CCDCETApr 23

Analog computation with transcriptional networks

arXiv:2508.1401710.6h-index: 3
Predicted impact top 51% in CC · last 90 daysOriginality Highly original
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This provides a systematic methodology for engineering analog dynamics in synthetic biology without requiring degradation control, simplifying circuit design and expanding the capabilities of transcriptional networks.

The authors prove that controlling only transcription factor production (without degradation control) is mathematically complete for analog computation, enabling exact implementation of any polynomial ODE system. They demonstrate this on examples including oscillatory and chaotic dynamics, and provide a compiler for converting polynomial ODEs into transcriptional networks.

Transcriptional networks represent one of the most extensively studied types of systems in synthetic biology. Although the completeness of transcriptional networks for digital logic is well-established, *analog* computation plays a crucial role in biological systems and offers significant potential for synthetic biology applications. While transcriptional circuits typically rely on cooperativity and highly non-linear behavior of transcription factors to regulate *production* of proteins, they are often modeled with simple linear *degradation* terms. In contrast, general analog dynamics require both non-linear positive as well as negative terms, seemingly necessitating control over not just transcriptional (i.e., production) regulation but also the degradation rates of transcription factors. Surprisingly, we prove that controlling transcription factor production (i.e., transcription rate) without explicitly controlling degradation is mathematically complete for analog computation, achieving equivalent capabilities to systems where both production and degradation are programmable. We demonstrate our approach on several examples including oscillatory and chaotic dynamics, analog sorting, memory, PID controller, and analog extremum seeking. Our result provides a systematic methodology for engineering novel analog dynamics using synthetic transcriptional networks without the added complexity of degradation control and informs our understanding of the capabilities of natural transcriptional circuits. We provide a compiler, in the form of a Python package that can take any system of polynomial ODEs and convert it to an equivalent transcriptional network implementing the system *exactly*, under appropriate conditions.

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