4.6 Article

Maximizing mRNA vaccine production with Bayesian optimization

期刊

BIOTECHNOLOGY AND BIOENGINEERING
卷 119, 期 11, 页码 3127-3139

出版社

WILEY
DOI: 10.1002/bit.28216

关键词

Bayesian optimization; in vitro transcription; machine learning; mRNA; vaccines

资金

  1. Future Biomanufacturing Research Hub
  2. Fundacao para a Ciencia e a Tecnologia
  3. Biotechnology and Biological Sciences Research Council
  4. Engineering and Physical Sciences Research Council

向作者/读者索取更多资源

Messenger RNA (mRNA) vaccines play a prominent role in infectious disease control as a new alternative to conventional vaccines. To improve efficiency and reduce costs, optimization of the in vitro transcription (IVT) reaction is necessary. This study utilizes machine learning approaches to optimize the mRNA IVT reaction, resulting in higher yield and shorter production time.
Messenger RNA (mRNA) vaccines are a new alternative to conventional vaccines with a prominent role in infectious disease control. These vaccines are produced in in vitro transcription (IVT) reactions, catalyzed by RNA polymerase in cascade reactions. To ensure an efficient and cost-effective manufacturing process, essential for a large-scale production and effective vaccine supply chain, the IVT reaction needs to be optimized. IVT is a complex reaction that contains a large number of variables that can affect its outcome. Traditional optimization methods rely on classic Design of Experiments methods, which are time-consuming and can present human bias or based on simplified assumptions. In this contribution, we propose the use of Machine Learning approaches to perform a data-driven optimization of an mRNA IVT reaction. A Bayesian optimization method and model interpretability techniques were used to automate experiment design, providing a feedback loop. IVT reaction conditions were found under 60 optimization runs that produced 12 g center dot L-1 in solely 2 h. The results obtained outperform published industry standards and data reported in literature in terms of both achievable reaction yield and reduction of production time. Furthermore, this shows the potential of Bayesian optimization as a cost-effective optimization tool within (bio)chemical applications.

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