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Using clustering of genetic variants in Mendelian randomization to interrogate the causal pathways underlying multimorbidity from a common risk factor

Using clustering of genetic variants in Mendelian randomization to interrogate the causal pathways underlying multimorbidity from a common risk factor
Using clustering of genetic variants in Mendelian randomization to interrogate the causal pathways underlying multimorbidity from a common risk factor
Mendelian randomization (MR) is an epidemiological approach that utilizes genetic variants as instrumental variables to estimate the causal effect of an exposure on a health outcome. This paper investigates an MR scenario in which genetic variants aggregate into clusters that identify heterogeneous causal effects. Such variant clusters are likely to emerge if they affect the exposure and outcome via distinct biological pathways. In the multi-outcome MR framework, where a shared exposure causally impacts several disease outcomes simultaneously, these variant clusters can provide insights into the common disease-causing mechanisms underpinning the co-occurrence of multiple long-term conditions, a phenomenon known as multimorbidity. To identify such variant clusters, we adapt the general method of agglomerative hierarchical clustering to multi-sample summary-data MR setup, enabling cluster detection based on variant-specific ratio estimates. Particularly, we tailor the method for multi-outcome MR to aid in elucidating the causal pathways through which a common risk factor contributes to multiple morbidities. We show in simulations that our “MR-AHC” method detects clusters with high accuracy, outperforming the existing methods. We apply the method to investigate the causal effects of high body fat percentage on type 2 diabetes and osteoarthritis, uncovering interconnected cellular processes underlying this multimorbid disease pair.
Mendelian randomization, clustering analysis, heterogeneous causal effects, hierarchical clustering, multimorbidity, robust MR
0741-0395
Liang, Xiaoran
ebd38356-d7c5-4496-8cd9-7f2a12b701e5
Mounier, Ninon
49e62a89-eb02-41ac-b607-5187c034ce9a
Apfel, Nicolas
53d7e18d-dc96-4772-abab-6f02aeafbbde
Khalid, Sara
3c9655b0-c55c-4e5e-b64a-4d9a9f16f4d5
Frayling, Timothy M.
25e3ad4a-0a5b-4204-97e5-7a93b4864c81
Bowden, Jack
e62771e0-2bb1-41f3-9454-04012f73042a
Liang, Xiaoran
ebd38356-d7c5-4496-8cd9-7f2a12b701e5
Mounier, Ninon
49e62a89-eb02-41ac-b607-5187c034ce9a
Apfel, Nicolas
53d7e18d-dc96-4772-abab-6f02aeafbbde
Khalid, Sara
3c9655b0-c55c-4e5e-b64a-4d9a9f16f4d5
Frayling, Timothy M.
25e3ad4a-0a5b-4204-97e5-7a93b4864c81
Bowden, Jack
e62771e0-2bb1-41f3-9454-04012f73042a

Liang, Xiaoran, Mounier, Ninon, Apfel, Nicolas, Khalid, Sara, Frayling, Timothy M. and Bowden, Jack (2024) Using clustering of genetic variants in Mendelian randomization to interrogate the causal pathways underlying multimorbidity from a common risk factor. Genetic Epidemiology. (doi:10.1002/gepi.22582).

Record type: Article

Abstract

Mendelian randomization (MR) is an epidemiological approach that utilizes genetic variants as instrumental variables to estimate the causal effect of an exposure on a health outcome. This paper investigates an MR scenario in which genetic variants aggregate into clusters that identify heterogeneous causal effects. Such variant clusters are likely to emerge if they affect the exposure and outcome via distinct biological pathways. In the multi-outcome MR framework, where a shared exposure causally impacts several disease outcomes simultaneously, these variant clusters can provide insights into the common disease-causing mechanisms underpinning the co-occurrence of multiple long-term conditions, a phenomenon known as multimorbidity. To identify such variant clusters, we adapt the general method of agglomerative hierarchical clustering to multi-sample summary-data MR setup, enabling cluster detection based on variant-specific ratio estimates. Particularly, we tailor the method for multi-outcome MR to aid in elucidating the causal pathways through which a common risk factor contributes to multiple morbidities. We show in simulations that our “MR-AHC” method detects clusters with high accuracy, outperforming the existing methods. We apply the method to investigate the causal effects of high body fat percentage on type 2 diabetes and osteoarthritis, uncovering interconnected cellular processes underlying this multimorbid disease pair.

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Accepted/In Press date: 9 July 2024
e-pub ahead of print date: 13 August 2024
Keywords: Mendelian randomization, clustering analysis, heterogeneous causal effects, hierarchical clustering, multimorbidity, robust MR

Identifiers

Local EPrints ID: 494785
URI: http://eprints.soton.ac.uk/id/eprint/494785
ISSN: 0741-0395
PURE UUID: 2e7ed1fe-0db3-4a78-9794-d973d64842c7

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Date deposited: 15 Oct 2024 16:46
Last modified: 15 Oct 2024 16:47

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Contributors

Author: Xiaoran Liang
Author: Ninon Mounier
Author: Nicolas Apfel
Author: Sara Khalid
Author: Timothy M. Frayling
Author: Jack Bowden

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