Computational Strategies to Enhance Cell-Free Protein Synthesis Efficiencyopen access
- Authors
- Kathirvel, Iyappan; Gayathri Ganesan, Neela
- Issue Date
- Sep-2024
- Publisher
- MDPI AG
- Keywords
- cell-free protein synthesis; computational modeling; synthetic biology
- Citation
- BioMedInformatics, v.4, no.3, pp 2022 - 2042
- Pages
- 21
- Indexed
- SCOPUS
- Journal Title
- BioMedInformatics
- Volume
- 4
- Number
- 3
- Start Page
- 2022
- End Page
- 2042
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/26422
- DOI
- 10.3390/biomedinformatics4030110
- ISSN
- 2673-7426
2673-7426
- Abstract
- Cell-free protein synthesis (CFPS) has emerged as a powerful tool for protein production, with applications ranging from basic research to biotechnology and pharmaceutical development. However, enhancing the efficiency of CFPS systems remains a crucial challenge for realizing their full potential. Computational strategies offer promising avenues for optimizing CFPS efficiency by providing insights into complex biological processes and enabling rational design approaches. This review provides a comprehensive overview of the computational approaches aimed at enhancing CFPS efficiency. The introduction outlines the significance of CFPS and the role of computational methods in addressing efficiency limitations. It discusses mathematical modeling and simulation-based approaches for predicting protein synthesis kinetics and optimizing CFPS reactions. The review also delves into the design of DNA templates, including codon optimization strategies and mRNA secondary structure prediction tools, to improve protein synthesis efficiency. Furthermore, it explores computational techniques for engineering cell-free transcription and translation machinery, such as the rational design of expression systems and the predictive modeling of ribosome dynamics. The predictive modeling of metabolic pathways and the energy utilization in CFPS systems is also discussed, highlighting metabolic flux analysis and resource allocation strategies. Machine learning and artificial intelligence approaches are being increasingly employed for CFPS optimization, including neural network models, deep learning algorithms, and reinforcement learning for adaptive control. This review presents case studies showcasing successful CFPS optimization using computational methods and discusses applications in synthetic biology, biotechnology, and pharmaceuticals. The challenges and limitations of current computational approaches are addressed, along with future perspectives and emerging trends, such as the integration of multi-omics data and advances in high-throughput screening. The conclusion summarizes key findings, discusses implications for future research directions and applications, and emphasizes opportunities for interdisciplinary collaboration. This review offers valuable insights and prospects regarding computational strategies to enhance CFPS efficiency. It serves as a comprehensive resource, consolidating current knowledge in the field and guiding further advancements. © 2024 by the authors.
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Collections - College of Engineering > Department of Chemical and Biochemical Engineering > 1. Journal Articles

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