Skip main navigation

Military Health System

Hurricane Milton & Hurricane Helene

Emergency procedures are in place in multiple states due to Hurricane Milton & Hurricane Helene. >>Learn More

Brief Report: Department of Defense Midseason Estimates of Vaccine Effectiveness for the 2018–2019 Influenza Season

Image of Adminstration of a seasonal flu vaccination. (U.S. Navy photo). Adminstration of a seasonal flu vaccination. (U.S. Navy photo)

Background

Military populations have historically been at high risk for acute respiratory infections, particularly training and deployed populations, who have living conditions that are often crowded and may be austere.1 Respiratory infections are responsible for over 300,000 medical encounters each year among U.S. active component service members, and the associated health care creates a substantial public health and economic burden on the Military Health System (MHS).1,2 Respiratory infections also account for approximately one-third of convalescence in quarters determinations and as such are a significant contributor to lost duty days.3 Viral respiratory pathogens are highly transmissible, and the specific types, trends, and risks often vary regionally and by setting.1 These variations are important for a globally dispersed force, as they inform risk assessments and ensure that proper preventive measures are implemented. Thus, the Department of Defense (DOD) conducts surveillance for respiratory infections both within the force and in other global populations. The Armed Forces Health Surveillance Branch's (AFHSB) Global Emerging Infections Surveillance (GEIS) section supports a global surveillance program, executed primarily by DOD service laboratories, at approximately 400 locations in over 30 countries. Respiratory infection surveillance data are regularly shared with the World Health Organization (WHO) and the Centers for Disease Control and Prevention (CDC). Because of frequent genetic mutations and the associated pandemic potential, influenza is of particular interest to the DOD and is a major focus of these surveillance efforts. Because influenza vaccination is the primary preventive countermeasure, the seasonal influenza vaccine's effectiveness is also closely monitored. Estimates of vaccine effectiveness (VE) are calculated twice annually: during the middle and at the end of the influenza season.

Methods

Three sites produced VE estimates for the DOD at midseason. The U.S. Air Force School of Aerospace Medicine/AFHSB-Air Force (USAFSAM/AFHSBAF) satellite VE estimate was produced from sentinel site surveillance within non-active component MHS beneficiaries (retirees and family members) receiving care at military treatment facilities (MTFs). The Naval Health Research Center (NHRC) VE estimate was derived from sentinel site influenza surveillance within civilian populations at clinics near the U.S.–Mexico border and among MHS beneficiaries (service members, retirees, and family members) receiving care at MTFs. The AFHSB's Epidemiology and Analysis (E&A) section VE estimate was derived from electronic health record (EHR) data from active component service members receiving care at MTFs.

For the 2018–2019 midseason, all 3 VE estimates were calculated using a test-negative case-control study design; crude and adjusted VE estimates, along with 95% confidence intervals (CIs), were calculated as (1 - odds ratio) x 100% and were obtained from multivariable logistic regression models. VE results were considered statistically significant if 95% CIs around VE estimates did not include zero.

USAFSAM/AFHSB-AF satellite's analysis adjusted for age group, time of specimen collection, region, and sex. NHRC's analysis adjusted for age group. AFHSB E&A's analysis adjusted for age group, month of diagnosis, 5-year vaccination status as a dichotomous variable, and sex. Analyses were performed for influenza types and subtypes as available. Cases were laboratory confirmed as influenza positive, and controls were influenza test negative. At NHRC and USAFSAM/AFHSB-AF satellite, influenza positives were confirmed through reverse transcription polymerase chain reaction (RT-PCR) and/or viral culture. AFHSB also used these methods for confirmation and included positive rapid tests, but individuals with only a negative rapid test, without another confirmatory test result were excluded from calculation of VE. USAFSAM/AFHSB-AF satellite verified vaccination status through EHR and self-report data, E&A verified vaccination status through EHR data, and NHRC used self-reported vaccination data. Nearly all vaccinated active duty and beneficiary patients received the inactivated influenza vaccine.

Results

Non-active component MHS beneficiary data were collected from 9 Dec. 2018 through 16 Feb. 2019. The analysis was restricted to this time period to provide a more accurate VE estimate, as earlier months of the influenza season are control-heavy. By the end of the surveillance period, 48% of 645 cases and 64% of 1,446 controls had been vaccinated (Table). Non-active component MHS beneficiary cases tended to be younger than controls. U.S.–Mexico border population civilian and MHS beneficiary data were collected from 30 Sept. 2018 through 15 Feb. 2019, during which time 13% of 251 cases and 27% of 1,185 controls were vaccinated. Border population and MHS beneficiary cases tended to be younger than controls. Active component service member data were collected from 1 Dec. 2018 through 16 Feb. 2019, and 92% of 1,594 cases and 91% of 2,548 controls were vaccinated. In the active component service member group, controls tended to be younger than cases.

As shown in the Table and Figure, adjusted VE for all influenza types for non-active component MHS beneficiaries was 47% (95% CI: 35–57), indicating moderate protection against influenza infection. For active component service members, adjusted VE for all influenza types was low, at 13% (95% CI: -11–32). For all influenza A, adjusted VE for non-active component MHS beneficiaries was 48% (95% CI: 36–58), VE for U.S.–Mexico border population civilians and MHS beneficiaries was 58% (95% CI: 38–72), and VE for active component service members was 12% (95% CI: -13–31). For influenza A(H1N1), adjusted VE for non-active component MHS beneficiaries was 57% (95% CI: 44–68), VE for U.S.–Mexico border population civilians and MHS beneficiaries was 65% (95% CI: 46–77), and VE for active component service members was 34% (95% CI: -19–64). Influenza A(H3N2) was not detected in high enough proportions in most populations to calculate VE, but for non-active component MHS beneficiaries, adjusted VE was 36% (95% CI: 14–53), indicating low-to-moderate protection. Similarly, influenza B was not detected in high enough proportions in most populations early in the 2018–2019 season to calculate VE; however, for active component service members, adjusted VE was 25% (95% CI: -8–48), indicating low protection.

Editorial Comment

The DOD laboratories and partners conducting respiratory infection surveillance provide a valuable global perspective and capability. Monitoring global trends, particularly for influenza, provides situational awareness for DOD leaders and informs current and future operation risk assessments and recommendations for preventive measures. This surveillance also facilitates sample sharing and further collaboration with WHO and CDC.

In general, for civilian populations, influenza vaccination provided moderate protection against infection, and DOD-generated VE estimates of non-service member beneficiaries and select civilian populations were similar to CDC estimates for the same time frame. CDC reported that adjusted VE for all influenza types was 47%, adjusted VE for influenza A(H1N1) was 46%, and adjusted VE for influenza A(H3N2) was 44%.4 In CDC and DOD analyses, protection was greater for influenza A(H1N1) than influenza A(H3N2). However, for active component service members, adjusted VE estimates were much lower, though not statistically significant. This difference may be partially attributable to the requirement for annual influenza vaccination and the resulting high proportion of vaccination in this population. The effect is demonstrated by the case and control populations having nearly identical vaccination rates. The high vaccination rate makes it difficult to design a strong epidemiological study of VE in this population. Other factors, such as the requirement for service members to receive the vaccination annually, which may have biological effects such as attenuated immune response due to repeated exposures, may also impact the VE estimates. The timing of vaccination could also impact the VE estimates since service members typically receive the vaccine early in the influenza season or just before it starts. These factors should also be considered as potential contributors to the low VE estimates for the active component service members.

One important limitation of this study is potential non-differential misclassification of vaccination status due to poor recall on the self-reported questionnaire or documentation errors in the EHR. Also, the analyses did not assess vaccine impact on less severe cases of influenza since the VE estimates only include medically attended patients, and the populations studied are younger than the U.S. general population, which may reduce generalizability. More work, potentially using new methodologies, is needed to accurately estimate the vaccine's effect on reducing the influenza burden in active component service members and to determine the impact of repeat vaccinations on immune response to the vaccine or subsequent influenza exposures. Additional data and analyses in these areas would fill knowledge gaps and inform a more robust military influenza vaccination policy.

Author affiliations: Defense Health Agency, Armed Forces Health Surveillance Branch, Silver Spring, MD (Ms. Lynch, CDR Scheckelhoff, Dr. Eick-Cost, Ms. Hu, Ms. Johnson); General Dynamics Information Technology, Fairfax, VA (Ms. Lynch, Ms. Johnson); Defense Health Agency, Armed Forces Health Surveillance Branch-Air Force satellite, U.S. Air Force School of Aerospace Medicine, Wright-Patterson Air Force Base, OH (Mr. Coleman, Ms. DeMarcus, Lt Col Federinko); STS Systems Integration, LLC, San Antonio, TX (Mr. Coleman, Ms. DeMarcus); Cherokee Nation Technologies, Tulsa, OK (Dr. Eick-Cost, Ms. Hu); Naval Health Research Center, San Diego, CA (Mr.Hansen, LCDR Graf, Dr. Myers); Henry M. Jackson Foundation for the Advancement of Military Medicine, Bethesda, MD (Mr. Hansen)

Acknowledgments: The authors thank the Department of Defense Global Respiratory Pathogen Surveillance Program and its sentinel site partners, the Navy and Marine Corps Public Health Center, and the Centers for Disease Control and Prevention's Binational Border Infectious Disease Surveillance Program in San Diego and Imperial Counties, CA, which collected samples and case data from participating outpatient clinics.

Disclaimer: Authors include military service members or employees of the U.S. Government. This work was prepared as part of their official duties. Title 17, U.S.C. §105 provides that copyright protection under this title is not available for any work of the U.S. Government. Title 17, U.S.C. §101 defines a U.S. Government work as work prepared by a military service member or employee of the U.S. Government as part of that person's official duties.

Report No. 19-39 was supported by the Armed Forces Health Surveillance Branch's Global Emerging Infections Surveillance section under work unit no. 60805. The views expressed in this article are those of the authors and do not necessarily reflect the official policy or position of the Department of the Navy, Department of the Air Force, Department of Defense, or the U.S. Government.

The study protocol was approved by the Naval Health Research Center Institutional Review Board in compliance with all applicable Federal regulations governing the protection of human subjects. Research data were derived from an approved Naval Health Research Center Institutional Review Board protocol number NHRC.2007.0024.

References

  1. Sanchez JL, Cooper MJ, Myers CA, et al. Respiratory infections in the U.S. military: recent experience and control. Clin Microbiol Rev. 2015;28(3):743–800.
  2. Armed Forces Health Surveillance Branch. Absolute and relative morbidity burdens attributable to various illnesses and injuries, active component, U.S. Armed Forces, 2018. MSMR. 2019;26(5):2–10.
  3. Armed Forces Health Surveillance Branch. Ambulatory visits, active component, U.S. Armed Forces, 2018. MSMR. 2019;26(5):19–25.
  4. Doyle JD, Chung JR, Kim SS, et al. Interim estimates of 2018–19 seasonal influenza vaccine effectiveness–United States, Feb. 2019. MMWR Morb Mortal Wkly Rep. 2019;68(6)135–139.

DoD midseason influenza VE estimates, 2018–2019

DoD midseason influenza VE, 2018–2019

You also may be interested in...

Article
Jun 1, 2022

Ambulatory Visits, Active Component, U.S. Armed Forces, 2021

In 2021, the overall numbers and rates of active component service member ambulatory care visits were the highest of any of the last 10 years. Most categories of illness and injury showed modest increases in numbers and rates. The proportions of ambulatory care visits that were accomplished via telehealth encounters fell to under 15% in 2021, compared ...

Article
Jun 1, 2022

Morbidity Burdens Attributable to Various Illnesses and Injuries, Deployed Active and Reserve Component Service Members, U.S. Armed Forces, 2021

As in previous years, among service members deployed during 2021, injury/poisoning, musculoskeletal diseases and signs/symptoms accounted for more than half of the total health care burden during deployment. Compared to garrison disease burden, deployed service members had relatively higher proportions of encounters for respiratory infections, skin ...

Article
Jun 1, 2022

Absolute and Relative Morbidity Burdens Attributable to Various Illnesses and Injuries, Active Component, U.S. Armed Forces, 2021

In 2021, as in prior years, the medical conditions associated with the most medical encounters, the largest number of affected service members, and the greatest number of hospital days were in the major categories of injuries, musculoskeletal disorders, and mental health disorders. Despite the pandemic, COVID-19 accounted for less than 2% of total ...

Article
Jun 1, 2022

Absolute and Relative Morbidity Burdens Attributable to Various Illnesses and Injuries, Non-service Member Beneficiaries of the Military Health System, 2021

In 2021, mental health disorders accounted for the largest proportions of the morbidity and health care burdens that affected the pediatric and younger adult beneficiary age groups. Among adults aged 45–64 and those aged 65 or older, musculoskeletal diseases accounted for the most morbidity and health care burdens. As in previous years, this report ...

Article
Jun 1, 2022

Medical Evacuations out of the U.S. Central and U.S. Africa Commands, Active and Reserve Components, U.S. Armed Forces, 2021

The proportions of evacuations out of USCENTCOM that were due to battle injuries declined substantially in 2021. For USCENTCOM, evacuations for mental health disorders were the most common, followed by non-battle injury and poisoning, and signs, symptoms, and ill-defined conditions. For USAFRICOM, evacuations for non-battle injury and poisoning were ...

Article
May 1, 2022

Update: Sexually Transmitted Infections, Active Component, U.S. Armed Forces, 2013–2021

This illustration depicts a 3D computer-generated image of a number of drug-resistant Neisseria gonorrhoeae bacteria. CDC/James Archer

This report summarizes incidence rates of the 5 most common sexually transmitted infections (STIs) among active component service members of the U.S. Armed Forces during 2013–2021. In general, compared to their respective counterparts, younger service members, non-Hispanic Black service members, those who were single and other/unknown marital status, ...

Article
May 1, 2022

The Association Between Two Bogus Items, Demographics, and Military Characteristics in a 2019 Cross-sectional Survey of U.S. Army Soldiers

NIANTIC, CT, UNITED STATES 06.16.2022 U.S. Army Staff Sgt. John Young, an information technology specialist assigned to Joint Forces Headquarters, Connecticut Army National Guard, works on a computer at Camp Nett, Niantic, Connecticut, June 16, 2022. Young provided threat intelligence to cyber analysts that were part of his "Blue Team" during Cyber Yankee, a cyber training exercise meant to simulate a real world environment to train mission essential tasks for cyber professionals. (U.S. Army photo by Sgt. Matthew Lucibello)

Data from surveys may be used to make public health decisions at both the installation and the Department of the Army level. This study demonstrates that a vast majority of soldiers were likely sufficiently engaged and answered both bogus items correctly. Future surveys should continue to investigate careless responding to ensure data quality in ...

Article
Mar 1, 2022

Obesity prevalence among active component service members prior to and during the COVID-19 pandemic, January 2018–July 2021

Maintaining a healthy weight is important for military members to stay fit to fight. The body mass index is a tool that can be used to determine if an individual is at an appropriate weight for their height. A person’s index is determined by their weight in kilograms divided by the square of height in meters. (U.S. Air Force photo illustration by Airman 1st Class Destinee Sweeney)

This study examined monthly prevalence of obesity and exercise in active component U.S. military members prior to and during the COVID-19 pandemic. These results suggest that the COVID-19 pandemic had a small effect on the trend of obesity in the active component U.S. military and that obesity prevalence continues to increase.

Article
Mar 1, 2022

Brief report: Using syndromic surveillance to monitor MIS-C associated with COVID-19 in Military Health System beneficiaries

Air Force 1st Lt. Anthony Albina, a critical care nurse assigned to Joint Base Andrews, Md., checks a patient’s breathing and heart rate during an intubation procedure while supporting COVID-19 response operations in Cleveland, Jan. 20, 2022.

SARS CoV-2 and the illness it causes, COVID-19, have exacted a heavy toll on the global community. Most of the identified disease has been in the elderly and adults. The goal of this analysis was to ascertain if user-built ESSENCE queries applied to records of outpatient MHS health care encounters are capable of detecting MIS-C cases that have not ...

Skip subpage navigation
Refine your search
Last Updated: July 11, 2023
Follow us on Instagram Follow us on LinkedIn Follow us on Facebook Follow us on X Follow us on YouTube Sign up on GovDelivery