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Blood-based DNA methylation and exposure risk scores predict PTSD with high accuracy in military and civilian cohorts.
Wani, Agaz; Katrinli, Seyma; Zhao, Xiang; Daskalakis, Nikolaos; Zannas, Anthony; Aiello, Allison; Baker, Dewleen; Boks, Marco; Brick, Leslie; Chen, Chia-Yen; Dalvie, Shareefa; Fortier, Catherine; Geuze, Elbert; Hayes, Jasmeet; Kessler, Ronald; King, Anthony; Koen, Nastassja; Liberzon, Israel; Lori, Adriana; Luykx, Jurjen; Maihofer, Adam; Milberg, William; Miller, Mark; Mufford, Mary; Nugent, Nicole; Rauch, Sheila; Ressler, Kerry; Risbrough, Victoria; Rutten, Bart; Stein, Dan; Stein, Murrary; Ursano, Robert; Verfaellie, Mieke; Ware, Erin; Wildman, Derek; Wolf, Erika; Nievergelt, Caroline; Logue, Mark; Smith, Alicia; Uddin, Monica; Vermetten, Eric; Vinkers, Christiaan.
Afiliação
  • Wani A; University of South Florida College of Public Health, Genomics Program.
  • Katrinli S; Emory University Department of Gynecology and Obstetrics.
  • Zhao X; Boston University School of Public Health.
  • Daskalakis N; Broad Institute of MIT and Harvard, Stanley Center for Psychiatric Research.
  • Zannas A; University of North Carolina at Chapel Hill, Carolina Stress Initiative.
  • Aiello A; Robert N Butler Columbia Aging Center, Columbia University.
  • Baker D; University of California San Diego, Department of Psychiatry.
  • Boks M; Brain Center University Medical Center Utrecht, Department of Psychiatry.
  • Brick L; Alpert University, Brown University.
  • Chen CY; Biogen Inc., Translational Sciences.
  • Dalvie S; University of Cape Town, Department of Pathology.
  • Fortier C; Harvard Medical School, Department of Psychiatry.
  • Geuze E; Netherlands Ministry of Defence, Brain Research and Innovation Centre.
  • Hayes J; The Ohio State University, Department of Psychology.
  • Kessler R; Harvard Medical School, Department of Health Care Policy.
  • King A; The Ohio State University, College of Medicine, Institute for Behavioral Medicine Research.
  • Koen N; University of Cape Town, Department of Psychiatry & Mental Health.
  • Liberzon I; Texas A&M University College of Medicine, Department of Psychiatry and Behavioral Sciences.
  • Lori A; Emory University, Department of Psychiatry and Behavioral Sciences.
  • Luykx J; UMC Utrecht Brain Center Rudolf Magnus, Department of Psychiatry.
  • Maihofer A; University of California, San Diego.
  • Milberg W; VA Boston Healthcare System, TRACTS/GRECC.
  • Miller M; Boston University School of Medicine, Psychiatry.
  • Mufford M; University of Cape Town, Neuroscience Institute.
  • Nugent N; Alpert Brown Medical School, Department of Emergency Medicine.
  • Rauch S; Emory University, Department of Psychiatry & Behavioral Sciences.
  • Ressler K; Harvard Medical School, Department of Psychiatry.
  • Risbrough V; University of California San Diego, Department of Psychiatry.
  • Rutten B; Maastricht Universitair Medisch Centrum, School for Mental Health and Neuroscience, Department of Psychiatry and Neuropsychology.
  • Stein D; University of Cape Town, Department of Psychiatry & Mental Health.
  • Stein M; University of California San Diego, Department of Psychiatry.
  • Ursano R; Uniformed Services University, Department of Psychiatry.
  • Verfaellie M; Boston University School of Medicine, Psychiatry.
  • Ware E; University of Michigan, Population Studies Center.
  • Wildman D; University of South Florida College of Public Health, Genomics Program.
  • Wolf E; VA Boston Healthcare System, National Center for PTSD.
  • Nievergelt C; University of California San Diego, Department of Psychiatry.
  • Logue M; Boston University School of Public Health.
  • Smith A; Emory University Department of Gynecology and Obstetrics.
  • Uddin M; University of South Florida College of Public Health, Genomics Program.
  • Vermetten E; Leiden University Medical Center, Department of Psychiatry.
  • Vinkers C; Amsterdam Neuroscience, Mood, Anxiety, Psychosis, Sleep & Stress Program.
Res Sq ; 2024 Feb 15.
Article em En | MEDLINE | ID: mdl-38410438
ABSTRACT

Background:

Incorporating genomic data into risk prediction has become an increasingly useful approach for rapid identification of individuals most at risk for complex disorders such as PTSD. Our goal was to develop and validate Methylation Risk Scores (MRS) using machine learning to distinguish individuals who have PTSD from those who do not.

Methods:

Elastic Net was used to develop three risk score models using a discovery dataset (n = 1226; 314 cases, 912 controls) comprised of 5 diverse cohorts with available blood-derived DNA methylation (DNAm) measured on the Illumina Epic BeadChip. The first risk score, exposure and methylation risk score (eMRS) used cumulative and childhood trauma exposure and DNAm variables; the second, methylation-only risk score (MoRS) was based solely on DNAm data; the third, methylation-only risk scores with adjusted exposure variables (MoRSAE) utilized DNAm data adjusted for the two exposure variables. The potential of these risk scores to predict future PTSD based on pre-deployment data was also assessed. External validation of risk scores was conducted in four independent cohorts.

Results:

The eMRS model showed the highest accuracy (92%), precision (91%), recall (87%), and f1-score (89%) in classifying PTSD using 3730 features. While still highly accurate, the MoRS (accuracy = 89%) using 3728 features and MoRSAE (accuracy = 84%) using 4150 features showed a decline in classification power. eMRS significantly predicted PTSD in one of the four independent cohorts, the BEAR cohort (beta = 0.6839, p-0.003), but not in the remaining three cohorts. Pre-deployment risk scores from all models (eMRS, beta = 1.92; MoRS, beta = 1.99 and MoRSAE, beta = 1.77) displayed a significant (p < 0.001) predictive power for post-deployment PTSD.

Conclusion:

Results, especially those from the eMRS, reinforce earlier findings that methylation and trauma are interconnected and can be leveraged to increase the correct classification of those with vs. without PTSD. Moreover, our models can potentially be a valuable tool in predicting the future risk of developing PTSD. As more data become available, including additional molecular, environmental, and psychosocial factors in these scores may enhance their accuracy in predicting the condition and, relatedly, improve their performance in independent cohorts.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article