The Transformative Power of Insights in Biopharma Development: Why a Digital Backbone Matters

Discover how a digital backbone can help to realize the full potential of data and generate meaningful insights.

Digital Backbone

Digitalization underpins the biopharma industry’s endeavors to keep up with scientific and technological innovation and to ultimately get life-changing therapeutics into the hands of patients as quickly as possible. However, many have failed to leverage the capabilities of digital and analytics tools, setting them behind on their digital maturation journey and impacting the delivery of therapeutics to market. Biopharma executives are realizing that they now need to “adopt digital technologies faster to win in the market”.¹

The industry as a whole is on the digital transformation path, but individual organizations often implement fragmented software tools that mimic manual processes in a digital format rather than rethinking their objective in a digital paradigm. This results in disparate and disjointed digital systems, often requiring manual intervention to move data across them, nullifying the purpose of the implemented tool to support a digital transformation strategy. Globally adopted initiatives combining scientific potential with business needs are key to truly digitally transforming a business.

Fundamental to delivering a drug to market is the full story of how a drug was designed, developed, validated, tested, packaged and released. Digital tools can facilitate this, but can the associated data be reused, re-purposed and leveraged to drive innovation? While data still live in dead-end repositories, is the industry able to truly harness the power of the large volumes of data it creates?

A myriad of experiments, instruments and reports

The plethora of documentation (Figure 1) required at each stage of development is enormous,² and is also expected to be submitted in the eCTD format aligned to ICH Guidelines.³

Key Development Stages

Figure 1: From laboratory to patient - key development stages and their associated documentation required to take a drug to market. Credit: Courtesy of IDBS.

When reviewing even just the pharmaceutical development section of the IND document (Section 3.2.P.2 Pharmaceutical Development),³ the number of systems, instruments, experiments and reports (Table 1) that come together to demonstrate the effectiveness of the process development (PD) stage of drug development cannot be underestimated.

Table 1: Non-exhaustive list of example reports compiled within the process development of biological therapeutics.

Reports
Process and product understanding required
Cell line history
Genealogy of cell line Conditions under which cell line is developed Performance and stability of cell line clones
Reports
Process and product understanding required
Cell line history
  • Genealogy of cell line
  • Conditions under which cell line is developed
  • Performance and stability of cell line clones
Upstream development
  • Genealogy of chosen cell line cultures
  • Steps and conditions under which cultures are grown
  • Reagents, consumables and equipment
  • Culture performance, product expression and product yield
Downstream processing
  • Genealogy of process intermediates generated from chosen culture
  • Steps and conditions under which material is purified
  • Reagents, consumables and equipment
  • Purity and desired drug composition and formation
Analytical development
  • Qualitative and quantitative methods used for analysis
  • Reagents, consumables and equipment
  • Process sampling step and relevant sample properties
  • Process sampling step and relevant sample results
Exceptions and errors
  • Errors encountered during development and processing
  • Errors encountered during analytical development
  • Intentional and unplanned deviations and reasons

According to the guidelines, studies are expected to provide the “basis for process improvement, process validation, continuous process verification…and any process control requirements” by detailing:

This is a huge ask. With the demand on time and the variety and volume of data at each step, utilizing digital tools to enable early decision-making is highly advantageous. How quickly scientists can gather these insights has a bearing on the robustness of process design for process scale-up and the tightening of development timelines.

Work smarter, not harder

This is where a digital backbone can prove invaluable. By automatically assimilating data from an instrument, with process execution data to give this data true context, and without requiring manual facilitation, structured and contextualized data are easily available for analysis. Ensuring data are correctly constructed, accessible and exchangeable allows analysis to be performed promptly and data to be visualized with industry-relevant data analysis tools.

Furthermore, the use of robust digital data collection strategies gives the opportunity to reuse these data and apply advanced analytics tools, such as artificial intelligence and machine learning, and in-silico modeling, such as digital twins, to optimize biopharma development. According to the CEO of Novartis, Vas Narasimhan, it can often take “years just to clean the datasets,” and it can prove difficult to “clean and link the data.” Having a digital backbone built to improve connectivity and eliminate silos can significantly reduce this time burden.

Returning to the miniature parallel bioreactors, often used in design of experiment (DoE) activities, establishing a digital data backbone allows high-volume process and product data to be combined to generate more powerful insights automatically. From understanding and optimizing processes to reducing waste and determining the robustness of a designed process, this can shave hours to weeks off a scientist’s time and allow early analysis of ongoing processes to enable data-led strategic decisions. DoE studies are an integral part of PD, providing “justification for establishing ranges of incoming component quality, equipment parameters and in-process material quality attributes” in line with current good manufacturing practices.

A digital backbone: The basis for transformational impact and insight

The rise of biological capabilities, such as cell and gene therapies and antibody–drug conjugates, are emphasizing the need for digital acceleration. Owing to their complexities and long turnaround times, legacy tools do not serve growing development needs. The requirement for a central, accessible repository that facilitates the surfacing and exchange of data easily at product and data hand-off points is critical.

The average cost of getting a drug to market is over $2 billion and it is estimated up to 90% of drugs fail in the clinic. Addressing the challenges associated with developability, clinical efficacy and toxicity earlier in the drug development process could increase the likelihood of therapeutics to succeed in the clinic and speed up time to market. To do so, the industry needs to gain the maximum potential from its available data to answer poignant process-relevant questions earlier.

With high-quality data in structured and contextualized formats and bidirectional traceability, a digital backbone realizes the full potential of the data and generates meaningful insights by leveraging advanced analytics tools. It underpins the journey from digital enablement to digital transformation, facilitating early strategic decision-making to generate high-yielding, high-quality products and ultimately get therapies to patients faster.

About the Author

Unjulie Bhanot is the head of BPLM (biopharma lifecycle management) solutions, and part of the IDBS strategy team based in the UK. With over 10 years of experience in the biopharma informatics space, she now owns the strategy, development and delivery of IDBS Polar solutions.

Prior to joining IDBS, Unjulie worked as an R&D scientist at both Lonza Biologics and UCB and received a BSc in Biochemistry and MSc in Immunology from Imperial College London.

References

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  2. US Food and Drug Administration. The Comprehensive Table of Contents Headings and Hierarchy (Version 2.3.3). https://www.fda.gov/media/76444/download. Published November 9, 2020. Accessed September 27, 2023.
  3. Committee for Medicinal Products for Human Use. ICH guideline M4 (R4) on common technical document (CTD) for the registration of pharmaceuticals for human use – organisation of CTD. European Medicines Agency. https://www.ema.europa.eu/system/files/documents/scientific-guideline/m4\_step\_5\_ctd\_for\_the\_registration\_of\_pharmaceuticals\_for\_human\_use\_-\_organisation\_of\_ctd-en.pdf. Published March 19, 202Accessed September 27, 2023.
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  6. US Department of Health and Human Services, Food and Drug Administration, Center for Drug Evaluation and Research, Center for Biologics Evaluation and Research, Center for Veterinary Medicine. Process Validation: General Principles and Practices. https://www.fda.gov/files/drugs/published/Process-Validation--General-Principles-and-Practices.pdf. Published January 201Accessed September 27, 2023.
  7. Deloitte. Pharma R&D return on investment falls in post-pandemic market. https://www2.deloitte.com/uk/en/pages/press-releases/articles/pharma-r-d-return-on-investment-falls-in-post-pandemic-market.html. Published January 9, 2023. Accessed September 27, 2023.
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This article by one of our Danaher Life Sciences thought leaders was originally published in Technology Networks. Shared here by permission.