
Researchers have used artificial intelligence to make new discoveries, and confirm old ones, about one of nature鈥檚 best-known mimics, opening up whole new directions of research in evolutionary biology.
Researchers have used artificial intelligence to make new discoveries, and confirm old ones, about one of nature鈥檚 best-known mimics, opening up whole new directions of research in evolutionary biology.
We can now apply AI in new fields to make discoveries which simply weren鈥檛 possible before
Jennifer Hoyal Cuthill
探花直播researchers, from the 探花直播 of Cambridge, the 探花直播 of Essex, the Tokyo Institute of Technology and the Natural History Museum London used their machine learning algorithm to test whether butterfly species can co-evolve similar wing patterns for mutual benefit. This phenomenon, known as M眉llerian mimicry, is considered evolutionary biology鈥檚 oldest mathematical model and was put forward less than two decades after Darwin鈥檚 theory of evolution by natural selection.
探花直播algorithm was trained to quantify variation between different subspecies of Heliconius butterflies, from subtle differences in the size, shape, number, position and colour of wing pattern features, to broad differences in major pattern groups.
This is the first fully automated, objective method to successfully measure overall visual similarity, which by extension can be used to test how species use wing pattern evolution as a means of protection. 探花直播 are reported in the journal Science Advances.
探花直播researchers found that different butterfly species act both as model and as mimic, 鈥榖orrowing鈥 features from each other and even generating new patterns.
鈥淲e can now apply AI in new fields to make discoveries which simply weren鈥檛 possible before,鈥 said lead author Dr Jennifer Hoyal Cuthill from Cambridge鈥檚 Department of Earth Sciences. 鈥淲e wanted to test M眉ller鈥檚 theory in the real world: did these species converge on each other鈥檚 wing patterns and if so how much? We haven鈥檛 been able to test mimicry across this evolutionary system before because of the difficulty in quantifying how similar two butterflies are.鈥
M眉llerian mimicry theory is named after German naturalist Fritz M眉ller, who first proposed the concept in 1878, less than two decades after Charles Darwin published On the Origin of Species in 1859. M眉ller鈥檚 theory proposed that species mimic each other for mutual benefit. This is also an important case study for the phenomenon of evolutionary convergence, in which the same features evolve again and again in different species.
For example, M眉ller鈥檚 theory predicts that two equally bad-tasting or toxic butterfly populations in the same location will come to resemble each other because both will benefit by 鈥榮haring鈥 the loss of some individuals to predators learning how bad they taste. This provides protection through cooperation and mutualism. It contrasts with Batesian mimicry, which proposes that harmless species mimic harmful ones to protect themselves.
Heliconius butterflies are well-known mimics, and are considered a classic example of M眉llerian mimicry. They are widespread across tropical and sub-tropical areas in the Americas. There are more than 30 different recognisable pattern types within the two species that the study focused on, and each pattern type contains a pair of mimic subspecies.
However, since previous studies of wing patterns had to be done manually, it hadn鈥檛 been possible to do large-scale or in-depth analysis of how these butterflies are mimicking each other.
鈥淢achine learning is allowing us to enter a new phenomic age, in which we are able to analyse biological phenotypes - what species actually look like - at a scale comparable to genomic data,鈥 said Hoyal Cuthill, who also holds positions at the Tokyo Institute of Technology and 探花直播 of Essex.
探花直播researchers used more than 2,400 photographs of Heliconius butterflies from the collections of the Natural History Museum, representing 38 subspecies, to train their algorithm, called 鈥楤utterflyNet鈥.
ButterflyNet was trained to classify the photographs, first by subspecies, and then to quantify similarity between the various wing patterns and colours. It plotted the different images in a multidimensional space, with more similar butterflies closer together and less similar butterflies further apart.
鈥淲e found that these butterfly species borrow from each other, which validates M眉ller鈥檚 hypothesis of mutual co-evolution,鈥 said Hoyal Cuthill. 鈥淚n fact, the convergence is so strong that mimics from different species are more similar than members of the same species.鈥
探花直播researchers also found that M眉llerian mimicry can generate entirely new patterns by combining features from different lineages.
鈥淚ntuitively, you would expect that there would be fewer wing patterns where species are mimicking each other, but we see exactly the opposite, which has been an evolutionary mystery,鈥 said Hoyal Cuthill. 鈥淥ur analysis has shown that mutual co-evolution can actually increase the diversity of patterns that we see, explaining how evolutionary convergence can create new pattern feature combinations and add to biological diversity.
鈥淏y harnessing AI, we discovered a new mechanism by which mimicry can produce evolutionary novelty. Counterintuitively, mimicry itself can generate new patterns through the exchange of features between species which mimic each other. Thanks to AI, we are now able to quantify the remarkable diversity of life to make new scientific discoveries like this: it might open up whole new avenues of research in the natural world.鈥
Reference:
Jennifer F. Hoyal Cuthill et al. 鈥.鈥 Science Advances (2019). DOI: 10.1126/sciadv.aaw4967
探花直播text in this work is licensed under a . Images, including our videos, are Copyright 漏 探花直播 of Cambridge and licensors/contributors as identified.听 All rights reserved. We make our image and video content available in a number of ways 鈥 as here, on our main website under its Terms and conditions, and on a range of channels including social media that permit your use and sharing of our content under their respective Terms.