Literature DB >> 33261654

Comparison of patients hospitalized with COVID-19, H7N9 and H1N1.

Li-Si Deng1, Jing Yuan2, Li Ding1, Yuan-Li Chen3, Chao-Hui Zhao1, Gong-Qi Chen1, Xing-Hua Li1, Xiao-He Li2, Wen-Tao Luo1, Jian-Feng Lan2, Guo-Yu Tan2, Sheng-Hong Tang2, Jin-Yu Xia4, Xi Liu5.   

Abstract

BACKGROUND: There is an urgent need to better understand the novel coronavirus, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), for that the coronavirus disease 2019 (COVID-19) continues to cause considerable morbidity and mortality worldwide. This paper was to differentiate COVID-19 from other respiratory infectious diseases such as avian-origin influenza A (H7N9) and influenza A (H1N1) virus infections.
METHODS: We included patients who had been hospitalized with laboratory-confirmed infection by SARS-CoV-2 (n = 83), H7N9 (n = 36), H1N1 (n = 44) viruses. Clinical presentation, chest CT features, and progression of patients were compared. We used the Logistic regression model to explore the possible risk factors.
RESULTS: Both COVID-19 and H7N9 patients had a longer duration of hospitalization than H1N1 patients (P < 0.01), a higher complication rate, and more severe cases than H1N1 patients. H7N9 patients had higher hospitalization-fatality ratio than COVID-19 patients (P = 0.01). H7N9 patients had similar patterns of lymphopenia, neutrophilia, elevated alanine aminotransferase, C-reactive protein, lactate dehydrogenase, and those seen in H1N1 patients, which were all significantly different from patients with COVID-19 (P < 0.01). Either H7N9 or H1N1 patients had more obvious symptoms, like fever, fatigue, yellow sputum, and myalgia than COVID-19 patients (P < 0.01). The mean duration of viral shedding was 9.5 days for SARS-CoV-2 vs 9.9 days for H7N9 (P = 0.78). For severe cases, the meantime from illness onset to severity was 8.0 days for COVID-19 vs 5.2 days for H7N9 (P < 0.01), the comorbidity of chronic heart disease was more common in the COVID-19 patients than H7N9 (P = 0.02). Multivariate analysis showed that chronic heart disease was a possible risk factor (OR > 1) for COVID-19, compared with H1N1 and H7N9.
CONCLUSIONS: The proportion of severe cases were higher for H7N9 and SARS-CoV-2 infections, compared with H1N1. The meantime from illness onset to severity was shorter for H7N9. Chronic heart disease was a possible risk factor for COVID-19.The comparison may provide the rationale for strategies of isolation and treatment of infected patients in the future.

Entities:  

Keywords:  COVID-19; Comparison; H1N1; H7N9; SARS-CoV-2

Year:  2020        PMID: 33261654      PMCID: PMC7707904          DOI: 10.1186/s40249-020-00781-5

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


Background

The emergence of human infections with the SARS-CoV-2 (Severe Acute Respiratory Syndrome Coronavirus 2) virus and its rapid national and international spread poses a global health emergency [1]. As of 15 April 2020, the number of patients infected with SARS-CoV-2 has exceeded two million globally, with the highest mortality rate of beyond 10.0% in several countries. Although the outbreak was likely to have started from a zoonotic transmission and associated with live wild animals, it has soon been confirmed that direct human-to-human transmission was occurring [2]. It has been reported that highest viral loads (inversely related to CT value) were detected soon after symptom onset, with higher viral loads detected in the nose than in the throat; it has suggested that the viral nucleic acid shedding pattern of patients infected with SARS-CoV-2 resembles that of patients with influenza and appears different from that seen in patients infected with SARS-CoV [3]. Besides, the pattern of transmission and the characteristics of the disease are similar to influenza initially, although they are from different viral families [4]. It may confuse in identifying influenza and COVID-19 (the Coronavirus disease 2019) for that common symptoms include fever and cough, whereas gastrointestinal symptoms (eg, nausea, vomiting, diarrhea) [4]. In the past decade, two highly pathogenic influenza virus, the avian influenza A (H7N9) and influenza A/H1N1/2009 virus have emerged in two separate events. The pandemic caused by the influenza A/H1N1/2009 virus starting in the spring of 2009 has caused significant morbidity and mortality in certain patients [5, 6]. During the spring of 2013, cases of human infection with avian influenza A (H7N9) virus were first reported in China, evidence emerged in many cities and regions; most of the cases were severe, with high fatality; as of May 9 2013, the World Health Organization (WHO) had reported 131 laboratory-confirmed cases, including 32 deaths [7-9]. Understanding the clinical characteristics and determinants of the severity of disease due to SARS-CoV-2 virus infection is essential both for the identification and clinical management of high-risk cases. To provide insights into the pathogenesis of SARS-CoV-2 virus infection, we compared the clinical presentation, chest CT features, and progression of patients hospitalized with SARS-CoV-2, H7N9, and H1N1 virus infections. We also compared the characteristics of severe cases between COVID-19 and H7N9, severe cases with H1N1 were not included in the comparison because the number was just five and small amounts of data may not be representative.

Methods

Study design and participants

The patients with laboratory confirmed SARS-CoV-2 infection were hospitalized between 17 January 2020 and 20 March 2020, and H1N1 virus infections were hospitalized between 20 March 2017 and 8 March 2019, at The Fifth Affiliated Hospital of Sun Yat-Sen University. Patients with H7N9 virus infection were hospitalized between 18 December 2013 and 28 Febuary 2015, at Shenzhen Third People's Hospital. All subjects with virus infection reported in this manuscript were hospitalized patients and had been laboratory confirmed by real-time reverse transcriptase polymerase chain reaction (RT-PCR). Besides, all patients with H1N1and H7N9 had been hospitalized for pneumonia or severe symptoms (eg, uncontrollable fever, shortness of breath, severe cough, hemoptysis, symptoms associated with comorbidities); but for hospitalized COVID-19 cases, only patients with pneumonia were included in the analysis.

Data collection

All the clinical data on signs and symptoms, underlying comorbidities, laboratory results, chest CT scans, and treatment measures were retrospectively extracted from electronic medical records and checked by both on-site and off-site doctors. We extracted the baseline data from the patients after admission. The RT-PCR test was performed using nasal and pharyngeal swab specimens, RT-PCR was performed every other day and three consecutive days once negative for SARS-CoV-2 test after admission to hospital, RT-PCR was performed every other day and two consecutive days once negative for H7N9′s test. Chest CT scans were performed on admission (except for two pregnant patients with H1N1 virus infections), and analyzed according to the number of lung lobes involvement. The total CT score was the sum of the individual lobar involvement. Fever was defined as the axillary temperature of at least 37.3 °C. Severe cases were defined by the patient experiencing an oxygenation index under 300 mmHg or admission to an intensive care unit.

Statistical analysis

We used χ2 and Fischer’s exact tests for categorical variables, whereas we used the student’s t-test or Mann–Whitney U test for continuous variables to assess the differences. We did statistical analyses using SPSS software (version 13.0 SPSS, Chicago, Illinois). The significance for all statistical analyses was defined as P < 0.05. We used the Kaplan–Meier method to estimate survival curves for death. The same approach was used to determine the time for invasive mechanical ventilation or tracheal intubation. The Logistic regression model was used to explore the possible risk factors. We used kernel density to determine the distribution of the number of days of hospitalization, and the days from illness onset to severity. Severity was defined by the patient experiencing an oxygenation index under 300 mmHg or or admission to an intensive care unit.

Results

Patient characteristics

Data were included 83 patients with COVID-19, 36 patients with H7N9, and 44 patients with H1N1 virus infections. The median age of subjects hospitalized with COVID-19 was 46.5 years, compared to 54.5 years for H7N9 patients and 48.0 years for H1N1 patients (Table 1). The prevalence of diabetes was lower in subjects with COVID-19 compared with the H7N9 group. Subjects hospitalized with H7N9 and H1N1 had the highest prevalence of hypertension and smoking. But, no other statistically significant differences in chronic medical conditions were noted between the three groups. Before we collect the data, all the patients hospitalized with COVID-19 were discharged from hospital except for one death. Both COVID-19 and H7N9 patients had a longer duration of hospitalization than H1N1 patients (P < 0.01) (Fig. 1), a higher complication rate, and more severe cases than H1N1 patients. H7N9 patients had higher hospitalization-fatality ratio than COVID-19 patients (P = 0.01) (Table 1).
Table 1

Characteristics of Patients hospitalized with COVID-19, H7N9, and H1N1

VariableCOVID-19(n = 83)H7N9(n = 36)P value*H1N1(N = 44)P value#
Characteristic
Age, years, median (range)53 (3–80)54.5 (21–82)0.2448.0 (16–84)0.69
Male35 (42.2%)23 (63.9%)0.0426 (59.1%)0.12
Chronic heart disease22 (26.5%)5 (13.8%)0.164 (9.1%)0.02
Chronic lung disease3 (3.6%)1 (2.8%)12 (4.5%)1
Chronic renal disease3 (3.6%)1 (2.8%)17 (15.9%)0.03
Chronic liver disease3 (3.6%)3 (8.3%)0.373 (6.8%)0.42
Diabetes7 (8.4%)9 (25.0%)0.023 (6.8%)1
Hypertension15 (18.1%)14 (38.9%)0.0213 (29.5%)0.18
Malignancy4 (4.8%)0 (0%)0.314 (9.1%)0.45
Smoking history3 (3.6%)6 (16.7%)0.028 (18.2%)0.02
Hospital stays20.7 (8.5)19.5 (9.0)0.285.3 (4.1) < 0.01
Severe cases29 (34.9%)30 (83.3%) < 0.015 (11.4%) < 0.01
Dead1 (1.2%)5 (13.9%)0.011 (2.3%)1
Glucocorticoids10 (12.0%)28 (77.8) < 0.0100.02
Antiviral83 (100%)36 (100%)144 (100%)1
Antibiotics53 (63.9%)36 (100%) < 0.0125 (56.8%)0.45
Complication27 (32.5%)31 (86.1%) < 0.016 (13.6%)0.03
Symptoms
Fever (≥ 37.3 ℃)60 (72.3%)36 (100%) < 0.0144 (100%) < 0.01
Any cough70 (84.3%)34 (94.4%)0.1540 (91%)0.41
Dry cough64 (77.1%)30 (83.3%)0.4425 (56.8%)0.02
Yellow sputum6 (7.2%)19 (52.8%) < 0.0115 (34.1%) < 0.01
Hemoptysis1 (1.2%)8 (22.2%) < 0.010 (0%)1
Myalgia10 (12.0%)12 (33.3%) < 0.0117 (38.6%) < 0.01
Fatigue11 (13.3%)14 (38.9%) < 0.0125 (56.8%) < 0.01
Shortness of breath5 (6.0%)6 (16.7%)0.075 (11.4%)0.29
Gastrointestinal symptoms10 (12.0%)7 (19.4%)0.3916 (36.4%) < 0.01
Laboratory findings and CT images
AST23.5 (9.6)100.7 (110.7) < 0.0129.4 (13.9) < 0.01
ALT22.5 (15.6)58.7 (55.4) < 0.0119.3 (10.9)0.13
CK93.4 (107.6)796.5 (1367.3) < 0.01207.8 (336.4) < 0.01
LDH187.8 (54.6)701.9 (484.2) < 0.01213.5 (74.8)0.01
Leukopenia15 (18.1%)7 (19.4%)0.863 (6.8%)0.11
Lymphopenia25 (30.1%)32 (88.9%) < 0.0123 (52.2%)0.01
Neutropenia21 (25.3%)2 (5.6%)0.013 (6.8%)0.02
Neutrophilia2 (2.4%)9 (25%) < 0.018 (18.2%) < 0.01
Thrombocytopenia8 (9.6%)14 (38.9%) < 0.014 (9.1%)0.92
Elevated CRP22 (26.5%)35 (97.2%) < 0.0130 (68.2%) < 0.01
Duration of viral shedding9.5 (6.1)9.9 (6.2)0.78NANA
Lung lobes involvement3 (1–5)5 (1–5) < 0.010 (0–5) < 0.01

Data are presented as mean (SD), medians (interquartile ranges) or No. (%). P value*: compared “COVID-19” and “H7N9”, P value: compared “COVID-19” and “H1N1”

ALT alanine aminotransferase, AST aspartate transaminase, CK creatine kinase, LDH lactate dehydrogenas, CRP C-reactive protein

Fig. 1

a Distribution of the number of days of hospitalization for patients with COVID-19, H7N9 and H1N1. b The days from illness onset to severity for severe patients with COVID-19 and H7N9. COVID-19: Coronavirus disease 2019, H7N9: avian-origin influenza A (H7N9) virus, H1N1: influenza A (H1N1) virus

Characteristics of Patients hospitalized with COVID-19, H7N9, and H1N1 Data are presented as mean (SD), medians (interquartile ranges) or No. (%). P value*: compared “COVID-19” and “H7N9”, P value: compared “COVID-19” and “H1N1 ALT alanine aminotransferase, AST aspartate transaminase, CK creatine kinase, LDH lactate dehydrogenas, CRP C-reactive protein a Distribution of the number of days of hospitalization for patients with COVID-19, H7N9 and H1N1. b The days from illness onset to severity for severe patients with COVID-19 and H7N9. COVID-19: Coronavirus disease 2019, H7N9: avian-origin influenza A (H7N9) virus, H1N1: influenza A (H1N1) virus Either H7N9 or H1N1 patients had more obvious symptoms, like fever, fatigue, yellow sputum, and myalgia than COVID-19 patients (P < 0.01). Gastrointestinal symptoms were most common in H1N1 cases, while hemoptysis symptoms were most common in H7N9 cases (Table 1). H7N9 patients had similar patterns of lymphopenia, neutrophilia, elevated alanine aminotransferase, C-reactive protein, and those seen in H1N1 patients, which were all significantly different from patients with COVID-19 (P < 0.01) (Table 1). Thrombocytopenia was more common in patients with H7N9, elevated lactate dehydrogenase was equally common in H7N9 and H1N1 patients, and least common in COVID-19 patients. But, no other statistically significant differences in baseline characteristics.

Comorbidity and risk factors

Compared patients hospitalized with COVID-19, the prevalence of hypertension and diabetes were higher in subjects with H7N9 (P = 0.02), whereas the prevalence of chronic renal disease was higher in subjects with H1N1 (P = 0.03). A history of smoking was more common in subjects hospitalized with H7N9 and H1N1 (Table1). Chronic heart disease more frequent in subjects with COVID-19, compared with H1N1 (Table 1), whereas for severe cases, COVID-19 had the highest prevalence of chronic heart disease than H7N9 (P = 0.02) (Table 2). Multivariate analysis showed that chronic heart disease was a possible risk factor (OR > 1) for COVID-19, compared with H1N1 and H7N9 (Additional file 1: Table S1).
Table 2

Characteristics of severe patients with COVID-19 or H7N9

VariableCOVID-19(n = 29)H7N9(n = 30)P value
Characteristic
Age, years, median (range)59 (32–80)56 (21–82)0.98
Male15 (51.7%)20 (66.7%)0.29
Chronic heart disease12 (41.4%)4 (13.3%)0.02
Chronic lung disease2 (6.9%)1 (3.3%)0.61
Chronic renal disease2 (6.9%)1 (3.3%)0.61
Chronic liver disease03(10.0%)0.24
Diabetes5 (17.2%)9 (30.0%)0.36
Hypertension9 (31.0%)14 (46.7%)0.29
Malignancy001.00
Smoking history1 (3.4%)5 (16.7%)0.19
Hospital stays21.3 (6.9)20.6 (8.9)0.71
Dead1 (3.4%)5 (16.7%)0.19
The days from illness onset to severity8.0 (4.6)5.2 (2.1) < 0.01
Symptoms
Fever (≥ 37.3 ℃)26 (89.7%)27 (90.0%)1.00
Any cough15 (51.7%)28 (93.3%) < 0.01
Dry cough10 (34.5%)10 (33.3%)1.00
Yellow sputum5 (17.2%)18 (60.0%) < 0.01
Hemoptysis1 (3.4%)8 (26.7%)0.03
Myalgia5 (17.2%)11 (36.7%)0.14
Fatigue8 (27.6%)12 (40.0%)0.41
Gastrointestinal symptoms4 (13.8%)7 (23.3%)0.51
Laboratory findings and CT images
AST27.5 (11.1)111.1 (118.4) < 0.01
ALT26.2 (17.4)61.7 (54.0) < 0.01
CK167.5 (31.0)1272.3 (268.8) < 0.01
LDH215.6 (50.6)745.8 (512.9) < 0.01
Leukopenia7 (24.1%)7 (23.3%)1.00
Lymphopenia15 (51.7%)27 (90.0%) < 0.01
Neutropenia9 (31.0%)2 (6.7%)0.02
Neutrophilia1 (3.4%)28 (93.3%) < 0.01
Thrombocytopenia4 (13.8%)10 (33.3%)0.12
Elevated CRP19 (65.5%)29 (96.7%) < 0.01
Duration of viral shedding10.6 (6.6)10.2 (6.4)0.86
Lung lobes involvement450.14

Data are presented as mean (SD), medians (interquartile ranges) or No. (%)

ALT alanine aminotransferase, AST aspartate transaminase, CK creatine kinase, LDH lactate dehydrogenas, CRP C-reactive protein

Characteristics of severe patients with COVID-19 or H7N9 Data are presented as mean (SD), medians (interquartile ranges) or No. (%) ALT alanine aminotransferase, AST aspartate transaminase, CK creatine kinase, LDH lactate dehydrogenas, CRP C-reactive protein

Characteristics of severe cases with COVID-19 or H7N9

The mean time from illness onset to severity was 8.0 days for COVID-19 vs 5.2 days for H7N9 (P < 0.01) (Fig. 1). For the severe cases, there were no significant differences in the hospitalization-fatality ratio and the lung lobes involvement between COVID-19 and H7N9 (Table 2). The days from hospitalization to mechanical ventilation and the days from illness onset to mechanical ventilation in severe cases of COVID-19 patients were more protracted than H7N9 and H1N1 cases (Fig. 2). Symptoms, like cough, yellow sputum and hemoptysis, were more common in severe cases with H7N9 than COVID-19; but, Symptoms, like fever, fatigue myalgia, were equally common in the two groups of severe cases, that was different from the comparison of general cases (Table 2). Except that, the other results of comparison for the severe cases between COVID-19 and H7N9 were similar to the comparison of general cases.
Fig. 2

Case fatality risk and invasive ventilation risk in hospitalized patients. a Days from hospitalization to death. b days from illness onset to death. c Days from hospitalization to tracheal intubation. d Days from illness onset to tracheal intubation. e Days from hospitalization to mechanical ventilation. f Days from illness onset to mechanical ventilation

Case fatality risk and invasive ventilation risk in hospitalized patients. a Days from hospitalization to death. b days from illness onset to death. c Days from hospitalization to tracheal intubation. d Days from illness onset to tracheal intubation. e Days from hospitalization to mechanical ventilation. f Days from illness onset to mechanical ventilation

Chest CT findings

The proportion of pneumonia and the number of lobes involved in COVID-19 patients was higher than in H1N1 cases, but lower than in H7N9 cases (Table 1) (Details in Additional file 1: Table S2). In COVID-19 group, 77 (93%) of 83 patients’ chest CT manifestations were multiple ground-glass densification shadows with various diffusions in both lungs, mainly distributed under the pleura indistinct nodules may be presented in some cases (Fig. 3). 81% H7N9 cases showed multilobar uneven consolidation and diffuse alveolar opacities. The chest CT radiological findings in 89% hospitalized H1N1 cases with pneumonia were ground-glass opacity and small patchy shadows with diffused distribution in the right middle and lower lungs.
Fig. 3

a–c Chest CT Images of a 36-year-old man with COVID-19 on admission, showed multiple ground-glass densification shadows with multiple diffusions in both lungs, mainly distributed under the pleura. d–f Chest CT Images of a 32-year-old man infected with H7N9 on admission, showed multilobar patchy consolidation and diffuse alveolar opacities. g–i Chest CT Images of a 29-year-old woman infected with H1N1 on admission, showed ground-glass opacity and small patchy shadows with diffused distribution in the right middle and lower lungs

a–c Chest CT Images of a 36-year-old man with COVID-19 on admission, showed multiple ground-glass densification shadows with multiple diffusions in both lungs, mainly distributed under the pleura. d–f Chest CT Images of a 32-year-old man infected with H7N9 on admission, showed multilobar patchy consolidation and diffuse alveolar opacities. g–i Chest CT Images of a 29-year-old woman infected with H1N1 on admission, showed ground-glass opacity and small patchy shadows with diffused distribution in the right middle and lower lungs

Duration of viral shedding

The mean duration of viral shedding for nasopharyngeal specimens was 9.5 days for SARS-CoV-2 vs 9.9 days for H7N9 (P = 0.78) (Details in Additional file 1: Table S3); for severe cases, it was 10.6 days for SARS-CoV-2 vs 10.2 days for H7N9 (P = 0.86). One of the asymptomatic COVID-19 cases in our study, 59-year-old male patient, accompanying with hypertension and diabetes, was tested positive for both nasopharyngeal and stool specimens; while the duration of viral shedding in stool was up to 68 days.

Discussion

The clinical presentation and laboratory indices at hospital admission were common in H7N9 and H1N1 patients, except that productive hemoptysis, thrombocytopenia were more common in H7N9 patients, those two factors have been associated with more severe outcomes [10]. Compared with features in patients with H7N9 and H1N1, patients with COVID-19 were more likely to exhibit the mild symptoms. Chinese Center for Disease Control and Prevention (China CDC) recently reported that most of the confirmed cases were classified as mild or moderate, 13.8% as severe, and only 4.7% as critically ill [11] Notably, the viral load that was detected in the asymptomatic patients was similar to that in the symptomatic patients [3] Recent research indicated that asymptomatic carriers can result in person-to-person transmission and should be considered a source of COVID-19 infection [12]. Unlike H7N9 and H1N1, the transmission of COVID-19 occurs during the prodromal period when those infected were mildly ill, and carry on usual activities, which contributes to the spread of infection. The mean duration of viral shedding for nasopharyngeal specimens was 9.8 days for SARS-CoV-2 vs 9.9 days for H7N9, for severe cases, it was 10.6 days vs 10.2 days. It has been widely investigated that the duration of viral shedding in H1N1 ranged from 4 to 8 days [13-15]. It seems likely that SARS-CoV-2 infections were characterized by the prolonged viral shedding, compared with H1N1. SARS-CoV-2 viral RNA has been detected in the serum, urine, and feces of COVID-19 patients, but it is not known if this represents viral replication occurring outside of the respiratory tract [16]. Although the H7N9 patients had high mortality, there had been no confirmed cases of human-to-human transmission, and most infected humans had a history of contact with poultry or of having visited a wet market, and the outbreak of H7N9 had been controlled by integrative measures including the closedown of the wet markets in the affected areas [17-19]. However, the clinical spectrum of SARS-CoV-2 infection appears to be extensive, encompassing asymptomatic infection, mild upper respiratory symptoms, and spreading by respiratory and fecal–oral transmission. According to the report of world health organization, the epidemic threshold of seasonal influenza was in December around the world, influenza activity decreased overall or returned to baseline levels in March for most temperate regions [20]. Worldwide, seasonal influenza A (H1N1) viruses accounted for the majority of detections. According to the report of China CDC, the mortality of influenza A (H1N1) diseases was less than 0.01% during the epidemic threshold period in china [21]. However, SARS-CoV-2 infections had a higher complication rate and more severe cases than H1N1 patients (Table 1). Furthermore, recent research reported that R0 of COVID-19 might be as high as 6.47 (95% CI 5.71–7.23) [22]. Likely, SARS-CoV-2 activity would not decrease with the change of seasons; long-term control measures are still needed. Neutrophilia was more common in H7N9 and H1N1 patients, compared with COVID-19 cases. It maybe implied that patients with H7N9 and H1N1 were more likely to develop secondary bacterial infections. H7N9 cases had a higher proportion of glucocorticoids and antibiotics therapy. Increasing the risk of secondary infection, glucocorticoids could delay the clearance of coronavirus nucleic acids without lower hospitalization-fatality ratio for patients with H7N9 diseases [23]. Nevertheless, recent research suggested that timely and appropriate use of corticosteroids, together with ventilator support, should be considered for severe patients to prevent ARDS development [24]. According to the chest CT images of COVID-19 patients on admission, the mainly positive findings were various ground-glass densification shadows with multiple diffusions in both lungs, the pros and cons need to be weighed carefully before antibiotics and glucocorticoids treatment. The mean time from illness onset to severity was 8.0 days for COVID-19 and 5.2 days for H7N9, it may imply that there was a therapeutic window that could be exploited, provided comprehensive treatment including an active antiviral agent was available. But, if not treated promptly, the asymptomatic or mild cases may develop severe pneumonia, even end up dead. The therapeutical emphasis of COVID-19 was to antiviral early that would decrease the peak viral load and delay the progression of lung lesions; thus this would reduce the hospitalization-fatality ratio [25].The mean time from illness onset to severity for H7N9 was shorter than COVID-19, the key to controlling disease progression was early detection and timely treatment. Chronic heart disease more frequent in patients hospitalized with COVID-19, compared with H1N1 (Table 1), whereas for severe cases, COVID-19 had the highest prevalence of chronic heart disease than H7N9, which might be associated with increased secretion of ACE2 in the COVID-19 compared with H7N9 and H1N1. SARS-CoV-2 infection is triggered by binding of the spike protein of the virus to ACE2, which is highly expressed in the heart and lungs [26]. There have been hypothesized that the use of ACE-inhibitors and angiotensin receptor 1 blockers (ARBs) may have effect the course of COVID-19 [27, 28]. Nevertheless, further evidence are required before any recommendations are made about starting or withdrawing ACE-inhibitor and ARB medications. The comparisons in this study are limited by a lack of parameters of the transmission dynamics. Further research is still needed if the epidemic features of COVID-19 are similar to Seasonal influenza A H1N1 or not.

Conclusions

The proportion of severe cases were higher for H7N9 and SARS-CoV-2 infections, compared with H1N1.The meantime from illness onset to severity was shorter for H7N9, compared with COVID-19. This may imply that there was a therapeutic window that could be exploited before developing into severe cases. Besides, we found that chronic heart disease was associated with an increased risk of COVID-19 severe cases compared with H7N9 and H1N1. Also, the factor that the mild symptoms may contribute to the pandemic of COVID-19. Furthermore, according to the neutrophil responses and the typical CT findings, SARS-CoV-2 infections were less likely to develop secondary infections, which maybe suggest that the progression of COVID-19 is more insidious. Additional file 1: Table S1. Logistic Regression analysis of Chronic heart disease Additional file 2: Table S2. The number of lobes involved Additional file 3: Table S3. The details of the virus shedding duration of nasopharyngeal swab for COVID-19 and H7N9
  25 in total

1.  Severe respiratory disease concurrent with the circulation of H1N1 influenza.

Authors:  Gerardo Chowell; Stefano M Bertozzi; M Arantxa Colchero; Hugo Lopez-Gatell; Celia Alpuche-Aranda; Mauricio Hernandez; Mark A Miller
Journal:  N Engl J Med       Date:  2009-06-29       Impact factor: 91.245

2.  Duration of viral shedding in patients admitted to hospital with pandemic influenza A/H1N1 2009 infection.

Authors:  Shin Na; Yong Pil Chong; Mi-Na Kim; Won Young Kim; Won Kim; Sang-Bum Hong; Chae-Man Lim; Younsuck Koh; Ji-Won Kwon; Soo-Jong Hong; Sang-Oh Lee; Sang-Ho Choi; Yang Soo Kim; Jun Hee Woo; Sung-Han Kim
Journal:  J Med Virol       Date:  2011-01       Impact factor: 2.327

3.  Dissemination, divergence and establishment of H7N9 influenza viruses in China.

Authors:  Tommy Tsan-Yuk Lam; Boping Zhou; Jia Wang; Yujuan Chai; Yongyi Shen; Xinchun Chen; Chi Ma; Wenshan Hong; Yin Chen; Yanjun Zhang; Lian Duan; Peiwen Chen; Junfei Jiang; Yu Zhang; Lifeng Li; Leo Lit Man Poon; Richard J Webby; David K Smith; Gabriel M Leung; Joseph S M Peiris; Edward C Holmes; Yi Guan; Huachen Zhu
Journal:  Nature       Date:  2015-03-11       Impact factor: 49.962

4.  Adjuvant Corticosteroid Treatment in Adults With Influenza A (H7N9) Viral Pneumonia.

Authors:  Bin Cao; Hainv Gao; Boping Zhou; Xilong Deng; Chengping Hu; Chaosheng Deng; Hongzhou Lu; Yuping Li; Jianhe Gan; Jingyuan Liu; Hui Li; Yao Zhang; Yida Yang; Qiang Fang; Yinzhong Shen; Qin Gu; Xianmei Zhou; Wei Zhao; Zenghui Pu; Ling Chen; Baoxia Sun; Xi Liu; Carol Dukes Hamilton; Lanjuan Li
Journal:  Crit Care Med       Date:  2016-06       Impact factor: 7.598

5.  Epidemiologic characterization of 30 confirmed cases of human infection with avian influenza A(H7N9) virus in Hangzhou, China.

Authors:  Hua Ding; Li Xie; Zhou Sun; Qing-Jun Kao; Ren-Jie Huang; Xu-Hui Yang; Chun-ping Huang; Yuan-Yuan Wen; Jing-Cao Pan; Xiao-Ying Pu; Tao Jin; Xiao-Hong Zhou; Lin Zheng; Jian Li; Feng-Juan Wang
Journal:  BMC Infect Dis       Date:  2014-03-31       Impact factor: 3.090

6.  Risk Factors for Influenza A(H7N9) Disease in China, a Matched Case Control Study, October 2014 to April 2015.

Authors:  Lei Zhou; Ruiqi Ren; Jianming Ou; Min Kang; Xiaoxiao Wang; Fiona Havers; Xiang Huo; Xiaoqing Liu; Qianlai Sun; Yongchao He; Bo Liu; Shenggen Wu; Yali Wang; Haitian Sui; Yongjie Zhang; Shaopei Tang; Caiyun Chang; Lunhui Xiang; Dong Wang; Shiguang Zhao; Suizan Zhou; Tao Chen; Nijuan Xiang; Carolyn M Greene; Yanping Zhang; Yuelong Shu; Zijian Feng; Qun Li
Journal:  Open Forum Infect Dis       Date:  2016-08-30       Impact factor: 3.835

7.  SARS-CoV-2 Viral Load in Upper Respiratory Specimens of Infected Patients.

Authors:  Lirong Zou; Feng Ruan; Mingxing Huang; Lijun Liang; Huitao Huang; Zhongsi Hong; Jianxiang Yu; Min Kang; Yingchao Song; Jinyu Xia; Qianfang Guo; Tie Song; Jianfeng He; Hui-Ling Yen; Malik Peiris; Jie Wu
Journal:  N Engl J Med       Date:  2020-02-19       Impact factor: 91.245

8.  Phase-adjusted estimation of the number of Coronavirus Disease 2019 cases in Wuhan, China.

Authors:  Huwen Wang; Zezhou Wang; Yinqiao Dong; Ruijie Chang; Chen Xu; Xiaoyue Yu; Shuxian Zhang; Lhakpa Tsamlag; Meili Shang; Jinyan Huang; Ying Wang; Gang Xu; Tian Shen; Xinxin Zhang; Yong Cai
Journal:  Cell Discov       Date:  2020-02-24       Impact factor: 10.849

9.  Epidemiological and clinical characteristics and risk factors for death of patients with avian influenza A H7N9 virus infection from Jiangsu Province, Eastern China.

Authors:  Hong Ji; Qin Gu; Li-Ling Chen; Ke Xu; Xia Ling; Chang-Jun Bao; Fen-Yang Tang; Xian Qi; Ying-Qiu Wu; Jing Ai; Gu-Yu Shen; Dan-Jiang Dong; Hui-Yan Yu; Mao Huang; Quan Cao; Ying Xu; Wei Zhao; Yang-Ting Xu; Yu Xia; Shan-Hui Chen; Gen-Lin Yang; Cai-Ling Gu; Guo-Xiang Xie; Ye-Fei Zhu; Feng-Cai Zhu; Ming-Hao Zhou
Journal:  PLoS One       Date:  2014-03-04       Impact factor: 3.240

10.  Characteristics of and Important Lessons From the Coronavirus Disease 2019 (COVID-19) Outbreak in China: Summary of a Report of 72 314 Cases From the Chinese Center for Disease Control and Prevention.

Authors:  Zunyou Wu; Jennifer M McGoogan
Journal:  JAMA       Date:  2020-04-07       Impact factor: 56.272

View more
  9 in total

Review 1.  Signs and symptoms to determine if a patient presenting in primary care or hospital outpatient settings has COVID-19.

Authors:  Thomas Struyf; Jonathan J Deeks; Jacqueline Dinnes; Yemisi Takwoingi; Clare Davenport; Mariska Mg Leeflang; René Spijker; Lotty Hooft; Devy Emperador; Julie Domen; Anouk Tans; Stéphanie Janssens; Dakshitha Wickramasinghe; Viktor Lannoy; Sebastiaan R A Horn; Ann Van den Bruel
Journal:  Cochrane Database Syst Rev       Date:  2022-05-20

2.  Comparison of temporal evolution of computed tomography imaging features in COVID-19 and influenza infections in a multicenter cohort study.

Authors:  Tim Fischer; Yassir El Baz; Giulia Scanferla; Nicole Graf; Frederike Waldeck; Gian-Reto Kleger; Thomas Frauenfelder; Jens Bremerich; Sabine Schmidt Kobbe; Jean-Luc Pagani; Sebastian Schindera; Anna Conen; Simon Wildermuth; Sebastian Leschka; Carol Strahm; Stephan Waelti; Tobias Johannes Dietrich; Werner C Albrich
Journal:  Eur J Radiol Open       Date:  2022-06-24

3.  Comparison of acute respiratory distress syndrome in patients with COVID-19 and influenza A (H7N9) virus infection.

Authors:  Ling Ding; Yikun Chen; Nan Su; Xizhen Xu; Jingping Yin; Jun Qiu; Jiajia Wang; Dong Zheng
Journal:  Int J Infect Dis       Date:  2022-07-03       Impact factor: 12.074

4.  Impact of rhinovirus on hospitalization during the COVID-19 pandemic: A prospective cohort study.

Authors:  Marcelo Comerlato Scotta; Luciane Beatriz Kern; Márcia Polese-Bonatto; Thais Raupp Azevedo; Fernanda Hammes Varela; Gabriela Oliveira Zavaglia; Ingrid Rodrigues Fernandes; Caroline Nespolo de David; Tiago Fazolo; Marcela Santos Corrêa da Costa; Felipe Cotrim de Carvalho; Ivaine Tais Sauthier Sartor; Alexandre Prehn Zavascki; Renato T Stein
Journal:  J Clin Virol       Date:  2022-06-07       Impact factor: 14.481

5.  Efficacy of the combination of modern medicine and traditional Chinese medicine in pulmonary fibrosis arising as a sequelae in convalescent COVID-19 patients: a randomized multicenter trial.

Authors:  Zhen-Hui Lu; Chun-Li Yang; Gai-Ge Yang; Wen-Xu Pan; Li-Guang Tian; Jin-Xin Zheng; Shan Lv; Shao-Yan Zhang; Pei-Yong Zheng; Shun-Xian Zhang
Journal:  Infect Dis Poverty       Date:  2021-03-18       Impact factor: 4.520

6.  Impact of both socioeconomic level and occupation on antibody prevalence to SARS-CoV-2 in an Egyptian cohort: The first episode.

Authors:  Mahmoud M Bahgat; Rola Nadeem; Mohamed H Nasraa; Mona A-E Awad; Solaf Kamel; Dina N Abd-Elshafy
Journal:  J Med Virol       Date:  2021-02-19       Impact factor: 20.693

7.  Comparison of patient characteristics and in-hospital mortality between patients with COVID-19 in 2020 and those with influenza in 2017-2020: a multicenter, retrospective cohort study in Japan.

Authors:  Yuta Taniguchi; Toshiki Kuno; Jun Komiyama; Motohiko Adomi; Toshiki Suzuki; Toshikazu Abe; Miho Ishimaru; Atsushi Miyawaki; Makoto Saito; Hiroyuki Ohbe; Yoshihisa Miyamoto; Shinobu Imai; Tadashi Kamio; Nanako Tamiya; Masao Iwagami
Journal:  Lancet Reg Health West Pac       Date:  2022-01-02

8.  Through Their Eyes: Health Care Worker Compliance With Personal Protective Equipment During the COVID-19 Pandemic.

Authors:  Riley Moore; Alexandra Hayward; Kellee Necaise
Journal:  J Nurs Care Qual       Date:  2021 Oct-Dec 01       Impact factor: 1.728

9.  Comparison of clinical and biochemical features of hospitalized COVID-19 and influenza pneumonia patients.

Authors:  Didem Görgün Hattatoğlu; Birsen P Yıldız
Journal:  J Med Virol       Date:  2021-07-29       Impact factor: 20.693

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.