Electronic health record concordance with survey-reported military sexual trauma among younger Veterans: Associations with health care utilization and mental health diagnoses

Abstract: Introduction: Military sexual trauma (MST) is more common among post-9/11 Veterans and women versus older Veterans and men. Despite mandatory screening, the concordance of electronic health record (EHR) documentation and survey-reported MST, and associations with health care utilization and mental health diagnoses, are unknown for this younger group. Materials and Methods: Veterans' Health Administration (VHA) EHR (2001-2021) were merged with data from the observational, nationwide WomenVeterans Cohort Study (collected 2016-2020, n = 1058; 51% women). Experiencing MST was defined as positive endorsement of sexual harassment and/or assault. From the EHR, we derived Veterans' number of primary care and mental health visits in the initial two years of VHA care and diagnoses of posttraumatic stress disorder (PTSD), depression, and anxiety. First, the concordance of EHR MST screening and survey-reported MST was compared. Next, multivariate analyses tested the cross-sectional associations of EHR screening and survey-reported MST with Veterans' health care utilization, and compared the likelihood of PTSD, depression, and anxiety diagnoses by MST group, while covarying demographics and service-related characteristics. With few MST cases among men, multivariate analyses were only pursued for women. Results: Overall, 29% of women and 2% of men screened positive for MST in the EHR, but 64% of women and 9% of men had survey-reported MST. Primary care utilization was similar between women with concordant, positive MST reports in the EHR and survey versus those with survey-reported MST only. Women with survey-reported MST only were less likely to have a PTSD or depression diagnosis than those with concordant, positive MST reports. There was no group difference in women's likelihood of anxiety. Conclusions: EHR MST documentation is discordant for many post-9/11 Veterans-both for men and women. Improving MST screening and better supporting MST disclosure are each critical to provide appropriate and timely care for younger Veterans, particularly women.

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