scholarly journals Powerful and Efficient Strategies for Genetic Association Testing of Symptom and Questionnaire Data in Psychiatric Genetic Studies

2018 ◽  
Author(s):  
Aaron M. Holleman ◽  
K. Alaine Broadaway ◽  
Richard Duncan ◽  
Lynn M. Almli ◽  
Bekh Bradley ◽  
...  

ABSTRACTGenetic studies of psychiatric disorders often deal with phenotypes that are not directly measurable. Instead, researchers rely on multivariate symptom data from questionnaires and surveys like the PTSD Symptom Scale (PSS) and Beck Depression Inventory (BDI) to indirectly assess a latent phenotype of interest. Researchers subsequently collapse such multivariate questionnaire data into a univariate outcome to represent a surrogate for the latent phenotype. However, when a causal variant is only associated with a subset of collapsed symptoms, the effect will be challenging to detect using the univariate outcome. We describe a more powerful strategy for genetic association testing in this situation that jointly analyzes the original multivariate symptom data collectively using a statistical framework that compares similarity in multivariate symptom-scale data from questionnaires to similarity in common genetic variants across a gene. We use simulated data to demonstrate this strategy provides substantially increased power over standard approaches that collapse questionnaire data into a single surrogate outcome. We also illustrate our approach using GWAS data from the Grady Trauma Project and identify genes associated with BDI not identified using standard univariate techniques. The approach is computationally efficient, scales to genome-wide studies, and is applicable to correlated symptom data of arbitrary dimension (thereby aligning with National Institute of Mental Health’s Research Domain Criteria).

2019 ◽  
Vol 9 (1) ◽  
Author(s):  
Aaron M. Holleman ◽  
K. Alaine Broadaway ◽  
Richard Duncan ◽  
Andrei Todor ◽  
Lynn M. Almli ◽  
...  

2019 ◽  
Vol 29 ◽  
pp. S963-S964
Author(s):  
Gido Schoenmacker ◽  
Tom Claassen ◽  
Tom Heskes ◽  
Barbara Franke ◽  
Jan Buitelaar ◽  
...  

2008 ◽  
Vol 49 (1) ◽  
pp. 81-92
Author(s):  
Joanna Szyda ◽  
Zengting Liu ◽  
Magdalena Zatoń-Dobrowolska ◽  
Heliodor Wierzbicki ◽  
Anna Rząsa

2021 ◽  
Vol 4 (1) ◽  
Author(s):  
Christiane Gasperi ◽  
Sung Chun ◽  
Shamil R. Sunyaev ◽  
Chris Cotsapas

AbstractGenetic mapping studies have identified thousands of associations between common variants and hundreds of human traits. Translating these associations into mechanisms is complicated by two factors: they fall into gene regulatory regions; and they are rarely mapped to one causal variant. One way around these limitations is to find groups of traits that share associations, using this genetic link to infer a biological connection. Here, we assess how many trait associations in the same locus are due to the same genetic variant, and thus shared; and if these shared associations are due to causal relationships between traits. We find that only a subset of traits share associations, with many due to causal relationships rather than pleiotropy. We therefore suggest that simply observing overlapping associations at a genetic locus is insufficient to infer causality; direct evidence of shared associations is required to support mechanistic hypotheses in genetic studies of complex traits.


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