Literature DB >> 32345311

Clinical determinants for fatality of 44,672 patients with COVID-19.

Guangtong Deng1,2,3,4, Mingzhu Yin1,2,3,4, Xiang Chen1,2,3,4, Furong Zeng5,6,7,8.   

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Year:  2020        PMID: 32345311      PMCID: PMC7187660          DOI: 10.1186/s13054-020-02902-w

Source DB:  PubMed          Journal:  Crit Care        ISSN: 1364-8535            Impact factor:   9.097


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Using meta-analysis to explore clinical determinants for death of COVID-19 patients has been a problem due to insufficient sample size and overlapped cases [1]. In the study, we re-analyzed the largest confirmed case series reported publicly by the Chinese center for disease control and prevention (44,672 laboratory confirmed cases updated through February 11, 2020, [2]), to explore the clinical risk factors associated with death. The basic characteristics between survivors and non-survivors with COVID-19 were presented in Table 1. Among a total of 44,672 patients with laboratory confirmation of SARS-CoV-2 infection, 1023 (2.3%) patients were dead as of February 11, 2020, the last day of follow-up. The fatality rate was increasing with ages and even up to 14.8% in patients aged above 80 years old (see Fig. 1a). The prevalence of COVID-19 between men and women was pretty close (51.4% vs. 48.6%), which is different from previous report (58.1% vs. 41.9%) [3]. Notably, the fatality rate of male patients was significantly higher than that of female patients (RR = 1.67, 95%CI = 1.47–1.89, p < 0.001) (see Fig. 1b). Furthermore, cardiovascular disease (RR = 6.75, 95%CI = 5.40–8.43, p < 0.001), hypertension (HR = 4.48, 95%CI = 3.69–5.45, p < 0.001), diabetes (RR = 4.43, 95%CI = 3.49–5.61, p < 0.001), respiratory disease (RR = 3.43, 95%CI = 2.42–4.87, p < 0.001), and cancers (RR = 2.926, 95%CI = 1.34–6.41, p = 0.006) were the risk factors for fatality of patients with COVID-19.
Table 1

Characteristics between survivors and non-survivors with COVID-19

CharacteristicsTotal (n = 44,672)Non-survivors (n = 1023)Survivors (n = 43,649)Fatality (%)RR (95%CI)p
Age, n (%)
 0–416 (0.9%)0416 (0.9%)0
 10–549 (1.2%)1 (0.1%)548 (1.3%)0.2
 20–3619 (8.1%)7 (0.7%)3612 (8.3%)0.2
 30–7600 (17.0%)18 (1.8%)7582 (17.4%)0.2
 40–8571 (19.2%)38 (3.7%)8533 (19.5%)0.4
 50–10,008 (22.4%)130 (12.7%)9878 (22.6%)1.3
 60–8583 (19.2%)309 (30.2%)8274 (19.0%)3.6
 70–3918 (8.8%)312 (30.5%)3606 (8.3%)8.0
 ≥ 801408 (3.2%)208 (20.3%)1200 (2.7%)14.8
Severity*, n (%)
 Mild/moderate36,160 (80.9%)036,160 (82.8%)0
 Severe6168 (13.8%)06168 (14.1%)0
 Critical2087 (4.7%)1023 (100%)1064 (2.4%)49.0
Gender, n (%)
 Male22,981 (51.4%)653 (63.8%)22,328 (51.2%)2.81.67 (1.47–1.89)< 0.001
 Female21,691 (48.6%)370 (36.2%)21,321 (48.8%)1.7
Comorbidity#, n (%)
 Hypertension2683 (12.8%)161 (39.7%)2522 (12.3%)6.04.48 (3.69–5.45)< 0.001
 Diabetes1102 (5.3%)80 (19.7%)1022 (5.0%)7.34.47 (3.49–5.61)< 0.001
 Cardiovascular disease873 (4.2%)92 (22.7%)781 (3.8%)10.56.75 (5.40–8.43)< 0.001
 Respiratory disease511 (2.4%)32 (7.9%)479 (2.3%)6.33.43 (2.42–4.87)< 0.001
 Cancer107 (0.5%)6 (1.5%)101 (0.5%)5.62.93 (1.34–6.41)0.006

*Missing data (n = 257 in survivors group)

#Missing data (n = 617 in the non-survivors group, n = 23,073 in the survivors group)

Fig. 1

Fatality rate distribution of age (a) and gender (b). ***p < 0.001

Characteristics between survivors and non-survivors with COVID-19 *Missing data (n = 257 in survivors group) #Missing data (n = 617 in the non-survivors group, n = 23,073 in the survivors group) Fatality rate distribution of age (a) and gender (b). ***p < 0.001 In summary, we found that there was no difference in the prevalence of COVID-19 between men and women, but male patients had a nearly 1.7-fold higher risk of death than female patients. Moreover, we concluded that patients with comorbidities had a significantly high death risk. Admittedly, due to the unavailability of individual patient data, we could not exclude the influence of age on the conclusion because old patients were more likely to have the underlying comorbidities. We would like to provide a reminder to the physicians that more intensive surveillance or treatment should be considered for male patients and those with comorbidities. Further and larger studies are needed to validate the findings.
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