Towards evolutionary predictions: Current promises and challenges.

Wortel, Meike T; Agashe, Deepa; Bailey, Susan F; Bank, Claudia; Bisschop, Karen; Blankers, Thomas; Cairns, Johannes; Colizzi, Enrico Sandro; Cusseddu, Davide; Desai, Michael M; van Dijk, Bram; Egas, Martijn; Ellers, Jacintha; Groot, Astrid T; Heckel, David G; Johnson, Marcelle L; Kraaijeveld, Ken; Krug, Joachim; Laan, Liedewij; Lässig, Michael; ... (2023). Towards evolutionary predictions: Current promises and challenges. Evolutionary applications, 16(1), pp. 3-21. Wiley 10.1111/eva.13513

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Evolution has traditionally been a historical and descriptive science, and predicting future evolutionary processes has long been considered impossible. However, evolutionary predictions are increasingly being developed and used in medicine, agriculture, biotechnology and conservation biology. Evolutionary predictions may be used for different purposes, such as to prepare for the future, to try and change the course of evolution or to determine how well we understand evolutionary processes. Similarly, the exact aspect of the evolved population that we want to predict may also differ. For example, we could try to predict which genotype will dominate, the fitness of the population or the extinction probability of a population. In addition, there are many uses of evolutionary predictions that may not always be recognized as such. The main goal of this review is to increase awareness of methods and data in different research fields by showing the breadth of situations in which evolutionary predictions are made. We describe how diverse evolutionary predictions share a common structure described by the predictive scope, time scale and precision. Then, by using examples ranging from SARS-CoV2 and influenza to CRISPR-based gene drives and sustainable product formation in biotechnology, we discuss the methods for predicting evolution, the factors that affect predictability and how predictions can be used to prevent evolution in undesirable directions or to promote beneficial evolution (i.e. evolutionary control). We hope that this review will stimulate collaboration between fields by establishing a common language for evolutionary predictions.

Item Type:

Journal Article (Review Article)

Division/Institute:

08 Faculty of Science > Department of Biology > Institute of Ecology and Evolution (IEE) > Theoretical Ecology and Evolution
08 Faculty of Science > Department of Biology > Institute of Ecology and Evolution (IEE)

UniBE Contributor:

Bank, Claudia

ISSN:

1752-4571

Publisher:

Wiley

Language:

English

Submitter:

Pubmed Import

Date Deposited:

27 Jan 2023 14:22

Last Modified:

28 Jan 2023 15:19

Publisher DOI:

10.1111/eva.13513

PubMed ID:

36699126

Uncontrolled Keywords:

disease modelling evolution evolutionary control models population genetics predictability prediction

BORIS DOI:

10.48350/177971

URI:

https://boris.unibe.ch/id/eprint/177971

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