Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation

Melanin pigmentation is a complex trait governed by many genes. Variation in melanin pigmentation within, and between, populations makes it an important trait for assisting in physical identification of an individual in forensic investigations. Utilizing a training sample (n=789) comprised of vari...

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Main Author: Valenzuela, Robert Keams
Other Authors: Brilliant, Murray H.
Language:en
Published: The University of Arizona. 2011
Subjects:
QTL
Online Access:http://hdl.handle.net/10150/145309
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-1453092015-11-19T15:01:07Z Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation Valenzuela, Robert Keams Brilliant, Murray H. Walsh, Bruce Baier, Leslie J. Tsao, Tsu-Shuen Forensic Science Genetics Human Pigmentation Prediction Models QTL Melanin pigmentation is a complex trait governed by many genes. Variation in melanin pigmentation within, and between, populations makes it an important trait for assisting in physical identification of an individual in forensic investigations. Utilizing a training sample (n=789) comprised of various ethnicities and SNPs (75) in 24 genes previously implicated in human or animal pigmentation studies, I determined three-SNP multiple linear regression models that accounted for large proportions of pigmentation variation in skin (45.7%), eye color (76.4%), and hair [eumelanin-to-pheomelanin (43.2%) and total melanin (76.3%)], independent of ethnic origin. Rather than implementing stepwise regression, to ascertain the three-SNP predictive models, I devised an algorithm that is likely more robust than stepwise regression. The algorithm consisted of two steps: the first step reduced the pool of 75 SNPs to a pool of 40 by selection of SNPs that were significant (p<0.05) by one-way ANOVA; the second step enabled selection of SNPs for model incorporation based on their frequency in the best-fitted models of all possible combinations of three-SNP models (i.e., 40 choose 3).Prediction models were validated utilizing an independent cohort (n=242, test sample) that was very similar in ethnic composition to the training sample. Relative shrinkage was moderate for skin reflectance (23.4%), eye color (19.4%), and eumelanin-to-pheomelanin (37.3%) of hair, and largest for total melanin (67%) of hair. Additionally, we refined our model-building algorithm, enabling visual comparison of the frequency and co-linearity due to linkage or co-inheritance of SNPs of the best-fitted models. Application of our algorithm to the test sample yielded the same or similar models as the training sample. Two of the three SNPs composing the models were the same, with some variability in the third SNP of the model. 2011 Electronic Dissertation text http://hdl.handle.net/10150/145309 752261346 11477 en Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en
sources NDLTD
topic Forensic Science
Genetics
Human
Pigmentation
Prediction Models
QTL
spellingShingle Forensic Science
Genetics
Human
Pigmentation
Prediction Models
QTL
Valenzuela, Robert Keams
Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation
description Melanin pigmentation is a complex trait governed by many genes. Variation in melanin pigmentation within, and between, populations makes it an important trait for assisting in physical identification of an individual in forensic investigations. Utilizing a training sample (n=789) comprised of various ethnicities and SNPs (75) in 24 genes previously implicated in human or animal pigmentation studies, I determined three-SNP multiple linear regression models that accounted for large proportions of pigmentation variation in skin (45.7%), eye color (76.4%), and hair [eumelanin-to-pheomelanin (43.2%) and total melanin (76.3%)], independent of ethnic origin. Rather than implementing stepwise regression, to ascertain the three-SNP predictive models, I devised an algorithm that is likely more robust than stepwise regression. The algorithm consisted of two steps: the first step reduced the pool of 75 SNPs to a pool of 40 by selection of SNPs that were significant (p<0.05) by one-way ANOVA; the second step enabled selection of SNPs for model incorporation based on their frequency in the best-fitted models of all possible combinations of three-SNP models (i.e., 40 choose 3).Prediction models were validated utilizing an independent cohort (n=242, test sample) that was very similar in ethnic composition to the training sample. Relative shrinkage was moderate for skin reflectance (23.4%), eye color (19.4%), and eumelanin-to-pheomelanin (37.3%) of hair, and largest for total melanin (67%) of hair. Additionally, we refined our model-building algorithm, enabling visual comparison of the frequency and co-linearity due to linkage or co-inheritance of SNPs of the best-fitted models. Application of our algorithm to the test sample yielded the same or similar models as the training sample. Two of the three SNPs composing the models were the same, with some variability in the third SNP of the model.
author2 Brilliant, Murray H.
author_facet Brilliant, Murray H.
Valenzuela, Robert Keams
author Valenzuela, Robert Keams
author_sort Valenzuela, Robert Keams
title Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation
title_short Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation
title_full Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation
title_fullStr Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation
title_full_unstemmed Predictive Modeling for Complex Traits: Normal Human Pigmentation Variation
title_sort predictive modeling for complex traits: normal human pigmentation variation
publisher The University of Arizona.
publishDate 2011
url http://hdl.handle.net/10150/145309
work_keys_str_mv AT valenzuelarobertkeams predictivemodelingforcomplextraitsnormalhumanpigmentationvariation
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