Evaluation of population structure inferred by principal component analysis or the admixture model

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Evaluation of population structure inferred by principal component analysis or the admixture model. / Van Waaij, Jan; Li, Song; Garcia-Erill, Genís; Albrechtsen, Anders; Wiuf, Carsten.

In: Genetics, Vol. 225, No. 2, iyad157, 2023.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Van Waaij, J, Li, S, Garcia-Erill, G, Albrechtsen, A & Wiuf, C 2023, 'Evaluation of population structure inferred by principal component analysis or the admixture model', Genetics, vol. 225, no. 2, iyad157. https://doi.org/10.1093/genetics/iyad157

APA

Van Waaij, J., Li, S., Garcia-Erill, G., Albrechtsen, A., & Wiuf, C. (2023). Evaluation of population structure inferred by principal component analysis or the admixture model. Genetics, 225(2), [iyad157]. https://doi.org/10.1093/genetics/iyad157

Vancouver

Van Waaij J, Li S, Garcia-Erill G, Albrechtsen A, Wiuf C. Evaluation of population structure inferred by principal component analysis or the admixture model. Genetics. 2023;225(2). iyad157. https://doi.org/10.1093/genetics/iyad157

Author

Van Waaij, Jan ; Li, Song ; Garcia-Erill, Genís ; Albrechtsen, Anders ; Wiuf, Carsten. / Evaluation of population structure inferred by principal component analysis or the admixture model. In: Genetics. 2023 ; Vol. 225, No. 2.

Bibtex

@article{ac0a162c85a54823a35112b80f96df4f,
title = "Evaluation of population structure inferred by principal component analysis or the admixture model",
abstract = "Principal component analysis (PCA) is commonly used in genetics to infer and visualize population structure and admixture between populations. PCA is often interpreted in a way similar to inferred admixture proportions, where it is assumed that individuals belong to one of several possible populations or are admixed between these populations. We propose a new method to assess the statistical fit of PCA (interpreted as a model spanned by the top principal components) and to show that violations of the PCA assumptions affect the fit. Our method uses the chosen top principal components to predict the genotypes. By assessing the covariance (and the correlation) of the residuals (the differences between observed and predicted genotypes), we are able to detect violation of the model assumptions. Based on simulations and genome-wide human data, we show that our assessment of fit can be used to guide the interpretation of the data and to pinpoint individuals that are not well represented by the chosen principal components. Our method works equally on other similar models, such as the admixture model, where the mean of the data is represented by linear matrix decomposition.",
keywords = "ancient DNA, PCA, population structure, residuals, statistical fit",
author = "{Van Waaij}, Jan and Song Li and Gen{\'i}s Garcia-Erill and Anders Albrechtsen and Carsten Wiuf",
note = "Publisher Copyright: {\textcopyright} 2023 The Author(s). Published by Oxford University Press on behalf of The Genetics Society of America. All rights reserved.",
year = "2023",
doi = "10.1093/genetics/iyad157",
language = "English",
volume = "225",
journal = "Genetics",
issn = "1943-2631",
publisher = "The Genetics Society of America (GSA)",
number = "2",

}

RIS

TY - JOUR

T1 - Evaluation of population structure inferred by principal component analysis or the admixture model

AU - Van Waaij, Jan

AU - Li, Song

AU - Garcia-Erill, Genís

AU - Albrechtsen, Anders

AU - Wiuf, Carsten

N1 - Publisher Copyright: © 2023 The Author(s). Published by Oxford University Press on behalf of The Genetics Society of America. All rights reserved.

PY - 2023

Y1 - 2023

N2 - Principal component analysis (PCA) is commonly used in genetics to infer and visualize population structure and admixture between populations. PCA is often interpreted in a way similar to inferred admixture proportions, where it is assumed that individuals belong to one of several possible populations or are admixed between these populations. We propose a new method to assess the statistical fit of PCA (interpreted as a model spanned by the top principal components) and to show that violations of the PCA assumptions affect the fit. Our method uses the chosen top principal components to predict the genotypes. By assessing the covariance (and the correlation) of the residuals (the differences between observed and predicted genotypes), we are able to detect violation of the model assumptions. Based on simulations and genome-wide human data, we show that our assessment of fit can be used to guide the interpretation of the data and to pinpoint individuals that are not well represented by the chosen principal components. Our method works equally on other similar models, such as the admixture model, where the mean of the data is represented by linear matrix decomposition.

AB - Principal component analysis (PCA) is commonly used in genetics to infer and visualize population structure and admixture between populations. PCA is often interpreted in a way similar to inferred admixture proportions, where it is assumed that individuals belong to one of several possible populations or are admixed between these populations. We propose a new method to assess the statistical fit of PCA (interpreted as a model spanned by the top principal components) and to show that violations of the PCA assumptions affect the fit. Our method uses the chosen top principal components to predict the genotypes. By assessing the covariance (and the correlation) of the residuals (the differences between observed and predicted genotypes), we are able to detect violation of the model assumptions. Based on simulations and genome-wide human data, we show that our assessment of fit can be used to guide the interpretation of the data and to pinpoint individuals that are not well represented by the chosen principal components. Our method works equally on other similar models, such as the admixture model, where the mean of the data is represented by linear matrix decomposition.

KW - ancient DNA

KW - PCA

KW - population structure

KW - residuals

KW - statistical fit

U2 - 10.1093/genetics/iyad157

DO - 10.1093/genetics/iyad157

M3 - Journal article

C2 - 37611212

AN - SCOPUS:85174717454

VL - 225

JO - Genetics

JF - Genetics

SN - 1943-2631

IS - 2

M1 - iyad157

ER -

ID: 371925290