Literature DB >> 32321576

Severity and outcomes of influenza-related pneumonia in type A and B strains in China, 2013-2019.

Liang Chen1, Xiu-Di Han2, Yan-Li Li3, Chun-Xiao Zhang4, Xi-Qian Xing5.   

Abstract

BACKGROUND: Inconsistencies exist regarding the severity of illness caused by different influenza strains. The aim of this study was to compare the clinical outcomes of hospitalized adults and adolescents with influenza-related pneumonia (Flu-p) from type A and type B strains in China.
METHODS: We retrospectively reviewed data from Flu-p patients in five hospitals in China from January 2013 to May 2019. Multivariate logistic and Cox regression models were used to assess the effects of influenza virus subtypes on clinical outcomes, and to explore the risk factors of 30-day mortality for Flu-p patients.
RESULTS: In total, 963 laboratory-confirmed influenza A-related pneumonia (FluA-p) and 386 influenza B-related pneumonia (FluB-p) patients were included. Upon adjustment for confounders, multivariate logistic regression models showed that FluA-p was associated with an increased risk of invasive ventilation (adjusted odds ratio [aOR]: 3.824, 95% confidence interval [CI]: 2.279-6.414; P <  0.001), admittance to intensive care unit (aOR: 1.630, 95% CI: 1.074-2.473, P = 0.022) and 30-day mortality (aOR: 2.427, 95% CI: 1.568-3.756, P <  0.001) compared to FluB-p. Multivariate Cox regression models confirmed that influenza A virus infection (hazard ratio: 2.637, 95% CI: 1.134-6.131, P = 0.024) was an independent predictor for 30-day mortality in Flu-p patients.
CONCLUSIONS: The severity of illness and clinical outcomes of FluA-p patients are more severe than FluB-p. This highlights the importance of identifying the virus strain during the management of severe influenza.

Entities:  

Keywords:  Clinical outcome; Influenza; Pneumonia; Virus type

Mesh:

Year:  2020        PMID: 32321576      PMCID: PMC7175558          DOI: 10.1186/s40249-020-00655-w

Source DB:  PubMed          Journal:  Infect Dis Poverty        ISSN: 2049-9957            Impact factor:   4.520


Background

Influenza is a contagious respiratory disease that is widespread across the globe. Despite advances in medical technology, influenza causes considerable hospitalizations and mortality [1, 2]. It is estimated that each year, 1 billion cases of symptomatic influenza infection have occurred across the globe, including 3–5 million cases of severe illness and 290 000–650 000 cases of influenza-related respiratory deaths [3]. From 2010 to 2018, approximately 4.3–23 million medical visits, 140 000–960 000 hospitalizations, 18 000–96 000 influenza-related intensive care unit (ICU) admissions and 12 000–79 000 deaths were associated with influenza per year in the United States of America [4]. The disease burden of influenza in Asia is similar to that of western countries [5, 6]. Influenza infection also poses an economic burden. Recent estimates place the economic burden of a moderately severe to severe pandemic at approximately USD 500 billion, or 0.6% of the global income [7]. For these reasons, influenza epidemics are regarded as the greatest threat to the public health in the twenty-first century. Influenza presents with non-specific symptoms, including sudden onset fever, headache, a sore throat and cough. Kilbourne suggested that the disease features caused by different influenza virus subtypes are clinically indistinguishable [8]. Several studies have examined the hypothesis that the severity of illness caused by influenza is associated with causal virus types. For example, Mosnier & Irving found that the clinical symptoms and outcomes for patients with influenza A and B infections were comparable [9, 10]. Studies by Kaji and colleagues showed that influenza A infection was more severe than influenza B [11]. The outcomes of different studies have been variable in terms of sample size, study settings, populations, and the ability to control potential confounders. Despite inconsistent findings, to understand the differences of the severity and outcomes between specific influenza virus types is of great significance to arrange rational diagnositic testings, carry out prompt antiviral treatment and make other clinical decisions in the management of severe influenza. Influenza-related pneumonia (Flu-p) is the major kind of severe influenza, which contributes to 20–50% of influenza-related hospitalizations [12]. Here, we conducted a multicenter, retrospective study aimed to evaluate the impact of virus type A and type B on the illness severity and clinical outcomes of immunocompetent, adolescents and adults hospitalized with Flu-p onset in community.

Methods

Study design

Patient recruitment

We screened hospitalized patients positive for influenza virus RNA at the microbiology labs of five tertiary hospitals in China from 1 January 2013 to 31 May 2019 (Additional file 1). Patients with laboratory-confirmed Flu-p were included. Exclusion criteria were as follows: (i) Aged ≤ 14 years; (ii) not classified as community-onset pneumonia (pneumonia onset ≥ 48 h post-admission and hospitalized within the last 28 days [13]), as it was difficult to determine whether nosocomial pneumonia occurred after the onset the influenza; (iii) it has been reported that the clinical characteristics and outcomes of immunocompromised patients with influenza differ to those of immunocompetent hosts. So, those who are immunocompromised were excluded [14].

Disease and treatment definitions

Patients with influenza-related pneumonia were defined during the influenza season and manifested with respiratory symptoms and were positive for influenza virus by reverse-transcription polymerase chain reaction (RT-PCR), together with pulmonary infiltrates on chest radiographs. Early neuraminidase inhibitor (NAI) treatment was defined as any NAI (oseltamivir, zanamivir and peramivir) administered within 48 h of illness onset [15]. Systemic corticosteroid use was defined as at least one dose of any systemic corticosteroid administrated during hospitalization.

Data collection

Data were retrospectively collected and included demographic information, underlying diseases (comorbidities are defined in Additional file 1), clinical symptoms, vital signs, laboratory and radiological findings at admission, community-acquired respiratory co-infections (Additional file 1 [16]), clinical management (administration of NAIs, systemic corticosteroids, vasopressor agents, invasive and non-invasive mechanical ventilation) and outcomes (admittance to ICU, length of hospital stay and 30-day mortality). Patients with hospital stays < 30 days were followed up by phone calls to determine survival status.

Data analysis

Data were analysed for normality using a Kolmogorov–Smirnov test. Measurement data with a normal distribution are shown as the mean ± standard deviation. Those with a non-normal distribution are expressed as the median. Categorical variables were analyzed using the Chi-square or Fisher’s exact test. Continuous variables were analyzed using a Student’s t test or Mann-Whitney U test. P-values ≤ 0.05 were considered significant. All probability tests were two-tailed. To evaluate the impact of influenza virus subtypes on illness severity and clinical outcomes (invasive ventilation, admittance to ICU and 30-day mortality) in Flu-p patients, multivariate logistic regression models were established following adjustment for age, sex, comorbidities, pregnancy, obesity, smoking history, early NAI therapy, systemic corticosteroid use, and coinfection with other pathogens. These risk factors were previously shown to be associated with the clinical outcomes of influenza patients and served as confounders [15]. According to the survival status at 30 days post-admission, patients were divided into survival and deceased groups. Baseline characteristics of these patients were then compared. To identify the risk factors for 30-day mortality in Flu-p patients, variables with P-values < 0.1 in univariate analysis and influenza virus type A were entered into the multivariate Cox regression analysis. All analyses were performed using Statistical Package for Social Science 22.0 (SPSS, Chicago, IL, USA).

Results

Screening process

We screened 3190 patients that were influenza RNA positive. A total of 693 laboratory-confirmed FluA-p patients and 386 FluB-p patients were included (Fig. 1). Amongst the FluA-p patients, 38.1% (264/693) were infected with A (H1N1) pmd09 and 11.0% (76/693) were infected with A (H3N2). In total, 50.9% (353/693) of patients were infected with an unclassified subtype.
Fig. 1

Screening algorithm of patients hospitalized with Flu-p in China, 2013–2019. 3190 patients with influenza RNA positive were screened. Totally, 693 laboratory-confirmed FluA-p patients and 386 FluB-p patients were included into the study

Screening algorithm of patients hospitalized with Flu-p in China, 2013–2019. 3190 patients with influenza RNA positive were screened. Totally, 693 laboratory-confirmed FluA-p patients and 386 FluB-p patients were included into the study

Clinical characteristics of flu-p patients

The median age of the Flu-p patients was 61.0 years old. Males accounted for 54.1% (584/1079) of Flu-p patients. More than 50% had at least one underlying disease, including cardiovascular disease 24.0% (259/1079), diabetes mellitus 11.8% (127/1079) and cerebrovascular disease 9.0% (97/1079). In total, 29% (313/1079) of patients had a history of smoking. Axillary temperatures ≥ 38 °C (75.4%, 814/1079) and cough/sputum (98.2%, 1060/1079) were the most common symptoms. Confusion and respiratory rates ≥ 30 beats/min were observed in 13.9% (150/1079) and 13.5% (146/1079) of patients, respectively. Only 1.4% (15/1079) of patients showed systolic blood pressure < 90 mmHg at admission. In total, 46.8% (480/1025) of patients had PO2/FiO2 < 300 mmHg and 73.6% (794/1079) showed multilobar infiltrates on chest radiology (Table 1).
Table 1

The comparison of demographic and clinical characteristics between patients hospitalized with FluA-p and FluB-p in China, 2013–2019

VariableTotal (n = 1079)FluA-p (n = 693)FluB-p (n = 386)P-value
Age (years, median, IQR)61.0 (49.0–78.0)61.0 (36.0–73.0)67.0 (55.0–80.0)<0.001
Male (n, %)584 (54.1)461 (66.5)123 (31.9)<0.001
Days from disease onset to admission (median, IQR)3.0 (2.0–4.0)3.0 (2.0–4.0)3.0 (2.0–4.3)0.082
Comorbidities (n, %)
 Cardiovascular disease259 (24.0)136 (19.6)123 (31.9)<0.001
 Cerebrovascular disease97 (9.0)72 (10.4)25 (6.5)0.031
 Diabetes Mellitus127 (11.8)92 (13.3)35 (9.1)0.040
 COPD91 (8.4)40 (5.8)51 (13.2)<0.001
 Asthma33 (3.0)19 (2.7)14 (3.6)0.418
 Chronic kidney disease30 (2.8)16 (2.3)14 (3.6)0.207
 Solid Malignant tumor24 (2.2)16 (2.3)8 (2.1)0.801
Obesity76 (7.0)48 (6.9)28 (7.3)0.840
Pregnancy8 (0.7)8 (1.2)0 (0.0)0.080
Smoking history313 (29.0)243 (35.1)70 (18.1)<0.001
Baseline clinical and radiologic features (n, %)
 Axillary temperature ≥ 38 °C814 (75.4)661 (95.4)153 (39.6)<0.001
 Cough/sputum1060 (98.2)679 (98.0)381 (98.7)0.386
 Confusion150 (13.9)32 (4.6)118 (30.6)<0.001
 Respiratory rates ≥ 30 beats/min146 (13.5)121 (17.5)25 (6.5)<0.001
 SBP < 90 mmHg15 (1.4)8 (1.2)7 (1.8)0.375
 Leukocytes > 10 × 109/L283 (26.2)118 (17.0)165 (42.7)<0.001
 Lymphocytes < 0.8 × 109/L480/1063 (45.2)299/677 (44.2)181 (46.9)0.390
 HB < 100 g/L240 (22.2)69 (10.0)171 (44.3)<0.001
 ALB < 35 g/L187/1025 (18.2)58/639 (9.1)129 (33.4)<0.001
 BUN > 7 mmol/L446/1071 (41.6)183/685 (26.7)263 (68.1)<0.001
 Arterial pH < 7.35171/1025 (16.7)120/639 (18.8)51 (12.7)0.021
PO2/FiO2 < 300 mmHg480/1025 (46.8)340/639 (53.2)140 (36.3)<0.001
Multilobar infiltrates794 (73.6)546 (78.8)248 (64.2)<0.001
Coinfections (n, %)367 (34.0)265 (38.2)102 (26.4)<0.001

IQR Interquartile range, COPD Chronic obstructive pulmonary disease; SBP Systolic blood pressure, HB Haemoglobin, ALB Albumin, BUN Blood urea nitrogen, pH Hydrogen ion index, PO/FiO Arterial pressure of oxygen/fraction of inspiration oxygen

The comparison of demographic and clinical characteristics between patients hospitalized with FluA-p and FluB-p in China, 2013–2019 IQR Interquartile range, COPD Chronic obstructive pulmonary disease; SBP Systolic blood pressure, HB Haemoglobin, ALB Albumin, BUN Blood urea nitrogen, pH Hydrogen ion index, PO/FiO Arterial pressure of oxygen/fraction of inspiration oxygen Other community-acquired pathogens were present in 34.0% (367/1079) of Flu-p patients. Klebsiella pneumoniae (31.6%, 116/367) was the most common, followed by Streptococcus pneumoniae (29.7%, 109/367) and Staphylococcus aureus (19.3%, 71/367) (Additional File 1). The clinical management and outcomes of Flu-p patients are shown in Table 2. All received antibiotics and NAI, with early NAI administrated to 35.7% (385/1079) of patients. In total, 24.3% (262/1079) of patients received systemic corticosteroids during hospitalization, whilst 23.1% (249/1079), 24.6% (265/1079) and 4.9% (53/1079) developed respiratory failure, heart failure and septic shock, respectively. In total, 17.9% (193/1079) of patients received invasive ventilation and 22.4% (242/1079) were admitted to the ICU. The 30-day mortality rates were 19.3% (208/1079).
Table 2

The comparison of clinical management and outcomes between patients hospitalized with FluA-p and FluB-p in China, 2013–2019

VariableTotal (n = 1079)FluA-p (n = 693)FluB-p (n = 386)P-value
Early NAI therapy (n, %)385 (35.7)232 (33.5)153 (39.6)0.043
Systemic corticosteroid use during hospitalization (n, %)262 (24.3)132 (19.0)130 (33.7)<  0.001
Complications during hospitalization
 Respiratory failure249 (23.1)167 (24.1)82 (21.2)0.286
 Heart failure265 (24.6)147 (21.2)118 (30.6)0.001
 Septic shock53 (4.9)36 (5.2)17 (4.4)0.565
 Acute renal failure39 (3.6)27 (3.9)12 (3.1)0.507
 Bloodstream infection9 (0.8)8 (1.2)1 (0.3)0.121
Noninvasive ventilation (n, %)279 (25.9)159 (22.9)120 (31.1)0.003
Invasive ventilation (n, %)193 (17.9)158 (22.8)35 (9.1)<  0.001
Vasopressor use (n, %)40 (3.7)27 (3.9)13 (3.4)0.660
Admittance to ICU (n, %)242 (22.4)176 (25.4)66 (17.1)0.001

Length of stay in hospital

(days, median, IQR)

10.0 (8.0–14.0)12.0 (7.0–14.5)10.0 (8.0–17.0)<  0.001
30-day mortality (n, %)208 (19.3)136 (19.6)72 (18.7)0.698

NAI neuraminidase inhibitor, ICU intensive care unit; IQR: Interquartile range

The comparison of clinical management and outcomes between patients hospitalized with FluA-p and FluB-p in China, 2013–2019 Length of stay in hospital (days, median, IQR) NAI neuraminidase inhibitor, ICU intensive care unit; IQR: Interquartile range

Comparison of patients hospitalized with FluA-p and FluB-p

Compared to patients with FluB-p, FluA-p patients were younger and predominantly male. In FluA-p patients, cerebrovascular disease, diabetes mellitus and smoking history were frequent, whilst cardiovascular disease was less common. FluA-p patients more frequently showed axillary temperatures ≥ 38 °C, confusion, arterial hydrogen ion index (pH) < 7.35, PO2/FiO2 < 300 mmHg and multilobar infiltrates compared to FluB-p patients. More FluA-p patients had coinfections (Table 1). A larger number of FluB-p patients received early NAI, systemic corticosteroid therapy and developed complications such as heart failure during hospitalization. Invasive ventilation was more frequent in FluA-p patients. The length of stay in hospital was significantly longer in FluA-p patients compared to FluB-p patients. The 30-day mortality rates were similar between the two groups (Table 2).

Impact of virus type on the severity of illness and clinical outcomes of flu-p patients

Univariate logistic analysis showed that influenza A virus infection was associated with an increased risk of invasive ventilation (OR: 2.811, 95% CI: 1.905–4.167, P <  0.001) and admittance to the ICU (OR: 1.651, 95% CI: 1.204–1.204, P = 0.002), but did not correlate with 30-day mortality (OR: 1.065, 95% CI: 0.775–1.463, P = 0.698) in Flu-p patients (Table 3).
Table 3

The impact of influenza virus type A on the illness severity and outcomes of patients hospitalized with Flu-p in China, 2013–2019

VariableUnivariate logistic analysisMultivariate logistic analysis
OR (95% CI)P-value*aOR (95% CI)P-value
Invasive ventilation2.811 (1.905–4.167)< 0.0013.824 (2.279–6.414)<  0.001
Admittance to ICU1.651 (1.204–1.204)0.0021.630 (1.074–2.473)0.022
30-day mortality1.065 (0.775–1.463)0.6982.427 (1.568–3.756)<  0.001

OR Odd ratio, CI Confidence interval, ICU Intensive care unit. *: adjusted for age, sex, comorbidities, pregnancy, obesity, smoking history, early NAI treatment and systemic corticosteroid, and coinfection with other pathogens

The impact of influenza virus type A on the illness severity and outcomes of patients hospitalized with Flu-p in China, 2013–2019 OR Odd ratio, CI Confidence interval, ICU Intensive care unit. *: adjusted for age, sex, comorbidities, pregnancy, obesity, smoking history, early NAI treatment and systemic corticosteroid, and coinfection with other pathogens Following adjustment for age, sex, comorbidities, pregnancy, obesity, smoking history, early NAI treatment and systemic corticosteroid use, and coinfections, multivariate logistic regression models revealed that influenza A virus infection was associated with an increased risk of invasive ventilation (OR: 3.824, 95% CI: 2.279–6.414, P <  0.001), ICU admission (OR: 1.630, 95% CI: 1.074–2.473, P = 0.022) and 30-day mortality (OR: 2.427, 95% CI: 1.568–3.756, P <  0.001) in Flu-p patients (Table 3). The forrest plots of the impact of influenza virus A on invasive ventilation, admittance to the ICU and 30-day mortality in Flu-p patients after and prior to adjusting for confounders are shown in Fig. 2.
Fig. 2

Forrest plot of the impact of influenza virus type on the illness severity and outcomes of patients hospitalized with Flu-p in China, 2013–2019. Before adjusting for confounders, influenza A virus infection was associated with an increased risks of invasive ventilation and admittance to intensive care unit (ICU), but did not correlate with 30-day mortality. After adjusting for confounders, influenza A virus infection was associated with an increased risks of invasive ventilation, ICU admission and 30-day mortality in Flu-p patients

Forrest plot of the impact of influenza virus type on the illness severity and outcomes of patients hospitalized with Flu-p in China, 2013–2019. Before adjusting for confounders, influenza A virus infection was associated with an increased risks of invasive ventilation and admittance to intensive care unit (ICU), but did not correlate with 30-day mortality. After adjusting for confounders, influenza A virus infection was associated with an increased risks of invasive ventilation, ICU admission and 30-day mortality in Flu-p patients

Risk factors for 30-day mortality in flu-p patients

Logistic regression analysis allowed us to explore the factors for 30-day mortality in Flu-p patients. All potential factors screened in the univariate analysis with P <  0.1 and influenza A virus infection were added to the Cox regression model (Additional file 1). Multivariate Cox regression models confirmed that influenza A virus infection (hazard ratio [HR]: 2.637, 95% CI: 1.134–6.131, P = 0.024), age (HR: 1.055, 95% CI: 1.033–1.077, P <  0.001), cardiovascular disease (HR: 7.683, 95% CI: 3.175–18.58, P <  0.001), smoking history (HR: 3.137, 95% CI: 1.417–7.124, P <  0.001), lymphocytes < 0.8 × 109/L (HR: 10.473, 95% CI: 5.033–21.792, P <  0.001), blood urea nitrogen (BUN) > 7 mmol/L (HR: 3.170, 95% CI: 1.449–6.935, P = 0.004) and arterial pH < 7.35 (HR: 3.037, 95% CI: 1.552–5.945, P = 0.001) were independent risk factors for 30-day mortality in Flu-p patients (Table 4).
Table 4

The risk factors for 30-day mortality of patients hospitalized with Flu-p in China, 2013–2019

VariableP-valueaHR (95% CI)
Influenza virus A infection0.0242.637 (1.134–6.131)
Age<  0.0011.055 (1.033–1.077)
Cardiovascular disease<  0.0017.683 (3.175–18.589)
Smoking history<  0.0013.137 (1.417–7.124)
Lymphocytes < 0.8 × 109/L<  0.00110.473 (5.033–21.792)
BUN > 7 mmol/L0.0043.170 (1.449–6.935)
Arterial pH < 7.350.0013.037 (1.552–5.945)

aHR adjusted hazard ratio, CI Confidence interval, BUN: Blood urea nitrogen

The risk factors for 30-day mortality of patients hospitalized with Flu-p in China, 2013–2019 aHR adjusted hazard ratio, CI Confidence interval, BUN: Blood urea nitrogen The survival curve shows that the 30-day mortality of FluA patients was higher than that of FluB-p patients after adjusting for confounders (age, cardiovascular disease, chronic kidney disease, smoking history, confusion, lymphocytes < 0.8 × 109/L, hemoglobin < 100 g/L, BUN > 7 mmol/L, arterial pH < 7.35, PO2/FiO2 < 300 mmHg, coinfections and systemic corticosteroid use) (Fig. 3).
Fig. 3

Survival rate of patients hospitalized with FluA-p and FluB-p in China, 2013–2019 (censored at 30 d after admission). The 30-day mortality of FluA patients was higher than that of FluB-p patients after adjusting for confounders

Survival rate of patients hospitalized with FluA-p and FluB-p in China, 2013–2019 (censored at 30 d after admission). The 30-day mortality of FluA patients was higher than that of FluB-p patients after adjusting for confounders

Discussion

This large-sample cohort study showed that illness severity and clinical outcomes were poorer in patients hospitalized with FluA-p as opposed to FluB-p after adjusting for potential confounders, suggesting a direct impact of influenza virus types on the characteristics and outcomes of influenza related pneumonia. In this study, the 30-day mortality was 19.6%, which was accordant with the 5–50% reported in previous reports [17-19]. The median age was 61.0 years and over 50% of patients had co-morbidities, delayed NAI therapy and systemic corticosteroid (70 and 25% of patients respectively), which may explain the high mortality rates. The proportion of patients requiring invasive ventilation and ICU admission were higher for FluB-p patients. Although the death rates between the two groups were comparable. Significant differences in the 30-day mortality were observed after controlling for confounders. Our data were consistent with Wang et al. [20] that included 369 patients with flu A infection and 205 patients with flu B infection. After adjustment for age, sex, heart disease, malignancies and time from illness onset to antiviral treatment, logistic regression models showed a higher probability of clinical improvement (HR: 1.266, 95% CI: 1.019–1.573) and weaning oxygen supplementation (HR: 1.285, 95% CI: 1.030–1.603) in flu B patients. The in-hospital mortality of flu A patients was marginally higher than flu B patients (11.4% vs 6.8%; P = 0.078), which might be due to the relatively small number of deaths (56 in total). Similarly, Chaves and colleagues [21] performed a retrospective study using population-based influenza hospitalization surveillance data. They found that A (H1N1) pdm09 infection was an independent predictor for illness severity both in children (aOR: 2.19, 95% CI: 1.11–4.33) and adults (aOR: 2.21, 95% CI: 1.66–2.943) compared to flu B infection. In ferret models, A (H1N1) pdm09 strains led to more severe clinical symptoms and histopathology, followed by A (H3N2) strains, whilst Flu B strains had a milder illness [22]. Although the specific pathogenesis governing these effects has not been elucidated, some mechanisms have been postulated. Hemagglutinin (HA) of influenza B virus strains is heavily glycosylated [23]. Since glycosylated HA binds collagenous lectins in lung surfactants, it is easily cleared from the lungs. HA of human influenza B viruses also preferentially bind to α-2,6-linked sialic acids present in the human upper respiratory tract, whilst A (H1N1) pdm09 viruses bind both α-2,6-linked and α-2,3-linked sialic acids [24]. Influenza B viruses are therefore restricted to the upper respiratory tract, whilst A (H1N1) pdm09 viruses are more prevalent in the lower respiratory tract [25]. Compared to influenza A viruses, influenza B has lower receptor-binding affinity due to the presence of a Phe-95 versus a Tyr-98 in the HA protein, resulting in a loss of hydrogen bonds [26]. The innate IFN response is also more rapidly initiated following influenza B as opposed to influenza A virus infection. This leads to more rapid viral clearance and lower viral titers [27]. In vivo, both influenza A and B viruses downregulate the surface expression of major histocompatibility complex-I (MHC-I). A more pronounced reduction in surface MHC-I expression was observed in influenza B patients, leading to milder immunologic reactions, followed by significantly lower levels of inflammatory cytokines and lung tissue injury [28]. A prospective study from France et al. [29] that included 556 patients with influenza, of which 30% had pneumonia, showed that the admittance to the ICU, not the virus type, was the main risk factor for death. They further confirmed that prior chronic respiratory disease was associated with ICU admission in multivariate logistic regression models. The proportion of chronic respiratory disease patients was significantly higher in flu A compared to flu B patients. However, the association of virus types with ICU admission were not assessed. Several studies have compared the mortality rates between patients according to virus type, but many failed to control for confounders [9, 10, 30–32]. Recently, a systematic literature review suggested the A (H1N1) pdm09 during the post-pandemic period was more related to poor outcomes (secondary bacterial pneumonia, ICU admission, and death) than influenza B viruses [33]. To our knowledge, this is the first real-word cohort study (with a large population of adolescents and adults admitted to general hospital wards or ICUs) that focused on the association of influenza viruses types with illness severity and clinical outcomes of laboratory-confirmed influenza-related pneumonia patients. Methods were taken to reduce selection bias and control confounders, but some limitations should be noted. First, due to the retrospective nature of the study, potential selection bias may have influenced the data. For example, during each influenza season, patients with influenza-like illness (such as fever, sore throat or cough) were assessed through influenza RNA tests by the subjective judgement of attending physicians in the five hospitals. It was possible that more severe (or milder) patients were tested for influenza. Not all respiratory cases were eligible for swabbing and some selection bias occurred. Secondly, due to the retrospective design, the impact of vaccination on disease severity could not be evaluated, and the inclusion of incomplete data may have lowered the accuracy of our results. Thirdly, there is evidence of different severities of influenza A virus subtypes [11, 32]. However, over 50% of patients were not tested for subtypes in our study. Further work is required to compare the clinical features according to subtype. Finally, our study population were immunocompetent, adolescent and adult hospitalized patients. The conclusions should be assessed prudently prior to similar assessments in immunocompromised patients, pediatrics and outpatients.

Conclusions

The clinical outcomes of FluA-p are worse than FluB-p, highlighting the importance of influenza virus strain testing in the management of severe influenza. As influenza A virus infection is a predictor for poor outcomes in patients with influenza-related pneumonia, regardless of their ages and chronic underlying conditions, the clinicians should pay more attention to patients with FluA-p. Also, it suggests the priority of vaccination covered influenza virus type A strains in certain populations is rational. Additional file 1: Appendix 1. Details of participating centers. Appendix 2. Definition of underlying diseases of patients hospitalized with Flu-p in China, 2013–2019. Definition of microbiological criteria of coinfected with other pathogens in patients hospitalized with Flu-p in China, 2013–2019. Appendix 3. Coinfection with other community-acquired pathogens in patients hospitalized with Flu-p in China, 2013–2019. Appendix 4 Univariate analysis on risk factors for 30-day mortality of patients hospitalized with Flu-p in China, 2013–2019.
  33 in total

1.  Community-Acquired Pneumonia Requiring Hospitalization among U.S. Adults.

Authors:  Seema Jain; Wesley H Self; Richard G Wunderink; Sherene Fakhran; Robert Balk; Anna M Bramley; Carrie Reed; Carlos G Grijalva; Evan J Anderson; D Mark Courtney; James D Chappell; Chao Qi; Eric M Hart; Frank Carroll; Christopher Trabue; Helen K Donnelly; Derek J Williams; Yuwei Zhu; Sandra R Arnold; Krow Ampofo; Grant W Waterer; Min Levine; Stephen Lindstrom; Jonas M Winchell; Jacqueline M Katz; Dean Erdman; Eileen Schneider; Lauri A Hicks; Jonathan A McCullers; Andrew T Pavia; Kathryn M Edwards; Lyn Finelli
Journal:  N Engl J Med       Date:  2015-07-14       Impact factor: 91.245

2.  Comparing clinical characteristics between hospitalized adults with laboratory-confirmed influenza A and B virus infection.

Authors:  Su Su; Sandra S Chaves; Alejandro Perez; Tiffany D'Mello; Pam D Kirley; Kimberly Yousey-Hindes; Monica M Farley; Meghan Harris; Ruta Sharangpani; Ruth Lynfield; Craig Morin; Emily B Hancock; Shelley Zansky; Gary E Hollick; Brian Fowler; Christie McDonald-Hamm; Ann Thomas; Vickie Horan; Mary Lou Lindegren; William Schaffner; Andrea Price; Ananda Bandyopadhyay; Alicia M Fry
Journal:  Clin Infect Dis       Date:  2014-04-18       Impact factor: 9.079

3.  Differences in clinical features between influenza A H1N1, A H3N2, and B in adult patients.

Authors:  Masahide Kaji; Aya Watanabe; Hisamichi Aizawa
Journal:  Respirology       Date:  2003-06       Impact factor: 6.424

4.  Estimating influenza disease burden from population-based surveillance data in the United States.

Authors:  Carrie Reed; Sandra S Chaves; Pam Daily Kirley; Ruth Emerson; Deborah Aragon; Emily B Hancock; Lisa Butler; Joan Baumbach; Gary Hollick; Nancy M Bennett; Matthew R Laidler; Ann Thomas; Martin I Meltzer; Lyn Finelli
Journal:  PLoS One       Date:  2015-03-04       Impact factor: 3.240

5.  Comparison of clinical features and outcomes of medically attended influenza A and influenza B in a defined population over four seasons: 2004-2005 through 2007-2008.

Authors:  Stephanie A Irving; Darshan C Patel; Burney A Kieke; James G Donahue; Mary F Vandermause; David K Shay; Edward A Belongia
Journal:  Influenza Other Respir Viruses       Date:  2011-05-25       Impact factor: 4.380

Review 6.  Review of seasonal influenza in Canada: Burden of disease and the cost-effectiveness of quadrivalent inactivated influenza vaccines.

Authors:  Edward W Thommes; Morgan Kruse; Michele Kohli; Rohita Sharma; Stephen G Noorduyn
Journal:  Hum Vaccin Immunother       Date:  2016-11-18       Impact factor: 3.452

7.  Disease characteristics and management of hospitalised adolescents and adults with community-acquired pneumonia in China: a retrospective multicentre survey.

Authors:  Liang Chen; Fei Zhou; Hui Li; Xiqian Xing; Xiudi Han; Yiming Wang; Chunxiao Zhang; Lijun Suo; Jingxiang Wang; Guohua Yu; Guangqiang Wang; Xuexin Yao; Hongxia Yu; Lei Wang; Meng Liu; Chunxue Xue; Bo Liu; Xiaoli Zhu; Yanli Li; Ying Xiao; Xiaojing Cui; Lijuan Li; Timothy M Uyeki; Chen Wang; Bin Cao
Journal:  BMJ Open       Date:  2018-02-15       Impact factor: 2.692

8.  Clinical characteristics and outcomes during a severe influenza season in China during 2017-2018.

Authors:  Xiaofang Fu; Yuqing Zhou; Jie Wu; Xiaoxiao Liu; Cheng Ding; Chenyang Huang; Shufa Zheng; Dhanasekaran Vijaykrishna; Yu Chen; Lanjuan Li; Shigui Yang
Journal:  BMC Infect Dis       Date:  2019-07-29       Impact factor: 3.090

9.  Comparative Outcomes of Adults Hospitalized With Seasonal Influenza A or B Virus Infection: Application of the 7-Category Ordinal Scale.

Authors:  Yeming Wang; Guohui Fan; Peter Horby; Fredrick Hayden; Qian Li; Qiaoling Wu; Xiaohui Zou; Hui Li; Qingyuan Zhan; Chen Wang; Bin Cao
Journal:  Open Forum Infect Dis       Date:  2019-02-15       Impact factor: 3.835

10.  Global and regional mortality from 235 causes of death for 20 age groups in 1990 and 2010: a systematic analysis for the Global Burden of Disease Study 2010.

Authors:  Rafael Lozano; Mohsen Naghavi; Kyle Foreman; Stephen Lim; Kenji Shibuya; Victor Aboyans; Jerry Abraham; Timothy Adair; Rakesh Aggarwal; Stephanie Y Ahn; Miriam Alvarado; H Ross Anderson; Laurie M Anderson; Kathryn G Andrews; Charles Atkinson; Larry M Baddour; Suzanne Barker-Collo; David H Bartels; Michelle L Bell; Emelia J Benjamin; Derrick Bennett; Kavi Bhalla; Boris Bikbov; Aref Bin Abdulhak; Gretchen Birbeck; Fiona Blyth; Ian Bolliger; Soufiane Boufous; Chiara Bucello; Michael Burch; Peter Burney; Jonathan Carapetis; Honglei Chen; David Chou; Sumeet S Chugh; Luc E Coffeng; Steven D Colan; Samantha Colquhoun; K Ellicott Colson; John Condon; Myles D Connor; Leslie T Cooper; Matthew Corriere; Monica Cortinovis; Karen Courville de Vaccaro; William Couser; Benjamin C Cowie; Michael H Criqui; Marita Cross; Kaustubh C Dabhadkar; Nabila Dahodwala; Diego De Leo; Louisa Degenhardt; Allyne Delossantos; Julie Denenberg; Don C Des Jarlais; Samath D Dharmaratne; E Ray Dorsey; Tim Driscoll; Herbert Duber; Beth Ebel; Patricia J Erwin; Patricia Espindola; Majid Ezzati; Valery Feigin; Abraham D Flaxman; Mohammad H Forouzanfar; Francis Gerry R Fowkes; Richard Franklin; Marlene Fransen; Michael K Freeman; Sherine E Gabriel; Emmanuela Gakidou; Flavio Gaspari; Richard F Gillum; Diego Gonzalez-Medina; Yara A Halasa; Diana Haring; James E Harrison; Rasmus Havmoeller; Roderick J Hay; Bruno Hoen; Peter J Hotez; Damian Hoy; Kathryn H Jacobsen; Spencer L James; Rashmi Jasrasaria; Sudha Jayaraman; Nicole Johns; Ganesan Karthikeyan; Nicholas Kassebaum; Andre Keren; Jon-Paul Khoo; Lisa Marie Knowlton; Olive Kobusingye; Adofo Koranteng; Rita Krishnamurthi; Michael Lipnick; Steven E Lipshultz; Summer Lockett Ohno; Jacqueline Mabweijano; Michael F MacIntyre; Leslie Mallinger; Lyn March; Guy B Marks; Robin Marks; Akira Matsumori; Richard Matzopoulos; Bongani M Mayosi; John H McAnulty; Mary M McDermott; John McGrath; George A Mensah; Tony R Merriman; Catherine Michaud; Matthew Miller; Ted R Miller; Charles Mock; Ana Olga Mocumbi; Ali A Mokdad; Andrew Moran; Kim Mulholland; M Nathan Nair; Luigi Naldi; K M Venkat Narayan; Kiumarss Nasseri; Paul Norman; Martin O'Donnell; Saad B Omer; Katrina Ortblad; Richard Osborne; Doruk Ozgediz; Bishnu Pahari; Jeyaraj Durai Pandian; Andrea Panozo Rivero; Rogelio Perez Padilla; Fernando Perez-Ruiz; Norberto Perico; David Phillips; Kelsey Pierce; C Arden Pope; Esteban Porrini; Farshad Pourmalek; Murugesan Raju; Dharani Ranganathan; Jürgen T Rehm; David B Rein; Guiseppe Remuzzi; Frederick P Rivara; Thomas Roberts; Felipe Rodriguez De León; Lisa C Rosenfeld; Lesley Rushton; Ralph L Sacco; Joshua A Salomon; Uchechukwu Sampson; Ella Sanman; David C Schwebel; Maria Segui-Gomez; Donald S Shepard; David Singh; Jessica Singleton; Karen Sliwa; Emma Smith; Andrew Steer; Jennifer A Taylor; Bernadette Thomas; Imad M Tleyjeh; Jeffrey A Towbin; Thomas Truelsen; Eduardo A Undurraga; N Venketasubramanian; Lakshmi Vijayakumar; Theo Vos; Gregory R Wagner; Mengru Wang; Wenzhi Wang; Kerrianne Watt; Martin A Weinstock; Robert Weintraub; James D Wilkinson; Anthony D Woolf; Sarah Wulf; Pon-Hsiu Yeh; Paul Yip; Azadeh Zabetian; Zhi-Jie Zheng; Alan D Lopez; Christopher J L Murray; Mohammad A AlMazroa; Ziad A Memish
Journal:  Lancet       Date:  2012-12-15       Impact factor: 79.321

View more
  3 in total

1.  Deep learning for differentiating novel coronavirus pneumonia and influenza pneumonia.

Authors:  Min Zhou; Dexiang Yang; Yong Chen; Yanping Xu; Jin-Fu Xu; Zhijun Jie; Weiwu Yao; Xiaoyan Jin; Zilai Pan; Jingwen Tan; Lan Wang; Yihan Xia; Longkuan Zou; Xin Xu; Jingqi Wei; Mingxin Guan; Fuhua Yan; Jianxing Feng; Huan Zhang; Jieming Qu
Journal:  Ann Transl Med       Date:  2021-01

2.  Acute respiratory infections in an adult refugee population: an observational study.

Authors:  Alexandra Jablonka; Christian Dopfer; Christine Happle; Andree Shalabi; Martin Wetzke; Eva Hummers; Tim Friede; Stephanie Heinemann; Nele Hillermann; Anne Simmenroth; Frank Müller
Journal:  NPJ Prim Care Respir Med       Date:  2021-12-21       Impact factor: 2.871

3.  Behavior of hospitalized severe influenza cases according to the outcome variable in Catalonia, Spain, during the 2017-2018 season.

Authors:  Núria Soldevila; Lesly Acosta; Ana Martínez; Pere Godoy; Núria Torner; Cristina Rius; Mireia Jané; Angela Domínguez
Journal:  Sci Rep       Date:  2021-06-30       Impact factor: 4.379

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.