Abstract
Past studies describe numerous endophenotypes associated with schizophrenia (SZ), but many endophenotypes may overlap in information they provide, and few studies have investigated the utility of a multivariate index to improve discrimination between SZ and healthy community comparison subjects (CCS). We investigated 16 endophenotypes from the first phase of the Consortium on the Genetics of Schizophrenia, a large, multi-site family study, to determine whether a subset could distinguish SZ probands and CCS just as well as using all 16.Participants included 345 SZ probands and 517 CCS with a valid measure for at least one endophenotype. We used both logistic regression and random forest models to choose a subset of endophenotypes, adjusting for age, gender, smoking status, site, parent education, and the reading subtest of the Wide Range Achievement Test. As a sensitivity analysis, we re-fit models using multiple imputations to determine the effect of missing values. We identified four important endophenotypes: antisaccade, Continuous Performance Test-Identical Pairs 3-digit version, California Verbal Learning Test, and emotion identification. The logistic regression model that used just these four endophenotypes produced essentially the same results as the model that used all 16 (84% vs. 85% accuracy). While a subset of endophenotypes cannot replace clinical diagnosis nor encompass the complexity of the disease, it can aid in the design of future endophenotypic and genetic studies by reducing study cost and subject burden, simplifying sample enrichment, and improving the statistical power of locating those genetic regions associated with schizophrenia that may be the easiest to identify initially.
Original language | English |
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Pages (from-to) | 1-9 |
Number of pages | 9 |
Journal | Schizophrenia Research |
Volume | 174 |
Issue number | 1-3 |
DOIs | |
State | Published - 1 Jul 2016 |
Externally published | Yes |
Bibliographical note
Publisher Copyright:© 2016.
Funding
This material is the result of work supported in part with resources and the use of facilities at the VA Puget Sound Health Care System, Seattle,WA; VA San Diego Healthcare System, San Diego, CA; VA Greater Los Angeles Health Care System, Los Angeles, CA; and James J. PetersVAMedical Center,NewYork,NY. The studywas supported byNIMHgrants R01 MH65571, R01 MH042228, R01 MH65588, R01 MH65562, R01 MH65707, R01 MH65554, R01 MH65578, R01 MH086135, and R01 MH65558. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript, and the contents do not represent the views of the funders, the U.S. Department of Veterans Affairs, or the United States Government. This material is the result of work supported in part with resources and the use of facilities at the VA Puget Sound Health Care System, Seattle, WA; VA San Diego Healthcare System, San Diego, CA; VA Greater Los Angeles Health Care System, Los Angeles, CA; and James J. Peters VA Medical Center, New York, NY. The study was supported by NIMH grants R01 MH65571 , R01 MH042228 , R01 MH65588 , R01 MH65562 , R01 MH65707 , R01 MH65554 , R01 MH65578 , R01 MH086135 , and R01 MH65558 . The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript, and the contents do not represent the views of the funders, the U.S. Department of Veterans Affairs, or the United States Government.
Funders | Funder number |
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James J. PetersVAMedical Center | |
VA Greater Los Angeles Health Care System | |
National Institute of Mental Health | R01MH065588, R01 MH65558, R01 MH65707, R01 MH65562, R01 MH086135, R01 MH65571, R01 MH65578, R01 MH65554, R01 MH042228 |
U.S. Department of Veterans Affairs |
Keywords
- Accuracy
- Endophenotype
- Logistic regression
- Multiple imputation
- ROC curve
- Random forest
- Schizophrenia
- Sensitivity
- Specificity