Inferring the ancestry of parents and grandparents from genetic data

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Inferring the ancestry of parents and grandparents from genetic data. / Pei, Jingwen; Zhang, Yiming; Nielsen, Rasmus; Wu, Yufeng.

In: PLOS Computational Biology, Vol. 16, No. 8, 1008065, 2020.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Pei, J, Zhang, Y, Nielsen, R & Wu, Y 2020, 'Inferring the ancestry of parents and grandparents from genetic data', PLOS Computational Biology, vol. 16, no. 8, 1008065. https://doi.org/10.1371/journal.pcbi.1008065

APA

Pei, J., Zhang, Y., Nielsen, R., & Wu, Y. (2020). Inferring the ancestry of parents and grandparents from genetic data. PLOS Computational Biology, 16(8), [1008065]. https://doi.org/10.1371/journal.pcbi.1008065

Vancouver

Pei J, Zhang Y, Nielsen R, Wu Y. Inferring the ancestry of parents and grandparents from genetic data. PLOS Computational Biology. 2020;16(8). 1008065. https://doi.org/10.1371/journal.pcbi.1008065

Author

Pei, Jingwen ; Zhang, Yiming ; Nielsen, Rasmus ; Wu, Yufeng. / Inferring the ancestry of parents and grandparents from genetic data. In: PLOS Computational Biology. 2020 ; Vol. 16, No. 8.

Bibtex

@article{464d16a0d95449fc9a4c9738c06b8251,
title = "Inferring the ancestry of parents and grandparents from genetic data",
abstract = "Inference of admixture proportions is a classical statistical problem in population genetics. Standard methods implicitly assume that both parents of an individual have the same admixture fraction. However, this is rarely the case in real data. In this paper we show that the distribution of admixture tract lengths in a genome contains information about the admixture proportions of the ancestors of an individual. We develop a Hidden Markov Model (HMM) framework for estimating the admixture proportions of the immediate ancestors of an individual, i.e. a type of decomposition of an individual's admixture proportions into further subsets of ancestral proportions in the ancestors. Based on a genealogical model for admixture tracts, we develop an efficient algorithm for computing the sampling probability of the genome from a single individual, as a function of the admixture proportions of the ancestors of this individual. This allows us to perform probabilistic inference of admixture proportions of ancestors only using the genome of an extant individual. We perform extensive simulations to quantify the error in the estimation of ancestral admixture proportions under various conditions. To illustrate the utility of the method, we apply it to real genetic data.Author summary Ancestry inference is an important problem in genetics and is used commercially by a number of companies affecting millions of consumers of genetic ancestry tests. In this paper, we show that it is possible, not only to estimate the ancestry fractions of an individual, but also, with some uncertainty, to estimate the ancestry fractions of an individual's recent ancestors. For example, if an individual traces his/her ancestry 50% to Asia and 50% to Europe, it is possible to distinguish between the individual having two parents that each are 50:50 composites of Asian and European ancestry, or one parent from Asia and one from Europe. It is likewise also possible to make inferences about grandparents. We present a computationally efficient method for making such inferences called PedMix. PedMix is based on a probabilistic model for the descendant and the recent ancestors. PedMix infers admixture proportions of recent ancestors (parents, grandparents or even great grandparents) using whole-genome genetic variation data from a focal individual. Results on both simulated and real data show that PedMix performs reasonably well in most scenarios.",
keywords = "WHOLE-GENOME ASSOCIATION, LOCAL-ANCESTRY, INFERENCE, ADMIXTURE",
author = "Jingwen Pei and Yiming Zhang and Rasmus Nielsen and Yufeng Wu",
year = "2020",
doi = "10.1371/journal.pcbi.1008065",
language = "English",
volume = "16",
journal = "P L o S Computational Biology (Online)",
issn = "1553-734X",
publisher = "Public Library of Science",
number = "8",

}

RIS

TY - JOUR

T1 - Inferring the ancestry of parents and grandparents from genetic data

AU - Pei, Jingwen

AU - Zhang, Yiming

AU - Nielsen, Rasmus

AU - Wu, Yufeng

PY - 2020

Y1 - 2020

N2 - Inference of admixture proportions is a classical statistical problem in population genetics. Standard methods implicitly assume that both parents of an individual have the same admixture fraction. However, this is rarely the case in real data. In this paper we show that the distribution of admixture tract lengths in a genome contains information about the admixture proportions of the ancestors of an individual. We develop a Hidden Markov Model (HMM) framework for estimating the admixture proportions of the immediate ancestors of an individual, i.e. a type of decomposition of an individual's admixture proportions into further subsets of ancestral proportions in the ancestors. Based on a genealogical model for admixture tracts, we develop an efficient algorithm for computing the sampling probability of the genome from a single individual, as a function of the admixture proportions of the ancestors of this individual. This allows us to perform probabilistic inference of admixture proportions of ancestors only using the genome of an extant individual. We perform extensive simulations to quantify the error in the estimation of ancestral admixture proportions under various conditions. To illustrate the utility of the method, we apply it to real genetic data.Author summary Ancestry inference is an important problem in genetics and is used commercially by a number of companies affecting millions of consumers of genetic ancestry tests. In this paper, we show that it is possible, not only to estimate the ancestry fractions of an individual, but also, with some uncertainty, to estimate the ancestry fractions of an individual's recent ancestors. For example, if an individual traces his/her ancestry 50% to Asia and 50% to Europe, it is possible to distinguish between the individual having two parents that each are 50:50 composites of Asian and European ancestry, or one parent from Asia and one from Europe. It is likewise also possible to make inferences about grandparents. We present a computationally efficient method for making such inferences called PedMix. PedMix is based on a probabilistic model for the descendant and the recent ancestors. PedMix infers admixture proportions of recent ancestors (parents, grandparents or even great grandparents) using whole-genome genetic variation data from a focal individual. Results on both simulated and real data show that PedMix performs reasonably well in most scenarios.

AB - Inference of admixture proportions is a classical statistical problem in population genetics. Standard methods implicitly assume that both parents of an individual have the same admixture fraction. However, this is rarely the case in real data. In this paper we show that the distribution of admixture tract lengths in a genome contains information about the admixture proportions of the ancestors of an individual. We develop a Hidden Markov Model (HMM) framework for estimating the admixture proportions of the immediate ancestors of an individual, i.e. a type of decomposition of an individual's admixture proportions into further subsets of ancestral proportions in the ancestors. Based on a genealogical model for admixture tracts, we develop an efficient algorithm for computing the sampling probability of the genome from a single individual, as a function of the admixture proportions of the ancestors of this individual. This allows us to perform probabilistic inference of admixture proportions of ancestors only using the genome of an extant individual. We perform extensive simulations to quantify the error in the estimation of ancestral admixture proportions under various conditions. To illustrate the utility of the method, we apply it to real genetic data.Author summary Ancestry inference is an important problem in genetics and is used commercially by a number of companies affecting millions of consumers of genetic ancestry tests. In this paper, we show that it is possible, not only to estimate the ancestry fractions of an individual, but also, with some uncertainty, to estimate the ancestry fractions of an individual's recent ancestors. For example, if an individual traces his/her ancestry 50% to Asia and 50% to Europe, it is possible to distinguish between the individual having two parents that each are 50:50 composites of Asian and European ancestry, or one parent from Asia and one from Europe. It is likewise also possible to make inferences about grandparents. We present a computationally efficient method for making such inferences called PedMix. PedMix is based on a probabilistic model for the descendant and the recent ancestors. PedMix infers admixture proportions of recent ancestors (parents, grandparents or even great grandparents) using whole-genome genetic variation data from a focal individual. Results on both simulated and real data show that PedMix performs reasonably well in most scenarios.

KW - WHOLE-GENOME ASSOCIATION

KW - LOCAL-ANCESTRY

KW - INFERENCE

KW - ADMIXTURE

U2 - 10.1371/journal.pcbi.1008065

DO - 10.1371/journal.pcbi.1008065

M3 - Journal article

C2 - 32797037

VL - 16

JO - P L o S Computational Biology (Online)

JF - P L o S Computational Biology (Online)

SN - 1553-734X

IS - 8

M1 - 1008065

ER -

ID: 271612878