Empirical modeling of T cell activation predicts interplay of host cytokines and bacterial indole.
Shelby SteinmeyerMichael S SacksRobert C AlanizJuergen HahnArul JayaramanPublished in: Biotechnology and bioengineering (2017)
Adoptive transfer of anti-inflammatory FOXP3+ Tregs has gained attention as a new therapeutic strategy for auto-inflammatory disorders such as Inflammatory Bowel Disease. The isolated cells are conditioned in vitro to obtain a sufficient number of anti-inflammatory FOXP3+ Tregs that can be reintroduced into the patient to potentially reduce the pathologic inflammatory response. Previous evidence suggests that microbiota metabolites can potentially condition cells during the in vitro expansion/differentiation step. However, the number of combinations of cytokines and metabolites that can be varied is large, preventing a purely experimental investigation which would determine optimal cell therapeutic outcomes. To address this problem, a combined experimental and modeling approached is investigated here: an artificial neural network model was trained to predict the steady-state T cell population phenotype after differentiation with a variety of host cytokines and the microbial metabolite indole. This artificial neural network model was able to both reliably predict the phenotype of these T cell populations and also uncover unexpected conditions for optimal Treg differentiation that were subsequently verified experimentally. Biotechnol. Bioeng. 2017;114: 2660-2667. © 2017 Wiley Periodicals, Inc.
Keyphrases
- neural network
- anti inflammatory
- induced apoptosis
- inflammatory response
- cell cycle arrest
- regulatory t cells
- cell therapy
- ms ms
- oxidative stress
- cell death
- single cell
- signaling pathway
- case report
- microbial community
- neoadjuvant chemotherapy
- endoplasmic reticulum stress
- stem cells
- bone marrow
- insulin resistance
- locally advanced
- pi k akt
- radiation therapy
- high resolution
- toll like receptor