Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.

Brood parasitized and/or colonial birds use egg features as visual identity signals, which allow parents to recognize their own eggs and avoid paying fitness costs of misdirecting their care to others' offspring. However, the mechanisms of egg recognition and discrimination are poorly understoo...

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Main Authors: Jesús Gómez, Oscar Gordo, Piotr Minias
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0248021
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spelling doaj-0d91bfa3157c49558099c76b3172709c2021-03-14T05:31:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01163e024802110.1371/journal.pone.0248021Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.Jesús GómezOscar GordoPiotr MiniasBrood parasitized and/or colonial birds use egg features as visual identity signals, which allow parents to recognize their own eggs and avoid paying fitness costs of misdirecting their care to others' offspring. However, the mechanisms of egg recognition and discrimination are poorly understood. Most studies have put their focus on individual abilities to carry out these behavioural tasks, while less attention has been paid to the egg and how its signals may evolve to enhance its identification. We used 92 clutches (460 eggs) of the Eurasian coot Fulica atra to test whether eggs could be correctly classified into their corresponding clutches based only on their external appearance. Using SpotEgg, we characterized the eggs in 27 variables of colour, spottiness, shape and size from calibrated digital images. Then, we used these variables in a supervised machine learning algorithm for multi-class egg classification, where each egg was classified to the best matched clutch out of 92 studied clutches. The best model with all 27 explanatory variables assigned correctly 53.3% (CI = 42.6-63.7%) of eggs of the test-set, greatly exceeding the probability to classify the eggs by chance (1/92, 1.1%). This finding supports the hypothesis that eggs have visual identity signals in their phenotypes. Simplified models with fewer explanatory variables (10 or 15) showed lesser classification ability than full models, suggesting that birds may use multiple traits for egg recognition. Therefore, egg phenotypes should be assessed in their full complexity, including colour, patterning, shape and size. Most important variables for classification were those with the highest intraclutch correlation, demonstrating that individual recognition traits are repeatable. Algorithm classification performance improved by each extra training egg added to the model. Thus, repetition of egg design within a clutch would reinforce signals and would help females to create an internal template for true recognition of their own eggs. In conclusion, our novel approach based on machine learning provided important insights on how signallers broadcast their specific signature cues to enhance their recognisability.https://doi.org/10.1371/journal.pone.0248021
collection DOAJ
language English
format Article
sources DOAJ
author Jesús Gómez
Oscar Gordo
Piotr Minias
spellingShingle Jesús Gómez
Oscar Gordo
Piotr Minias
Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.
PLoS ONE
author_facet Jesús Gómez
Oscar Gordo
Piotr Minias
author_sort Jesús Gómez
title Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.
title_short Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.
title_full Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.
title_fullStr Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.
title_full_unstemmed Egg recognition: The importance of quantifying multiple repeatable features as visual identity signals.
title_sort egg recognition: the importance of quantifying multiple repeatable features as visual identity signals.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description Brood parasitized and/or colonial birds use egg features as visual identity signals, which allow parents to recognize their own eggs and avoid paying fitness costs of misdirecting their care to others' offspring. However, the mechanisms of egg recognition and discrimination are poorly understood. Most studies have put their focus on individual abilities to carry out these behavioural tasks, while less attention has been paid to the egg and how its signals may evolve to enhance its identification. We used 92 clutches (460 eggs) of the Eurasian coot Fulica atra to test whether eggs could be correctly classified into their corresponding clutches based only on their external appearance. Using SpotEgg, we characterized the eggs in 27 variables of colour, spottiness, shape and size from calibrated digital images. Then, we used these variables in a supervised machine learning algorithm for multi-class egg classification, where each egg was classified to the best matched clutch out of 92 studied clutches. The best model with all 27 explanatory variables assigned correctly 53.3% (CI = 42.6-63.7%) of eggs of the test-set, greatly exceeding the probability to classify the eggs by chance (1/92, 1.1%). This finding supports the hypothesis that eggs have visual identity signals in their phenotypes. Simplified models with fewer explanatory variables (10 or 15) showed lesser classification ability than full models, suggesting that birds may use multiple traits for egg recognition. Therefore, egg phenotypes should be assessed in their full complexity, including colour, patterning, shape and size. Most important variables for classification were those with the highest intraclutch correlation, demonstrating that individual recognition traits are repeatable. Algorithm classification performance improved by each extra training egg added to the model. Thus, repetition of egg design within a clutch would reinforce signals and would help females to create an internal template for true recognition of their own eggs. In conclusion, our novel approach based on machine learning provided important insights on how signallers broadcast their specific signature cues to enhance their recognisability.
url https://doi.org/10.1371/journal.pone.0248021
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AT oscargordo eggrecognitiontheimportanceofquantifyingmultiplerepeatablefeaturesasvisualidentitysignals
AT piotrminias eggrecognitiontheimportanceofquantifyingmultiplerepeatablefeaturesasvisualidentitysignals
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