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Dive into the research topics where Lisa Lewandowski-Romps is active.

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Featured researches published by Lisa Lewandowski-Romps.


JAMA Psychiatry | 2015

Predicting Suicides After Psychiatric Hospitalization in US Army Soldiers: The Army Study to Assess Risk and Resilience in Servicemembers (Army STARRS)

Ronald C. Kessler; Christopher H. Warner; Christopher G. Ivany; Maria Petukhova; Sherri Rose; Evelyn J. Bromet; Millard Brown; Tianxi Cai; Lisa J. Colpe; Kenneth L. Cox; Carol S. Fullerton; Stephen E. Gilman; Michael J. Gruber; Steven G. Heeringa; Lisa Lewandowski-Romps; Junlong Li; Amy M. Millikan-Bell; James A. Naifeh; Matthew K. Nock; Anthony J. Rosellini; Nancy A. Sampson; Michael Schoenbaum; Murray B. Stein; Simon Wessely; Alan M. Zaslavsky; Robert J. Ursano

IMPORTANCE The US Army experienced a sharp increase in soldier suicides beginning in 2004. Administrative data reveal that among those at highest risk are soldiers in the 12 months after inpatient treatment of a psychiatric disorder. OBJECTIVE To develop an actuarial risk algorithm predicting suicide in the 12 months after US Army soldier inpatient treatment of a psychiatric disorder to target expanded posthospitalization care. DESIGN, SETTING, AND PARTICIPANTS There were 53,769 hospitalizations of active duty soldiers from January 1, 2004, through December 31, 2009, with International Classification of Diseases, Ninth Revision, Clinical Modification psychiatric admission diagnoses. Administrative data available before hospital discharge abstracted from a wide range of data systems (sociodemographic, US Army career, criminal justice, and medical or pharmacy) were used to predict suicides in the subsequent 12 months using machine learning methods (regression trees and penalized regressions) designed to evaluate cross-validated linear, nonlinear, and interactive predictive associations. MAIN OUTCOMES AND MEASURES Suicides of soldiers hospitalized with psychiatric disorders in the 12 months after hospital discharge. RESULTS Sixty-eight soldiers died by suicide within 12 months of hospital discharge (12.0% of all US Army suicides), equivalent to 263.9 suicides per 100,000 person-years compared with 18.5 suicides per 100,000 person-years in the total US Army. The strongest predictors included sociodemographics (male sex [odds ratio (OR), 7.9; 95% CI, 1.9-32.6] and late age of enlistment [OR, 1.9; 95% CI, 1.0-3.5]), criminal offenses (verbal violence [OR, 2.2; 95% CI, 1.2-4.0] and weapons possession [OR, 5.6; 95% CI, 1.7-18.3]), prior suicidality [OR, 2.9; 95% CI, 1.7-4.9], aspects of prior psychiatric inpatient and outpatient treatment (eg, number of antidepressant prescriptions filled in the past 12 months [OR, 1.3; 95% CI, 1.1-1.7]), and disorders diagnosed during the focal hospitalizations (eg, nonaffective psychosis [OR, 2.9; 95% CI, 1.2-7.0]). A total of 52.9% of posthospitalization suicides occurred after the 5% of hospitalizations with highest predicted suicide risk (3824.1 suicides per 100,000 person-years). These highest-risk hospitalizations also accounted for significantly elevated proportions of several other adverse posthospitalization outcomes (unintentional injury deaths, suicide attempts, and subsequent hospitalizations). CONCLUSIONS AND RELEVANCE The high concentration of risk of suicide and other adverse outcomes might justify targeting expanded posthospitalization interventions to soldiers classified as having highest posthospitalization suicide risk, although final determination requires careful consideration of intervention costs, comparative effectiveness, and possible adverse effects.


JAMA Psychiatry | 2015

Predicting Suicides After Psychiatric Hospitalization in US Army Soldiers

Ronald C. Kessler; Christopher H. Warner; Christopher G. Ivany; Maria Petukhova; Sherri Rose; Evelyn J. Bromet; Millard Brown; Tianxi Cai; Lisa J. Colpe; Kenneth L. Cox; Carol S. Fullerton; Stephen E. Gilman; Michael L. Gruber; Steven G. Heeringa; Lisa Lewandowski-Romps; Junlong Li; Amy M. Millikan-Bell; James A. Naifeh; Matthew K. Nock; Anthony J. Rosellini; Nancy A. Sampson; Michael Schoenbaum; Murray B. Stein; Simon Wessely; Alan M. Zaslavsky; Robert J. Ursano

IMPORTANCE The US Army experienced a sharp increase in soldier suicides beginning in 2004. Administrative data reveal that among those at highest risk are soldiers in the 12 months after inpatient treatment of a psychiatric disorder. OBJECTIVE To develop an actuarial risk algorithm predicting suicide in the 12 months after US Army soldier inpatient treatment of a psychiatric disorder to target expanded posthospitalization care. DESIGN, SETTING, AND PARTICIPANTS There were 53,769 hospitalizations of active duty soldiers from January 1, 2004, through December 31, 2009, with International Classification of Diseases, Ninth Revision, Clinical Modification psychiatric admission diagnoses. Administrative data available before hospital discharge abstracted from a wide range of data systems (sociodemographic, US Army career, criminal justice, and medical or pharmacy) were used to predict suicides in the subsequent 12 months using machine learning methods (regression trees and penalized regressions) designed to evaluate cross-validated linear, nonlinear, and interactive predictive associations. MAIN OUTCOMES AND MEASURES Suicides of soldiers hospitalized with psychiatric disorders in the 12 months after hospital discharge. RESULTS Sixty-eight soldiers died by suicide within 12 months of hospital discharge (12.0% of all US Army suicides), equivalent to 263.9 suicides per 100,000 person-years compared with 18.5 suicides per 100,000 person-years in the total US Army. The strongest predictors included sociodemographics (male sex [odds ratio (OR), 7.9; 95% CI, 1.9-32.6] and late age of enlistment [OR, 1.9; 95% CI, 1.0-3.5]), criminal offenses (verbal violence [OR, 2.2; 95% CI, 1.2-4.0] and weapons possession [OR, 5.6; 95% CI, 1.7-18.3]), prior suicidality [OR, 2.9; 95% CI, 1.7-4.9], aspects of prior psychiatric inpatient and outpatient treatment (eg, number of antidepressant prescriptions filled in the past 12 months [OR, 1.3; 95% CI, 1.1-1.7]), and disorders diagnosed during the focal hospitalizations (eg, nonaffective psychosis [OR, 2.9; 95% CI, 1.2-7.0]). A total of 52.9% of posthospitalization suicides occurred after the 5% of hospitalizations with highest predicted suicide risk (3824.1 suicides per 100,000 person-years). These highest-risk hospitalizations also accounted for significantly elevated proportions of several other adverse posthospitalization outcomes (unintentional injury deaths, suicide attempts, and subsequent hospitalizations). CONCLUSIONS AND RELEVANCE The high concentration of risk of suicide and other adverse outcomes might justify targeting expanded posthospitalization interventions to soldiers classified as having highest posthospitalization suicide risk, although final determination requires careful consideration of intervention costs, comparative effectiveness, and possible adverse effects.


Psychological Medicine | 2015

Understanding the elevated suicide risk of female soldiers during deployments

Amy E. Street; Stephen E. Gilman; Anthony J. Rosellini; Murray B. Stein; Evelyn J. Bromet; Kenneth L. Cox; Lisa J. Colpe; Carol S. Fullerton; M. J. Gruber; Steven G. Heeringa; Lisa Lewandowski-Romps; Roderick J. A. Little; James A. Naifeh; Matthew K. Nock; Nancy A. Sampson; Michael Schoenbaum; Robert J. Ursano; Alan M. Zaslavsky; Ronald C. Kessler

BACKGROUND The Army Study to Assess Risk and Resilience in Servicemembers (Army STARRS) has found that the proportional elevation in the US Army enlisted soldier suicide rate during deployment (compared with the never-deployed or previously deployed) is significantly higher among women than men, raising the possibility of gender differences in the adverse psychological effects of deployment. METHOD Person-month survival models based on a consolidated administrative database for active duty enlisted Regular Army soldiers in 2004-2009 (n = 975,057) were used to characterize the gender × deployment interaction predicting suicide. Four explanatory hypotheses were explored involving the proportion of females in each soldiers occupation, the proportion of same-gender soldiers in each soldiers unit, whether the soldier reported sexual assault victimization in the previous 12 months, and the soldiers pre-deployment history of treated mental/behavioral disorders. RESULTS The suicide rate of currently deployed women (14.0/100,000 person-years) was 3.1-3.5 times the rates of other (i.e. never-deployed/previously deployed) women. The suicide rate of currently deployed men (22.6/100,000 person-years) was 0.9-1.2 times the rates of other men. The adjusted (for time trends, sociodemographics, and Army career variables) female:male odds ratio comparing the suicide rates of currently deployed v. other women v. men was 2.8 (95% confidence interval 1.1-6.8), became 2.4 after excluding soldiers with Direct Combat Arms occupations, and remained elevated (in the range 1.9-2.8) after adjusting for the hypothesized explanatory variables. CONCLUSIONS These results are valuable in excluding otherwise plausible hypotheses for the elevated suicide rate of deployed women and point to the importance of expanding future research on the psychological challenges of deployment for women.


Molecular Psychiatry | 2017

Predicting suicides after outpatient mental health visits in the Army Study to Assess Risk and Resilience in Servicemembers (Army STARRS)

Ronald C. Kessler; Murray B. Stein; M. Petukhova; Paul D. Bliese; Robert M. Bossarte; Evelyn J. Bromet; Carol S. Fullerton; Stephen E. Gilman; Christopher G. Ivany; Lisa Lewandowski-Romps; A Millikan Bell; James A. Naifeh; Matthew K. Nock; Ben Y. Reis; Anthony J. Rosellini; Nancy A. Sampson; Alan M. Zaslavsky; Robert J. Ursano; Steven G. Heeringa; Lisa J. Colpe; Michael Schoenbaum; S Cersovsky; Kenneth L. Cox; Pablo A. Aliaga; David M. Benedek; Susan Borja; Gregory G. Brown; L C Sills; Catherine L. Dempsey; Richard G. Frank

The 2013 US Veterans Administration/Department of Defense Clinical Practice Guidelines (VA/DoD CPG) require comprehensive suicide risk assessments for VA/DoD patients with mental disorders but provide minimal guidance on how to carry out these assessments. Given that clinician-based assessments are not known to be strong predictors of suicide, we investigated whether a precision medicine model using administrative data after outpatient mental health specialty visits could be developed to predict suicides among outpatients. We focused on male nondeployed Regular US Army soldiers because they account for the vast majority of such suicides. Four machine learning classifiers (naive Bayes, random forests, support vector regression and elastic net penalized regression) were explored. Of the Army suicides in 2004–2009, 41.5% occurred among 12.0% of soldiers seen as outpatient by mental health specialists, with risk especially high within 26 weeks of visits. An elastic net classifier with 10–14 predictors optimized sensitivity (45.6% of suicide deaths occurring after the 15% of visits with highest predicted risk). Good model stability was found for a model using 2004–2007 data to predict 2008–2009 suicides, although stability decreased in a model using 2008–2009 data to predict 2010–2012 suicides. The 5% of visits with highest risk included only 0.1% of soldiers (1047.1 suicides/100 000 person-years in the 5 weeks after the visit). This is a high enough concentration of risk to have implications for targeting preventive interventions. An even better model might be developed in the future by including the enriched information on clinician-evaluated suicide risk mandated by the VA/DoD CPG to be recorded.


Womens Health Issues | 2011

War-Related Stressors as Predictors of Post-Deployment Health of Air Force Women

Penny F. Pierce; Lisa Lewandowski-Romps; Perry Silverschanz

INTRODUCTION Little is known about the effects of combat exposure on womens health after service in Operation Iraqi Freedom (OIF). Our purpose was to describe the incidence and nature of physical heath symptoms reported by deployed women to identify problematic areas where early intervention or better surveillance might be directed. METHODS Using a random, stratified sample (theater vs. non-theater; parent vs. non-parent; and military component including active, guard, and reserve members) of 1,114 Air Force women, we provide descriptive statistics, group comparisons, and multiple regression models to identify health concerns and potential predictors of physical health outcomes. RESULTS Findings revealed that those in the reserve/guard forces (vs. active duty) and those in the theater of operations (vs. elsewhere during the same time period) reported greater physical health problems (β = -0.07, p < .05 and β = 0.11, p < .001, respectively). Enlisted women reported poorer general health than officers (β = 0.09, p < .01). Women were more likely to report that their physical health was impacted by OIF if deployed to the theater versus deployment elsewhere (β = 0.16, p < .001) or if they were in the reserve forces (β = -0.11, p < .001). Further, women who were parents or deployed to the theater reported greater interference of physical and emotional problems on their social functioning (β = 0.08, p < .05 and β = 0.08, p < .01, respectively). CONCLUSION Deployment to the theater of operations is significantly associated with physical health outcomes although the severity of the self-reported symptoms is low. Our findings suggest that further investigation is needed to explore the war-related predictors of health among women serving in deployed locations around the world.


American Journal of Preventive Medicine | 2014

Risk factors for accident death in the u.s. Army, 2004-2009

Lisa Lewandowski-Romps; Christopher Peterson; Patricia Berglund; Stacey D. Collins; Kenneth L. Cox; Keith G. Hauret; Bruce H. Jones; Ronald C. Kessler; Colter Mitchell; Nansook Park; Michael Schoenbaum; Murray B. Stein; Robert J. Ursano; Steven G. Heeringa

BACKGROUND Accidents are one of the leading causes of death among U.S. active-duty Army soldiers. Evidence-based approaches to injury prevention could be strengthened by adding person-level characteristics (e.g., demographics) to risk models tested on diverse soldier samples studied over time. PURPOSE To identify person-level risk indicators of accident deaths in Regular Army soldiers during a time frame of intense military operations, and to discriminate risk of not-line-of-duty from line-of-duty accident deaths. METHODS Administrative data acquired from multiple Army/Department of Defense sources for active duty Army soldiers during 2004-2009 were analyzed in 2013. Logistic regression modeling was used to identify person-level sociodemographic, service-related, occupational, and mental health predictors of accident deaths. RESULTS Delayed rank progression or demotion and being male, unmarried, in a combat arms specialty, and of low rank/service length increased odds of accident death for enlisted soldiers. Unique to officers was high risk associated with aviation specialties. Accident death risk decreased over time for currently deployed, enlisted soldiers and increased for those never deployed. Mental health diagnosis was associated with risk only for previous and never-deployed, enlisted soldiers. Models did not discriminate not-line-of-duty from line-of-duty accident deaths. CONCLUSIONS Adding more refined person-level and situational risk indicators to current models could enhance understanding of accident death risk specific to soldier rank and deployment status. Stable predictors could help identify high risk of accident deaths in future cohorts of Regular Army soldiers.


Preventive Medicine | 2017

Medical-encounter mental health diagnoses, non-fatal injury and polypharmacy indicators of risk for accident death in the US Army enlisted soldiers, 2004–2009

Lisa Lewandowski-Romps; Heather M. Schroeder; Patricia Berglund; Lisa J. Colpe; Kenneth L. Cox; Keith G. Hauret; Jeffrey D. Hay; Bruce H. Jones; Roderick J. A. Little; Colter Mitchell; Michael Schoenbaum; Paul Schulz; Murray B. Stein; Robert J. Ursano; Steven G. Heeringa

Accidents are a leading cause of deaths in U.S. active duty personnel. Understanding accident deaths during wartime could facilitate future operational planning and inform risk prevention efforts. This study expands prior research, identifying health risk factors associated with U.S. Army accident deaths during the Afghanistan and Iraq war. Military records for 2004-2009 enlisted, active duty, Regular Army soldiers were analyzed using logistic regression modeling to identify mental health, injury, and polypharmacy (multiple narcotic and/or psychotropic medications) predictors of accident deaths for current, previously, and never deployed groups. Deployed soldiers with anxiety diagnoses showed higher risk for accident deaths. Over half had anxiety diagnoses prior to being deployed, suggesting anticipatory anxiety or symptom recurrence may contribute to high risk. For previously deployed soldiers, traumatic brain injury (TBI) indicated higher risk. Two-thirds of these soldiers had first TBI medical-encounter while non-deployed, but mild, combat-related TBIs may have been undetected during deployments. Post-Traumatic Stress Disorder (PTSD) predicted higher risk for never deployed soldiers, as did polypharmacy which may relate to reasons for deployment ineligibility. Health risk predictors for Army accident deaths are identified and potential practice and policy implications discussed. Further research could test for replicability and expand models to include unobserved factors or modifiable mechanisms related to high risk. PTSD predicted high risk among those never deployed, suggesting importance of identification, treatment, and prevention of non-combat traumatic events. Finally, risk predictors overlapped with those identified for suicides, suggesting effective intervention might reduce both types of deaths.


Journal of Occupational Health Psychology | 2011

Effects of war exposure on air force personnel's mental health, job burnout and other organizational related outcomes.

Amiram D. Vinokur; Penny F. Pierce; Lisa Lewandowski-Romps; Stevan E. Hobfoll; Sandro Galea


Psychological Medicine | 2014

Sociodemographic and career history predictors of suicide mortality in the United States Army 2004-2009.

Stephen E. Gilman; Evelyn J. Bromet; Kenneth L. Cox; Lisa J. Colpe; Carol S. Fullerton; M. J. Gruber; Steven G. Heeringa; Lisa Lewandowski-Romps; Amy M. Millikan-Bell; James A. Naifeh; Matthew K. Nock; Maria Petukhova; Nancy A. Sampson; Michael Schoenbaum; Murray B. Stein; Robert J. Ursano; Simon Wessely; Alan M. Zaslavsky; Ronald C. Kessler


International Journal of Stress Management | 2012

The combined stress of family life, work, and war in Air Force men and women: A test of conservation of resources theory.

Stevan E. Hobfoll; Amiram D. Vinokur; Penny F. Pierce; Lisa Lewandowski-Romps

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Michael Schoenbaum

National Institutes of Health

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Robert J. Ursano

Uniformed Services University of the Health Sciences

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Lisa J. Colpe

National Institutes of Health

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Carol S. Fullerton

Uniformed Services University of the Health Sciences

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James A. Naifeh

Uniformed Services University of the Health Sciences

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