures
CHO cells
In-line Sensors
Dissolved Oxygen (DO)
Dissolved CO2 (DCO2)
Fed-batch Processes
Perfusion Processes
pH
Total Cell Density
Viable Cell Density
Scale-up and Scale-down
Quality-by-Design (QbD)
Regulatory Framework
Quality Assurance
5
PAT Building
Blocks
1
6
PAT Building Blocks
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
The Process Analytical Technology (PAT) Initiative originates from the
2004 guidance published by the U.S. Food & Drugs Administration (FDA)[1].
It is a part of the broader initiative “Pharmaceutical cGMP for the 21st
century – A risk based approach”[2].
The focus of this initiative is to minimize risks to public
health associated with pharmaceutical product
manufacturing. PAT established a regulatory
framework intended to facilitate the voluntary
development and implementation of innovation in
pharmaceutical development, manufacturing, and
quality assurance. It focuses on enhancing the
understanding and control of the manufacturing
process to achieve Quality-by-Design (QbD): quality
should be built into a product with an understanding
of the product itself and the process by which it is
developed and manufactured along with a knowledge
of the risks involved in the manufacturing process and
how best to mitigate those risks. PAT promotes a
process which starts with the identification of each
product’s specific Critical Quality Attributes (CQAs),
then proceeds with monitoring as often as possible the
related Critical Process Parameters (CPPs) and of
the Key Performance Indicators (KPIs), in order to
automatically control them within pre-defined limits.
The relationship between CQAs, CPP and KPI are
described in their definitions from PAT literature: [3], [4]
• Critical Quality Attribute (CQA): a physical,
chemical, biological, or microbiological property or
characteristic that should be within an appropriate
limit, range, or distribution to ensure the desired
product quality.
• Critical Process Parameter (CPP): a process
parameter whose variability has an impact on a
critical quality attribute and, therefore, should be
monitored or controlled to ensure the process
obtains the desired quality.
• Key Performance Indicator (KPI): a metric for the
status of each production step. KPIs are related to
CQAs and therefore influenced, as well, by the CPPs.
As the CPPs remain within the pre-defined limits,
the KPIs should indicate that each production
step proceeds accordingly resulting, in the end,
in a product having its CQAs within the appropriate
limits, too.
CQAs are still difficult to measure directly in production.
Along the upstream and downstream portions of the
manufacturing process it is most common to monitor
the CPPs and KPIs related to the quality attributes.
PAT recommends various tools for this purpose:
• Multivariate tools for process design,
data acquisition and analysis
• Process analyzers (e.g. in-line sensors or
automated at-line devices)
• Process control tools (e.g. statistical process
control softwares)
• Continuous improvement and knowledge
management tools
7
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
An appropriate combination of these tools may be
applicable to a single-unit operation like a bioreactor,
or to an entire manufacturing process portion like
upstream or downstream. Process analyzers are a
typical example of tools to measure process data.
Their output is used for different scopes like univariate
mechanistic modeling, process characterization or
multivariate analysis such as the “golden-batch”
prediction. This white paper focuses on process
analyzers for the bioreactor. An overview of the
most important performance indicators and process
parameters will be provided, together with examples
of the proper in-situ sensors and equipment used to
monitor them. Figure 1 highlights an example of
in-situ process sensors.
Figure 1
Example of a bioreactor with in-situ process sensors for a microbial fermentation. The chart represents the real-time
monitoring of CPPs such as the Dissolved Oxygen as % saturation (signal in black).
21.04.10 08:00:11 0 00:30 0 01:00 0 01:30 0 02:00 0 02:30 0 03:00 0 03:30 0 04:00 0 04:30 0 05:00
Induction
50% sat
0
0.0
0.00
0.00
Stirrer U/min
pO %2
Luft l/min
Abgas C
O %2
1000
100.0
10.00
10.00
8
PAT for
Biopharma
2
9
PAT for Biopharma
Manufacturing of biopharmaceutical products is a complex process[5].
The complexity is due to the heterogeneity typical for the bioprocesses.
In the upstream process the heterogeneity arises from the cells who are
living subjects.
According to minimal variations of the environment, they can produce higher or lower yield of product with
a quality within the pre-defined limits. Or, in other words, with a molecular conformation bioactive enough
to deliver the expected healing effect on patients. The upstream heterogeneity transfers to the subsequent
product purification steps in downstream processes, too.
Figure 2
Biopharmaceutical manufacturing process. This map shows the commonly monitored real-time Critical Control Parameters
pH, ORP, DO, Conductivity and the Key Performance Indicator Cell Density.
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Buffer Preparation
Centrifuge
Protein A
Chromatography
IEX
Chromatography
TFF
Filtration (Or
Diafiltration)
TFF
Filtration (Or
Diafiltration)
Liquid
Waste
Air Filter
Bioreactor
Harvest Tank
Liquid
Waste
Media Prep Tank
Air
Water Nutrients
CIP Cleaning Compressor
Fill & Finish
Virus Inactivation
10
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Existing scientific literature[6] already describes how the application of PAT to these complex processes could
enable significant improvement in upstream through the use of performance indicators (e.g. viable cell density).
In downstream the application of PAT results in higher quality and purity of the final product (e.g. protein,
vaccines, etc.). It is universally acknowledged that to properly apply PAT, it is essential to move from the manual
sampling and laboratory measurement procedures to automated control[7]. As even minimal variations of
process parameters have a major influence on the final product, controlling them in real-time minimizes the
risk of lower yield and purity.
Real-time monitoring is possible due to sensors which can withstand the Cleaning-In-Place (CIP) and
Sterilization-In-Place (SIP) procedures required to minimize the risk of contamination. This is already common
for the fundamental CPPs: e.g. pH, dissolved oxygen (DO) and conductivity (Figure 2). Further advances in CIP
and SIP compliant sensors have been developed to directly measure KPIs such as Total Cell Density (TCD) and
Viable Cell Density (VCD). These will be described in the following paragraphs.
11
Culture &
Fermentation
Process Types
3
12
Culture & Fermentation Process Types
Bioreactors are vessels used for cultivating mammalian cells
(such as CHO), microbial cells (such as E. Coli) and yeast or small plant
cells (such as moss). These cells work like small factories to produce
the desired compounds.
Culture – Mammalian
MAbs and therapeutic proteins are produced mainly by means of mammalian cells, especially if the needed
therapeutic agent must be compliant with human biology.
The main cell lines are: CHO, BHK, and NSO-GS. Such cells typically exhibit a growth rate of doubling their
numbers every 24 hours. This is relatively slow, therefore monitoring & control strategies should benefit from
longer working times. Nonetheless, mammalian cells have a less robust outer membrane compared to microbial
cells, thus they are more fragile against changing process conditions: they have to be constantly controlled.
Huge cost comes from batch loss due to equipment not working properly to maintain the desired process
conditions[9]. Equipment failures – particularly at the commercial scale – are extremely costly, resulting in lost
batches, a repeat of the bioprocess studies to satisfy regulators, and other such problems[10]. Due to these
reasons, the PAT push for real-time monitoring and automated control means significant improvements for
bioprocesses using mammalian cells.
Culture – Microbial
Several recombinant proteins and vaccines are produced with microbes such as bacteria[11] and yeasts[12],
applications of these cells are widespread due to their robustness and ease of cultivation.
Compared to mammalian cells, microbials typically have shorter fermentation times as well as higher chemical and
physical protein stability. Bacterial cultures can double within 20 to 30 minutes, which is why CPPs such as pH, DO,
cell density and feed rates need to be measured as frequently as possible. Once again real-time control becomes
necessary to achieve true QbD.
Fermentation Process Type – Batch
Batch fermentation processes are often considered the first processes adopted by the biopharmaceutical industry.
Microorganisms are added to culture media in the bioreactor, which has been pre-filled with nutrients like glucose,
glutamine, other amino acids and minerals. The media remains the same during the entire process and is not
supplemented, refilled or exchanged at any time.
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Through a fermentation process they transform nutrients like glucose and amino acids into high-value
biopharmaceutical products as vaccines, monoclonal antibodies (mAbs), and other therapeutic proteins.
Such variability in the processes makes the application of PAT at the bioreactor unique according to the
culture used and the fermentation process type required[8].
13
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
After an initial lag phase, the number of microorganisms increase sharply during the growth phase. Then, after a
stationary phase of suspended population, the culture population drops off in a death phase. The cause for the
population drop-off can be tied to the depletion of nutrient media and the accumulation of toxic substances.
The PAT strategies are limited just to the Critical Process Parameters which can be modified in real-time and
therefore can be controlled: e.g. pH, DO and temperature.
Fermentation Process Type – Fed-Batch
Fed-batch has been the dominant bioprocessing method for decades[8]. The fed-batch process differs from
the traditional batch process by adding nutrients in stages to maximize cell growth. The bioreactor is filled with
a base amount of media to support initial cell growth. Feed media is added when needed to replace nutrients
depleted by the increasing cell population. The cells and their product(s) remain in the bioreactor until the end
of the run. With this setup it is possible to automatically regulate the addition of feed media according to
nutrient levels or viable cell density.
Fermentation Process Type – Perfusion
The term “continuous bioprocessing” generally refers to perfusion technologies. The bioreactor runs at a fixed
volume and fixed cell concentration for 30–90 days or longer depending on cell line. During this time the feed
media is constantly refreshed and the secondary toxic metabolites eliminated while cells are simultaneously
harvested for further processing. Perfusion technology is one of the newest methods for cell culture processes.
Despite the benefits of perfusions, regulatory issues are still a hurdle for its implementation: problems with the
“batch” definition in a continuous process make release procedures more complex. Therefore, even more than
for the other processes‘ types, perfusion is highly dependent on QbD and PAT in order to work properly and be
accepted by regulatory authorities.
14
Monitoring
Methods
4
15
Monitoring Methods
According to the PAT guidance[1] and the scientific literature[8],
the monitoring of the critical process parameters and quality
attributes can be performed following different methods,
like those represented in Figure 3.
Although the in-line (or in-situ) and on-line are the methods of choice for real-time monitoring, at-line and
off-line are still options for those CPPs, KPIs and even CQAs which cannot be accurately measured in the
bioreactor. The following paragraphs detail such differences.
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
On-line
In-line / In-situ
At-line
Off-line
Off-line
The sample is taken out of the bioreactor in
sterile conditions and analyzed in the lab after
physical pretreatments (e.g. filtration and dilution).
The preparation and handling require clear
Standard Operating Procedures (SOPs) as well
as skilled personnel. If problems occur during these
stages, the accuracy of the results will decrease.
Together with the complexity involved in manual
handling, the major disadvantage of off-line
measurement is the time delay, which results in
lower measurement frequency. Due to these issues
off-line measurements should not be considered
true PAT unless there are no other measurement
possibilities (e.g. HPLC for product titer or mass
spectroscopy for product quality). In these examples,
automated controls are not a possibility.
Off-line laboratory measurements are commonly
used to monitor and validate the accuracy of the
in-line/on-line process analyzers. However, factors
such as temperature changes and de-gasing
can negatively influence the accuracy of these
reference measurements.
Figure 3
Different methods of process monitoring according to the PAT
guidance (2004) & later scientific literature
16
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
At-line
In at-line measurement, the sample is removed and analyzed in close proximity to the production process,
either manually or by using automated sampling devices. Similar to off-line measurement, sterile conditions
must be maintained for accurate results. At-line measurement is most common for parameters which cannot
be measured accurately in-situ or on-line.
Advantages of at-line measurement include shortened time delay (relative to off-line), and the possibility for
automated control; however the final results might be too slow to effectively monitor cultures with fast growth
rates such as microbial cultures, according to PAT principles.
On-line
In on-line measurement, the sample is diverted from the manufacturing process with a by-pass stream and
may be returned to the bioreactor. The sample is automatically measured in the by-pass by process sensors.
The advantages of this method lie in the simple sterilization and the straightforward access to the sample in
stationary conditions. The implementation of such a solution requires a specifically designed or modified
bioreactor. The added complexity of set-up makes this method less common than in-line monitoring, yet it
is one of the two methods with which constant monitoring and, therefore, control are possible in real-time.
In-line or In-situ
In in-line or in-situ, the measurement occurs directly in the bioreactor with a process sensor. The generated
measurements are sent in real-time to PLC/SCADA systems for automated control. Process parameters such
as pH, ORP (redox potential), dissolved oxygen, dissolved CO2 (DCO2), temperature, and conductivity are all
common in-situ measurements.
In-line and on-line sensors are the optimal choice for application of PAT principles. They are required to accurately
measure without manual intervention over the entire process run, which can last several weeks or even months.
Therefore, the operation and maintenance of the sensor should not be underestimated to guarantee reliable,
accurate measurement. Preventative measures such as calibration and cleaning should be implemented at
specified intervals to avoid drift or loss of signal. The sensors need to be compatible with repeated CIP and
SIP cleanings. Extended time at temperatures of 120 to 130°C should not affect the sensor‘s performance.
17
Critical Process
Parameters
5
Focus 1
Intelligent Arc Sensors for pH & DO In-Situ Measurement
Efficient, reliable, compact design, and precise process control – these are the factors that GEA Diessel GmbH requires
for monitoring the fermentation plant. They were found in Hamilton Arc sensors[A]. The measurement of the pH and
dissolved oxygen takes place in the pre-fermenter as well as in the main fermenter, in this process.
18
Critical Process Parameters
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Physical and chemical critical process parameters are commonly
monitored using in-line/on-line process sensors or at-line process
analyzers. This chapter provides an overview of each parameter.
Application examples are also presented in focus spots 1 and 2.
pH
The most classical example of PAT applied to bioprocesses is the maintaining of culture pH at a pre-defined
set-point based on an in-situ electrochemical sensor signal. The signal is used to automatically regulate the
addition of a base or acid (or the controls of CO2 for mammalian cells). The working range varies according
to the applications. For example, mammalian cells vary between 6.8-7.4 pH, while others, like insect cells,
are optimized around 6.3 pH. Tight control of this parameter is crucial. Drifting pH measurement often
negatively influences the product’s yield in large scale manufacturing operations[7]. Keeping the pH in the
correct working range has an impact both on cell viability as well as on the product’s quality. An example of
the latter is how pH directly affects the therapeutic affect of mAbs: too low pH level negatively influences
the protein’s glycosylation pattern resulting in a loss of their bioactivity[15]. Glycosylation is one of the most
important CQAs for monoclonal antibody production.
Cross flow Fermentation
750L
75L 150L
Batching tanks
4-20 mA loop
Arc Wi adapter
Arc pH probe
Arc DO probe
Arc Cond. probe
150L
1
• The VisiFerm DO Arc optical dissolved oxygen
sensor was chosen for its compact design and low
maintenance costs. The optical sensing element is
unaffected by pressure fluctuations and does not
require polarization time at startup.
• pH is measured with the EasyFerm Plus Arc
sensor. Its pressurized reference and low drift
after repeated sterilization cycles make it ideal
for fermentation processes.
• All Arc sensors include an integrated microtransmitter which transfers the measurement,
CIP and SIP data, and sensor quality, as well as data
regarding the operating life, via a wireless connection
to the Hamilton ArcAir App for sensor management.
19
Focus 2
Dissolved Oxygen User’s Experiences
The most common process pH sensors are electrochemical combination glass electrodes which are designed to
withstand multiple autoclavations, CIP and SIP cycles. Alternative pH measurement solutions, such as optical
sensors, exist as well; however they have limited measurement range, can only be sterilized by gamma radiation,
and exhibit substantial drift to guarantee accurate measurement.
Dissolved Oxygen
Dissolved oxygen (DO or pO2) is another critical process parameter. Air or oxygen enriched air is supplied to the
bioreactor to support cell demand. Oxygen is used for cellular respiration and cellular growth. While important,
DO can be controlled over a broader range than pH without too significantly impacting cell growth rates or
product quality. Typical DO operating ranges for aerobic cultures lie between 30 to 40% air saturation.
DO levels below this range will affect cell viability, whereas excessive DO levels can oxidize the end-product.
• Maintaining precision over multiple CIP/SIP cycles
Dissolved oxygen concentration is directly related to
cell growth and high protein yield. Roche Pharmaceuticals
uses the optical VisiFerm DO sensor due to its robustness,
enabling them to survive in their applications[B]. Each
sensor is sterilized over 25 minutes at 121°C followed by
a deionized water rinse. This procedure is repeated
several times a week. Roche reports no degradation
of the sensor and precise measurement over time.
• Arc technology prevents downtime and allows
reliable fermentation control
UK based Albumedix focused their production on
Saccharomyces to produce recombinant proteins[C].
An average fed-batch production run last approximately
5 days. During this time dissolved oxygen is reduced from
98% saturation to a designated control point using,
as well, the optical VisiFerm DO sensor. The sensor
outputs a 4-20 mA signal directly from the integrated
microtransmitter into the biocontroller. Sensor status
and actual measurement values can be easily checked
through use of the Hamilton ArcAir app at any time.
• VisiPro DO Ex for low dissolved oxygen
content in ATEX zones
The manufacturer of pharmaceutical agents (APIs)
Medichem relies on an optical dissolved oxygen
sensor[D]. The high dissolved oxygen sensitivity of
sulfur compounds requires a sensor that measures
reliably at ppb levels. In this application, the dissolved
oxygen sensors were located in potentially explosive
atmosphere thus ATEX certification was required.
The optical VisiPro DO Ex Sensor provides quick
response time and simplified maintenance compared
to polarographic sensors. Its integrated microtransmitter
outputs 4-20mA with HART protocol directly into the
control system for simple integration.
Time
End of
reagent
addition
End of
reagent
addition
Deoxygenation Filtration
100
200
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400
500
600
700
800
900
1000
0
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Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
20
Focus 3
Real-time Monitoring of DCO2 During Cell Culture for mAb Production
Industrial bioproduction processes rely on innately variable living organisms to produce complex biomolecules,
as such many parameters can affect the productivity and consistency of processes. Therefore, for producers to
minimize negative effectors and maximize production, they must implement rigorous controls during production.
Adhering to the FDA’s PAT initiative and implementing control of multiple parameters during production is one
suggested method. At the bioreactor, in- / on-line monitoring of as many critical process parameters (CPPs) and key
performance indicators (KPIs) as possible enables a better understanding of processes and immediate correction of
deviations during production. TH OWL based in Germany applied this principle and monitored dissolved CO2 (DCO2)
in addition to ubiquitous dissolved oxygen (DO2) during cell cultivation – to demonstrate the value of additional dissolved
gas measurements during cell cultivation.
In-line measurements continuously notify of process conditions in real-time, preventing knowledge gaps during
production; this study measured in-line DO, DCO2 and pH. During this study, additional metabolic insights were
achievable when gas measurements for both CO2 and O2 were also collected, as were process insights such as the
effect of stirrer speed on parameter measurement and process performance.
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Two types of bioprocess DO sensors are commonly used: polarographic and optical. Polarographic sensors
utilize an electrochemical cell (sometimes referred to as a Clark cell). This design was the first to market,
and has limitations of high maintenance costs, extended startup time, and measurement errors due to fouling
by CO2 and other gases. Optical DO sensors based on the newer quenched luminescent technology have begun
to supplant polarographic technology and are now considered state-of-the-art for in-situ measurement.
Dissolved Carbon Dioxide
Dissolved CO2 (DCO2 or pCO2) is a parameter which is monitored due to its influence on pH values in mammalian
cells and fatty acid synthesis. A higher dissolved carbon dioxide level can inhibit cell growth and reduce production
of secondary metabolites. Carbon dioxide is especially critical in cell culture (mammalian) processes and must be
kept within 5 - 10% air saturation[G]. Process DCO2 sensors based on the Severinghaus measurement principle have
been available for many years, however this indirect method has received limited industrial uptake due to
the significant maintenance efforts and costs required for accurate measurements. The Severinghaus principle
underperforms as it combines the challenges of measuring pH and electrochemical DO in a single sensor[H,I].
Recent technological advances have enabled the development of a maintenance-free, solid-state optical CO2
sensor: CO2NTROL. An example of applications of optical CO2 sensor technology is shown in Focus box 3.
3
21
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Exhaust O2 & CO2 – Off-gas
In some bioprocesses, like those using yeast for antibiotics production, culture viability is controlled by monitoring
indirect indicators like Oxygen Uptake Rate (OUR) and Carbon Dioxide Evolution rate (CER). The ratio between
O2 and CO2 entering the bioreactor and the exhaust/off-gas measured after air filter is used as a proxy of culture
viability. Exhaust/off-gas can be measured with at-line mass spectrometers or with on-line process sensors
based on galvanic measurement and infrared (IR) absorption. These measurements are mainly implemented
for microbial culture, where the measurement is considered complicated and often not enough reliable.
Nutrients & Metabolites
Proper monitoring of nutrient (or substrates) concentration, as well as measurement of secondary metabolites,
is important, especially for fed-batch and perfusion processes, as the feeding strategies can be controlled during
the process. Glucose or glycerol are the main C-source (carbon source), while glutamine is the main N-source
(nitrogen source), together with other amino acids in these bioprocesses. During the fermentation they are
consumed, and secondary metabolites such as lactate, acetate and ammonium are produced. Suboptimal feeding
strategies can produce excessive secondary metabolites which hinder cell viability and product yield. For example,
the accumulation of lactate in mammalian cultures has long been recognized as an inhibitory factor for cell growth
and recombinant protein production[13]. Therefore, control of nutrient feeding is of paramount importance
(along with pH, DO and temperature), for process optimization.
3
0
0.2 60 0
0.4
0.6
0.8
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Cultivation time t/h
Viable Cell Density [caells/mL]
Dissolved
O2 [% air saturation]
Stirrer speed [RPM]
cGlucose [mmcl/L]
Dissolved CO2 [%]
x106
cGlucos Viable Cell Density [cells/mL] e Dissolved CO2 [%] Dissolved O2 [% air saturation] Stirrer speed [RPM] [mmcl/L
Figure 4
In-line measured values of DO and DCO2 along with off-line measuring of VCD and Glucose at different stirrer speeds.
22
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
In-line and on-line sensors are typically based on molecular spectroscopy technologies like Near-Infrared
(NIR) and Raman. They are secondary measurement technologies, meaning measurement with off-line
reference methods are required to calibrate them through use of statistical multi variate data analysis (MVDA).
The measurement accuracy of these methods is strictly related to the specific bioprocess environment and to the
quality of the off-line measurements used for calibration. There have been no published studies which show the
use of the same global MVDA calibrations to predict different cell processes with an acceptable accuracy[7].
For all such reasons, they are considered too labor-intensive and too expensive for a successful implementation
in production environments.
The complexity of these measurements elucidate why at-line and/or off-line methods are still the most common
option for nutrient and metabolite monitoring, despite not being optimal for PAT compliance. This equipment may
utilize different technologies: HPLC, glucose oxidase, or other biochemical analysis to perform the measurement.
These analyzers can be automated or semi-automated. They often require separate devices for sterile sampling
and measurement cycles often require a relatively long measurement time (minutes)[14]. Yet, for the reason
explained, they remain the only option available for measuring the culture’s substrate and secondary metabolites.
Temperature, Pressure & ORP
Temperature is a fundamental and well-controlled parameter in bioprocesses. Bioprocesses are typically
monitored and controlled tightly between 0 and 60°C, including during sterilization cycles. Several devices and
measuring principles are common to measure temperature in bioreactors such as thermistors, resistance and
bimetallic thermometers[8].
Other physical and chemical CPPs, such as pressure and ORP can be controlled to optimize the cultures
fermentation processes, as well. Pressure is an important control parameter because it affects not only the
bioprocess but also safety. In general, it influences the saturation concentration of the gases dissolved in the
liquid phase, like DO and DCO2. Most common measuring options are represented by piezoelectric-based and filled
diaphragm transducers.
Monitoring the oxidation reduction potential (ORP) provides information regarding the concentration of oxidizing
or reducing molecules. ORP can provide important feedback for understanding the process: e.g. optimizing the
yield from mammalian cells. Similar to pH sensors, the most common in-situ monitoring option is a combination
reference/measurement electrode.
23
Critical Quality
Attributes & Key
Performance
Indicators
6
24
Critical Quality Attributes
& Key Performance Indicators
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Monitoring CPPs makes it possible to maintain the related Critical Quality
Attributes and Key Performance Indicators within the pre-defined limits.
Collected process data are used in case of need for root cause analysis or for process characterization studies
based on experimental design (e.g. for scale-up and scale-down). PAT will be best fulfilled when CQAs and KPIs
can be directly measured as often as possible, as explained in the following paragraphs.
Product Quality & Product Titer
The main goal of bioreactor operation is to produce as much product as possible with the quality needed to make
it functional for its therapeutic purpose. Quality and yield are important as the product often requires further
purification in downstream processes that may cause additional modifications or losses.
As previously mentioned, the most important biopharmaceutical products are: monoclonal antibodies,
recombinant proteins, or other types of therapeutic proteins (like vaccines). Therefore, bioprocess CQAs are
often considered attributes specific to the protein’s quality such as the glycosylation patterns or molecular-size
distribution[4]. The most commonly used KPI at the bioreactor is the total protein titer and eventually specific titer
for the protein type (e.g. IgG).
The most promising results for in-situ measurement of product titer and quality have been obtained with
spectroscopic technologies, which have the same limitations described for nutrient and metabolite measurements.
Likewise, HPLC, mass spectrometers, NMR, fluorescence or super-resolution microscopy, capillary electrophoresis
or biochemical analyzers installed at-line or off-line are often seen as more reliable solutions to quantify the
mentioned CQAs and KPIs at the bioreactor[14]. Again, sterile sampling technologies and procedures make
these quality attributes and process indicators limited with respect to PAT control guidelines.
Total and Viable Cell Density
Other Key Performance Indicators successfully used for in-situ control at the bioreactor are Total Cell Density
(TCD) and Viable Cell Density (VCD). TCD indicates the total amount of cells in the bioreactor, while VCD is an
indicator of the viable cells (alive and still productive). VCD is directly correlated with final product yield and is
thus of high importance.
Different off-line measurement technologies have been established over the years[8]. For example, total cell
density, as well as viable cell density, can be measured via off-line automated cell counter systems. A major
disadvantage is that these methods are based on time-consuming sampling procedures which reduce the
possibility that the cell growth is monitored in a process-safe way compatible with PAT principles. For this
reason several efforts have been put forth over the years to find technologies suited for accurate and
reproducible real-time measurements.
25
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Some efforts for real-time cell density are based on the use of molecular spectroscopy, others on soft sensing
techniques (e.g. algorithms based on the evolution of OUR and CER), both requiring MVDA to generate application
specific calibrations which are labor-intensive to maintain.
The most reliable measurements are obtained using near-infrared light to measure culture turbidity in
microbial fermentations, or by using capacitance sensors to measure cell viability (especially for mammalian
cell cultures). Turbidity and capacitance are currently the most common technologies used to measure
TCD and VCD in real-time. These sensors can withstand autoclavations, CIP and SIP cycles to meet hygienic
standards. Examples of the application of such technologies are provided in focus spot 4,5 and 6.
26
Focus 4
In-Situ Cell Density for Batch & Perfusion mAb Production
The monitoring of KPIs such as Total Cell Density and Viable Cell Density are currently available as in-situ
measurements with process sensors. Studying these indicators allows the real-time control of the nutrient feed rate
based on the growth rate of cell cultures. The Cell Culture Research Team of the University of Bielefeld investigated
the accuracy of Incyte and Dencytee (Hamilton VCD and TCD sensors), for both perfusion and batch production of
mAb using CHO cells[E]. The test demonstrated the following benefits:
• Accurate measurement of the cell growth enabling real-time control
• Better insight about cell health based on the parallel measurement of TCD and VCD
• Reliable and stable measurements for long-lasting continuous fermentations
4
The Incyte is based on capacitance principles. In an
alternating electrical field, viable cells behave like small
capacitors. The charge from these small capacitors is
measured by the sensor and reported as permittivity
(capacitance per area).
The Dencytee is based on turbidity measurement of
a suspension at NIR wavelengths. All particles and
molecules that scatter the NIR light will be detected and
can be correlated to the total cell density.
Time / h
Experiment 1 - Perfusion Process 1
20
40
60
80
100
120
140
0
2.30
3.30
4.30
5.30
6.30
1.30 0 50 100 150 200 250 300 350
10
20
30
40
50
60
0
Time / h
Experiment 3 - Batch Process 1
1.80
2.30
2.80
3.30
4.30
3.80
1.30 0 20 40 60 80 1000 120
Performance comparison of cell density measurement for the
batch set-up.
Performance comparison of cell density measurement for the
perfusion set-up.
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
27
Focus 5
Validation of Density Measurement for Different Cell Types
Hamilton’s cell density sensors Dencytee (total cell density) and Incyte (viable cell density) have been validated for
use with different cell types including both prokaryotic (Gram-positive and Gram-negative bacteria) and eukaryotic
cells (mammalian, insect, fungi, yeasts and algae)[16] [F, L, M, N, O, P]. Shown below are examples of data collected using
Dencytee and Incyte, either together or in combination, for different cell types, highlighting the compatibility of
these measurement principles for different applications.
CHO cells, Incyte
and Dencytee[F] Human Cells, Incyte[L]
Insect, Incyte[M] Yeast, Dencytee[N]
5
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Time / h
A
6.75
7
7.25
7.5
6.5
25
50
75
100
0 0 65 130 195 260
pHonline
pHoffline
Dissolved oxygen
Time / h
C
65
110
165
220
0 0 65 130 195 260
measured VCD
Incyte model
Dencytee model
Time / h
D
65
110
165
220
0 0 65 130 195 260
Time / h
B
6.75
7
7.25
7.5
6.5
25
50
75
100
0 0 50 100 150 200
0 4 12 18
6.00 0.00 0.10 3.62
7.00 50.00 2.55 102.69
8.00 100.00 5.00 201.76
24
pH pO2 VCD
Time / h
Time / h
50
100
150
200
250
300
350
400
450
500
550
600
0 0 5 10 15 20 25 30 35 40 45 50
50
100
150
200
250
300
350
400
450
0
DCW In-line automated
DCW Off-line manual
WCW In-line automated
WCW Off-line manual
OD In-line automated
ODW Off-line manual
Process time / h
2
4
6
8
10
12
0
0 24 48 72 96
Off-line Data polyclonal
Off-line Data Wild-Type
In-line Data polyclonal
In-line Data Wild-Type
28
Cyanobacteria, Dencytee[O]
Moss, Incyte[P]
5
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Time / day
0 10 20 30 40 50 60 70 80 90 100 110 120 130 140 150 160 170 180
0.5
1.0
1.5
2.0
2.5
3.0
3.5
0.0
0 20 40 60 80 100 120 140 160 180 200 220 240 260 280 300 320 340 360
2
4
6
8
10
0
7
14
21
28
35
0
Off-line cell density [g/L] LED Intensity Cell density correlation
Cultivation time / h
29
Focus 6
The Benefits of Monitoring Cell Density During Various Applications
Due to the necessity of producing large volumes of viable cells during bioprocesses in Biopharma, in-line viable cell
density sensors, such as Incyte, offer the potential for more than just determining the percentage of viable cells in a
process. The continuous, real-time data they collect enables users to understand the effects of process changes on
performance (e.g., addition or limitation of nutrients on cell physiology) and to optimize conditions to prevent apoptosis
and/or extend the production phase, in addition to determining timings for seed transfer during scaling for maximum
productivity and efficiency with respect to cultivation recovery. The following examples demonstrate the breadth of
application of these sensors and the versatility of the multivariate information available from a single continuous
in-line measurement.
Cells grown on Microcarriers[J]
Continuous processing – perfusion processes using
mammalian cells (CHO)[J],[K]
Time / h
This data point is an outlier
that can be seen as compared
to the Incyte measurement.
Without Incyte, an incorrect
process estimation would
likely happen.
20
40
60
80
100
120
140
0
1.0E+06
2.0E+06
3.0E+06
4.0E+06
5.0E+06
6.0E+06
7.0E+06
0.0E+06
0.00 20.00 40.00 50.00 80.00 100.00 120.00 140.00
Viable Cell Count Incyte Measurement
Cell Retention
Bioreactor
Feed
Cell Bleed
Media Harvest
Waste
6
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
Time / h
2
1
3
4
6
8
10
9
7
5
11
0
1
2
3
4
5
6
7
0
0 50 100 150 200 250
Glutamine [mmol/L] Alanine [mmol/L] Glucose [g/L] Incyte Measurement
30
Automated control of seed train transfer[J],[K]
Improving the efficiency of processes during scale transfer[N],[17]
Time Time / h
20
40
60
80
100
120
0
2.30
3.30
4.30
5.30
6.30
1.30
0 50 100 150 200 250 300
Off-Line
Incyte Measurement
Dencytee Measurement
6
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
0 2 4 6
0
25
50
75
100
125
80
85
95
90
100
Time / days
VCD [x106 cells/mL]
Cell Line mAb4
Viability [%]
0 2 4 6
0
25
50
75
100
125
80
85
95
90
100
Time / days
Cell Line mAb5
Viability [%]
VCD [x106 cells/mL]
5L VCD 200L VCD 500L VCD 5L Viability 200L Viability 500L Viability
31
Conclusions
8
32
Conclusions
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
With the implementation of PAT in bioprocesses,
Critical Quality Attributes, Critical Process Parameters
and Key Performance Indicators must be monitored.
The most valuable measurements are performed in-situ to allow for real-time control strategies. The data
derived from these continuous measurements are also valuable for use in root cause analysis or for process
characterization such as scale-up and scale-down studies.
Table 1 summarizes the most important CPPs, CQAs and KPIs at the bioreactor, with an overview of the
available measuring methods along with their typical accuracy and limitations.
The crucial CPPs allowing for real-time control strategies are pH, DO, and temperature. Other parameter’s
measurement such as DCO2, nutrients and metabolites are accurate and repeatable just through at-line or off-line
analyzers, making them complicate for real-time control strategies. In regards to CQAs and KPIs, those related to
the product quality and product titer are important, nonetheless they are likewise complicate to measure in-line
with acceptable accuracy. In conclusion, the real-time monitoring of the mentioned crucial CPPs, together with the
in-line measurement of TCD and VCD represents currently the best PAT option to control product yield and quality
at the bioreactor.
Table 1: Summary of the CPPs, CQAs and KPIs at the bioreactor
PAT Method of Choice Alternative Methods
In-line /
In-situ Sensor
On-line
Analyzer
At-line &
Off-line Analyzer
Critical
Process
Parameter
pH
DO
DCO2
Temperature
Exhaust O2/CO2
Nutrients e.g. Glucose, Glutamine
Metabolites e.g. Lactate, Ammonium
Critical Quality
Attribute
Product Quality e.g. Protein Glycosylation
Key Performance
Indicator
Product Titer
Total Cell Density
Viable Cell Density
The availability of monitoring methods according to the scientific literature is represented with
the indication of the corresponding measurement accuracy and robustness:
Accuracy, robustness and repeatability good enough to be commonly implemented for process control
Accuracy, robustness and repeatability not commonly accepted for process control
No true option available
Not required
33
References
9
34
References
[1] U.S. Department of Health and Human Services (2004): Guidance for Industry. PAT – A Framework for
Innovative Pharmaceutical Development, Manufacturing, and Quality Assurance. Rockville.
[2] FDA, Pharmaceutical cGMPs for the 21st century – A risk based approach; Final Report, September 2004
[3] M. Mitchell, Determining Criticality-Process Parameters and Quality Attributes, BioPharm International,
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[4] S. Haigney, QbD and PAT in Upstream and Downstream Processing, www.processdevelopmentforum.com,
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[5] Rakhi B. Shah et al., Application of PAT in Biotech Drug Substance Manufacturing, Biotechnology and
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[6] C. Undey, D. Low et al., PAT applied in Biopharmaceutical Process Development and Manufacturing,
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Biotechnology: Equipment, Process Design, Sensing, Control and cGMP Operations, Volume 2, First Edition,
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[9] E. S. Langer, R. A. Rader Continuous Bioprocessing and Perfusion: Wider Adoption Coming as Bioprocessing
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[10] W. S. Langer, Average Batch Failure Rate Worsens, Genetic Engineering & Biotechnology News, Vol. 36,
No. 17, 01 October 2016
[11] G. L. Rosano, E. A. Ceccarelli, Recombinant protein expression in microbial systems, Editorial, Frontiers in
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[12] G. Melmer, G. Gellissen, G. Kunze, Recombinant Vaccine Production in Yeast, BioPharm International,
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[13] M.M. St. Amand, P. G. Millili et al. Strategic Vision for Integrated Process Analytical Technology and
Advanced Control in Biologics Manufacturing, Series Vol 33, Pages 9-28, 2012
[14] W. Whitford, C. Julien, Analytical Technology and PAT, Supplement Bioreactors Chapter 3,
BioProcess International, p. 32-41, January 2007
[15] B. C. Mulukutla, A. Yongky, S. Grimm et al., Multiplicity of Steady States in Glycolysis and Shift of Metabolic
State in Cultured Mammalian Cells, PLoS One; 10(3): e0121561., 25 March 2015
[16] Bernadett Kiss, Áron Németh, Application of a High Cell Density Capacitance Sensor to Different
Microorganisms, Periodica Polytechnica Chemical Engineering, Volume 40, Issue 4, p. 290-297, 2016.
(View of Application of a High Cell Density Capacitance Sensor to Different Microorganisms (bme.hu))
[17] Rittershaus, E. S. C. et al. N-1 Perfusion Platform Development Using a Capacitance Probe for
Biomanufacturing. Bioengineering 9, (2022). https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9029935/
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
35
All white papers, application notes and Hamilton documentation are available for download at
www.hamiltoncompany.com
[A] M. Culina, C. Brokamp, More functionality, lower costs, better usability with the Arc system,
Ref. 695099, 2012 695099_01_Arc_in_GEA_EN.pdf (hamiltoncompany.com)
[B] C. Miscenic, Oxygen Measurement in Fermentation with VisiFerm DO, Ref. 695098, 2013
695098_03_AppNote_Visiferm_EN.pdf (hamiltoncompany.com)
[C] M. Williamson, VisiFerm DO in the production of recombinant proteins, Ref. 695170, 2017
695170_AppNote_VisiFerm-Albumedix_EN_LR.pdf (hamiltoncompany.com)
[D] J. Garcia, M. Benito, Dissolved oxygen quantification in a product sensitive to it, Ref. 695218, 2016
695218_AppNote_DO-Quantification_EN_LR.pdf (hamiltoncompany.com)
[E] H. Büntemeyer, A. Schmidt, Real-time Cell Density Measurement for PAT Applications, Ref. 695234, 2017a
Real-time cell density measurement for PAT applications | Process Analytics (hamiltoncompany.com)
[F] K. Kandra, P. Kroll, M. Brunner, P. Wechselberger, C. Herwig Online Monitoring of CHO Cell Culture,
Ref. 695172, 2014 Online monitoring of CHO cell culture | Process Analytics (hamiltoncompany.com)
[G] Real-time Monitoring of DCO2 in Addition to DO, Ref: 111006479/00
Real-time Monitoring of DCO2 in Addition to DO | Process Analytics (hamiltoncompany)
[H] Should CO2 Be A Critical Process Parameter? Ref: 111003179/00
Should CO2 Be A Critical Process Parameter? | Process Analytics (hamiltoncompany.com)
[I] Are CO2 Measurement Technologies Good Enough? Ref: 111003180/00
Are CO2 Measurement Technologies Good Enough? | Process Analytics (hamiltoncompany.com)
[J] Cell Density Guide, 2018 Ref: L30019
Cell Density Guide | Process Analytics (hamiltoncompany.com)
[K] Sensing the Future, 2020 Ref: 10105112
Sensing the Future | Process Analytics (hamiltoncompany.com)
[L] Human Platelet Protein Production from Human Cell Culture using an Advanced Bioreactor,
Ref: 111004661/00. Human Platelet Protein Production from Human Cell Culture using an
Advanced Bioreactor | Process Analytics (hamiltoncompany.com)
[M] Correlation between Capacitance Signal and Viable Cell Density of Insect Cells, Ref: 111004662/00.
Correlation between Capacitance Signal and Viable Cell Density of Insect Cells | Process Analytics
(hamiltoncompany.com)
[N] Real-Time Total Cell Density Measurement of Yeast Fermentations, Ref: 695241/00.
Real-Time Total Cell Density Measurement of Yeast Fermentations | Process Analytics
(hamiltoncompany.com)
[O] Continuous Cyanobacteria - Limnospora (Spirulina) Monitoring in the MELiSSA Loop using Dencytee,
Ref: 111004663/00. Continuous Cyanobacteria | Process Analytics (hamiltoncompany.com)
[P] Real-Time VCD Monitoring of Moss for Therapeutic Protein Production, Ref: 695247/00.
Real-Time VCD Monitoring of Moss for Therapeutic Protein Production | Process Analytics
(hamiltoncompany.com)
Biopharma PAT: Quality Attributes, Critical Process Parameters
& Key Performance Indicators at the Bioreactor
05. May 2024
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