Evolutionary rescue of resistant mutants is governed by a balance between radial expansion and selection in compact populations.
Serhii AifNico AppoldLucas KampmanOskar HallatschekJona KayserPublished in: Nature communications (2022)
Mutation-mediated treatment resistance is one of the primary challenges for modern antibiotic and anti-cancer therapy. Yet, many resistance mutations have a substantial fitness cost and are subject to purifying selection. How emerging resistant lineages may escape purifying selection via subsequent compensatory mutations is still unclear due to the difficulty of tracking such evolutionary rescue dynamics in space and time. Here, we introduce a system of fluorescence-coupled synthetic mutations to show that the probability of evolutionary rescue, and the resulting long-term persistence of drug resistant mutant lineages, is dramatically increased in dense microbial populations. By tracking the entire evolutionary trajectory of thousands of resistant lineages in expanding yeast colonies we uncover an underlying quasi-stable equilibrium between the opposing forces of radial expansion and natural selection, a phenomenon we term inflation-selection balance. Tailored computational models and agent-based simulations corroborate the fundamental nature of the observed effects and demonstrate the potential impact on drug resistance evolution in cancer. The described phenomena should be considered when predicting multi-step evolutionary dynamics in any mechanically compact cellular population, including pathogenic microbial biofilms and solid tumors. The insights gained will be especially valuable for the quantitative understanding of response to treatment, including emerging evolution-based therapy strategies.
Keyphrases
- drug resistant
- genome wide
- cancer therapy
- multidrug resistant
- molecular dynamics
- drug delivery
- papillary thyroid
- high resolution
- dna methylation
- preterm infants
- pseudomonas aeruginosa
- mass spectrometry
- single molecule
- ultrasound guided
- smoking cessation
- combination therapy
- candida albicans
- climate change
- molecular dynamics simulations
- replacement therapy
- young adults
- solid state
- preterm birth