IMMUNO-ONCOLOGY INSIGHTS

Immuno-oncology Spotlights 2021

January

Understanding and overcoming mechanisms of tumor resistance
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Understanding and overcoming mechanisms of tumor resistance

Assessing the prospects of various methods to model and modify the tumour microenvironment (TME)

  • Examining the challenges and latest progress in:
    • Means of tumor infiltration (incl. the burgeoning promise of nanotechnologies).
    • Understanding the role of and recruiting other immune cells in the TME.
  • Why do I-O patients relapse? How the immune system and cancer biology interact.
  • What role does the individual microbiome play?
  • Bispecifics vs. CAR T cell therapy: prospects of success in the solid tumor arena.

April

Modelling the I-O manufacturing facilities of tomorrow
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Modelling the I-O manufacturing facilities of tomorrow

John Lunger
Guest Editor:
John Lunger, Chief Patient Supply Officer at Adaptimmune Ltd

How to increase their efficiency, flexibility and productivity in line with expected future trends in supply and demand

  • Increasing the productivity of tomorrow’s manufacturing facilities.
  • Next steps on the path to continuous manufacture of I-O therapeutics.
  • Flexibility: as the diversity of the I-O portfolio increases, how to develop bioprocess and manufacturing strategies that enable the production of different therapeutics.

June

Hunting for better biomarkers of response
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Hunting for better biomarkers of response

Where is real progress being made in understanding why patients do and don’t respond to I-O therapeutics?

  • How enhanced understanding of the mechanisms of the immune system, tumor resistance, and I-O agents can improve targeting of patients.
  • Latest analytical methods and assays - how to drive standardization?
  • The future of personalized medicine/precision I-O in clinical routine.

July

Enhancing preclinical predictivity
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Enhancing preclinical predictivity

Christian Schmees
Guest Editor:
Christian Schmees at University of Tuebingen

What is going wrong between preclinical in vitro/in vivo and clinical in vivo settings?

  • Preclinical/clinical treatment response prediction: which model systems can predict patient response to investigational molecules in practice?
  • Combination therapy development – which preclinical models and strategies can deliver insights into the prospects of given combinations, plus optimal timeframes and sequencing?
  • Comparing and contrasting the performance of various animal models in different tumor types.
  • Utility of patient-derived cellular model systems for preclinical compound efficacy testing.
  • Establishing a feedback loop: what lessons can we draw from negative outcomes from preclinical studies in the I-O space?

September

Leveraging cutting edge tools to convert I-O data into knowledge
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Leveraging cutting edge tools to convert I-O data into knowledge

I-O discovery and development as driven by advances in bioinformatics and other technological innovation

  • How next generation sequencing (NGS) tools and technologies can improve knowledge of the underlying biology of I-O.
  • Single cell sequencing/analysis (e.g., transcriptomics, single cell RNAseq)
  • Exome sequencing.
  • High-plex/multiplex tools allowing spatial correlation (e.g., immunofluorescence).
  • Machine learning and big data analytics platforms for the integration and predictive leveraging of multiple data sets.
  • Synthetic biology and proteomics tools.
  • Non-invasive monitoring technologies (imaging).

November

Bioprocessing/CMC trends, tools and techniques
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Bioprocessing/CMC trends, tools and techniques

How next-gen biopharma manufacturing solutions will drive improvements in process and product robustness

  • Benefits that emerging analytical tools can bring to antibody therapeutic biorocessing.
  • Latest innovations in cell line development and purification for novel, complex antibody molecules.
  • How single-use technologies are redefining the biopharma manufacturing model.
  • Addressing scaling issues (e.g., how to avoid creating issues downstream as you scale-up upstream bioprocessing).