The University of Southampton
University of Southampton Institutional Repository

Use of support vector machines for disease risk prediction in genome-wide association studies: concerns and opportunities

Use of support vector machines for disease risk prediction in genome-wide association studies: concerns and opportunities
Use of support vector machines for disease risk prediction in genome-wide association studies: concerns and opportunities
The success of genome-wide association studies (GWAS) in deciphering the genetic architecture of complex diseases has fueled the expectations whether the individual risk can also be quantified based on the genetic architecture. So far, disease risk prediction based on top-validated single-nucleotide polymorphisms (SNPs) showed little predictive value. Here, we applied a support vector machine (SVM) to Parkinson disease (PD) and type 1 diabetes (T1D), to show that apart from magnitude of effect size of risk variants, heritability of the disease also plays an important role in disease risk prediction. Furthermore, we performed a simulation study to show the role of uncommon (frequency 1–5%) as well as rare variants (frequency <1%) in disease etiology of complex diseases. Using a cross-validation model, we were able to achieve predictions with an area under the receiver operating characteristic curve (AUC) of ?0.88 for T1D, highlighting the strong heritable component (?90%). This is in contrast to PD, where we were unable to achieve a satisfactory prediction (AUC ?0.56; heritability ?38%). Our simulations showed that simultaneous inclusion of uncommon and rare variants in GWAS would eventually lead to feasible disease risk prediction for complex diseases such as PD
1059-7794
1708-1718
Mittag, Florian
9a4f9dd7-6e80-4b50-89d9-b7cf86d3ba94
Büchel, Finja
d38a284c-d4e4-4d37-b56f-08e4a54b8b49
Saad, Mohamad
8e62460c-1caa-4338-ac1e-e710067fea4f
Jahn, Andreas
77b31ab6-a680-419b-92b6-3835b5c8190a
Schulte, Claudia
835f596e-3ee2-4e3c-8b8a-30608c059d48
Bochdanovits, Zoltan
ff8c805d-3d2c-439b-a3ec-1f3542839532
Simón-Sánchez, Javier
a8ae5f46-6e63-4343-a36d-709ef4477a34
Nalls, Mike A.
d2fb34cf-28fd-4d9d-a64d-d2594107cab3
Keller, Margaux
6140eea3-f5a5-45a9-b3c9-999f463a438c
Hernandez, Dena G.
a3cc7267-9178-467a-bbc3-6d24bce11b4a
Gibbs, J. Raphael
4584f569-0217-4674-a580-3706d02c8519
Lesage, Suzanne
02db6af5-0012-4b04-bbc9-772e320d6b05
Brice, Alexis
6e1e1879-5529-4c89-8b49-be6f5a4395fe
Heutink, Peter
e9d55ff1-9823-4b0e-90b3-822f506d4994
Martinez, Maria
7ca9d215-2c2c-41b9-a6be-24e8ea06e775
Wood, Nicholas W
feb98e3c-35c3-4e1c-b133-258f076d87ff
Hardy, John
7d6a3558-4b3a-4c69-953f-3f8a7d162dca
Singleton, Andrew B.
66288e5c-8235-4eed-8989-2ff805343570
Zell, Andreas
448d0a23-c7de-497b-a3dd-c85adc07a15a
Gasser, Thomas
69ce9799-2571-4a90-a4a9-374418dc3286
Sharma, Manu
71761491-b70d-4fa9-86fa-e64e73a61290
Morrison, Karen
f00890f0-2fde-4dbd-a73b-7422e1b0ede8
Mittag, Florian
9a4f9dd7-6e80-4b50-89d9-b7cf86d3ba94
Büchel, Finja
d38a284c-d4e4-4d37-b56f-08e4a54b8b49
Saad, Mohamad
8e62460c-1caa-4338-ac1e-e710067fea4f
Jahn, Andreas
77b31ab6-a680-419b-92b6-3835b5c8190a
Schulte, Claudia
835f596e-3ee2-4e3c-8b8a-30608c059d48
Bochdanovits, Zoltan
ff8c805d-3d2c-439b-a3ec-1f3542839532
Simón-Sánchez, Javier
a8ae5f46-6e63-4343-a36d-709ef4477a34
Nalls, Mike A.
d2fb34cf-28fd-4d9d-a64d-d2594107cab3
Keller, Margaux
6140eea3-f5a5-45a9-b3c9-999f463a438c
Hernandez, Dena G.
a3cc7267-9178-467a-bbc3-6d24bce11b4a
Gibbs, J. Raphael
4584f569-0217-4674-a580-3706d02c8519
Lesage, Suzanne
02db6af5-0012-4b04-bbc9-772e320d6b05
Brice, Alexis
6e1e1879-5529-4c89-8b49-be6f5a4395fe
Heutink, Peter
e9d55ff1-9823-4b0e-90b3-822f506d4994
Martinez, Maria
7ca9d215-2c2c-41b9-a6be-24e8ea06e775
Wood, Nicholas W
feb98e3c-35c3-4e1c-b133-258f076d87ff
Hardy, John
7d6a3558-4b3a-4c69-953f-3f8a7d162dca
Singleton, Andrew B.
66288e5c-8235-4eed-8989-2ff805343570
Zell, Andreas
448d0a23-c7de-497b-a3dd-c85adc07a15a
Gasser, Thomas
69ce9799-2571-4a90-a4a9-374418dc3286
Sharma, Manu
71761491-b70d-4fa9-86fa-e64e73a61290
Morrison, Karen
f00890f0-2fde-4dbd-a73b-7422e1b0ede8

Mittag, Florian, Büchel, Finja and Saad, Mohamad et al. (2012) Use of support vector machines for disease risk prediction in genome-wide association studies: concerns and opportunities. Human Mutation, 33 (12), 1708-1718. (doi:10.1002/humu.22161). (PMID:22777693)

Record type: Article

Abstract

The success of genome-wide association studies (GWAS) in deciphering the genetic architecture of complex diseases has fueled the expectations whether the individual risk can also be quantified based on the genetic architecture. So far, disease risk prediction based on top-validated single-nucleotide polymorphisms (SNPs) showed little predictive value. Here, we applied a support vector machine (SVM) to Parkinson disease (PD) and type 1 diabetes (T1D), to show that apart from magnitude of effect size of risk variants, heritability of the disease also plays an important role in disease risk prediction. Furthermore, we performed a simulation study to show the role of uncommon (frequency 1–5%) as well as rare variants (frequency <1%) in disease etiology of complex diseases. Using a cross-validation model, we were able to achieve predictions with an area under the receiver operating characteristic curve (AUC) of ?0.88 for T1D, highlighting the strong heritable component (?90%). This is in contrast to PD, where we were unable to achieve a satisfactory prediction (AUC ?0.56; heritability ?38%). Our simulations showed that simultaneous inclusion of uncommon and rare variants in GWAS would eventually lead to feasible disease risk prediction for complex diseases such as PD

This record has no associated files available for download.

More information

Accepted/In Press date: 18 June 2012
e-pub ahead of print date: 3 August 2012
Published date: December 2012
Organisations: Medical Education

Identifiers

Local EPrints ID: 398560
URI: http://eprints.soton.ac.uk/id/eprint/398560
ISSN: 1059-7794
PURE UUID: 9c3dd25b-f83b-4ca8-a91a-8d496a3dc7a8
ORCID for Karen Morrison: ORCID iD orcid.org/0000-0003-0216-5717

Catalogue record

Date deposited: 26 Jul 2016 12:57
Last modified: 15 Mar 2024 01:35

Export record

Altmetrics

Contributors

Author: Florian Mittag
Author: Finja Büchel
Author: Mohamad Saad
Author: Andreas Jahn
Author: Claudia Schulte
Author: Zoltan Bochdanovits
Author: Javier Simón-Sánchez
Author: Mike A. Nalls
Author: Margaux Keller
Author: Dena G. Hernandez
Author: J. Raphael Gibbs
Author: Suzanne Lesage
Author: Alexis Brice
Author: Peter Heutink
Author: Maria Martinez
Author: Nicholas W Wood
Author: John Hardy
Author: Andrew B. Singleton
Author: Andreas Zell
Author: Thomas Gasser
Author: Manu Sharma
Author: Karen Morrison ORCID iD

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×