| Literature DB >> 32679593 |
Shanen Jin1, Yiyang Jin2, Bai Xu3, Jun Hong4, Xianghong Yang4.
Abstract
BACKGROUND: The aim of this meta-analysis is to assess the prevalence of coagulation dysfunction in Chinese COVID-19 patients and to determine the association of coagulopathy with the severity and prognosis of COVID-19.Entities:
Mesh:
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Year: 2020 PMID: 32679593 PMCID: PMC7724576 DOI: 10.1055/s-0040-1714369
Source DB: PubMed Journal: Thromb Haemost ISSN: 0340-6245 Impact factor: 5.249
Fig. 1Flow chart of the process to screen and select the 22 studies included in this meta-analysis.
Clinical characteristics of COVID-19 inpatients included in the selected Chinese studies
| Author and year | Number of case | study population | Age | Sex (male %) | Mortality (%) | ICU admission (%) | Underlying disease | Severe cases (%) |
|---|---|---|---|---|---|---|---|---|
|
Tang et al 2020
| 183 | Inpatient: 21 deaths,162 survivors | 54.1 (16.2) | 53.6 | 21 (11.5) | NA | 75 (41) | NA |
|
Zhang et al 2020
| 95 | Inpatient: 32 severe, 63 nonsevere | 49 (39–58) | 44.2 | NA | NA | NA | 32 (33.68) |
|
Liu et al 2020
| 78 | Inpatient: 8 severe, 70 nonsevere | 38 (33–57) | 50 | NA | NA | 20 (25.6) | 8 (10.3) |
|
Tang et al 2020
| 449 | Inpatient: all severe | 65.1 (12) | 59.7 | NA | NA | 272 (60.6) | 449 (100) |
|
Shi et al 2020
| 416 | Inpatient: 82 with cardiac injury, 334 without cardiac injury | 64 | 49.3 | 57 (13.7) | NA | NA | NA |
|
Yang et al 2020
| 149 | Inpatient: 14 severe,135 nonsevere | 45.11 (13.35) | 54.4 | 0 | 0 | 52 (34.9) | 14 (9.4) |
|
Chen et al 2020
| 274 | Inpatient: 113 deaths,161 recovered | 62 (44–70) | 62 | 113 | NA | 133 (49) | NA |
|
Wang et al 2020
| 138 | Inpatient: 36 ICU admission,102 non-ICU | 56 (42–68) | 54.3 | NA | 36 (26.1) | 64 (46.4) | NA |
|
Zhang et al 2020
| 140 | Inpatient: 82 severe, 58 nonsevere | 57 (25–87) | 50.7 | NA | NA | 90 (64.3) | 58 (41.43) |
|
Deng et al 2020
| 225 | Inpatient: 109 deaths,116 recovered | 54 (47–65) | 55.11 | NA | NA | 127 (56.44) | 104 (46.22) |
|
Yang et al 2020
| 52 | Inpatient: all ICU admission, 20 survivors, 32 nonsurvivors | 59.7 (13.3) | 67 | 32 (61.5) | 52 (100) | 21 (40) | NA |
|
Zhou et al 2020
| 191 | Inpatient: 54 deaths,137 recovered (72 moderate, 66 severe, 53 critical) | 56 (46–67) | 62 | 54 (28.3) | 50 (26) | 91 (48) | 119 (62.3) |
|
Cao et al 2020
| 102 | Inpatient: 17 nonsurvivors, 85 survivors | 54 (37–67) | 52 | 17 (16.7) | 18 (17.6) | 47 (46.12) | NA |
|
Wan et al 2020
| 135 | Inpatient: 40 severe, 95 nonsevere | 47 (36–55) | 53.3 | 1 (0.7) | NA | 43 (31.9) | 40 (29.6) |
|
Huang et al 2020
| 41 | Inpatient: 13 ICU admission, 28 non-ICU | 49 (41–58) | 73 | 6 (15) | 13 (32) | 13 (32) | NA |
|
Wang et al 2020
| 339 | Elderly inpatient: 65 deaths 274 survivors (100 moderate, 159 severe, 80 critical) | 69 (65–76) | 49 | 65 (19.2) | NA | 206 (60.7) | 239 (70.5) |
|
Cai et al 2020
| 298 | Inpatient: 58 severe, 240 nonsevere | 47.5 (33–61) | 48.66 | 3 (1.03) | 30 (10.1) | 102 (34.23) | 58 (19.5) |
|
Qian et al 2020
| 91 | Inpatient: 9 severe, 82 nonsevere | 50 (36.5–57) | 40.66 | 0 | 9 (9.89) | 26 (28.57) | 9 (9.89) |
|
Chen et al 2020
| 99 | Inpatient: 23 ICU admission, 76 non-ICU | 55.5 (13.1) | 68 | 11 | 23 (23) | 50 (51) | NA |
|
Han et al 2020
| 94 | Inpatient: 49 moderate, 35 severe, 10 critical | NA | 51 | NA | NA | NA | NA |
|
Wu et al 2020
| 201 | Inpatient: 84 with ARDS, 117 without ARDS | 51 (43–60) | 63.7 | 44 (21.9) | 53 (26.4) | 66 (32.8) | 117 (58.21) |
|
Guan et al 2020
| 1,099 | Inpatient: 173 severe, 926 nonsevere | 47 (35–58) | 58.1 | 15 (1.4) | 59 (5.37) | 261 (23.7) | 173 (15.74) |
Abbreviations: ARDS, adult respiratory distress syndrome; ICU, intensive care unit.
Coagulation indicators of COVID-19 in patients included in the selected Chinese studies
| Author and year | Time of measurement taken | PT normal range(s) | PT (s) | APTT normal range(s) | APTT (s) | D-dimer (µg/mL) | Fibrinogen (g/L) | Platelet (×109/L) | Elevated D-dimer (%) | Decreased PLT (%) | DIC (%) |
|---|---|---|---|---|---|---|---|---|---|---|---|
|
Tang et al 2020
| Hospital admission | 11.5–14.5 | 13.7 (13.1–14.6) | 29–42 | 41.6 (36.9–44.5) | 0.66 (0.38–1.50) | 4.55 (3.66–5.17) | NA | NA | NA | 16 (8.74) |
|
Zhang et al 2020
| NA | NA | NA | NA | NA | NA | NA | NA | 32 (33.68) | 11 (11.6) | NA |
|
Liu et al 2020
| Hospital admission | NA | NA | NA | NA | 0.42 (0.20–1.08) | NA | 169.1 (57.26) | NA | NA | NA |
|
Tang et al 2020
| Hospital admission | 11.5–14.5 | 15.2 (5) | 29–42 | NA | 1.94 (0.9–9.44) | NA | 215 (100) | NA | NA | NA |
|
Shi et al 2020
| NA | NA | NA | NA | NA | NA | NA | 207 (153–265) | NA | NA | NA |
|
Yang et al 2020
| Hospital admission | 10–13.5 | 12.2 (1.53) | 22–36 | 33.29 (4.98) | 0.22 (0.28) | NA | 174.5 (78.25) | 21 (14.09) | 20 (13.42) | NA |
|
Chen et al 2020
| NA | 11.5–14.5 | 14.3 (13.4–15.4) | 29–42 | 30.8 (36.6–44.3) | 1.1 (0.5–3.2) | NA | 179 (133–235) | 37 (15) | NA | 21 (8) |
|
Wang et al 2020
| Hospital admission | 9.4–12.5 | 13 (12.3–13.7) | 25.1–36.5 | 31.4 (29.4–33.5) | 0.2 (0.12–0.4) | NA | 163 (123–191) | NA | NA | NA |
|
Zhang et al 2020
| Hospital admission | NA | NA | NA | NA | 0.2 (0.1–0.5) | NA | NA | 35 (43.2) | NA | NA |
|
Deng et al 2020
| Hospital admission | NA | NA | NA | NA | NA | NA | NA | NA | NA | 7 (3.11) |
|
Zhou et al 2020
| NA | NA | 11.6 (10.6–13.0) | NA | NA | 0.8 (0.4–3.2) | NA | 206 (155–262) | 72 (42) | NA | NA |
|
Cao et al 2020
| Hospital admission | NA | NA | NA | NA | 195 (133–432) | NA | NA | NA | NA | NA |
|
Wan et al 2020
| Hospital admission | NA | 10.9 (10.5–11.4) | NA | 26.9 (24.7–29) | 0.4 (0.2–0.6) | NA | 158 (131–230) | NA | NA | NA |
|
Huang et al 2020
| Hospital admission | NA | 11.1 (10.1–12.4) | NA | 27.0 (24.2–34.1) | 0.5 (0.3–1.3) | NA | 164.5 (131.5–263) | NA | 2 (5) | NA |
|
Wang et al 2020
| Hospital admission | 9.00–13.0 | 12.1 (11.6–12.7) | 25–31.3 | 28.5 (26.2–31.3) | 1.2 (0.62–3.25) | NA | 205 (151–259) | NA | NA | NA |
|
Cai et al 2020
| Hospital admission | NA | NA | NA | NA | 0.38 (0.26–0.56) | NA | NA | 99 (36.1) | NA | NA |
|
Qian et al 2020
| Hospital admission | NA | NA | NA | NA | 0.3 (0.11–0.45) | 3.4 (2.7–4.04) | 196 (142–238) | 22 (24.18) | 10 (10.99) | NA |
|
Chen et al 2020
| Hospital admission | 10.5–13.5 | 11.3 (1.9) | 21–37 | 27.3 (10.2) | 0.9 (0.5–2.8) | NA | 213.5 (79.1) | 36 (36) | 12 (12) | NA |
|
Han et al 2020
| Hospital admission | NA | 12.43 (1) | NA | 29.01 (2.93) | 10.36 (25.31) | 5.02 (1.53) | 33.83 (82.28) | NA | NA | NA |
|
Wu et al 2020
| Hospital admission | 10.5–13.5 | 11.1 (10.2–11.9) | 21–37 | 28.7 (23.3–33.7) | 0.61 (0.35–1.28) | NA | 180 (137–241) | NA | NA | NA |
|
Guan et al 2020
| Hospital admission | NA | NA | NA | NA | NA | NA | 168 (132–207) | 260 (46.4) | NA | NA |
Abbreviations: APTT, activated partial thromboplastin time; DIC, disseminated intravascular coagulation; PLT, platelet; PT, prothrombin time.
Fig. 2( A ) Forest plot of the average PT of COVID-19 patients measured in the ratio to the upper limit of the laboratory-specific normal range. ( B ) Forest plot of the average APTT of COVID-19 patients measured in the ratio to the upper limit of the laboratory-specific normal range. ( C ) Forest plot of average fibrinogen of COVID-19 patients. Heterogeneity is defined based on the I 2 index calculated, and random effect models are used to pool the database on the heterogeneity. APTT, activated partial thromboplastin time; PT, prothrombin time.
Fig. 3( A ) Forest plot of average platelet count of COVID-19 patients. ( B ) Forest plot of average proportion of COVID-19 patients with decreased platelet count. Heterogeneity is defined based on the I 2 index calculated. A random effect model is used to pool the average platelet count data, and a fixed effect model is used to pool the decreased platelet count database on the level of heterogeneity.
Fig. 4( A ) Forest plot of average D-dimer concentration of COVID-19 patients. ( B ) Forest plot of average proportion of COVID-19 patients with elevated D-dimer concentration. Heterogeneity is defined based on the I 2 index calculated, and random effect models are used to pool the database on the heterogeneity.
Fig. 5( A ) Forest plot of mean difference of PT of severe patients compared with nonsevere patients. ( B ) Forest plot of mean difference of APTT of severe patients compared with nonsevere patients. ( C ) Forest plot of mean difference of D-dimer concentration of severe patients compared with nonsevere patients. ( D ) Forest plot of mean difference of platelet count of severe patients compared with nonsevere patients. Heterogeneity is defined based on the I 2 index calculated, and random effect models are used to pool the database on the heterogeneity. APTT, activated partial thromboplastin time; PT, prothrombin time.
Fig. 6( A ) Forest plot of mean difference of PT of nonsurvivors compared with survivors. ( B ) Forest plot of mean difference of APTT of nonsurvivors compared with survivors. ( C ) Forest plot of mean difference of D-dimer concentration of nonsurvivors compared with survivors. ( D ) Forest plot of mean difference of platelet count of nonsurvivors compared with survivors. Heterogeneity is defined based on the I 2 index calculated, and random effect models are used to pool the database on the heterogeneity. APTT, activated partial thromboplastin time; PT, prothrombin time.
Fig. 7( A ) Forest plot of average DIC incidence of COVID-19 patients. ( B ) Forest plot of log risk ratio of DIC incidence in nonsurvivors compared with survivors. Heterogeneity is defined based on the I 2 index calculated. A random effect model is used to pool the average DIC incidence data, and a fixed effect model is used to pool the data that compares DIC incidence in nonsurvivors and survivors based on the level of heterogeneity. DIC, disseminated intravascular coagulation.