Login / Signup

Self-generating autocatalytic networks: structural results, algorithms and their relevance to early biochemistry.

Daniel HusonJoana C XavierMike Steel
Published in: Journal of the Royal Society, Interface (2024)
The concept of an autocatalytic network of reactions that can form and persist, starting from just an available food source, has been formalized by the notion of a reflexively autocatalytic and food-generated (RAF) set. The theory and algorithmic results concerning RAFs have been applied to a range of settings, from metabolic questions arising at the origin of life, to ecological networks, and cognitive models in cultural evolution. In this article, we present new structural and algorithmic results concerning RAF sets, by studying more complex modes of catalysis that allow certain reactions to require multiple catalysts (or to not require catalysis at all), and discuss the differing ways catalysis has been viewed in the literature. We also focus on the structure and analysis of minimal RAFs and derive structural results and polynomial-time algorithms. We then apply these new methods to a large metabolic network to gain insights into possible biochemical scenarios near the origin of life.
Keyphrases
  • machine learning
  • climate change
  • human health
  • deep learning
  • systematic review
  • highly efficient
  • metal organic framework