Research published this week in Scientific Reports uses computer image and statistical shape analysis to shed light on which parts of the face are most likely to be inherited.
The study, by researchers at King's College London, examined 3D face models of nearly 1,000 UK female twins, and found that the shapes of the end of the nose, the area above and below the lips, cheekbones and the inner corner of the eye were highly influenced by genetics.
The team took scans of twins' faces using 3D cameras and custom built statistical software to generate thousands of points that were perfectly aligned across the faces and then measured how 'curved' each face looked at each one of those locations.
The researchers then compared how similar these measurements were between identical twins, who have the same genes, and non-identical twins, who only share half of the genes. By seeing which parts of the face are the most similar in shape in a pair of identical twins, the researchers then calculated the likelihood that the shape of that part of the face is determined by genetics.
This likelihood is quantified as the "heritability", a number between 0 and 1, where a larger number implies that it is more likely that the shape of the face is controlled by genes. The researchers have published 'atlases' showing how heritable each part of the face shape is, which can be viewed online at: http://heritabilitymaps.info
Lead researcher, Professor Giovanni Montana from King's College London said: "The notion that our genes control our face is self-evident. Many of us have facial traits that clearly resample those of our parents and identical twins are often indistinguishable.
"However, quantifying precisely which parts of the face are strongly heritable has been challenging so far. By combining 3D models of the face with a statistical algorithm that measures local changes in shape, we have been able to create detailed 'face heritability maps'. These maps will help identify specific genes shaping up the human face, which may also be involved in diseases altering the face morphology."
"This study also shows us that even identical twins can vary quite a lot on facial features, but because of the key areas being genetically controlled, we perceive them as being 'identical,'" added Professor Tim Spector, Director of the TwinsUK study at King's College London.
The software for analysing 3D scans could also have other uses in medical imaging, engineering and facial recognition technology.
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This study was funded by the Wellcome Trust and supported by the National Institute for Health Research (NIHR) Biomedical Research Centre at Guy's and St Thomas' NHS Foundation Trust and King's College London and the NIHR Guy's and St Thomas' Clinical Research Facility.
Notes to Editors:
About King's College London
King's College London is one of the top 25 universities in the world (2016/17 QS World University Rankings) and among the oldest in England. King's has more than 29,600 students (of whom nearly 11,700 are graduate students) from some 150 countries worldwide, and some 8,000 staff.
King's has an outstanding reputation for world-class teaching and cutting-edge research. In the 2014 Research Excellence Framework (REF), eighty-four per cent of research at King's was deemed 'world-leading' or 'internationally excellent' (3* and 4*).
Since our foundation, King's students and staff have dedicated themselves in the service of society. King's will continue to focus on world-leading education, research and service, and will have an increasingly proactive role to play in a more interconnected, complex world. Visit our website to find out more about Vision 2029, King's strategic vision for the next 12 years to 2029, which will be the 200th anniversary of the founding of the university. For further information about King's, please visit the King's in Brief web pages.
The TwinsUK study is based at St Thomas' Hospital.
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Story Source: Materials provided by Scienmag