2024
DOI: 10.1002/bit.28854
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Transfer learning Bayesian optimization for competitor DNA molecule design for use in diagnostic assays

Ruby Sedgwick,
John P. Goertz,
Molly M. Stevens
et al.

Abstract: With the rise in engineered biomolecular devices, there is an increased need for tailor‐made biological sequences. Often, many similar biological sequences need to be made for a specific application meaning numerous, sometimes prohibitively expensive, lab experiments are necessary for their optimization. This paper presents a transfer learning design of experiments workflow to make this development feasible. By combining a transfer learning surrogate model with Bayesian optimization, we show how the total numb… Show more

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