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Modeling 3D Facial Shape from DNA

Author

Listed:
  • Peter Claes
  • Denise K Liberton
  • Katleen Daniels
  • Kerri Matthes Rosana
  • Ellen E Quillen
  • Laurel N Pearson
  • Brian McEvoy
  • Marc Bauchet
  • Arslan A Zaidi
  • Wei Yao
  • Hua Tang
  • Gregory S Barsh
  • Devin M Absher
  • David A Puts
  • Jorge Rocha
  • Sandra Beleza
  • Rinaldo W Pereira
  • Gareth Baynam
  • Paul Suetens
  • Dirk Vandermeulen
  • Jennifer K Wagner
  • James S Boster
  • Mark D Shriver

Abstract

Human facial diversity is substantial, complex, and largely scientifically unexplained. We used spatially dense quasi-landmarks to measure face shape in population samples with mixed West African and European ancestry from three locations (United States, Brazil, and Cape Verde). Using bootstrapped response-based imputation modeling (BRIM), we uncover the relationships between facial variation and the effects of sex, genomic ancestry, and a subset of craniofacial candidate genes. The facial effects of these variables are summarized as response-based imputed predictor (RIP) variables, which are validated using self-reported sex, genomic ancestry, and observer-based facial ratings (femininity and proportional ancestry) and judgments (sex and population group). By jointly modeling sex, genomic ancestry, and genotype, the independent effects of particular alleles on facial features can be uncovered. Results on a set of 20 genes showing significant effects on facial features provide support for this approach as a novel means to identify genes affecting normal-range facial features and for approximating the appearance of a face from genetic markers.Author Summary: The face is perhaps the most inherently fascinating and aesthetic feature of the human body. It is a principle subject of art throughout human history and across cultures and populations. It provides the most significant means by which we communicate our emotions and intentions in addition to health, sex, and age. And yet features such as the strength of the brow ridge, the spacing between the eyes, the width of the nose, and the shape of the philtrum are largely scientifically unexplained. Here, we use a novel method to measure face shape in population samples with mixed West African and European ancestry from three locations (United States, Brazil, and Cape Verde). We show that facial variation with regard to sex, ancestry, and genes can be systematically studied with our methods, allowing us to lay the foundation for predictive modeling of faces. Such predictive modeling could be forensically useful; for example, DNA left at crime scenes could be tested and faces predicted in order to help to narrow the pool of potential suspects. Further, our methods could be used to predict the facial features of descendants, deceased ancestors, and even extinct human species. In addition, these methods could prove to be useful diagnostic tools.

Suggested Citation

  • Peter Claes & Denise K Liberton & Katleen Daniels & Kerri Matthes Rosana & Ellen E Quillen & Laurel N Pearson & Brian McEvoy & Marc Bauchet & Arslan A Zaidi & Wei Yao & Hua Tang & Gregory S Barsh & De, 2014. "Modeling 3D Facial Shape from DNA," PLOS Genetics, Public Library of Science, vol. 10(3), pages 1-14, March.
  • Handle: RePEc:plo:pgen00:1004224
    DOI: 10.1371/journal.pgen.1004224
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    References listed on IDEAS

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    1. Michael A. Webster & Daniel Kaping & Yoko Mizokami & Paul Duhamel, 2004. "Adaptation to natural facial categories," Nature, Nature, vol. 428(6982), pages 557-561, April.
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    Cited by:

    1. Olalekan Agbolade & Azree Nazri & Razali Yaakob & Abdul Azim Ghani & Yoke Kqueen Cheah, 2020. "Morphometric approach to 3D soft-tissue craniofacial analysis and classification of ethnicity, sex, and age," PLOS ONE, Public Library of Science, vol. 15(4), pages 1-24, April.
    2. Joanne B Cole & Mange Manyama & Emmanuel Kimwaga & Joshua Mathayo & Jacinda R Larson & Denise K Liberton & Ken Lukowiak & Tracey M Ferrara & Sheri L Riccardi & Mao Li & Washington Mio & Michaela Proch, 2016. "Genomewide Association Study of African Children Identifies Association of SCHIP1 and PDE8A with Facial Size and Shape," PLOS Genetics, Public Library of Science, vol. 12(8), pages 1-19, August.

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