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91̽»¨
Theoretical physicists working at a blackboard collaboration pod in the Beecroft building.
Credit: Jack Hobhouse

Ard Louis

Professor of Theoretical Physics

Research theme

  • Biological physics

Sub department

  • Rudolf Peierls Centre for Theoretical Physics

Research groups

  • Condensed Matter Theory
ard.louis@physics.ox.ac.uk
  • About
  • Research
  • Publications on arXiv/bioRxiv
  • Publications

Predicting phenotype transition probabilities via conditional algorithmic probability approximations

Journal of the Royal Society: Interface The Royal Society 19:197 (2022) 20220694

Authors:

Kamaludin Dingle, Javor K Novev, Sebastian E Ahnert, Ard A Louis

Abstract:

Unravelling the structure of genotype–phenotype (GP) maps is an important problem in biology. Recently, arguments inspired by algorithmic information theory (AIT) and Kolmogorov complexity have been invoked to uncover simplicity bias in GP maps, an exponentially decaying upper bound in phenotype probability with the increasing phenotype descriptional complexity. This means that phenotypes with many genotypes assigned via the GP map must be simple, while complex phenotypes must have few genotypes assigned. Here, we use similar arguments to bound the probability P(x → y) that phenotype x, upon random genetic mutation, transitions to phenotype y. The bound is ±Ê(³æâ†’y)≲2−a°­´Ê(²â´¥³æ)−b , where K~(y|x) is the estimated conditional complexity of y given x, quantifying how much extra information is required to make y given access to x. This upper bound is related to the conditional form of algorithmic probability from AIT. We demonstrate the practical applicability of our derived bound by predicting phenotype transition probabilities (and other related quantities) in simulations of RNA and protein secondary structures. Our work contributes to a general mathematical understanding of GP maps and may facilitate the prediction of transition probabilities directly from examining phenotype themselves, without utilizing detailed knowledge of the GP map.

The structure of genotype-phenotype maps makes fitness landscapes navigable

Nature Ecology and Evolution Springer Nature 6:11 (2022) 1742-1752

Authors:

Sam F Greenbury, Ard A Louis, Sebastian E Ahnert

Abstract:

Fitness landscapes are often described in terms of 'peaks' and 'valleys', indicating an intuitive low-dimensional landscape of the kind encountered in everyday experience. The space of genotypes, however, is extremely high dimensional, which results in counter-intuitive structural properties of genotype-phenotype maps. Here we show that these properties, such as the presence of pervasive neutral networks, make fitness landscapes navigable. For three biologically realistic genotype-phenotype map models-RNA secondary structure, protein tertiary structure and protein complexes-we find that, even under random fitness assignment, fitness maxima can be reached from almost any other phenotype without passing through fitness valleys. This in turn indicates that true fitness valleys are very rare. By considering evolutionary simulations between pairs of real examples of functional RNA sequences, we show that accessible paths are also likely to be used under evolutionary dynamics. Our findings have broad implications for the prediction of natural evolutionary outcomes and for directed evolution.

Designing the self-assembly of arbitrary shapes using minimal complexity building blocks

(2022)

Authors:

Joakim Bohlin, Andrew J Turberfield, Ard A Louis, Petr Å ulc

Reply to Ocklenburg and Mundorf: the interplay of developmental bias and natural selection

Proceedings of the National Academy of Sciences National Academy of Sciences 119:28 (2022) e2205299119

Authors:

Iain G Johnston, Kamaludin Dingle, Sam F Greenbury, Chico Q Camargo, Jonathan Doye, Sebastian E Ahnert, Adriaan Louis

Free energy landscapes of DNA and its assemblies: perspectives from coarse-grained modelling

Chapter in Frontiers of Nanoscience, Elsevier 21 (2022) 195-210

Authors:

Jonathan PK Doye, Ard A Louis, John S Schreck, Flavio Romano, Ryan M Harrison, Majid Mosayebi, Megan C Engel, Thomas E Ouldridge

Abstract:

This chapter will provide an overview of how characterising free energy landscapes can provide insights into the biophysical properties of DNA, as well as into the behaviour of the DNA assemblies used in the field of DNA nanotechnology. The landscapes for these complex systems are accessible through the use of accurate coarse-grained descriptions of DNA. Particular foci will be the landscapes associated with DNA self-assembly and mechanical deformation, where the latter can arise from either externally imposed forces or internal stresses.

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