Polygenic risk score: use in migraine research

被引:18
|
作者
Chalmer, Mona Ameri [1 ]
Esserlind, Ann-Louise [1 ]
Olesen, Jes [1 ]
Hansen, Thomas Folkmann [1 ]
机构
[1] Copenhagen Univ Hosp, Danish Headache Ctr, Dept Neurol, DK-2600 Glostrup, Denmark
关键词
Migraine genetics; Genome-Wide Association Studies; Polygenic Risk Score; pleiotropy; endophenotype; GENOME-WIDE ASSOCIATION; MAJOR PSYCHIATRIC-DISORDERS; BIPOLAR DISORDER; SCHIZOPHRENIA; DEPRESSION; BRAIN; FREQUENCY; HEADACHE; SPECTRUM; DISEASE;
D O I
10.1186/s10194-018-0856-0
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: The latest Genome-Wide Association Study identified 38 genetic variants associated with migraine. In this type of studies the significance level is very difficult to achieve (5 x 10(-8)) due to multiple testing. Thus, the identified variants only explain a small fraction of the genetic risk. It is expected that hundreds of thousands of variants also confer an increased risk but do not reach significance levels. One way to capture this information is by constructing a Polygenic Risk Score. Polygenic Risk Score has been widely used with success in genetics studies within neuropsychiatric disorders. The use of polygenic scores is highly relevant as data from a large migraine Genome-Wide Association Study are now available, which will form an excellent basis for Polygenic Risk Score in migraine studies. Results: Polygenic Risk Score has been used in studies of neuropsychiatric disorders to assess prediction of disease status in case-control studies, shared genetic correlation between co-morbid diseases, and shared genetic correlation between a disease and specific endophenotypes. Conclusion: Polygenic Risk Score provides an opportunity to investigate the shared genetic risk between known and previously unestablished co-morbidities in migraine research, and may lead to better and personalized treatment of migraine if used as a clinical assistant when identifying responders to specific drugs. Polygenic Risk Score can be used to analyze the genetic relationship between different headache types and migraine endophenotypes. Finally, Polygenic Risk Score can be used to assess pharmacogenetic effects, and perhaps help to predict efficacy of the Calcitonin Gene-Related Peptide monoclonal antibodies that soon become available as migraine treatment.
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页数:10
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