CytoSolve® In Silico Combination Screening for Relaxation Pathways

British American Tobacco (BAT) is a global organization with advanced research and development capabilities focused on understanding biological mechanisms relevant to consumer products and harm-reduction science. BAT’s R&D group applies cutting-edge analytical, biological, and computational approaches to investigate complex physiological systems, supporting evidence-based innovation and scientific rigor.

Challenge

BAT sought to develop a deeper mechanistic understanding of how multiple bioactive ingredients influence the biological systems underlying relaxation and stress modulation. Traditional experimental approaches face limitations when addressing:
  • Highly interconnected molecular pathways (neurotransmitters, hormones, immune signaling)
  • Non-linear interactions among multiple ingredients
  • The need to evaluate both individual and combination effects efficiently
A scalable, quantitative method was required to evaluate ingredient performance across multiple molecular systems without relying solely on extensive in vitro or in vivo testing.

How CytoSolve Helped

CytoSolve® applied its distributed systems biology framework to perform in silico combination screening based on peer-reviewed scientific literature:

  • Pathway Identification – Six core molecular pathway systems governing relaxation were identified:
    • Gut microbiome–neuroinflammation signaling
    • Hypothalamic–pituitary–adrenal (HPA) axis signaling
    • Nerve growth factor (BDNF) signaling
    • Neurotransmitter signaling (GABA, serotonin)
    • Catecholamine signaling (dopamine)
    • Endocannabinoid signaling (anandamide, AEA)
  • Model Construction – Each pathway was converted into a validated mathematical model using ordinary differential equations and encoded in SBML format.
  • Model Integration – Individual pathway models were dynamically integrated using the CytoSolve® engine to form a unified, quantitative model of relaxation biology.
  • Ingredient Screening – Six shortlisted ingredients were simulated across physiologically relevant dose ranges to assess their effects on key biomarkers, both individually and within the integrated system.
  • Optimization Capability – The platform enabled future extension toward optimization of ingredient combinations based on defined biological objectives.

Key Benefits Realized

  • Systems-Level Insight – Quantified how ingredients influence interconnected relaxation pathways rather than isolated targets
  • Mechanistic Clarity – Identified pathway-specific effects on inflammation, cortisol regulation, neurotransmission, and neurotrophic signaling
  • Efficient Screening – Rapidly evaluated multiple ingredients across six molecular systems
  • Combination-Ready Framework – Established a foundation for optimizing multi-ingredient formulations
  • Reduced Experimental Burden – Minimized reliance on early-stage animal or cell-based studies

Outcome

The CytoSolve study delivered a comprehensive, mechanistic assessment of bioactive ingredients acting on molecular systems of relaxation for British American Tobacco. By integrating multiple biological pathways into a single computational framework, the collaboration enabled data-driven ingredient prioritization and supported future combination optimization strategies. This case study demonstrates the value of in silico combination screening as a rigorous, scalable approach for investigating complex biological phenomena relevant to modern R&D programs.