Literature DB >> 25887948

Viral infections in outpatients with medically attended acute respiratory illness during the 2012-2013 influenza season.

Richard K Zimmerman1, Charles R Rinaldo2,3, Mary Patricia Nowalk4, G K Balasubramani5, Krissy K Moehling6, Arlene Bullotta7, Heather F Eng8, Jonathan M Raviotta9, Theresa M Sax10, Stephen Wisniewski11.   

Abstract

BACKGROUND: While it is known that acute respiratory illness (ARI) is caused by an array of viruses, less is known about co-detections and the resultant comparative symptoms and illness burden. This study examined the co-detections, the distribution of viruses, symptoms, and illness burden associated with ARI between December 2012 and March 2013.
METHODS: Outpatients with ARI were assayed for presence of 18 viruses using multiplex reverse transcriptase polymerase chain reaction (MRT-PCR) to simultaneously detect multiple viruses.
RESULTS: Among 935 patients, 60% tested positive for a single virus, 9% tested positive for ≥1 virus and 287 (31%) tested negative. Among children (<18 years), the respective distributions were 63%, 14%, and 23%; whereas for younger adults (18-49 years), the distributions were 58%, 8%, and 34% and for older adults (≥50 years) the distributions were 61%, 5%, and 32% (P < 0.001). Co-detections were more common in children than older adults (P = 0.01), and less frequent in households without children (P = 0.003). Most frequently co-detected viruses were coronavirus, respiratory syncytial virus, and influenza A virus. Compared with single viral infections, those with co-detections less frequently reported sore throat (P = 0.01), missed fewer days of school (1.1 vs. 2 days; P = 0.04), or work (2 vs. 3 days; P = 0.03); other measures of illness severity did not vary.
CONCLUSIONS: Among outpatients with ARI, 69% of visits were associated with a viral etiology. Co-detections of specific clusters of viruses were observed in 9% of ARI cases particularly in children, were less frequent in households without children, and were less symptomatic (e.g., lower fever) than single infections.

Entities:  

Mesh:

Year:  2015        PMID: 25887948      PMCID: PMC4344779          DOI: 10.1186/s12879-015-0806-2

Source DB:  PubMed          Journal:  BMC Infect Dis        ISSN: 1471-2334            Impact factor:   3.090


Background

Each year, hundreds of millions of people are afflicted with viral respiratory tract infections most commonly caused by human adenovirus (ADNO), human coronavirus (CoV), human metapneumovirus (HMPV), human rhinovirus (HRV), influenza virus (influenza), parainfluenza virus (PIV), and respiratory syncytial virus (RSV). Moderate to severe respiratory tract infections may lead patients to seek outpatient medical attention. Yet, only a portion of these medically attended acute respiratory infections (ARI) has been routinely tested to determine their etiology because rapid testing can be expensive and treatment options for viral infections are limited. New assays using multiplex reverse transcriptase polymerase chain reactions (MRT-PCR) are available allowing for relatively rapid detection of multiple virus types and simultaneous comparison of patient characteristics, symptoms, severity of illness and productivity across multiple viruses. During the 2012–2013 influenza season, the multi-center U.S. Influenza Vaccine Effectiveness (Flu VE) Network, funded by the Centers for Disease Control and Prevention (CDC), conducted a study to determine the effectiveness of the season’s influenza vaccine using singleplex RT-PCR (SRT-PCR) to detect influenza virus. The University of Pittsburgh site of the Flu VE Network also used MRT-PCR.

Objectives

The purposes of this study were to: 1) examine the distribution of viruses associated with ARI visits during December 2012 through March 2013 in Allegheny County, Pennsylvania, using MRT-PCR; and 2) compare demographic characteristics, symptoms, and consequences of various infections and of co-detections vs. single or no infections. A previous, similar study [1] used the same methodology to examine ARI in 2011–2012. Because the onset, severity and length of the influenza season vary year to year, the present study differs in its epidemiology and its focus on viral co-detections.

Methods

Study design

Participants

Participants provided informed consent and were enrolled in the University of Pittsburgh’s center for the US Flu VE Network study described previously [2]. The parent study used a test negative case control study design [3,4], where the proportion vaccinated among those who test positive for influenza is compared with the proportion vaccinated among those who test negative. Eligibility criteria included age ≥6 months as of 9/1/2012 and presentation at one of the participating primary care centers for treatment of an upper respiratory illness of ≤7 days duration, with cough, and not taking an influenza antiviral (oseltamivir or zanamivir) before the medical visit. Results from influenza testing were not available soon enough for clinical decision-making with regard to antiviral prescribing. Antiviral medication prescribed as a result of the visit did not affect eligibility. Emergency department visits were not included. Influenza vaccination status was combined from electronic medical record (EMR) data and self-report.

Specimen collection

All patients except infants (<2 y) were sampled by two polyester swabs (Remel), one each on the nasal and oropharyngeal mucosa; infants were sampled by nasal swabs only. The swabs were combined in one cryovial containing viral transport medium, stored refrigerated, and delivered to the UPMC Clinical Virology Laboratory within 72 hours. Specimens were stored in a lysis buffer and aliquotted for nucleic acid isolation and detection of influenza virus using CDC’s SRT-PCR test and a MRT-PCR test using the eSensor XT-8 instrument and respiratory viral panel from GenMark Diagnostics. All SRT-PCR influenza positive specimens (n = 335) and a random sample of SRT-PCR influenza negative specimens (n = 596) were analyzed with MRT-PCR for a total of 935 of the 1171 specimens from the parent study. Four additional influenza cases were identified by MRT-PCR.

Nucleic acid extraction and RT-PCR

Isolation of viral nucleic acid from control material and patient specimens was performed using an EasyMag automated extractor (bioMerieux, Durham, NC) as previously described [5]. Previously published, virus-specific primer and probe nucleotide sequences were used for detection of influenza A and B virus RNA [5] using the ABI 7500 Real-Time PCR Instrument (Applied Biosystems, Foster City, CA). The eSensor RVP MRT-PCR assay (GenMark Diagnostics) is currently approved for clinical use in Europe. It has the same methodological characteristics but a broader range of viral analytes than the U.S. FDA-approved version. This panel includes adenovirus (ADNO) groups B, C, and E; coronaviruses (CoV) 229E, HKU1, OC43, and NL63; seasonal influenza A virus (including H1N1 and H3N2 subtype determination); influenza B virus; hMPV, PIV types 1, 2, 3, and 4; RSV types A and B; and HRV. The Genmark assay panel does not include enteroviruses, and in our laboratory, does not detect several major enteroviruses, i.e., enterovirus 68, enterovirus 71, and Coxsackie virus A9 (unpublished results). Nucleic acids were extracted as for the SRT-PCR assay, with the addition of 10 μl of bacteriophage MS2 internal control (included in the eSensor RVP kit) to each specimen immediately prior to extraction. Specimens were tested by the eSensor XT-8 instrument according to the manufacturer's instructions and published protocols [6].

Demographic and other variables

Participants completed surveys at enrollment from which age, race, personal smoking status and household smoking (someone in the household smokes), household composition, asthma diagnosis, exercise, influenza vaccination status, symptoms of ARI, self-reported overall health before ARI, subjective social status using a 10-point scale comparing one’s overall life situation with others, and self-reported severity of illness on day of enrollment, measured using a 100-point visual analog scale (VAS) were determined. Body Mass Index (BMI) was calculated from self-reported height and weight. Severity of illness, time to recovery, and loss of productivity were assessed on the follow-up survey completed at least 7 days post enrollment. Study data were collected and managed using REDCap electronic data capture tools [7].

Statistical analyses

Similar viruses were combined and only single viruses or virus groups that were detected in more than 20 samples were used in the analyses. The final six groups were no virus detected, HRV, CoV, RSV, influenza virus type B, and influenza virus type A. Descriptive statistics are presented as means and standard deviations for continuous variables and percentages for discrete variables. Participants were divided into three age groups – children (6 months-17 years), young adults (18–49 years) and older adults (≥50 years). Bivariate multinomial regression models assessed the association of patient characteristics with the MRT-PCRs. The dependent variable was the virus group and the independent variables were the participants’ personal characteristics. Logistic regression models assessed the association of baseline demographic and clinical characteristics with virus type (single virus infection vs. co-detection). For discrete outcome measures with more than two levels, multinomial logistic regression models were used. One way analysis of variance was used for continuous outcomes. For time-to-event outcomes, Kaplan-Meier curves estimated the cumulative proportion of normal activity. Log rank tests were used to test for differences in the cumulative proportions among the virus groups. Post-hoc pairwise comparisons were made with a Bonferroni correction (p value < 0.05/15 indicating statistical significance). Analyses were conducted using SAS version 9.2 (SAS Institute, Inc., Cary NC).

Results

Relationship of viruses to demographic characteristics and symptoms

Among the 935 ARI patients sampled over the 17-week study period, all completed the enrollment questionnaire and 83.3% completed a follow-up survey. The distributions of viral infections varied by week (P < 0.001), and are shown in Figure 1. Overall, HRV peaked in December with a second peak in March; influenza A peaked in January; CoV and RSV in February; and influenza B was not evident until late in the season and peaked in April. The overall cumulative distribution of return to usual activities was 1.5% by 1 day, 4.6% by 3 days, 10.9% by 5 days, 17% by 6 days, 29.3% by 7 days, 45.1% by 8 days and 100% by 9 days (data not shown).
Figure 1

Temporal epidemiology of virus distribution.

Temporal epidemiology of virus distribution. Table 1 shows the demographic and illness characteristics of patients with five single virus groups and no virus detected. Hispanic ethnicity, vaccination status, and attendance at school outside the home varied significantly by virus category. For example, influenza vaccination was more often reported among those presenting with CoV, HRV and RSV than among those with either influenza A or B; 42% of those <18 years old with influenza A or B attended school outside the home compared with 26.3% of those with no virus detected. Fever and fatigue were more prominent with influenza detection and wheezing was less common with CoV. Use of influenza antiviral medicines varied significantly by virus category; 59% of those with influenza A or B were prescribed an antiviral medication compared with 14.8% of those with other viral infections or 26.2% of those with no viral infection. Temperature at enrollment was higher among those with influenza than those with ARI of other etiology, and baseline severity of illness was greater (lower score) among those with influenza. Days from onset to enrollment (seeking outpatient medical treatment) were greater among those with ARI with no virus detected than those with a viral infection.
Table 1

Demographics and clinical characteristics by virus type in 2012-2013

Virus type
All (N = 819) a CoV (N = 111) HRV (N = 48) Influenza A, H3 (N = 211) Influenza B (N = 60) RSV (N = 102) No Virus (N = 287) p value
Variable N n % n % n % n % n % n %
Baseline Demographics and Health Characteristics (categorical responses)
Race0.32
White7039413.4405.719127.2517.28912.723833.8
Black711115.5571014.134.279.93549.3
Other37513.538.1924.338.1616.21129.7
Sex0.14
Male3043310.9216.99029.6247.94013.19631.6
Female5147815.2275.212123.53676212.119037.0
Hispanic 0.001
No79911013.848620926.2526.51011327834.9
Yes1715.900211.884715.9529.4
Age group0.10
6 mos. – 17 years2223214.4146.35926.6167.23817.16328.4
18 – 49 years3465415.6195.58624.8267.5308.713137.9
≥50 years25025101566626.4187.23413.69236.8
Household members ≥ 180.41
11542616.985.23522.774.617116139.6
24545812.8306.611725.8367.96514.314832.6
≥32102712.8104.85928.1178.1209.57736.7
Household members < 180.26
03695113.8215.710227.6236.24311.712935.0
11672112.61063621.595.42917.46237.1
21661710.2137.84527.11592012.15633.7
≥31152219.143.52824.41311.3108.73833.0
Social status0.26
1-41031514.654.82827.276.8109.73836.9
5150241674.73020117.31286644.0
61221613.11310.73125.475.71713.93831.2
7 - 9218241183.76328.9188.224118137.2
Smoking status0.11
Smoker1081816.776.5272565.543.74642.6
Non-smoker4886112.5275.512525.6387.8601217736.3
Household smoking0.18
Yes16720121064225.174.21710.27142.5
No6499114385.916725.7538.28513.121533.1
Asthma status0.26
Yes183189.8137.14524.6158.2189.87440.5
No6309214.6355.5164264478313.221233.7
Influenza vaccination status 0.05
Yes4035914.6307.48821.9276.75613.914335.5
No4095112.5184.412129.6338.14410.714234.7
Self-reported health status0.32
Fair/poor49612.236.1918.412.1510.22551.0
Good2263113.7104.45524.4198.42611.58537.6
Very Good3234513.9195.98626.6319.6421310031.0
Excellent2192913.2167.36127.994.12812.87634.7
Current employment (age ≥18 years)0.18
No1451812.474.83423.474.82215.25739.3
Yes3514813.7236.69727.6318.8329.112034.2
Attends school outside home (age <18 years) 0.02
No34617.6411.7411.712.91132.3823.5
Yes1481812.296.14933.1138.82013.53926.3
Symptoms of ARI and Antiviral Use (categorical responses)
Fever <.001
Yes4796112.7194**16434.2*459.45311.1 13728.6
No3395014.7298.54713.9154.4494.514944
Fatigue <.001
Yes6348713.7304.7**18228.7548.57411.720732.7
No1842413189.82915.863.32815.27942.9
Wheezing 0.01
Yes297258.4186.18930*237.74515.19732.7
No5218616.5305.812223.4377.15710.918936.3
Sore throat0.11
Yes5898414.3376.316427.8396.67112.119432.9
No2292711.8114.84720.5219.23113.59240.2
Nasal congestion0.12
Yes71110114.2456.318325.7517.29313.123833.5
No107109.432.82826.298.498.44844.8
Shortness of breath0.52
Yes3524913.9195.49025.6339.44312.211833.5
No4666213.3296.212126275.85912.716836
Antiviral medication prescribed, (not including HRV) 0.002
No5648314.7--15126.8478.38014.220336
Yes6158.2--3150.858.246.61626.2
Baseline Demographics and Symptoms (continuous variables)
VariableNnMean (SD)nMean (SD)nMean (SD)nMean (SD)nMean (SD)nMean (SD)p value
Age81811133.8 (21.4)4832.8 (21.2)21136.2 (22.3)6034.9 (20.6)10234.7 (20.6)28637.2 (21.3)0.65
BMI81711020.5 (14.2)4820.6 (14.0)21121 (14.3)6021.7 (13.9)10218.7 (15.2)28622.9 (13.4)0.16
Temperature5597298.7 (1.10)2698.6 (0.80)16199.6 (1.50)4499.8 (1.50)6298.9 (1.20)19498.9 (1.20) <0.001
Days from onset to enrollment8181113.23 (1.46)483.35 (1.45)2112.82 (1.40)603.38 (1.22)1023.55 (1.35)2863.71 (1.48) <0.001
Severity of illness at enrollment (VAS), range = 1 - 10081811162.2 (18.2)4864.9 (21.2)21155.7 (17.7)6056.3 (20.5)10261.3 (17.4)28661.3 (19.2) 0.002

aN reflects the total number of participants, reduced by the number of co-detections and viruses with <20 detections.

*Significantly different from CoV in post-hoc comparisons P ≤ 0.001; post-hoc comparisons are based on a Bonferroni correction for multiple comparison (P < .003).

**Significantly different from Influenza A and B in post hoc comparisons, P ≤ 0.001.

‡Significantly different from Influenza A in post hoc comparisons, P ≤ 0.001

†Antiviral medication was never prescribed for those with HRV, leading to cells with zeroes in them.

Demographics and clinical characteristics by virus type in 2012-2013 aN reflects the total number of participants, reduced by the number of co-detections and viruses with <20 detections. *Significantly different from CoV in post-hoc comparisons P ≤ 0.001; post-hoc comparisons are based on a Bonferroni correction for multiple comparison (P < .003). **Significantly different from Influenza A and B in post hoc comparisons, P ≤ 0.001. ‡Significantly different from Influenza A in post hoc comparisons, P ≤ 0.001 †Antiviral medication was never prescribed for those with HRV, leading to cells with zeroes in them. Table 2 shows the outcomes for patients in the five single virus groups and those with no virus detected. Hours of work missed due to ARI varied significantly by virus group, appearing worse for influenza A and B. Self-reported time to return to normal activity varied by virus group (P = 0.02) and is depicted in Figure 2.
Table 2

Outcomes of patients presenting with medically attended acute respiratory infections by viral etiology in 2012-2013

Virus type
Outcomes (categorical variables) All (N = 684) a CoV (91) HRV (43) Influenza A, H3 (185) Influenza B (52) RSV (86) No Virus (227) p value
Variable N n % n % n % n % n % n %
Follow-up survey returned relative to enrollment date <0.001
0 – 13 days394369.1235.813333.84411.24912.410927.7
≥14 days2885519.1206.95117.782.83712.911740.6
Ability to perform usual activity, range = (not at all) – 9 (able to perform)0.08
Not at all (0 – 5)7491049.5189.7815.41112.92410.8
Somewhat (6 – 8)2322325.61535.78043.32242.32630.66629.6
Able to perform (9)3715864.42354.887472242.34856.513359.6
Household member missed work because of patient’s illness0.40
No5637481.33888.414980.54076.96879.119485.8
Yes1201718.7511.63619.51223.11820.93214.2
Sleep quality, range = 0 (worst) – 9 (normal)0.67
Worst (0 – 4)528949.5105.423.8910.6198.5
Mild (5 – 6)1011516.8614.32614713.51112.93616.1
Moderate (7 – 8)2423640.51126.26836.82344.234407031.4
Normal (9)2803033.721508143.82038.53136.59844
Effect on productivity, range = 0 (no effect on my work) – 10 (completely prevented me from working for those age ≥18 years)0.62
0 – 3771531.3521.71717.5412.9721.92924.4
4 – 71531633.31043.54142.31651.61546.95546.2
8 – 101201735.4834.83940.21135.51031.23529.4
Outcomes (continuous variables)
Variable N n Mean (SD) n Mean (SD) n Mean (SD) n Mean (SD) n Mean (SD) n Mean (SD) p value
For participants <18 years:
Missed school days147182.492.1492.9132.9201.8382.50.47
(1.9)(2.0)(2.4)(1.9)(1.3)(2.1)
Household member missed work days118162533531221823220.19
(1.1)(2.0)(2.9)(1.9)(1.8)(1.3)
Severity of illness at follow-up (VAS), range = 1-1006588683 (15.1)4283 (16.0)18183 (14.4)5082 (13.0)8183 (14.7)21884 (15.7)0.98
For participants ≥18 years:
Number of hours of work missed due to ARI3514814 (12.5)2316 (18.0)9722 (16.4)3122 (17.9)3211 (11.5)12012 (13.1) 0.001
Multinomial Modeling: Odds Ratios for derived variables CoV (n = 91) HRV (n = 43) Influenza A, H3 (n = 185) Influenza B (n = 52) RSV (n = 86) No Virus (n = 227)
OR OR OR OR OR OR p value
Variable (95% CI) (95% CI) (95% CI) (95% CI) (95% CI) (95% CI)
Ability to perform usual activities0.08
Not at all (0–5) vs. Able to perform (9)0.740.830.991.741.10Referent
(0.39-1.41)(0.33-2.08)(0.59-1.65)(0.84-3.58)(0.59-2.02)
Somewhat able (6–8) vs. Able to perform (9)0.631.031.451.580.86Referent
(0.4-0.98)(0.59-1.82)(1.06-2.00)(0.94-2.66)(0.55-1.33)
Household member missed work (days)1.390.801.471.821.61Referent0.40
(0.73-2.66)(0.29-2.18)(0.87-2.47)(0.86-3.83)(0.85-3.04)
Sleep Quality 0 (worst quality, unable to sleep) – 9 (pre-illness quality sleep)0.68
Worst vs. Normal1.471.050.680.551.60Referent
(0.70-3.08)(0.41-2.72)(0.35-1.31)(0.16-1.92)(0.79-3.27)
Mild vs. Normal1.400.800.900.980.99Referent
(0.79-2.49)(0.36-1.76)(0.57-1.41)(0.46-2.08)(0.53-1.86)
Moderate vs. Normal1.360.590.951.301.24Referent
(0.87-2.12)(0.32-1.11)(0.68-1.33)(0.76-2.22)(0.79-1.94)
Effect on productivity0.64
Worst vs. No effect0.690.971.401.670.87Referent
(0.35-1.35)(0.37-2.59)(0.78-2.51)(0.62-4.55)(0.37-2.06)
Moderate vs. No effect0.510.961.151.911.02Referent
(0.26-1.00)(0.37-2.45)(0.65-2.05)(0.73-4.98)(0.46-2.30)
Multinomial Modeling: Hazards Ratio HR HR HR HR HR HR p value
Variable (95% CI) (95% CI) (95% CI) (95% CI) (95% CI) (95% CI)
Time to return to normal activity (days)0.741.06 1.65 1.481.22Referent 0.02
(0.45-1.22)(0.53-2.09) (1.13-2.39) (0.89-2.46)(0.73-2.05)

OR= Odds Ratio; CI = Confidence Interval; SD = Standard Deviation; HR = Hazards ratio.

aN reflects the total number of participants, reduced by the number of co-detections, viruses with <20 detections, and participants without follow-up surveys.

Figure 2

Testing homogeneity of survival curves for time to return to normal activity over virus groups.

Outcomes of patients presenting with medically attended acute respiratory infections by viral etiology in 2012-2013 OR= Odds Ratio; CI = Confidence Interval; SD = Standard Deviation; HR = Hazards ratio. aN reflects the total number of participants, reduced by the number of co-detections, viruses with <20 detections, and participants without follow-up surveys. Testing homogeneity of survival curves for time to return to normal activity over virus groups.

Distribution of viruses and co-detections

Table 3 shows the distribution of single virus infections and co-detections, with the numbers for co-detections representing viruses detected, not numbers of patients. Single virus infections were detected among 563 (60.2%) patients, co-detections were found among 85 (9.1%) patients and 287 (30.7%) were negative for all tested viruses. The viruses most frequently co-detected were CoV (49 times), RSV (39 times), and influenza A (39 times). The distributions varied by age. For children, the percentages of single virus, multiple viruses, and no virus detected were 63%, 14%, and 23%, respectively; whereas for young adults, the percentages were 58%, 8%, and 34% and for older adults the percentages were 61%, 5%, and 32%, respectively (P < 0.001 for overall distributions; data not shown).
Table 3

Distribution of Viruses from multiplex viral panel Among 935 outpatients with medically attended acute respiratory infections in 2012–13

Virus All samples (N = 935) tested by multiplex RT-PCR,* n (%)
Singly occurring viruses by type
Coronaviruses (CVOC43, n = 72; CVNL63, n = 33; CV229E, n = 4; CVKHU1, n = 2)111 (11.9)
HRV48 (5.1)
Influenza type A213 (22.8)
Influenza type B60 (6.4)
RSV (A, n = 85 and B, n = 17)102 (10.9)
Other single viruses (ADNOE, n = 1; HMPV, n = 8; PIV1, n = 2; PIV2, n = 9; PIV3, n = 8; PIV4, n = 1)29 (3.1)
Single viruses total 563 (60.2)
Co-detections 85 (9.1)
No viruses 287 (30.7)
Co-detected viruses
VirusCo-detected virusesn
ADNODual – CoV, HRV, RSV, Influenza B5
Triple – CoV/Influenza A, HMPV/RSV2
CoVDual – ADNO, CoV, HRV, Influenza B, HMPV, PIV, RSV45
Triple – Influenza A/HRV, Influenza A/ADNO, HRV/RSV4
HMPVDual - CoV, Influenza A, RSV4
Triple – RSV/ADNO1
HRVDual – ADNO, CoV, Influenza B, RSV10
Triple – Influenza A/CoV, RSV/CoV3
Influenza ADual – CoV, HRV, HMPV, RSV, PIV36
Triple – ADNO/CoV, HRV/CoV2
Influenza BDual – CoV, ADNO, HRV, Influenza A9
PIVDual – CoV, RSV, Influenza A6
RSVDual – ADNO, CoV, HRV, Influenza A, HMPV, PIV36
Triple – HRV/CoV, HMPV/ADNO3

*MRT-PCR = multiplex reverse transcriptase polymerase chain reaction; ADNO = Adenovirus.

CoV = Coronavirus; HMPV = Human Metapneumovirus; HRV = Human Rhinovirus.

RSV = Respiratory Syncytial Virus; one dual H1N1/H3N2 detection occurred.

†Represents occurrences of viruses, not individual participants.

Distribution of Viruses from multiplex viral panel Among 935 outpatients with medically attended acute respiratory infections in 2012–13 *MRT-PCR = multiplex reverse transcriptase polymerase chain reaction; ADNO = Adenovirus. CoV = Coronavirus; HMPV = Human Metapneumovirus; HRV = Human Rhinovirus. RSV = Respiratory Syncytial Virus; one dual H1N1/H3N2 detection occurred. †Represents occurrences of viruses, not individual participants. Compared with single infections, co-detections were more common in children than older adults (Table 4) and less frequent in households without children. Co-detections were less common if sore throat was present, but did not vary by other symptoms. Average body mass index was below normal among those with co-detections and more likely to be low among this group compared with those with single infections.
Table 4

Baseline comparisons using unadjusted odds ratios, between single viral infections (n = 563) and co-detections (n = 85) in 2012-2013

Variable Single infection % Co-detection % Unadjusted OR (95% CI) P -value
Categorical variables
Race0.180
  White87.712.30.61 (0.24-1.53)
  Black79.620.41.11 (0.36-3.43)
  Other81.218.8Referent
Sex0.780
  Male87.312.7Referent
  Female86.613.41.07 (0.67-1.71)
Hispanic0.940
  No86.913.1Referent
  Yes87.512.50.95 (0.21-4.23)
Age group 0.010
  6 mo-17 years81.618.42.51 (1.33-4.72)
  18-49 years87.812.21.55 (0.81-2.96)
  ≥50 years91.88.2Referent
Household members ≥180.690
  189.210.80.82 (0.39-1.74)
  286.113.91.09 (0.63-1.88)
  ≥387.112.9Referent
Household member <18 0.003
  092.08.00.45 (0.23-0.90)
  186.613.40.80 (0.38-1.68)
  279.420.61.34 (0.69-2.62)
  ≥383.816.2Referent
Subjective social status, range = 0-90.910
  1-487.212.81.25 (0.55-2.88)
  590.59.50.89 (0.38-2.09)
  689.810.20.97 (0.43-2.21)
  ≥789.510.5Referent
Smoking status0.260
  Smoker85.914.11.52 (0.73-3.13)
  Non-smoker90.29.8Referent
Household smoking0.910
  Yes86.713.31.03 (0.58-1.86)
  No87.112.9Referent
Asthma Status0.600
  Yes85.414.61.16 (0.67-1.99)
  No87.112.9Referent
Influenza vaccination status0.220
  Yes88.511.5Referent
  No85.114.91.34 (0.84-2.12)
Self-reported health status0.090
  Fair/Poor89.710.30.54 (0.15-1.87)
  Good86.014.00.76 (0.43-1.34)
  Very good90.49.60.49 (0.28-0.86)
  Excellent82.317.7Referent
Ability to perform usual activities0.190
  Not at all (0–5)84.815.22.21 (0.85-5.81)
  Somewhat (6–8)87.912.11.71 (0.64-4.57)
  Able to perform (9)92.57.5Referent
Current employment0.170
  Yes89.011.0Referent
  No93.86.20.53 (0.21-1.32)
Child attends school outside home (for those <18 years old)0.090
  Yes85.114.9Referent
  No73.826.22.02 (0.88-4.67)
Anti-viral medication prescribed0.840
  Yes86.813.2Referent
  No87.712.30.92 (0.40-2.13)
Fever0.660
  Yes86.413.61.11 (0.69-1.80)
  No87.712.3Referent
Fatigue0.370
  Yes87.512.50.78 (0.46-1.33)
  No84.515.5Referent
Wheezing0.350
  Yes85.314.71.24 (0.78-1.98)
  No87.812.2Referent
Sore throat 0.010
  Yes89.210.80.51 (0.32-0.82)
  No81.019.0Referent
Nasal congestion0.640
  Yes87.112.90.85 (0.43-1.68)
  No85.114.9Referent
Shortness of breath0.600
  Yes87.712.30.88 (0.56-1.40)
  No86.313.7Referent
Continuous variables
Age, years (units = 5)34.6 (22.8)26.3 (20.9)0.92 (0.87-0.97) 0.002
BMI (units = 2)20.2 (14.4)15.3 (14.5)0.95 (0.92-0.98) 0.004
Temperature (°F)99.2 (1.4)99.3 (1.1)1.03 (0.85-1.26)0.740
Severity of illness at enrollment (VAS), range = 1–100 (units = 5)59.2 (18.6)56.7 (19.1)0.96 (0.91-1.02)0.240
Number of days between onset and enrollment3.2 (1.4)3.3 (1.3)1.05 (0.90-1.24)0.520
Number of days between enrollment and return of follow-up survey (units = 5)14.8 (10.9)15.9 (10.6)1.04 (0.94-1.16)0.440
Baseline comparisons using unadjusted odds ratios, between single viral infections (n = 563) and co-detections (n = 85) in 2012-2013 Ability to perform usual activities, return to normal activities, household members having to miss work, sleep quality, productivity, severity of illness, hours of work missed, and time to return to normal activities did not differ between those with single infections and those with co-detected viruses (Table 5). However, those <18 years of age with co-detections missed fewer days of school (2 vs. 1.1, P = 0.04) and all with co-detections reported fewer days of work missed by household members to care for the ill patient (3 vs. 2, P = 0.03).
Table 5

Follow-up comparisons between single viral infections (n = 483) and co-detections (n = 68), 2012-2013

Virus type
Single infection Co-detection Unadjusted P value
N = 483 N = 68 OR (95% CI)
Variable % %
Ability to perform usual activities0.450
Not at all (0–5)10.86.00.74 (0.43-1.26)
Somewhat (6–8)36.140.31.05 (0.80-1.37)
Able to perform (9)53.153.7Referent
Return to normal activity0.570
Not yet return to normal activity40.647.41.32 (0.50-3.46)
Never stopped normal activities59.452.6Referent
Household member missed work0.100
No80.772.1Referent
Yes19.327.91.63 (0.91-2.89)
Sleep quality, range = 0-90.470
Worst (0–4)7.17.50.97 (0.59-1.61)
Mild (5–6)13.617.91.09 (0.76-1.56)
Moderate (7–8)37.828.40.82 (0.61-1.11)
Normal (9)41.546.2Referent
Effect on productivity (age ≥18 years)0.130
No effect (0–3)20.213.8Referent
Moderate (4–7)43.831.01.02 (0.84-2.67)
Worst (8–10)36.055.21.50 (0.55-1.88)
Mean (SD) Mean (SD) P value
Missed school days due to ARI2.0 (2.1)1.1 (1.3) 0.040
Missed work days of household member3.0 (2.2)2.0 (0.9) 0.030
Severity of illness at follow-up (VAS), range = 1-10083.0 (14.6)86.0 (15)0.140
Hours of work missed due to ARI among ≥18 years-old18.0 (15.8)18.0 (12.1)0.930
Follow-up comparisons between single viral infections (n = 483) and co-detections (n = 68), 2012-2013

Discussion

This study, similar to a study conducted in a previous influenza season [1], examined the distribution of 18 viruses among individuals seeking outpatient care for ARI characterized by presence of cough. The 2012–2013 influenza season was markedly different from the previous one. Although both seasons were characterized by a preponderance of influenza A/H1N1pdm09, in 2011–2012, influenza viruses began circulating in this region at low levels in December, but did not peak until the spring of 2012, with few influenza B virus detections. Whereas, in 2012–2013, influenza A began circulating in December, began to wane in late February as a smaller wave of influenza B began appearing in late February and early March. Concurrently, HRV peaked in December and in March, earlier than the previous year when it peaked in April; CoV was active from late December through March and RSV was active in February. Significant differences between viral infections and symptom variables were observed with fever and fatigue being more prominent with influenza and wheezing less common with CoV. Such findings are consistent with the literature showing that fever is a common symptom for both HMPV and influenza [8]. Enrollees with influenza seem to have been sicker, as they more frequently reported fever, feeling worse at baseline, seeking treatment sooner and, among adults, missing more work time. We found that co-detections occurred in 9% of ARI cases. CoV, RSV and influenza A were the most common co-detections, whereas, in the previous year, co-detections were most frequently caused by CoV, HRV and influenza A [1] and in a longer, year round study, HRV was the most frequent co-infecting virus [9]. We also observed some triple co-detections involving ADNO, CoV, HMPV, RSV, influenza A, and HRV. Importantly, we found that co-detections were more common in children, and were less frequent in households without children. The association of virus co-detections with younger age fits with the known enhanced susceptibility of children to these single infections. The clinical impact of co-detections is debatable. In the literature, dual infections have been linked to more severe clinical outcomes compared with single virus infections. These studies have included primarily children <5 years, and adults with co-morbidities [10], and children presenting to emergency departments [11], or resulted from multiple influenza virus infections [12]. However, in our population of adults and children, we found that co-detections were significantly less common if sore throat was present and did not vary by other symptoms. Moreover, compared with individuals with single viral infections, those with co-detections missed significantly fewer days of school (1.1 vs. 2 days) or work (2 vs. 3 days). A recent study of children attending day care in which no demographic or household variables were related to co-infections, found that fever was less likely with co-infections [13]. Hence, some data emerging from our study and others using newly available, highly sensitive and specific assays for multiple virus infections have not found a relationship with more severe illness whereas others have. Indeed, our data suggest that multiple respiratory virus infections are associated with less severe clinical symptoms particularly fever, and are less detrimental to the patients’ quality of life. The co-detections may represent a commensal situation in which the second virus has no effect on the predominant infection but is found with these sensitive tests. The contrast in results between studies on co-detections finding a less versus more severe clinical course may be related to population, test characteristics, time of year, and duration of testing period. Further studies are needed to define underlying viral and host immune mechanisms and outcomes of multiple respiratory virus infections. The sensitivity and specificity of the MRT-PCR compared with SRT-PCR were similar for both years. The sensitivity was 91.1% and specificity was 98.2% in 2011–2012 [1] and the sensitivity was 96% and specificity was 99.8% for influenza A in 2012–2013 [14]. In 2012–13, most of the discordant results were weak positives on SRT-PCR and the discordant results included five specimens in which the MRT-PCR was positive for another virus.

Strengths and limitations

This study offers data on viral infections associated with outpatient ARI in the US during the winter influenza season, detected using the eSensor 18 virus panel currently available in Europe. This panel of viruses includes four CoVs and four PIVs that are not part of the currently (2015) FDA-cleared format. Study limitations include the inability to test an inclusive sample of all of the ARI specimens with the MRT-PCR and the fact that health-seeking behavior during illness is associated with a history of influenza vaccination. The sample size of detected viruses other than influenza, HRV, RSV and coronaviruses were too small for sub-analyses. However, the sample size overall was sufficient to allow confidence in the relationships between characteristics of ARI cases and the viruses associated with them during this time period. Additionally, the viral panel does not contain bacteria, mycoplasma, and all possible respiratory viruses. Sampling took place during the influenza season and may have missed peak seasons for other virus circulation. The study is strengthened by the similarity of methods used in a previous influenza season and allows for comparison of viral activity in two seasons with different influenza epidemiology.

Conclusions

In this study using multiplex RT-PCR, 69% of outpatient medically attended ARI during the 2012–2013 influenza season were associated with a viral etiology. The timing and distribution of viral infections differed from a previous influenza season. Co-infections were infrequent but varied by demographic and household characteristics.

Ethical approval

This study was approved by the University of Pittsburgh Institutional Review Board.
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