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  Prediction of eye, hair and skin colour in Latin Americans

Palmal, S., Adhikari, K., Mendoza-Revilla, J., Fuentes-Guajardo, M., Cerqueira, S., Cesar, C., et al. (2021). Prediction of eye, hair and skin colour in Latin Americans. Forensic Science International: Genetics, 53: 102517, 1-12. doi:10.1016/j.fsigen.2021.102517.

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Palmal, Sagnik, Autor
Adhikari, Kaustubh, Autor
Mendoza-Revilla, Javier, Autor
Fuentes-Guajardo, Macarena, Autor
Cerqueira, Silva, Autor
Cesar, Caio, Autor
Bonfante, Betty, Autor
Chacón-Duque, Juan Camilo, Autor
Sohail, Anood, Autor
Hurtado, Malena, Autor
Villegas, Valeria, Autor
Granja, Vanessa, Autor
Jaramillo, Claudia, Autor
Arias, William, Autor
Barquera Lozano, Rodrigo José1, Autor           
Everardo-Martínez, Paola, Autor
Gómez-Valdés, Jorge, Autor
Villamil-Ramírez, Hugo, Autor
Hünemeier, Tábita, Autor
Ramallo, Virginia, Autor
Parolin, Maria-Laura, AutorGonzalez-José, Rolando, AutorSchüler-Faccini, Lavinia, AutorBortolini, Maria-Cátira, AutorAcuña-Alonzo, Victor, AutorCanizales-Quinteros, Samuel, AutorGallo, Carla, AutorPoletti, Giovanni, AutorBedoya, Gabriel, AutorRothhammer, Francisco, AutorBalding, David, AutorFaux, Pierre, AutorRuiz-Linares, Andrés, Autor mehr..
Affiliations:
1Archaeogenetics, Max Planck Institute for the Science of Human History, Max Planck Society, ou_2074310              

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Schlagwörter: DNA phenotyping, Eye-colour, Hair-colour, Skin-colour, Pigmentation prediction, Admixture, Latin Americans
 Zusammenfassung: Here we evaluate the accuracy of prediction for eye, hair and skin pigmentation in a dataset of > 6500 individuals from Mexico, Colombia, Peru, Chile and Brazil (including genome-wide SNP data and quantitative/categorical pigmentation phenotypes - the CANDELA dataset CAN). We evaluated accuracy in relation to different analytical methods and various phenotypic predictors. As expected from statistical principles, we observe that quantitative traits are more sensitive to changes in the prediction models than categorical traits. We find that Random Forest or Linear Regression are generally the best performing methods. We also compare the prediction accuracy of SNP sets defined in the CAN dataset (including 56, 101 and 120 SNPs for eye, hair and skin colour prediction, respectively) to the well-established HIrisPlex-S SNP set (including 6, 22 and 36 SNPs for eye, hair and skin colour prediction respectively). When training prediction models on the CAN data, we observe remarkably similar performances for HIrisPlex-S and the larger CAN SNP sets for the prediction of hair (categorical) and eye (both categorical and quantitative), while the CAN sets outperform HIrisPlex-S for quantitative, but not for categorical skin pigmentation prediction. The performance of HIrisPlex-S, when models are trained in a world-wide sample (although consisting of 80% Europeans, https://hirisplex.erasmusmc.nl), is lower relative to training in the CAN data (particularly for hair and skin colour). Altogether, our observations are consistent with common variation of eye and hair colour having a relatively simple genetic architecture, which is well captured by HIrisPlex-S, even in admixed Latin Americans (with partial European ancestry). By contrast, since skin pigmentation is a more polygenic trait, accuracy is more sensitive to prediction SNP set size, although here this effect was only apparent for a quantitative measure of skin pigmentation. Our results support the use of HIrisPlex-S in the prediction of categorical pigmentation traits for forensic purposes in Latin America, while illustrating the impact of training datasets on its accuracy.

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Sprache(n): eng - English
 Datum: 2021-04-062021-07
 Publikationsstatus: Erschienen
 Seiten: 12
 Ort, Verlag, Ausgabe: -
 Inhaltsverzeichnis: 1. Introduction
2. Materials and methods
2.1. Study sample: phenotypes, genetic data and covariates
2.2. Pigmentation SNP sets used for prediction
2.3. Prediction methods and models evaluated
2.4. Evaluation of prediction accuracy
2.5. Comparison with prediction accuracy from HIrisPlex-S-online
2.6. Prediction of MI in Native American individuals of unknown phenotype
3. Results
3.1. Prediction accuracy in relation to models, methods and pigmentation SNP sets
3.2. Prediction accuracy at varying levels of European/Native American ancestry
3.3. Prediction accuracy in CANDELA relative to other population samples
3.4. Portability of models for pigmentation prediction in individuals with high Native Ancestry
3.5. Prediction of skin pigmentation in Native Americans
4. Discussion
 Art der Begutachtung: Expertenbegutachtung
 Identifikatoren: DOI: 10.1016/j.fsigen.2021.102517
Anderer: shh2911
 Art des Abschluß: -

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Titel: Forensic Science International: Genetics
  Kurztitel : Forensic Sci Int Genet
Genre der Quelle: Zeitschrift
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Ort, Verlag, Ausgabe: Amsterdam : Elsevier Science
Seiten: - Band / Heft: 53 Artikelnummer: 102517 Start- / Endseite: 1 - 12 Identifikator: ISSN: 1872-4973
CoNE: https://pure.mpg.de/cone/journals/resource/1872-4973