This page is intended to keep a list of relevant references on different perspectives of applying Artificial Intelligence to the research and development of synthetic biology from a researcher's perpective. Please, feel free to contribute to this list by making a pull request.
- Artificial Intelligence for Synthetic Biology.
Communications of the ACM, May 2022, Vol. 65 No. 5, Pages 88-97 [Paper]
Mohammed Eslami, Aaron Adler, Rajmonda S. Caceres, Joshua G. Dunn, Nancy Kelley-Loughnane, Vanessa A. Varaljay, Hector Garcia Martin. - The AI Hierarchy of Needs (2017) [Link]
Rogati, M. - For Big-Data Scientists, 'Janitor Work' Is Key Hurdle to Insights. (2014) [Link]
Lohr, S.
- Highly accurate protein structure prediction with AlphaFold.
Nature Volume 596, Pages 583–589 (2021). [Paper]
Jumper, J., Evans, R., Pritzel, A. et al. - ProGen: Language Modeling for Protein Generation. (2020) [Paper]
Madani, Ali and McCann, Bryan and Naik, Nikhil and Keskar, Nitish Shirish and Anand, Namrata and Eguchi, Raphael R. and Huang, Po-Ssu and Socher, Richard. - Incorporating biological knowledge with factor graph neural network for interpretable deep learning. (Jun 2019). [arXiv]
Ma, T. and Zhang, A. - Predicting multicellular function through multi-layer tissue networks.
Bioinformatics Volume 33, No. 14 (Jul. 2017), Pages 190–198 [Paper]
Zitnik, M. and Leskovec, J. - Predicting the sequence specificities of DNA and RNA-binding proteins by deep learning.
Nature Biotechnology Volume 33, No. 8 (Aug. 2015), Pages 831–838 [Paper]
Alipanahi, B., Delong, A., Weirauch, M., and Frey, B.
- Machine learning applications in systems metabolic engineering.
Current Opinion in Biotechnology Vol. 64 (Sep. 2019), Pages 1–9 [Paper]
Kim, G., Kim, W., Kim, H., and Lee, S. - Systems metabolic engineering meets machine learning: A new era for data-driven metabolic engineering.
Biotechnology J. Vol. 14, No. 9 (Sep. 2019) [Paper]
Presnell, K. and Alper, H. - Machine learning for metabolic engineering: A review.
Metabolic Engineering Vol. 63 (2021), Pages 34–60; [Paper]
Lawson, C., et al.
- Opportunities at the intersection of synthetic biology, machine learning, and automation.
ACS Synthetic Biology Volume 8, No. 7 (Jul. 2019), Pages 1474–1477 [Paper]
Carbonell, P., Radivojevic, T., and Martín, H. - Bioprocess automation on a Mini Pilot Plant enables fast quantitative microbial phenotyping.
Microbial Cell Factories Volume 14, No. 1 (Dec. 2015), Page 216 [Paper]
Unthan, S., Radek, A., Wiechert, W., Oldiges, M., and Noack, S. - Next-generation experimentation with self-driving laboratories.
Trends in Chemistry Volume 1, No. 3 (Mar 2019), Pages. 282–291. [Paper]
Häse, F., Roch, L., and Aspuru-Guzik, A.
- The experiment data depot: A web-based software tool for biological experimental data storage, sharing, and visualization.
ACS synthetic biology Vol 6, No. 12 (Dec 2017), Pages 2248–2259. [Paper]
Morrell, W., et al.