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Common polygenic variation enhances risk prediction for Alzheimer's disease

Authors :
Escott-Price, Valentina
Sims, Rebecca
Passmore, Peter
ODonovan, Michael
Owen, Michael J
Holmes, Clive
Powell, John
Brayne, Carol
Gill, Michael
Mead, Simon
Goate, Alison
Cruchaga, Carlos
Lambert, Jean-Charles
van Duijn, Cornelia
Bannister, Christian
Maier, Wolfgang
Ramirez, Alfredo
Holmans, Peter
Jones, Lesley
Hardy, John
Seshadri, Sudha
Schellenberg, Gerard D
Amouyel, Philippe
Williams, Julie
Abraham, Richard
Harold, Denise
Hollingworth, Paul
Gerrish, Amy
Chapman, Jade
Russo, Giancarlo
Hamshere, Marian
Pahwa, Jaspreet Singh
Dowzell, Kimberley
Williams, Amy
Jones, Nicola
Thomas, Charlene
Vronskaya, Maria
Stretton, Alexandra
Morgan, Angharad
Taylor, Sarah
Lovestone, Simon
Proitsi, Petroula
Lupton, Michelle K
Rubinsztein, David C
Lawlor, Brian
Lynch, Aoibhinn
Brown, Kristelle
Majounie, Elisa
Craig, David
McGuinness, Bernadette
Todd, Stephen
Johnston, Janet
Mann, David
Smith, A David
Love, Seth
Kehoe, Patrick G
Fox, Nick
Rossor, Martin
Badarinarayan, Nandini
Collinge, John
Jessen, Frank
Heun, Reiner
Schürmann, Britta
Becker, Tim
Herold, Christine
Lacour, Andre
Drichel, Dmitriy
van den Bussche, Hendrik
Heuser, Isabella
GERAD/PERADES
Kornhuber, Johannes
Wiltfang, Jens
Dichgans, Martin
Frölich, Lutz
Hampel, Harald
Hüll, Michael
Rujescu, Dan
Kauwe, John S K
Nowotny, Petra
Morris, John C
consortia, IGAP
Mayo, Kevin
Livingston, Gill
Bass, Nicholas J
Gurling, Hugh
McQuillin, Andrew
Gwilliam, Rhian
Deloukas, Panagiotis
Al-Chalabi, Ammar
Shaw, Christopher E
Singleton, Andrew B
Morgan, Kevin
Guerreiro, Rita
Mühleisen, Thomas W
Nöthen, Markus M.
Moebus, Susanne
Jöckel, Karl-Heinz
Klopp, Norman
Wichmann, H-Erich
Carrasquillo, Minerva M
Pankratz, V Shane
Younkin, Steven G
Epidemiology
Source :
Brain, 138, 3673-3684. Oxford University Press, Brain 138(12), 3673-3684 (2015). doi:10.1093/brain/awv268
Publication Year :
2015
Publisher :
Oxford University Press, 2015.

Abstract

The identification of subjects at high risk for Alzheimer's disease is important for prognosis and early intervention. We investigated the polygenic architecture of Alzheimer's disease and the accuracy of Alzheimer's disease prediction models, including and excluding the polygenic component in the model. This study used genotype data from the powerful dataset comprising 17 008 cases and 37 154 controls obtained from the International Genomics of Alzheimer's Project (IGAP). Polygenic score analysis tested whether the alleles identified to associate with disease in one sample set were significantly enriched in the cases relative to the controls in an independent sample. The disease prediction accuracy was investigated in a subset of the IGAP data, a sample of 3049 cases and 1554 controls (for whom APOE genotype data were available) by means of sensitivity, specificity, area under the receiver operating characteristic curve (AUC) and positive and negative predictive values. We observed significant evidence for a polygenic component enriched in Alzheimer's disease (P = 4.9 × 10(-26)). This enrichment remained significant after APOE and other genome-wide associated regions were excluded (P = 3.4 × 10(-19)). The best prediction accuracy AUC = 78.2% (95% confidence interval 77-80%) was achieved by a logistic regression model with APOE, the polygenic score, sex and age as predictors. In conclusion, Alzheimer's disease has a significant polygenic component, which has predictive utility for Alzheimer's disease risk and could be a valuable research tool complementing experimental designs, including preventative clinical trials, stem cell selection and high/low risk clinical studies. In modelling a range of sample disease prevalences, we found that polygenic scores almost doubles case prediction from chance with increased prediction at polygenic extremes.

Details

ISSN :
14602156 and 00068950
Volume :
138
Database :
OpenAIRE
Journal :
Brain
Accession number :
edsair.doi.dedup.....fa1eb514be5eae17a3d133919ba662e8
Full Text :
https://doi.org/10.1093/brain/awv268