Opportunities at the Intersection of Synthetic Biology, Machine Learning, and Automation

Pablo Carbonell, Tijana Radivojevic, Héctor García Martín

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    Abstract

    Our inability to predict the behavior of biological systems severely hampers progress in bioengineering and biomedical applications. We cannot predict the effect of genotype changes on phenotype, nor extrapolate the large-scale behavior from small-scale experiments. Machine learning techniques recently reached a new level of maturity, and are capable of providing the needed predictive power without a detailed mechanistic understanding. However, they require large amounts of data to be trained. The amount and quality of data required can only be produced through a combination of synthetic biology and automation, so as to generate a large diversity of biological systems with high reproducibility. A sustained investment in the intersection of synthetic biology, machine learning, and automation will drive forward predictive biology, and produce improved machine learning algorithms.

    Original languageEnglish
    Pages (from-to)1474-1477
    Number of pages4
    JournalACS Synthetic Biology
    Volume8
    Issue number7
    Early online date19 Jul 2019
    DOIs
    Publication statusPublished - 2019

    Research Beacons, Institutes and Platforms

    • Manchester Institute of Biotechnology

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