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Erschienen in: Annals of Intensive Care 1/2020

Open Access 03.08.2020 | COVID-19 | Research

Clinical outcomes of COVID-19 in Wuhan, China: a large cohort study

verfasst von: Jiao Liu, Sheng Zhang, Zhixiong Wu, You Shang, Xuan Dong, Guang Li, Lidi Zhang, Yizhu Chen, Xiaofei Ye, Hangxiang Du, Yongan Liu, Tao Wang, SiSi Huang, Limin Chen, Zhenliang Wen, Jieming Qu, Dechang Chen

Erschienen in: Annals of Intensive Care | Ausgabe 1/2020

Abstract

Background

Since December 2019, an outbreak of Coronavirus disease 2019 (COVID-19) caused by the severe acute respiratory syndrome coronavirus 2 (SARS-Cov-2) initially emerged in Wuhan, China, and has spread worldwide now. Clinical features of patients with COVID-19 have been described. However, risk factors leading to in-hospital deterioration and poor prognosis in COVID-19 patients with severe disease have not been well identified.

Methods

In this retrospective, single-center cohort study, 1190 adult inpatients (≥ 18 years old) with laboratory-confirmed COVID-19 and determined outcomes (discharged or died) were included from Wuhan Infectious Disease Hospital from December 29, 2019 to February 28, 2020. The final follow-up date was March 2, 2020. Clinical data including characteristics, laboratory and imaging information as well as treatments were extracted from electronic medical records and compared. A multivariable logistic regression model was used to explore the potential predictors associated with in-hospital deterioration and death.

Results

1190 patients with confirmed COVID-19 were included. Their median age was 57 years (interquartile range 47–67 years). Two hundred and sixty-one patients (22%) developed a severe illness after admission. Multivariable logistic regression demonstrated that higher SOFA score (OR 1.32, 95% CI 1.22–1.43, per score increase, p < 0.001 for deterioration and OR 1.30, 95% CI 1.11–1.53, per score increase, p = 0.001 for death), lymphocytopenia (OR 1.81, 95% CI 1.13–2.89 p = 0.013 for deterioration; OR 4.44, 95% CI 1.26–15.87, p = 0.021 for death) on admission were independent risk factors for in-hospital deterioration from not severe to severe disease and for death in severe patients. On admission D-dimer greater than 1 μg/L (OR 3.28, 95% CI 1.19–9.04, p = 0.021), leukocytopenia (OR 5.10, 95% CI 1.25–20.78), thrombocytopenia (OR 8.37, 95% CI 2.04–34.44) and history of diabetes (OR 11.16, 95% CI 1.87–66.57, p = 0.008) were also associated with higher risks of in-hospital death in severe COVID-19 patients. Shorter time interval from illness onset to non-invasive mechanical ventilation in the survivors with severe disease was observed compared with non-survivors (10.5 days, IQR 9.25–11.0 vs. 16.0 days, IQR 11.0–19.0 days, p = 0.030). Treatment with glucocorticoids increased the risk of progression from not severe to severe disease (OR 3.79, 95% CI 2.39–6.01, p < 0.001). Administration of antiviral drugs especially oseltamivir or ganciclovir is associated with a decreased risk of death in severe patients (OR 0.17, 95% CI 0.05–0.64, p < 0.001).

Conclusions

High SOFA score and lymphocytopenia on admission could predict that not severe patients would develop severe disease in-hospital. On admission elevated D-dimer, leukocytopenia, thrombocytopenia and diabetes were independent risk factors of in-hospital death in severe patients with COVID-19. Administration of oseltamivir or ganciclovir might be beneficial for reducing mortality in severe patients.
Hinweise
Jiao Liu, Sheng Zhang, Zhixiong Wu, You Shang, Xuan Dong and Guang Li contributed equally to this work

Supplementary information

Supplementary information accompanies this paper at https://​doi.​org/​10.​1186/​s13613-020-00706-3.

Publisher's Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Abkürzungen
COVID-19
Coronavirus disease 2019
SARS-Cov-2
Severe acute respiratory syndrome coronavirus 2
SOFA
Sequential Organ Failure Assessment
CDC
Center for Disease Control and Prevention
ARDS
Acute respiratory distress syndrome
WHO
World Health Organization
ECMO
Extracorporeal membrane oxygenation
CT
Computed tomographic
RT-PCR
Real-time reverse-transcriptase polymerase chain reaction
NIV
Non-invasive mechanical ventilation
IMV
Invasive mechanical ventilation
MERS
Middle East respiratory syndrome
CAP
Community-acquired pneumonia

Introduction

Since December 2019, respiratory tract infection cases caused by virus occurred in Wuhan, Hubei Province, China [1, 2]. At first, a majority of cases was clustered around the local Huanan Seafood Wholesale Market, where wild animals were illegally sold. Then, the disease had rapidly spread from Wuhan to all over the China and to many foreign countries [3]. On Jan 7, the responsible novel coronavirus was identified by the Chinese Center for Disease Control and Prevention (CDC), and was subsequently named as severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2; previously known as 2019-nCoV) by WHO, and pneumonia caused by 2019-nCoV was named COVID-19 [4]. The emerging virus was rapidly characterized as a novel member of the coronavirus family [5].
Some case series have demonstrated the clinical characteristics and epidemiological features of COVID-19 [68]. Clinical manifestations caused by SARS-CoV-2 varied, encompassing asymptomatic infection, pneumonia, acute respiratory distress syndrome (ARDS) and even death [68]. The mortality of patients with severe illness is extremely high [9]. However, risk factors leading to deterioration and poor outcome in severe COVID-19 patients have not been well described. In the present study, the clinical data of 1190 COVID-19 patients admitted in Wuhan Infectious Disease Hospital (discharge or death) were collected to analyze the clinical features and potential predictors for deterioration and/or death in COVID-19 patients. We paid close attention to the issues as below: first, comparing the clinical features between different severity and outcomes, shedding light on the risk factors for mortality and progression prediction; second, comparing the time interval to respiratory supports between survivors and non-survivors, exploring the preferable respiratory support to decrease mortality.

Methods

Study design and participants

This was a single-center, retrospective, observational study conducted from December 29, 2019, to February 28, 2020. A total of 1190 adult (18–94 years) patients with confirmed COVID-19 from Wuhan Infectious Disease Hospital were enrolled. All patients with confirmed COVID-19 enrolled in this study were diagnosed according to World Health Organization (WHO) interim guidance [10]. This study was approved by the Medicine Institutional Review Board of Wuhan Infectious Disease Hospital (KY-2020-03.01). Informed consents were waived from study participants.

Data collection

The epidemiological, demographic, clinical, laboratory data were extracted mostly on admission from medical records. The collected information included age, sex, comorbidities, exposure history, oxygen support during hospitalization (nasal cannula, non-invasive mechanical ventilation, invasive mechanical ventilation or invasive medical ventilation with extracorporeal membrane oxygenation [ECMO]), symptoms onset on admission, vital signs, serum laboratory tests (including blood routine tests, blood chemical variables, procalcitonin, coagulation function tests), chest X-ray and computed tomographic (CT) scans, therapeutic strategy during hospitalization (antivirus treatment [ganciclovir, oseltamivir, arbidol, lopinavir and ritonavir, interferon], antibiotics [cefprozil, ceftriaxone, cefoperazone–sulbactam, piperacillin–tazobactam, biapenem, meropenem, vancomycin, linezolid, sulfamethoxazole, levofloxacin and moxifloxacin], glucocorticoids) and outcomes. Throat-swab specimens from patients with history of epidemiology and characteristics of virus pneumonia in chest CT or X-ray, were obtained. The time interval between two specimens was at least 24 h apart. Detection of 2019-nCoV nucleic acid was performed at the CDC before January 23, 2020, and subsequently at designated hospitals (Chinese Academy of Medical Sciences, Academy of Military Medical Sciences, and Wuhan Institute of Virology of the Chinese Academy of Sciences) as previously described. Patients with at least two consecutive times of positive results from high-throughput sequencing or real-time reverse-transcriptase polymerase chain reaction (RT-PCR) assay of nasal and pharyngeal swab specimens were confirmed with COVID-19. The included patients in the current study were all with determined laboratory results.

Definition

COVID-19 diagnosis was according to WHO interim guidance [10]. The severity of COVID-19 was classified into mild, moderate, severe and critical type. The classification was assessed according to the diagnosis and treatment of COVID-19 guidelines (sixth version) published by the National Health Commission of China [11] (Additional file 1). Progressors were defined as mild or moderate patients who developed severe or critically illness during hospitalization. Non-progressors were defined as mild or moderate patients who never developed severe or critically illness during hospitalization. The disease onset was defined as the day when related symptoms first appeared.

Endpoints

In the present study, the endpoints included in-hospital deterioration and/or death among those with severe disease. The time intervals from symptom onset or admission to high-flow nasal oxygen, non-invasive mechanical ventilation (NIV), invasive mechanical ventilation (IMV), extracorporeal membrane oxygenation (ECMO) were also recorded.

Statistical analysis

Statistical analyses were performed using SPSS (version 24.0, SPSS Inc., Chicago, IL, USA) and SAS (version 9.3, SAS Institute, Cary, NC). Continuously normally distributed data were reported as mean (deviation) and compared using Student’s t test. Continuously non-normally distributed data were reported as median (interquartile range) and compared using Wilcoxon rank-sum test. Categorical data were presented as n (percentage) and compared using Chi-square test, Fisher’s exact test, and Cochran–Mantel–Haenszel test, as appropriate.
The potential risk factors for in-hospital deterioration (from not severe to severe disease) and death particularly in severe COVID-19 patients were determined using univariable and multivariable logistic regression model and displayed as odds ratio (OR) and 95% confidence interval (CI). Variables with a p value of 0.05 or less in the univariable analysis were considered as candidate variables in the multivariable analysis. Due to the statistical rule that the ratio of events and per variable should be ten or more, only 16 variables were finally selected based on the clinical importance. To exclude the possible bias introduced by missing data, we performed a sensitivity analysis using multiple imputations to account for missing data. Five imputations of complete data were generated and refitted into the multivariable logistic regression to test whether a selected variable remained to be the independent factor for illness deterioration and in-hospital mortality.
To evaluate the effects of anti-viral agents on clinical outcomes, we compared the difference of mortality and median survival time between patients who received or not received the anti-viral agents as follows: oseltamivir, ganciclovir, lopinavir–ritonavir, γ-interferon, arbidol. Kaplan–Meier curves and log-rank test were also used for survival analyses. To explore whether a specific anti-viral agent was independently associated with prolonged survival, we used multivariable Cox proportional-hazards model to compute the hazard ratio (HR) for each anti-viral agent by incorporating the same co-variables used in the multivariable logistic regression model for adjustment. A two-sided p value less than 0.05 was defined as statistically significant for all the analyses.

Results

Demographic and clinical characteristics

1190 patients with confirmed COVID-19 were recorded in Wuhan Infectious Disease Hospital during the study period, including 555 (46.6%) females and 635 males (53.4%), with an average age of 57 years (47–67). The flowchart of the current study is shown in Fig. 1. Demographic and clinical details were obtained for all the patients (Table 1). In total, 131 (11.4%) patients had a history of exposure to the Huanan seafood market, 132 (11.2%) were household clustered, and 16 (1.4%) were medical staff. The most commonly self-reported symptoms on admission were fever (n = 971, 81.9%), cough (n = 879, 74.2%), dyspnea (n = 548, 46.3%), fatigue (n = 434, 36.7%) and sputum production (n = 417, 35.2%). 441 (37.1%). Patients had comorbidities, including chronic obstructive pulmonary disease (n = 22, 1.9%), diabetes (n = 144, 12.2%), hypertension (n = 308, 26.1%), chronic cardiac disease (n = 86, 7.3%), chronic kidney disease (n = 30, 2.6%), chronic liver disease (n = 40, 3.4%), stroke (n = 39, 3.3%), malignancy (n = 34, 2.9%), immunosuppression (n = 24, 2.0%), and tuberculosis (n = 15, 1.3%).
Table 1
Clinical characteristics, radiographic, laboratory results of patients with COVID-19
 
All patients (n = 1190)
Survivor (n = 1033)
Non-survivor (n = 157)
p value
Age
Median (IQR), year
57 (47, 67)
56 (46, 65)
69 (62, 77)
< 0.0001
Sex, n (%)
 Female
555 (46.6)
498 (48.2)
57 (36.3)
0.0053
 Male
635 (53.4)
535 (51.8)
100 (63.7)
 
Smoking, n (%)
45 (4.5)
40 (4.6)
5 (3.8)
1
Drinking, n (%)
48 (4.6)
43 (4.7)
5 (3.9)
0.6901
Epidemic disease history, n (%)
 Influenza A
  Negative
1131 (96.5)
987 (96.7)
144 (94.8)
0.4308
  Positive
19 (1.6)
15 (1.5)
4 (2.6)
 
  Unchecked or unknown
22 (1.9)
18 (1.8)
4 (2.6)
 
 Influenza B
  Negative
1133 (96.6)
990 (97.0)
143 (94.1)
0.1257
  Positive
18 (1.5)
13 (1.2)
5 (3.3)
 
  Unchecked or unknown
22 (1.9)
18 (1.8)
4 (2.6)
 
Exposure history, n (%)
 Huanan seafood market
131 (11.4)
125 (12.5)
6 (4.1)
0.0028
 Wuhan exposure
1119 (94.7)
968 (94.2)
151 (98.1)
0.0451
 Other parts of Hubei
56 (5.0)
54 (5.5)
2 (1.4)
0.0373
 Contact with wildlife
17 (1.5)
17 (1.8)
0 (0.0)
0.2238
 Medical staff
16 (1.4)
16 (1.6)
0 (0.0)
0.2446
 Clustered cases
132 (11.2)
118 (11.5)
14 (9.2)
0.6726
Any comorbidity, n (%)
441 (37.1%)
345 (33.4%)
96 (61.15%)
< 0.0001
 Chronic obstructive pulmonary disease
22 (1.9)
14 (1.4)
8 (5.3)
1
 Diabetes
144 (12.2)
105 (10.2)
39 (25.5)
< 0.0001
 Hypertension
308 (26.1)
244 (23.8)
64 (41.8)
< 0.0001
 Chronic cardiac disease
86 (7.3)
61 (6.0)
25 (16.3)
< 0.0001
 Chronic kidney disease
30 (2.6)
24 (2.4)
6 (3.9)
0.38
 Chronic liver disease
40 (3.4)
32 (3.1)
8 (5.2)
0.1779
 Stroke
39 (3.3)
28 (2.7)
11 (7.2)
0.0041
 Malignancy
34 (2.9)
26 (2.5)
8 (5.2)
0.1115
 Immunosuppression
24 (2.0)
15 (1.5)
9 (5.9)
0.0009
 Tuberculosis
15 (1.3)
10 (1.4)
5 (3.3)
0.0475
Signs and symptoms at admission, n (%)
   
 Fever
971 (81.9)
834 (80.9)
137 (89.0)
0.0152
 Median highest temperature (IQR), °C
38.5 (38.0, 39.0)
38.5 (38.0, 39.0)
38.5 (38.0, 39.0)
0.0233
 Nasal congestion
11 (0.9)
8 (0.8)
3 (2.0)
1
 Nasal discharges
16 (1.4)
13 (1.3)
3 (2.0)
0.7521
 Sneeze
5 (0.4)
4 (0.4)
1 (0.7)
0.5019
 Sore throat
39 (3.3)
36 (3.5)
3 (2.0)
0.3171
 Cough
879 (74.2)
751 (72.8)
128 (83.7)
0.0041
 Sputum production
417 (35.2)
352 (34.1)
65 (42.5)
0.0438
 Dyspnoea
548 (46.3)
439 (42.6)
109 (71.2)
< 0.0001
 Chest pain
62 (5.3)
56 (5.5)
6 (3.9)
0.427
 Hemoptysis
14 (1.2)
11 (1.1)
3 (2.0)
0.5846
 Headache
61 (5.2)
59 (5.8)
2 (1.3)
0.0204
 Myalgia
133 (11.3)
116 (11.3)
17 (11.1)
0.937
 Fatigue
434 (36.7)
369 (35.9)
65 (42.5)
0.1128
 Gastrointestinal symptoms
214 (18.2)
189 (18.4)
25 (16.3)
0.5333
 Eye symptoms
23 (2.0)
22 (2.2)
1 (0.7)
0.3502
 Ronchi
57 (4.8)
47 (4.6)
10 (6.5)
0.2953
 Crackles
170 (14.4)
143 (13.9)
27 (17.5)
0.2265
 Systolic pressure
  Median (IQR), mmHg
122 (111, 135)
122 (110, 134)
130.5 (117, 144)
0.0002
 Diastolic pressure
  Median (IQR), mmHg
80 (72, 87)
80 (73, 87)
80 (72, 87)
0.0944
 Heart rate
  Median (IQR), bpm
86 (79, 96)
86 (78, 96)
89 (82, 102)
< 0.0001
 Respiratory rate
    
  Median (IQR), bpm
22 (20, 25)
21 (20, 25)
23 (20, 28)
0.9936
SOFA
3 (1, 5)
2 (1, 4)
10 (6, 18)
< 0.0001
APACHEII
3 (1, 6)
3 (1, 5)
10.5 (8, 17)
< 0.0001
Laboratory findings
 Leucocytes (IQR-109/L)
6.3 (4.6, 9.1)
6.0 (4.5, 8.1)
15.5 (8.9, 21.9)
< 0.0001
 Distribution, n (%)
  < 4
185 (16.1)
171 (16.9)
14 (10.1)
< 0.0001
  4–10
726 (63.0)
702 (69.2)
24 (17.3)
 
  > 10
242 (21.0)
141 (13.9)
101 (72.6)
 
 Neutrophils (IQR-109/L)
4.4 (2.9, 7.3)
4.1 (2.8, 6.2)
14.7 (9.9, 20.3)
< 0.0001
 Distribution, n (%)
  < 1.8
65 (5.8)
61 (6.1)
4 (3.1)
< 0.0001
  1.8–6.3
715 (63.2)
702 (70.2)
13 (10.0)
 
  > 6.3
351 (31.0)
237 (23.7)
114 (87.0)
 
 Lymphocytes (IQR-109/L)
1.2 (0.7, 1.6)
1.2 (0.9, 1.6)
0.5 (0.3, 0.9)
< 0.0001
 Distribution, n (%)
  < 0.8
315 (28.0)
221 (22.2)
94 (72.9)
< 0.0001
  ≥ 0.8
809 (72.0)
774 (77.8)
35 (27.1)
 
 CD3 (IQR-/μL)
618 (427, 964)
647 (468, 991)
367 (267, 409)
< 0.0001
 CD4 (IQR-/μL)
366 (242, 594)
388 (275, 645)
211 (275, 645)
< 0.0001
 CD8 (IQR-/μL)
235 (138, 337)
242 (156, 356)
129 (87, 144)
< 0.0001
 Hemoglobin (IQR-g/L)
120 (109.0, 130.0)
120 (110.0, 130.0)
120 (103.0, 133.0)
0.4723
 Distribution, n (%)
  ≤ 90
54 (4.7)
7 (3.7)
17 (12.8)
< 0.0001
  > 90
1092 (95.3)
976 (96.3)
116 (87.3)
 
 Platelets (IQR-109/L)
193 (143.0, 250.0)
201 (154.0, 256.0)
90.5 (50.0, 165.0)
< 0.0001
 Distribution, n (%)
  < 100
122 (10.6)
49 (4.8)
73 (52.9)
< 0.0001
  ≥ 100
1029 (89.4)
964 (95.2)
65 (47.1)
 
 Prothrombin time (IQR-s)
11.5 (10.7, 12.6)
11.4 (10.6, 12.3)
14 (12.4, 17.5)
< 0.0001
 Distribution, n (%)
  < 10.5
201 (18.0)
197 (20.0)
4 (3.0)
< 0.0001
  10.5–13.5
763 (68.2)
711 (72.3)
52 (38.8)
 
  > 13.5
154 (13.8)
76 (7.7)
78 (58.2)
 
 Activated-partial thromboplastin time (IQR-s)
27.7 (24.3, 32.5)
27.2 (24.2, 31.8)
33.4 (26.1, 38.9)
< 0.0001
 Distribution, n (%)
  < 21
68 (6.1)
61 (6.2)
7 (5.4)
< 0.0001
  21–37
927 (83.4)
847 (86.3)
80 (62.0)
 
  > 37
116 (10.4)
74 (7.5)
42 (32.6)
 
 Thrombin time (IQR, s)
17.9 (16.7, 20.6)
17.8 (16.7, 20.4)
18.4 (17.1, 23.0)
0.0054
 Distribution, n (%)
  < 13
8 (0.7)
8 (0.8)
0 (0.0)
0.0321
  13–21
842 (75.9)
753 (76.7)
89 (69.5)
 
  > 21
260 (23.4)
221 (22.5)
39 (30.5)
 
 D-dimer (IQR, μg/mL)
0.9 (0.4, 2.5)
0.8 (0.4, 1.6)
17.8 (4.5, 56.5)
< 0.0001
 Distribution, n (%)
  ≤ 0.5
323 (29.6)
319 (33.2)
4 (3.1)
< 0.0001
  0.5–1
279 (25.6)
270 (28.1)
9 (6.9)
 
  > 1
489 (44.8)
371 (38.7)
118 (90.9)
 
 Total bilirubin (IQR, μmol/L)
13 (10.1, 17.7)
12.4 (9.8, 16.1)
24.9 (16.6, 36.1)
< 0.0001
 Distribution, n (%)
  ≤ 26
1005 (90.0)
932 (94.8)
73 (54.5)
< 0.0001
  > 26
112 (10.0)
51 (5.2)
61 (45.5)
 
 Alanine aminotransferase (IQR-U/L)
42 (25.0, 66.0)
40 (24.0, 62.0)
47 (31.0, 84.0)
0.0003
 Distribution, n (%)
  ≤ 40
559 (48.8)
508 (50.2)
51 (37.8)
0.0065
  > 40
587 (51.2)
503 (49.8)
84 (62.2)
 
 Aspartate aminotransferase (IQR-U/L)
35 (26.0, 51.0)
33 (25.0, 46.0)
58 (44.0, 109.0)
< 0.0001
 Distribution, n (%)
  ≤ 40
702 (61.2)
680 (67.3)
22 (16.1)
< 0.0001
  > 40
445 (38.8)
330 (32.7)
115 (83.9)
 
 Albumin (IQR, g/L)
31.3 (28.0, 34.7)
32 (29.0, 35.2)
26.15 (24.3, 28.3)
< 0.0001
 Distribution, n (%)
  < 40
1106 (96.2)
966 (95.6)
140 (100.0)
0.0144
  40–55
41 (3.6)
41 (4.1)
0 (0.0)
 
  > 55
3 (0.3)
3 (0.3)
0 (0.0)
 
 Serum prealbumin (IQR-g/L)
125 (80.0, 187.0)
137 (91.0, 194.0)
48.5 (29.5, 75.0)
< 0.0001
 Distribution, n (%)
  < 200
874 (79.2)
748 (76.7)
126 (98.4)
< 0.0001
  200–430
229 (20.8)
227 (23.3)
2 (1.6)
 
 Blood urea nitrogen (IQR-mmol/L)
5.2 (4.1, 6.8)
4.97 (4.0, 6.2)
13.2 (7.7, 20.3)
< 0.0001
 Distribution, n (%)
  < 3.1
81 (7.1)
81 (8.0)
0 (0.0)
< 0.0001
  3.1–8
865 (75.7)
827 (82.1)
38 (28.4)
 
  > 8
196 (17.2)
100 (9.9)
96 (71.6)
 
 Serum creatinine (IQR, μmol/L)
72.6 (59.6, 88.6)
71.5 (59.0, 84.3)
107.8 (69.2, 196.7)
<0.0001
 Distribution, n (%)
  > 133
84 (7.4)
32 (3.2)
52 (39.4)
< 0.0001
  ≤ 133
1051 (92.6)
971 (96.8)
80 (60.6)
 
 Creatine kinase (IQR-U/L)
78 (51.0, 151.0)
73 (49.0, 132.5)
240 (101.0, 553.0)
< 0.0001
 Distribution, n (%)
  < 50
243 (23.7)
236 (25.7)
7 (6.6)
< 0.0001
  50–310
676 (65.9)
619 (67.3)
57 (53.8)
 
  > 310
107 (10.4)
65 (7.0)
42 (39.6)
 
 Creatine kinase isoenzyme MB (IQR-U/L)
14 (10.0, 18.0)
13 (10.0, 17.0)
24 (18.0, 47.0)
< 0.0001
 Distribution, n (%)
  ≤ 24
960 (88.4)
896 (93.3)
64 (50.8)
< 0.0001
  > 24
126 (11.6)
64 (6.7)
62 (49.2)
 
 C-reactive protein (IQR, mg/L)
30.1 (5.7, 92.0)
22.5 (4.3, 67.2)
160 (124.2, 177.1)
< 0.0001
 Distribution, n (%)
  ≤ 6.9
290 (28.4)
287 (32.1)
3 (2.3)
< 0.0001
  > 6.9
731 (71.6)
606 (67.9)
125 (97.7)
 
 Serum amyloid protein A (IQR-mg/L)
190.8 (34.3, 275.9)
178.6 (25.6, 270.3)
260.1 (188.9, 284.0)
< 0.0001
 Distribution, n (%)
  ≤ 10
151 (15.8)
149 (17.5)
2 (1.9)
< 0.0001
  > 10
805 (84.2)
702 (82.5)
103 (98.1)
 
 Serum ferritin (IQR-ng/mL)
406.1 (137.2, 800.8)
384.8 (146.0, 711.8)
616.6 (38.7, 2000.0)
0.0099
 Distribution, n (%)
  < 21.8
36 (4.7)
32 (4.9)
4 (3.6)
0.7535
  21.8–274.6
263 (34.2)
224 (34.1)
39 (34.8)
 
  > 274.6
470 (61.1)
401 (61.0)
69 (61.6)
 
 Interleukin-6 (IQR-pg/mL)
14.45 (8.0, 416.0)
13.2 (7.7, 366.2)
31.9 (11.1, 1487.0)
< 0.0001
 Distribution, n (%)
  ≤ 7
28 (3.4)
25 (3.5)
3 (2.8)
0.909
  > 7
789 (96.6)
684 (96.5)
105 (97.2)
 
Radiologic findings
 Abnormalities, n (%)
 Ground-glass opacity
1027 (92.3)
910 (92.3)
117 (92.1)
0.9474
 Pulmonary consolidation
194 (17.4)
155 (15.7)
39 (30.7)
< 0.0001
 Pulmonary interstitial abnormalities
700 (63.0)
609 (61.8)
91 (71.7)
0.0309
 Pneumothorax
31 (2.8)
24 (2.4)
7 (5.5)
0.0901
 Pleural effusion
49 (4.4)
43 (4.4)
6 (4.7)
0.851
SOFA Sequential Organ Failure Assessment, APACHEII Acute Physiology and Chronic Health Evaluation II, ICU intensive care unit, MV mechanical ventilation
On admission, the conditions of most patients (1102, 92.6%) were not severe, of whom 261 (22.7%) patients progressed into severe disease after admission (median 12 days, IQR 2–15 days). Compared with non-progressors, patients that progressed into a severe disease were older (62 vs. 55 year, p < 0.0001) and more male (60.1% vs. 51.0%, p = 0.0097), had more comorbidities such as diabetes (16.5% vs. 9.8%, p = 0.0033), hypertension (29.7% vs. 22.6%, p = 0.0208), stroke (7.3% vs. 2.2%, p = 0.0001), malignancy (4.7% vs. 2.0%, p = 0.0214) and immunosuppression (4.7% vs. 0.8%, p = 0.0001), and showed more severe initial symptoms, such as dyspnea (60.1% vs. 39.7%, p < 0.0001) and higher heart rate (89 vs. 85 bpm, p = 0.0002) (Table 2).
Table 2
Treatments and clinical outcomes of patients with COVID-19
 
All patients (n = 1190)
Survivor (n = 1033)
Non-survivor (n = 157)
p value
Treatments, n (%)
 Antibiotic
977 (87.7)
859 (87.0)
118 (92.9)
0.0575
 Antifungal
50 (4.5)
35 (3.6)
15 (11.8)
< 0.0001
 Antiviral
681 (61.1)
626 (63.4)
55 (43.3)
< 0.0001
 Glucocorticoids
289(25.9)
213 (21.6)
76 (59.8)
< 0.0001
 Oxygen therapy, n (%)
   
< 0.0001
  None
203 (17.1)
203 (19.7)
0 (0.0)
 
  Nasal cannula
792(66.6)
776 (75.1)
16(10.2)
 
  Mask oxygen
27 (2.3)
19 (1.9)
7 (4.5)
 
  High-flow nasal cannula
60 (5.0)
24 (2.3)
36 (22.9)
 
  Non-invasive mechanical ventilation
62 (5.2)
4 (0.4)
58 (36.9)
 
  Invasive mechanical ventilation
42 (3.5)
6 (0.6)
36 (22.9)
 
  ECMO
4(0.3)
0
4 (2.6)
 
Outcomes
 Duration of MV (IQR), days
5 (2.0, 8.0)
6 (5.0, 9.0)
4 (2.0,8.0)
0.1563
 Duration of ICU stay (IQR), days
6 (3.0, 10.5)
7 (4.0, 11.0)
5 (2.0, 9.0)
0.0522
 Duration of in-hospital stay (IQR), days
11 (7.0, 14.5)
11 (8.0, 15.0)
8 (4.0, 12.0)
< 0.0001
 In-hospital mortality, n (%)
157 (13.2)
0 (0.0)
157 (100.0)
< 0.0001
ECMO extracorporeal membrane oxygenation, ICU intensive care unit, MV mechanical ventilation
A total of 349 severe patients were found including 88 patients who were severe on admission and 261 patients who had an initial not severe disease that progressed to a severe disease during their hospital stay. There were 157 (45.0%) deaths among the 349 severe patients. Non-survivors were older than in survivors (69 vs. 57 year, p < 0.0001). There were more comorbidities including diabetes (25.5% vs. 12.2%, p = 0.0015), hypertension (41.8% vs. 29.0%, p = 0.0127) and chronic cardiac disease (16.3% vs. 6.3%, p = 0.0029) in the non-survivor group than in the survivor group. The major in-hospital complication rates were higher in the non-survivor group than in the survivor group (Additional file 2: Table S1). Compared with survivors, non-survivors presented with more dyspnea (71.2% vs. 55.2%, p = 0.0023) on admission (Table 3).
Table 3
Clinical characteristics, radiographic, laboratory results of the study patients
 
Not severe patients at admission (n = 1102)
Non-progressors (n = 841)
Progressors (n = 261)
p value
Severe patients (n = 349)
Survivor (n = 192)
Non-survivor (n = 157)
p value
Age
 Median (IQR), year
56 (46, 66)
55 (45, 65)
62 (52, 70)
< 0.0001
63 (53, 72)
57 (48, 66)
69 (62, 77)
< 0.0001
 Sex, n (%)
  Female
516 (46.8)
412 (49.0)
104 (39.9)
0.0097
143 (41.0)
86 (44.8)
57 (36.3)
0.1088
  Male
586 (53.2)
429 (51.0)
157 (60.1)
 
206 (59.0)
106 (55.2)
100 (63.7)
 
Smoking, n (%)
40 (4.3)
25 (3.5)
15 (7.2)
1
20 (7.0)
15 (9.9)
5 (3.8)
1
Drinking, n (%)
44 (4.6)
25 (3.3)
19 (8.8)
0.0006
23 (7.9)
18 (11.0)
5 (3.9)
0.0251
Epidemic disease history, n (%)
 Influenza A
  Negative
1045 (96.3)
799 (96.3)
246 (96.5)
0.4315
332 (97.1)
188 (98.9)
144 (94.8)
0.0421
  Positive
19 (1.8)
13 (1.6)
6 (2.3)
 
6 (1.7)
2 (1.1)
4 (2.6)
 
  Unchecked or unknown
21 (1.9)
18 (2.1)
3 (1.2)
 
4 (1.2)
0 (0.00)
4 (2.6)
 
 Influenza B
  Negative
1048 (96.5)
800 (96.3)
248 (97.3)
0.6044
333 (97.4)
190 (100.0)
143 (94.1)
0.0032
  Positive
17 (1.6)
13 (1.5)
4 (1.6)
 
5 (1.5)
0 (0.0)
5 (3.3)
 
  Unchecked or unknown
21 (1.9)
18 (2.2)
3 (1.1)
 
4 (1.1)
0 (0.0)
4 (2.6)
 
Exposure history, n (%)
 Huanan seafood market
126 (11.9)
96 (11.8)
30 (12.2)
0.8499
35 (10.5)
29 (15.7)
6 (4.1)
0.0006
 Wuhan exposure
1032 (94.3)
788 (94.0)
244 (95.3)
0.4385
331 (96.2)
180 (94.7)
151 (98.1)
0.1089
 Other parts of Hubei
55 (5.2)
44 (5.4)
11 (4.6)
0.6121
12 (3.8)
10 (5.7)
2 (1.4)
0.0458
 Contact with wildlife
17 (1.6)
10 (1.2)
7 (3.0)
0.1169
7 (2.2)
7 (4.0)
0 (0.0)
0.0404
 Medical staff
16 (1.5)
16 (1.9)
0 (0.0)
0.0608
0 (0.0)
0 (0.0)
0 (0.0)
1
 Clustered cases
125 (11.5)
88 (10.6)
37 (14.5)
0.1597
44 (12.8)
30 (15.8)
14 (9.2)
0.1736
Any comorbidity, n (%)
383 (34.8)
265 (31.5)
118 (45.2)
< 0.0001
176 (50.4)
80 (41.7)
96 (61.2)
0.0003
 Chronic obstructive pulmonary disease
18 (1.7)
9 (1.1)
9 (3.6)
0.2117
13 (3.8)
5 (2.7)
8 (5.3)
1
 Diabetes
124 (11.4)
82 (9.8)
42 (16.5)
0.0033
62 (18.1)
23 (12.2)
39 (25.5)
0.0015
 Hypertension
265 (24.3)
189 (22.6)
76 (29.7)
0.0208
119 (34.7)
55 (29.0)
64 (41.8)
0.0127
 Chronic cardiac disease
70 (6.4)
49 (5.9)
21 (8.2)
0.1823
37 (10.8)
12 (6.3)
25 (16.3)
0.0029
 Chronic kidney disease
29 (2.7)
20 (2.4)
9 (3.5)
0.3326
10 (2.9)
4 (2.1)
6 (3.9)
0.5022
 Chronic liver disease
37 (3.4)
28 (3.4)
9 (3.5)
0.9165
12 (3.5)
4 (2.1)
8 (5.2)
0.1132
 Stroke
36 (3.3)
18 (2.2)
18 (7.3)
0.0001
21 (6.1)
10 (5.3)
11 (7.2)
0.4595
 Malignancy
29 (2.7)
17 (2.0)
12 (4.7)
0.0214
17 (5.0)
9 (4.7)
8 (5.2)
0.8347
 Immunosuppression
19 (1.8)
7 (0.8)
12 (4.7)
0.0001
17 (5.0)
8 (4.2)
9 (5.9)
0.4695
 Tuberculosis
14 (1.3)
8 (1.0)
6 (2.4)
0.1589
7 (2.1)
2 (1.1)
5 (3.3)
0.2858
Signs and symptoms at admission, n (%)
 Fever
889 (81.0)
671 (80.0)
218 (84.2)
0.1329
300 (86.7)
163 (84.9)
137 (89.0)
0.2684
 Median highest temperature (IQR) °C
38.5 (38.0, 39.0)
38.4 (38.0, 39.0)
38.55 (38.0, 39.0)
0.4549
38.5 (38.0, 39.0)
38.5 (38.0, 39.0)
38.5 (38.0, 39.0)
0.0554
 Nasal congestion
11 (1.0)
5 (0.6)
6 (2.3)
1
6 (1.7)
3 (1.6)
3 (2.0)
1
 Nasal discharges
16 (1.5)
10 (1.2)
6 (2.3)
0.309
6 (1.7)
3 (1.6)
3 (2.0)
1
 Sneeze
5 (0.5)
2 (0.2)
3 (1.2)
0.1646
3 (0.9)
2 (1.0)
1 (0.7)
1
 Sore throat
36 (3.3)
31 (3.7)
5 (1.9)
0.1611
8 (2.3)
5 (2.6)
3 (2.0)
0.9725
 Cough
810 (73.8)
600 (71.4)
210 (81.4)
0.0015
279 (80.9)
151 (78.7)
128 (83.7)
0.2394
 Sputum production
391 (35.6)
282 (33.6)
109 (42.3)
0.0113
135 (39.1)
70 (36.5)
65 (42.5)
0.2546
 Dyspnoea
488 (44.5)
333 (39.7)
155 (60.1)
< 0.0001
215 (62.3)
106 (55.2)
109 (71.2)
0.0023
 Chest pain
57 (5.2)
46 (5.5)
11 (4.3)
0.4294
16 (4.6)
10 (5.2)
6 (3.9)
0.5723
 Hemoptysis
11 (1.0)
8 (1.0)
3 (1.2)
1
6 (1.7)
3 (1.6)
3 (2.0)
1
 Headache
60 (5.5)
52 (6.3)
8 (3.1)
0.0527
9 (2.6)
7 (3.7)
2 (1.3)
0.3106
 Myalgia
126 (11.6)
88 (10.6)
38 (14.7)
0.0684
45 (13.0)
28 (14.6)
17 (11.1)
0.3414
 Fatigue
397 (36.3)
298 (35.6)
99 (38.5)
0.3878
136 (39.5)
71 (37.2)
65 (42.5)
0.3167
 Gastrointestinal symptoms
200 (18.3)
163 (19.5)
37 (14.3)
0.059
51 (14.8)
26 (13.5)
25 (16.3)
0.4669
 Eye symptoms
23 (2.1)
16 (1.9)
7 (2.7)
0.442
7 (2.0)
6 (3.1)
1 (0.7)
0.2175
 Rhonchi
51 (4.6)
33 (3.9)
18 (7.0)
0.0438
24 (6.9)
14 (7.3)
10 (6.5)
0.7715
 Crackles
150 (13.7)
111 (13.2)
39 (15.1)
0.454
59 (17.1)
32 (16.7)
27 (17.5)
0.8315
Systolic pressure
 Median (IQR), mmHg
122 (110, 134)
121 (110, 133)
123 (112, 136)
0.2233
126 (115, 139)
123 (112, 136)
130.5 (117, 144)
0.0201
Diastolic pressure
 Median (IQR), mmHg
80 (72, 87)
80 (72, 88)
80 (72, 87)
0.173
80 (73, 87)
80 (75, 87)
80 (72, 87)
0.2204
Heart rate
 Median (IQR), bpm
86 (79, 96)
85 (78, 95)
89 (80, 100)
0.0002
89 (80, 100)
88 (80, 98)
89 (82, 102)
0.1859
Respiratory rate
 Median (IQR), bpm
21 (20, 25)
21 (20, 24)
22 (20, 26)
0.3707
23 (20, 28)
22 (20, 28)
23 (20, 28)
0.2702
SOFA
2 (1, 5)
2 (0, 14)
4 (2, 8)
< 0.0001
5 (3, 10)
3 (2, 5)
10 (6, 18)
< 0.0001
APACHEII
3 (1, 5)
3 (1, 5)
5 (3, 8)
< 0.0001
6 (3, 10)
5 (2, 7)
10.5 (8, 17)
< 0.0001
Laboratory findings
Leucocytes- (IQR-109/L)
6.1 (4.5, 8.5)
5.8 (4.5, 7.8)
8.1 (5.0, 13.6)
< 0.0001
9.4 (5.8, 15.6)
7.3 (4.8, 10.2)
15.5 (8.9, 21.9)
< 0.0001
Distribution, n (%)
        
 <4
180 (16.8)
145 (17.5)
35 (14.4)
< 0.0001
40 (12.3)
26 (14.0)
14 (10.0)
< 0.0001
 4–10
707 (66.0)
593 (71.6)
114 (46.7)
 
133 (40.9)
109 (58.6)
24 (17.3)
 
 >10
185 (17.2)
90 (10.9)
95 (38.9)
 
152 (46.8)
51 (27.4)
101 (72.7)
 
Hemoglobin (IQR-g/L)
121 (110.0, 131.0)
121 (110.0, 130.0)
119 (108.0, 131.0)
0.1872
118 (107.0, 130.0)
116.5 (108.0, 129.0)
120 (103.0, 133.0)
0.5845
Distribution, n (%)
 ≤ 90
47 (4.4)
27 (3.3)
20 (8.3)
0.0008
27 (8.5)
10 (5.4)
17 (12.8)
0.0191
 >90
1021 (95.6)
800 (96.7)
221 (91.7)
 
292 (91.5)
176 (94.6)
116 (87.2)
 
Platelets (IQR-109/L)
196 (147.0, 253.0)
204 (159.0, 260.0)
153 (105.0, 216.0)
< 0.0001
151.5 (90.5, 208.0)
179.5 (140.0, 241.0)
90.5 (50.0, 165.0)
< 0.0001
Distribution, n (%)
 <100
91 (8.5)
34 (4.1)
57 (23.5)
< 0.0001
88 (27.2)
15 (8.1)
73 (52.9)
< 0.0001
 ≥ 100
979 (91.5)
793 (95.9)
186 (76.5)
 
236 (72.8)
171 (91.9)
65 (47.1)
 
Neutrophils (IQR-109/L)
4.2 (2.8, 6.6)
3.8 (2.7, 5.7)
7.0 (3.6, 13.3)
< 0.0001
8.3 (4.6, 15.1)
5.6 (3.3, 9.1)
14.7 (9.9, 20.3)
< 0.0001
Distribution, n (%)
 < 1.8
65 (6.2)
57 (6.9)
8 (3.4)
< 0.0001
8 (2.6)
4 (2.3)
4 (3.1)
< 0.0001
 1.8–6.3
703 (66.5)
606 (73.5)
97 (41.6)
 
109 (35.5)
96 (54.5)
13 (9.9)
 
 > 6.3
289 (27.3)
161 (19.6)
128 (55.0)
 
190 (61.9)
76 (43.2)
114 (87.0)
 
Lymphocytes (IQR-109/L)
1.2 (0.8, 1.6)
1.3 (0.9, 1.7)
0.8 (0.5, 1.3)
< 0.0001
0.8 (0.4, 1.2)
1.0 (0.6, 1.4)
0.5 (0.3, 0.9)
< 0.0001
Distribution, n (%)
 < 0.8
269 (25.6)
154 (18.8)
115 (49.6)
< 0.0001
161 (53.0)
67 (38.3)
94 (72.9)
< 0.0001
 ≥ 0.8
783 (74.4)
666 (81.2)
117 (50.4)
 
143 (47.0)
108 (61.7)
35 (27.1)
 
 CD3 (IQR-/μL)
626 (445, 964)
710 (470, 1132)
522 (367, 636.)
< 0.0001
522 (364, 659)
562 (427, 793)
367 (267, 409)
0.0004
 CD4 (IQR-/μL)
368 (252, 612)
416 (283, 730)
292 (207, 432)
0.0006
289 (185, 432)
353 (261, 489)
211 (145, 248)
0.0003
 CD8 (IQR-/μL)
237 (139, 337)
269 (188, 400)
155 (114, 252)
<  0.0001
155 (116, 252)
207 (128, 288)
129 (87, 144)
0.0044
 Prothrombin time (IQR-s)
11.4 (10.7, 12.4)
11.3 (10.6, 12.2)
11.9 (11.1, 13.4)
< 0.0001
12.4 (11.3, 13.9)
11.6 (10.0, 12.6)
14 (12.4, 17.5)
< 0.0001
Distribution, n (%)
 <10.5
198 (19.1)
163 (20.4)
35 (14.7)
< 0.0001
38 (11.9)
34 (18.4)
4 (3.0)
< 0.0001
 10.5–13.5
726 (70.0)
580 (72.6)
146 (61.3)
 
183 (57.4)
131 (70.8)
52 (38.8)
 
 >13.5
113 (10.9)
56 (7.0)
57 (24.0)
 
98 (30.7)
20 (10.8)
78 (58.2)
 
Activated-partial thromboplastin time (IQR-s)
27.6 (24.3, 32.2)
27 (23.9, 31.1)
29.9 (25.7, 35.8)
< 0.0001
30 (25.0, 35.8)
29 (24.7, 34.3)
33.4 (26.1, 38.9)
0.0006
Distribution, n (%)
 <21
64 (6.2)
47 (5.9)
17 (7.3)
< 0.0001
21 (6.7)
14 (7.7)
7 (5.4)
< 0.0001
 21–37
870 (84.2)
699 (87.5)
171 (73.1)
 
228 (73.1)
148 (80.9)
80 (62.0)
 
 >37
99 (9.6)
53 (6.6)
46 (19.6)
 
63 (20.1)
21 (11.4)
42 (32.6)
 
Thrombin time (IQR-s)
17.8 (16.7, 20.6)
17.7 (16.7, 20.0)
18.4 (17.1, 22.4)
< 0.0001
18.4 (17.1, 21.7)
18.3 (17.1, 21.3)
18.4 (17.1, 23.0)
0.5313
Distribution, n (%)
 <13
8 (0.8)
8 (1.0)
0 (0.0)
0.0044
0 (0.0)
0 (0.0)
0 (0.0)
0.4132
 13–21
782 (75.7)
618 (77.4)
164 (70.1)
 
224 (72.0)
135 (73.8)
89 (69.5)
 
 >21
243 (23.5)
173 (21.6)
70 (29.9)
 
87 (28.0)
48 (26.2)
39 (30.5)
 
 D-dimer (IQR-μg/mL)
0.8 (0.4, 1.9)
0.74 (0.4, 1.4)
1.38 (0.5, 9.4)
< 0.0001
2.21 (0.7, 18.1)
0.95 (0.5, 2.8)
17.83 (4.5, 56.5)
< 0.0001
Distribution, n (%)
 ≤ 0.5
322 (31.9)
268 (34.5)
54 (23.2)
< 0.0001
55 (17.5)
51 (27.9)
4 (3.1)
< 0.0001
0.5–1
271 (26.8)
227 (29.2)
44 (18.9)
 
52 (16.6)
43 (23.5)
9 (6.9)
 
 >1
417 (41.3)
282 (36.3)
135 (57.9)
 
207 (65.9)
89 (48.6)
118 (90.0)
 
 Total bilirubin (IQR-μmol/L)
12.7 (9.9, 17.0)
12.1 (9.6, 15.6)
16 (11.7, 24.9)
< 0.0001
16.7 (11.9, 26.4)
14.05 (11.0, 18.4)
24.9 (16.6, 36.1)
< 0.0001
Distribution, n (%)
 ≤ 26
954 (91.8)
777 (95.8)
177 (77.6)
< 0.0001
228 (74.5)
155 (90.1)
73 (54.5)
< 0.0001
 >26
85 (8.2)
34 (4.2)
51 (22.4)
 
78 (25.5)
17 (9.9)
61 (45.5)
 
 Alanine aminotransferase ( (IQR-U/L)
41.5 (25.0, 64.0)
38 (23.0, 60.0)
51 (34.0, 83.0)
< 0.0001
50 (32.0, 79.0)
50 (33.0, 75.0)
47 (31.0, 84.0)
0.7016
Distribution, n (%)
 ≤ 40
524 (49.2)
436 (52.9)
88 (36.5)
< 0.0001
123 (38.3)
72 (38.7)
51 (37.8)
0.8654
 >40
542 (50.8)
389 (47.1)
153 (63.5)
 
198 (61.7)
114 (61.3)
84 (62.2)
 
Aspartate aminotransferase (IQR-U/L)
34 (26.0, 49.0)
31 (24.0, 44.0)
46.5 (34.0, 72.0)
< 0.0001
48 (35.0, 74.0)
40 (31.0, 57.0)
58 (44.0, 109.0)
< 0.0001
Distribution, n (%)
 ≤ 40
679 (63.7)
584 (70.9)
95 (39.3)
< 0.0001
118 (36.5)
96 (51.6)
22 (16.1)
< 0.0001
 >40
387 (36.3)
240 (29.1)
147 (60.7)
 
205 (63.5)
90 (48.4)
115 (83.9)
 
 Albumin (IQR-g/L)
31.7 (28.5, 35.0)
32.4 (29.6, 35.7)
28.3 (26.0, 31.5)
< 0.0001
28 (25.5, 30.7)
29.5 (27.4, 32.3)
26.2 (24.3, 28.3)
< 0.0001
Distribution, n (%)
 <40
1024 (95.9)
780 (94.7)
244 (100.0)
0.0003
326 (100.0)
186 (100.0)
140 (100.0)
1
 40–55
41 (3.8)
41 (5.0)
0 (0.0)
 
0 (0.0)
0 (0.0)
0 (0.0)
 
 >55
3 (0.3)
3 (0.3)
0 (0.0)
 
0 (0.0)
0 (0.0)
0 (0.0)
 
 Blood urea nitrogen (IQR-mmol/L)
5 (4.0, 6.4)
4.8 (3.8, 5.8)
6.5 (5.0, 10.2)
< 0.0001
7.2 (5.4, 11.7)
6.1 (4.7, 7.7)
13.2 (7.7, 20.3)
< 0.0001
Distribution, n (%)
 <3.1
81 (7.6)
74 (9.0)
7 (2.9)
< 0.0001
7 (2.2)
7 (3.8)
0 (0.0)
< 0.0001
 3.1–8
838 (78.6)
688 (83.6)
150 (61.7)
 
177 (55.5)
139 (75.1)
38 (28.4)
 
 >8
147 (13.8)
61 (7.4)
86 (35.4)
 
135 (42.3)
39 (21.1)
96 (71.6)
 
 Serum creatinine (IQR-umol/L)
72.4 (59.4, 87.2)
70.9 (59.0, 83.0)
78.8 (62.5, 104.0)
< 0.0001
79.6 (63.0, 109.8)
73.9 (59.5, 91.6)
107.8 (69.2, 196.7)
< 0.0001
Distribution, n (%)
 >133
65 (6.1)
24 (2.9)
41 (16.9)
< 0.0001
60 (18.9)
8 (4.3)
52 (39.4)
< 0.0001
 ≤ 133
995 (93.9)
794 (97.1)
201 (83.1)
 
257 (81.1)
177 (95.7)
80 (60.6)
 
 Creatine kinase (IQR-U/L)
76 (50.0, 141.0)
71 (49.0, 123.0)
123 (54.0, 247.0)
< 0.0001
124.5 (55.5, 274.5)
89 (48.0, 196.0)
240 (101.0, 553.0)
< 0.0001
Distribution, n (%)
 <50
235 (24.4)
190 (25.2)
45 (21.5)
< 0.0001
53 (19.5)
46 (27.7)
7 (6.6)
< 0.0001
 50–310
640 (66.5)
517 (68.6)
123 (58.9)
 
159 (58.4)
102 (61.5)
57 (53.8)
 
 >310
88 (9.1)
47 (6.2)
41 (19.6)
 
60 (22.1)
18 (10.8)
42 (39.6)
 
 Creatine kinase isoenzyme MB (IQR-U/L)
13 (10.0, 17.0)
13 (10.0, 16.0)
17 (13.0, 24.0)
< 0.0001
18 (14.0, 27.0)
15 (12.0, 20.0)
24 (18.0, 47.0)
< 0.0001
Distribution, n (%)
        
 ≤ 24
921 (90.8)
747 (95.3)
174 (75.7)
< 0.0001
213 (70.5)
149 (84.7)
64 (50.8)
< 0.0001
 >24
93 (9.2)
37 (4.7)
56 (24.3)
 
89 (29.5)
27 (15.3)
62 (49.2)
 
Serum prealbumin (IQR-g/L)
132 (85.0, 191.0)
144 (98.0, 201.0)
86 (48.0, 132.0)
< 0.0001
78 (44.5, 122.5)
105.5 (70.5, 152.5)
48.5 (29.5, 75.0)
< 0.0001
Distribution, n (%)
 <200
799 (77.9)
588 (74.0)
211 (91.3)
< 0.0001
286 (92.9)
160 (88.9)
126 (98.4)
0.0013
 200–430
227 (22.1)
207 (26.0)
20 (8.7)
 
22 (7.1)
20 (11.1)
2 (1.6)
 
 Serum amyloid protein A (IQR-mg/L)
186 (28.9, 272.3)
151.6 (20.6, 259.1)
242.4 (177.4, 284.0)
< 0.0001
246.45 (180.4, 284.0)
241.2 (132.4, 284.0)
260.1 (188.9, 284.0)
0.0103
Distribution, n (%)
        
 ≤ 10
150 (16.9)
140 (20.0)
10 (5.4)
< 0.0001
11 (4.3)
9 (6.0)
2 (1.9)
0.2075
 >10
737 (83.1)
560 (80.0)
177 (94.6)
 
245 (95.7)
142 (94.0)
103 (98.1)
 
C-reactive-protein (IQR-mg/L)
25.6 (4.9, 79.1)
18.4 (3.8, 54.4)
86.25 (22.3, 160.0)
< 0.0001
102.5 (37.6, 160.0)
52.4 (12.1, 103.0)
160 (124.2, 177.1)
< 0.0001
Distribution, n (%)
        
 ≤ 6.9
287 (30.2)
259 (35.4)
28 (12.8)
< 0.0001
31 (10.7)
28 (17.4)
3 (2.3)
< 0.0001
 >6.9
663 (69.8)
473 (64.6)
190 (87.2)
 
258 (89.3)
133 (82.6)
125 (97.7)
 
Serum ferritin (IQR-ng/mL)
377.72 (133.72, 723.96)
344.66 (136.53, 625.70)
557.58 (79.26, 1264.47)
0.0002
618.13 (150.31, 1503.90)
647.98 (245.35, 1193.72)
616.55 (38.68, 2000.00)
0.8666
Distribution, n (%)
        
 <21.8
35 (5.0)
27 (5.2)
8 (4.4)
0.0931
9 (3.6)
5 (3.6)
4 (3.6)
0.1069
 21.8-274.6
247 (35.1)
192 (36.9)
55 (30.0)
 
71 (28.5)
32 (23.4)
39 (34.8)
 
 > 274.6
421 (59.9)
301 (57.9)
120 (65.6)
 
169 (67.9)
100 (73.0)
69 (61.6)
 
Interleukin-6 (IQR-pg/mL)
14.0 (7.8, 398.8)
14.6 (7.8, 354.4)
13.3 (8.0, 648.4)
0.1783
13.9 (8.4, 660.9)
10.5 (7.2, 458.0)
31.9 (11.1, 1487.0)
< 0.0001
Distribution, n (%)
        
 ≤ 7
28 (3.7)
20 (3.4)
8 (4.6)
0.4741
8 (3.4)
5 (4.0)
3 (2.8)
0.8896
 > 7
729 (96.3)
563 (96.6)
166 (95.4)
 
226 (96.6)
121 (96.0)
105 (97.2)
 
Radiologic findings
        
 Abnormalities, n (%)
        
 Ground-glass opacity
958 (92.3)
734 (91.9)
224 (93.7)
0.3444
293 (93.3)
176 (94.1)
117 (92.1)
0.4881
 Pulmonary consolidation
171 (16.5)
106 (13.3)
65 (27.2)
< 0.0001
88 (28.0)
49 (26.2)
39 (30.7)
0.383
 Pulmonary interstitial abnormalities
646 (62.3)
471 (59.0)
175 (73.2)
< 0.0001
229 (72.9)
138 (73.8)
91 (71.7)
0.6749
 Pneumothorax
26 (2.5)
18 (2.3)
8 (3.4)
0.3437
13 (4.1)
6 (3.2)
7 (5.5)
0.3147
 Pleural effusion
44 (4.2)
33 (4.1)
11 (4.6)
0.7505
16 (5.1)
10 (5.4)
6 (4.7)
0.8053
SOFA Sequential Organ Failure Assessment, APACHEII Acute Physiology and Chronic Health Evaluation II

Radiologic and laboratory findings

A total of 1027 (92.3%) patients had findings of ground-glass opacity on radiographic imaging, 700 (63.0%) patients had interstitial abnormalities. Complex radiologic features such as consolidation (27.2% vs. 13.3%, p < 0.0001) and interstitial changes (73.2% vs. 59.0%, p < 0.0001) and abnormal laboratory results such as hyperleukocytosis (38.9% vs. 10.9%, p < 0.0001), lymphocytopenia (49.6% vs. 18.8%, p < 0.0001), thrombocytopenia (23.5% vs. 4.1%, p < 0.0001) and hypercoagulability (APTT, PT, TT, D-dimer, all p < 0.0001) occurred more in progressors than in non-progressors. There were no significant differences in IL-6 level between the two groups (14.6 pg/ml in non-progressors vs. 13.3 pg/ml in progressors, p = 0.178). Abnormal results of laboratory tests (e.g., hyperleukocytosis [71.7% vs. 27.4%, p < 0.0001], lymphocytopenia [72.9% vs. 38.3%, p < 0.0001], lower CD4 count [211/μL vs. 353/μL, p = 0.0003], thrombocytopenia [52.9% vs. 8.1%, p < 0.0001], hypercoagulability especially elevated D-dimer [90.1% vs. 48.6%, p < 0.0001]) were also common in non-survivors (Tables 1, 2).

Treatment

During hospitalization, most (n = 987, 82.9%) of patients received oxygen therapy, including nasal cannula (n = 792, 66.6%), mask oxygen inhalation (n = 27, 2.3%), high-flow nasal cannula (n = 60, 5.0%), non-invasive mechanical ventilation (n = 62, 5.2%), invasive mechanical ventilation (n = 42, 3.5%) and ECMO (n = 4, 0.3%, Table 2). 10.2% (n = 16) severe patients who suddenly died treated with nasal cannula, 4.5% (n = 7) dead severe patients treated with mask oxygen inhalation, 22.9% (n = 36) dead severe patients treated with high-flow nasal cannula, 36.9% (n = 58) dead severe patients treated with non-invasive mechanical ventilation, 22.9% (n = 36) with invasive mechanical ventilation and 2.6% (n = 4) with ECMO. Among not severe patients, 259 (99.2%) patients received oxygen therapy in the progression group vs. 640 (76.1%) in the non-progression group (p < 0.0001). Compared with the survivors with severe disease, significantly more non-survivors received non-invasive mechanical ventilation, invasive mechanical ventilation and ECMO (62.4% vs. 4.7%, p < 0.0001) and antiviral treatment (71.8% vs. 43.3% p < 0.0001). More remarkably, there were more non-survivors treated with glucocorticoids (59.8% vs. 39.7%, p = 0.0005) among severe patients (Table 4).
Table 4
Treatments during hospital stay and clinical outcomes of the study patients
 
Not severe patients at admission (n = 1102)
Non-progressors (n = 841)
Progressors (n = 261)
p value
Severe patients (n = 349)
Survivor (n = 192)
Non-survivor (n = 157)
p value
Treatments, n (%)
 Antibiotic
905 (87.1)
690 (84.9)
215 (95.1)
< 0.0001
287 (95.4)
169 (97.1)
118 (92.9)
0.0865
 Antifungal
44 (4.2)
22 (2.7)
22 (9.7)
< 0.0001
28 (9.3)
13 (7.5)
15 (11.8)
0.2005
 Antiviral
654 (63.0)
501 (61.6)
153 (67.7)
0.0943
180 (59.8)
125 (71.8)
55 (43.3)
< 0.0001
 Glucocorticoids
251 (24.2)
144 (17.7)
107 (47.4)
< 0.0001
145 (48.2)
69 (39.7)
76 (59.8)
0.0005
 Oxygen therapy, n (%)
   
< 0.0001
   
< 0.0001
  None
203 (18.4)
201 (23.9)
2 (0.8)
 
2 (0.6)
2 (1.0)
0
 
  Nasal cannula
792 (71.9)
634 (75.4)
158 (60.5)
 
158 (45.3)
142 (74.0)
16 (10.2)
 
  Mask oxygen
17 (1.5)
4 (0.5)
13 (5.0)
 
23 (6.6)
16 (8.3)
7 (4.5)
 
  High-flow nasal cannula
25 (2.3)
1 (0.1)
24 (9.2)
 
59 (16.9)
23 (12.0)
36 (22.9)
 
  Non-invasive mechanical ventilation
34 (3.1)
0 (0.0)
34 (13.0)
 
62 (17.8)
4 (2.1)
58 (36.9)
 
  Invasive mechanical ventilation
28 (2.5)
1 (0.1)
27 (10.3)
 
41 (11.8)
5 (2.6)
36 (22.9)
 
  ECMO
3 (0.3)
0 (0.0)
3 (1.2)
 
4 (1.2)
0 (0.0)
4 (2.6)
 
Outcomes
 Duration of MV (IQR), days
4 (2.0, 8.0)
0
4 (2.0, 8.0)
 
5 (2.0, 8.0)
6 (5.0, 9.0)
4 (2.0, 8.0)
0.1563
 Duration of ICU stay (IQR), days
0
0
6 (3.0, 10.0)
 
6 (3.0, 10.5)
7 (4.0, 11.0)
5 (2.0, 9.0)
0.0522
 Duration of in-hospital stay (IQR), days
11 (8.00, 15.00)
11 (8.0, 14.0)
12 (8.0, 16.0)
0.0021
11 (7, 16)
14 (10.0, 18.0)
8 (4.0, 12.0)
< 0.0001
 In-hospital mortality, n (%)
91 (8.26)
0 (0.0)
91 (34.9)
< 0.0001
157 (45.0)
0 (0.0)
157 (100.0)
< 0.0001
ECMO extracorporeal membrane oxygenation, ICU intensive care unit, MV mechanical ventilation
Nine hundred and seventy-seven (87.7%) patients were treated with empirical antibiotic treatment (e.g., ceftriaxone, moxifloxacin and azithromycin), 681 (61.1%) antiviral therapy (e.g., oseltamivir, ganciclovir, lopinavir/ritonavir, arbidol and interferon), and 289 (25.9%) glucocorticoids. Empirical antibiotic treatment, antiviral therapy and glucocorticoids on admission were also given more commonly to progressors than to non-progressors (Tables 2, 4).

Outcomes

Two hundred and sixty-one (22.7%) patients without severe condition on admission progressed to severe pneumonia. To analyze the associations between patients’ variables and disease development, a multivariate analysis was performed. As shown in Fig. 2a, independent risk factors for development from not severe to severe disease were presence of pulmonary consolidation (OR 2.59, 95% CI 1.61–4.18, p < 0.001), SOFA score on admission (OR 1.32, 95% CI 1.22–1.43, p < 0.001), lymphocytopenia (OR 1.81, 95% CI 1.13–2.89, p = 0.013) and thrombocytopenia (OR 2.39, 95% CI 1.13–5.03, p = 0.022). Of note, the deterioration of disease cannot be prevented by glucocorticoids (OR 3.79, 95% CI 2.39–6.01, p < 0.001), but could be prevented by NIV. Independent risk factors for death among all the included patients are shown in Additional file 3: Table S2.
Among severe patients, 192 survived and 157 died. Figure 3b shows the survival curve. The risk of death was more than 11 times higher in patients with diabetes than those without diabetes (OR 11.16, 95% CI 1.87–66.57, p = 0.008; Fig. 2b). Other significant independent risk factors for mortality were on admission SOFA score (OR 1.30, 95% CI 1.11–1.53, p = 0.001), leukocytopenia (OR 5.10, 95% CI 1.25–20.78, p = 0.023), lymphocytopenia (OR 4.44, 95% CI 1.26–15.87, p = 0.021), thrombocytopenia (OR 8.37, 95% CI 2.04–34.44, p = 0.003) and elevated D-dimer (OR 3.28, 95% CI 1.19–9.04, p = 0.021, Fig. 4). Survival curves of severe patients according to those mortality predictors are shown in Fig. 5. In a multivariate analysis, antiviral treatment during hospital stay was negatively associated with death (OR 0.17, 95% CI 0.05–0.64, p = 0.008) among severe patients with COVID-19. In order to figure out which of them made the major contribution to prolong survival, we conducted survival analysis and found the administration of oseltamivir (HR 0.21, 95% CI 0.10–0.43; p < 0.001) or ganciclovir (HR 0.20, 95% CI 0.07–0.55, p < 0.001) appeared to have reduced the risk of death in severe patients (Fig. 5).
The time interval from disease onset to high-flow nasal cannula, non-invasive mechanical ventilation, invasive mechanical ventilation in survivors with severe disease was 12 day (IQR, 10–17), 11 days (IQR, 9–11), 19 days (IQR 19–41), respectively. However, the time interval from admission to high-flow nasal cannula was 12 days (IQR, 9–17), to non-invasive mechanical ventilation was 16 days (IQR, 11–19), to invasive mechanical ventilation was 18 days (IQR, 13–21) and to ECMO was 22 days (IQR, 22–25) in non-survivors with severe disease. The time interval from admission to high-flow nasal cannula was 1 day (IQR, 0–3), to non-invasive mechanical ventilation was 1 day (IQR, 1–2), to invasive mechanical ventilation was 4 days (IQR, 3–29) in the survivors with severe disease. In the non-survivors with severe disease, the time interval from disease onset to high-flow nasal cannula, non-invasive mechanical ventilation, invasive mechanical ventilation and ECMO was 1 day (IQR, 0–5), 2 days (IQR, 0–5), 6 days (IQR 2–9) and 12 (9–18), respectively (Fig. 6).

Discussion

This retrospective cohort study included a very large number of COVID-19 patients reported clinical outcomes and potential risk factors for development from not severe to severe manifestations after admission, as well as those who progressed from severe disease to death. In particular, higher SOFA score, lymphocytopenia on admission were independent risk factors for development to severe manifestations and death. On admission, level of D-dimer greater than 1 μg/L and diabetes were associated with higher risks of in-hospital death in patients with severe COVID-19. Administration of glucocorticoids seemed to increase the risk of deterioration to severe disease after admission. Anti-virus drugs (ganciclovir, oseltamivir) seemed to be associated with less deterioration from not severe to severe disease and from severe disease to death. Moreover, early IMV may be helpful to decrease mortality in severe patients. The risk factors presented in the current study may be helpful for clinicians to early identify patients who will probably progress to severe illness during in-hospital stay. Early interventions could be given to decrease mortality in COVID-19 patients with abnormal biological results. However, the benefits of anti-virus drugs should be interpreted with caution in the absence of data from randomized controlled studies.
COVID-19 patients with Acute Respiratory Distress Syndrome (ARDS) are severe, therefore the respiratory support of COVID-19 patients is essential to decrease mortality. However, there is still controversy regarding the prognosis of COVID-19 after the initiation of mechanical ventilation [12]. Also it is still necessary to explore that if invasive mechanical ventilation could improve outcome of COVID-19 patients when compared to non-invasive mechanical ventilation [13]. The present results show that time interval from admission to non-invasive mechanical ventilation in survivors with severe disease was shorter compared with that in non-survivors with severe disease. COVID-19 patients may acquire prognostic benefit from early respiratory support. Since frequent monitoring is needed during process of non-invasive mechanical ventilation, non-invasive mechanical ventilation treatment should be used with caution in resource-limited settings.
The SOFA score is an important marker to indicate the severity of multiple organ dysfunction [14]. Although the common pathogen to cause sepsis or septic shock is bacteria, virus also causes sepsis particularly in community-acquired pneumonia [15]. In the present study, higher SOFA score on admission increases the risk of death of severe COVID-19 patients. This is consistent with previous results [16]. A recent study suggested that the spike protein of SARS-CoV-2 has a strong affinity to human angiotensin-converting enzyme 2 (ACE 2) for host infection [17]. The SARS-CoV-2 spike protein directly binds with the host cell surface ACE2 receptor facilitating virus entry and replication. ACE2 was expressed in many organs, and is rich in lungs, heart, kidneys and intestine [18]. Therefore, organ injuries caused by SARS-CoV-2 are extensive and become highly lethal because the virus deregulates an organ protective pathway [19].
Presence of comorbidities was found to be an independent predictor of poor outcome in our patients. Previous history of cardiovascular diseases (CVD) is independent associated with increased all-cause mortality and in-hospital deterioration COVID-19 patients [20]. This may be related with enhanced severity of an underlying CVD by occurrence of COVID-19. The prognostic effect of diabetes mellitus has been previously reported in other cohorts of patients with Middle East respiratory syndrome (MERS) [21] and SARS [22]. The prognostic relationship between diabetes mellitus and acute viral respiratory infections has been already identified [23]. Diabetes mellitus has also been identified as a prognostic factor for death in patients with community-acquired pneumonia (CAP) [24]. This is consistent with the fact that diabetes could predispose patients to be immunologically vulnerable [25]. The innate immunity is impaired through suppression of the number and function of T cells and neutrophils in diabetic patients [26]. Secondary infections are common in diabetic patients due to impaired inflammatory and immune biomarker profiles [27]. The counts of T cells including CD3 T cells, CD4 T cells and CD8 T cells decreased in non-survivors of COVID-19 in the present study. All these findings indirectly argue in favor of the role of diabetes mellitus as a prognostic factor in our patients. However, the direct influence of diabetes mellitus on SARS-Cov-2 infection still needs to be elucidated.
Lymphocytopenia was found as a potential predictor for disease development and death. Thrombocytopenia and leukocytosis also occurred in the severe cases. This may suggest that enhanced inflammation and cytokine storm started from the initial stage. These biological abnormalities were previously observed in patients with severe MERS-CoV-infected patients [28]. Cytokines are mostly secreted from neutrophils. In patients with MERS, lung injury was correlated with migration of neutrophils and macrophages from peripheral blood to extensive pulmonary [29, 30]. ARDS caused by cytokine storm was a leading cause of death in patients with Middle East respiratory syndrome [31]. In our study, only serum IL-6 level has been quantified in some of the COVID-19 patients. However, it is difficult to clarify the influence of cytokine storm on outcome due to missing of IL-6 and other cytokines data.
D-dimer produced by fibrin degradation, reflects the severity of hyper-coagulable state [32]. Coagulation could be activated to enhance physiological response to several infections [33]. Microvascular failure and subsequent multiple organ failure could be alleviated through inhibiting activation of coagulation and subsequently improve outcome during systemic hyperinflammation and fulminant sepsis [34]. D-dimer was previously found to be associated with pneumonia progression [35] and in-hospital mortality [36]. The association between elevated D-dimer level with lethal outcome of COVID-19 patients was also reported in a previous study [16]. ACE 2 is also expressed on vascular endothelial cells [37]. Thus, one can postulate that coagulation is activated due to high affinity of SARS-CoV-2 with vascular endothelial cells. This can potentially contribute to elevated D-dimer level.
This study has several limitations. First, some laboratory data were missing or not available due to the retrospective data extraction. It should be noted that if important laboratory parameters (such as cardiac troponin, lactic dehydrogenase) were not included in the multivariable analyses, it may cause bias for results. However, we used CK-MB as an alternative indicator of cardiac injury. In addition, we also performed a sensitivity analysis using multiple imputations to account for missing data. The results did not change significantly before or after multiple imputations. Second, benefits of anti-virus drugs on mortality were observed in this study, but we could not further analyze the reason. The mixed virus infection of COVID-19 patients administered with anti-virus drugs should be further explored. Third, although the current study included over 1100 patients from Wuhan Infectious Disease Hospital, still there is a lack of dynamic change for related indicators. Fourth, treatment with methylprednisolone was harmful for not severe patients, however, the dose and duration of methylprednisolone varied, detailed results failed to demonstrate. However, this was the largest cohort study of COVID-19 patients from Wuhan Infectious Disease Hospital until now. A large multi-center cohort study of patients with COVID-19 pneumonia needs to further explore the clinical characteristics and risk factors of the disease.

Conclusions

In this cohort study, higher SOFA score and lymphocytopenia on admission could predict that not severe patients would develop severe disease in-hospital. Elevated D-dimer on admission, leukocytopenia, thrombocytopenia and diabetes were independent risk factors of in-hospital death in severe patients with COVID-19. These specific characteristics will help clinicians to clarify the progression and the poor prognosis of COVID-19 patients.

Supplementary information

Supplementary information accompanies this paper at https://​doi.​org/​10.​1186/​s13613-020-00706-3.

Acknowledgements

We thank all the staff in Wuhan Infectious Disease Hospital to take care of COVID-19 patients, and all the patients and their families included in the current study.
This study was approved by the Medicine Institutional Review Board of Wuhan Infectious Disease Hospital (KY-2020-03.01).
Not applicable.

Competing interests

The authors declare that they have no competing interests.
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Metadaten
Titel
Clinical outcomes of COVID-19 in Wuhan, China: a large cohort study
verfasst von
Jiao Liu
Sheng Zhang
Zhixiong Wu
You Shang
Xuan Dong
Guang Li
Lidi Zhang
Yizhu Chen
Xiaofei Ye
Hangxiang Du
Yongan Liu
Tao Wang
SiSi Huang
Limin Chen
Zhenliang Wen
Jieming Qu
Dechang Chen
Publikationsdatum
03.08.2020
Verlag
Springer International Publishing
Schlagwort
COVID-19
Erschienen in
Annals of Intensive Care / Ausgabe 1/2020
Elektronische ISSN: 2110-5820
DOI
https://doi.org/10.1186/s13613-020-00706-3

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