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Variability of polygenic prediction for body mass index in Africa

Variability of polygenic prediction for body mass index in Africa
Variability of polygenic prediction for body mass index in Africa
Background: polygenic prediction studies in continental Africans are scarce. Africa’s genetic and environmental diversity pose a challenge that limits the generalizability of polygenic risk scores (PRS) for body mass index (BMI) within the continent. Studies to understand the factors that affect PRS variability within Africa are required.

Methods: using the first multi-ancestry genome-wide association study (GWAS) meta-analysis for BMI involving continental Africans, we derived a multi-ancestry PRS and compared its performance to a European ancestry-specific PRS in continental Africans (AWI-Gen study) and a European cohort (Estonian Biobank). We then evaluated the factors affecting the performance of the PRS in Africans which included fine-mapping resolution, allele frequencies, linkage disequilibrium patterns, and PRS-environment interactions.

Results: polygenic prediction of BMI in continental Africans is poor compared to that in European ancestry individuals. However, we show that the multi-ancestry PRS is more predictive than the European ancestry-specific PRS due to its improved fine-mapping resolution. We noted regional variation in polygenic prediction across Africa’s East, South, and West regions, which was driven by a complex interplay of the PRS with environmental factors, such as physical activity, smoking, alcohol intake, and socioeconomic status.

Conclusions: our findings highlight the role of gene-environment interactions in PRS prediction variability in Africa. PRS methods that correct for these interactions, coupled with the increased representation of Africans in GWAS, may improve PRS prediction in Africa.
1756-994X
Chikowore, Tinashe
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Läll, Kristi
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Micklesfield, Lisa K.
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Lombard, Zané
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Goedecke, Julia H.
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Fatumo, Segun
157f94a2-64bd-46eb-b88b-7595b5c1411a
Norris, Shane A.
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Magi, Reedik
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Ramsay, Michele
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Franks, Paul W.
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Pare, Guillaume
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Morris, Andrew P.
055d1280-e160-496e-953f-3c9347fcd4d2
Chikowore, Tinashe
b53b1cb9-8363-4e2c-9d62-dc3a8627a7b5
Läll, Kristi
8bede8fb-5d98-46f2-bdcc-d1a61a0d14be
Micklesfield, Lisa K.
e73dd95b-ce79-4dc4-b0be-a8935eb069c8
Lombard, Zané
42a83197-436e-470d-b223-4cddc7adf8e7
Goedecke, Julia H.
27db2aa1-04c2-44e8-9c0e-e9bbe98f2e25
Fatumo, Segun
157f94a2-64bd-46eb-b88b-7595b5c1411a
Norris, Shane A.
1d346f1b-6d5f-4bca-ac87-7589851b75a4
Magi, Reedik
627c2704-d621-448a-87ce-7ea7a179f6b7
Ramsay, Michele
bce9b7de-5ddf-4013-9060-056d98be610e
Franks, Paul W.
feeaef30-b129-46df-85df-6b36a9f00b14
Pare, Guillaume
33983bfc-4893-4213-a574-b5128fdd9f2a
Morris, Andrew P.
055d1280-e160-496e-953f-3c9347fcd4d2

Chikowore, Tinashe, Läll, Kristi, Micklesfield, Lisa K., Lombard, Zané, Goedecke, Julia H., Fatumo, Segun, Norris, Shane A., Magi, Reedik, Ramsay, Michele, Franks, Paul W., Pare, Guillaume and Morris, Andrew P. (2024) Variability of polygenic prediction for body mass index in Africa. Genome Medicine, 16, [74]. (doi:10.1186/s13073-024-01348-x).

Record type: Article

Abstract

Background: polygenic prediction studies in continental Africans are scarce. Africa’s genetic and environmental diversity pose a challenge that limits the generalizability of polygenic risk scores (PRS) for body mass index (BMI) within the continent. Studies to understand the factors that affect PRS variability within Africa are required.

Methods: using the first multi-ancestry genome-wide association study (GWAS) meta-analysis for BMI involving continental Africans, we derived a multi-ancestry PRS and compared its performance to a European ancestry-specific PRS in continental Africans (AWI-Gen study) and a European cohort (Estonian Biobank). We then evaluated the factors affecting the performance of the PRS in Africans which included fine-mapping resolution, allele frequencies, linkage disequilibrium patterns, and PRS-environment interactions.

Results: polygenic prediction of BMI in continental Africans is poor compared to that in European ancestry individuals. However, we show that the multi-ancestry PRS is more predictive than the European ancestry-specific PRS due to its improved fine-mapping resolution. We noted regional variation in polygenic prediction across Africa’s East, South, and West regions, which was driven by a complex interplay of the PRS with environmental factors, such as physical activity, smoking, alcohol intake, and socioeconomic status.

Conclusions: our findings highlight the role of gene-environment interactions in PRS prediction variability in Africa. PRS methods that correct for these interactions, coupled with the increased representation of Africans in GWAS, may improve PRS prediction in Africa.

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Accepted/In Press date: 21 May 2024
Published date: 30 May 2024

Identifiers

Local EPrints ID: 504780
URI: http://eprints.soton.ac.uk/id/eprint/504780
ISSN: 1756-994X
PURE UUID: 0930352f-cdbe-4b51-a75b-c58e45a9d056
ORCID for Shane A. Norris: ORCID iD orcid.org/0000-0001-7124-3788

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Date deposited: 18 Sep 2025 17:06
Last modified: 19 Sep 2025 02:02

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Contributors

Author: Tinashe Chikowore
Author: Kristi Läll
Author: Lisa K. Micklesfield
Author: Zané Lombard
Author: Julia H. Goedecke
Author: Segun Fatumo
Author: Shane A. Norris ORCID iD
Author: Reedik Magi
Author: Michele Ramsay
Author: Paul W. Franks
Author: Guillaume Pare
Author: Andrew P. Morris

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