| Literature DB >> 35049185 |
Hongjun Zhao1, Zhoubin Zhang2, Wenhui Lun1, Zongqiu Chen2, Xiaoxiao Lu3, Jingrong Li2, Fuman Qiu1, Shunming Li2, Chun Mao1, Ying Lu2, Jinbin Chen1, Qing He2, Jiachun Lu1, Zhicong Yang2.
Abstract
ABSTRACT: The severe acute respiratory syndrome coronavirus 2 has caused a worldwide pandemic. Control measures differ among countries and have a varying degree of effectiveness, which requires assessment. To evaluate the effectiveness of public health interventions of the coronavirus disease 2019 (COVID-19) in Guangzhou by 3 periods according to interventions: January 7 to 22 (no intervention), January 23 to February 23 (implemented intensive interventions), and February 24 to May 17 (the normalization mode of COVID-19 prevention and control).We collected the information of 745 COVID-19 patients and their close contacts as well as control measures in Guangzhou from January 7 to May 17, 2020. We estimated the epidemiological characteristics, disease spectrum of COVID-19 cases, key time-to-event intervals, and effective reproduction number over the 3 periods. The basic reproduction number of severe acute respiratory syndrome coronavirus 2 was also calculated over period 1.Approximately 45.8%, 49.8%, and 4.4% of cases from close contacts were asymptomatic, symptomatic, and severe, respectively. The median incubation period was 5.3 days (the percentiles of 2.5-97.5, 1.5-18.4 days) and the median serial interval fitted with gamma distribution was 5.1 days (the percentiles of 2.5-97.5, 0.8-15.9 days). The estimated median of onset-to-quarantined time in Period 1 to 3 were 7.5, 3.4, and 2.9 days (the percentiles of 2.5-97.5, 2.1-14.2, 3.9-14.7, and 6.0-20.0 days) respectively and the median of onset-to-confirmation time in period 1 to 3 were 8.9, 4.9 and 2.4 days (the percentiles of 2.5-97.5, 2.6-16.6, 0.9-14.6, and 0.5-11.8 days). In period 1, the reproduction number was 0.9 (95% confidence interval, 0.5-1.4) and fluctuated below 1.0 before January 22 except for January 14. The effective reproduction number gradually decreased in the period 2 with the lowest point of 0.1 on February 20, then increased again since March 27 and reach a spike of 1.8 on April 12. The number decreased to below 1.0 after April 17 and decreased further to <0.2 after May 7 in the period 3.Under prospective dynamic observation, close contacts turned into infected cases could provide a spectrum of COVID-19 cases from real-world settings. The lockdown of Wuhan and closed-loop management of people arriving Guangzhou were effective in halting the spread of the COVID-19 cases to Guangzhou. The spread of COVID-19 was successfully controlled in Guangzhou by social distancing, wearing a face mask, handwashing, disinfection in key places, mass testing, extensive contact tracing, and strict quarantine of close contacts.Entities:
Mesh:
Year: 2021 PMID: 35049185 PMCID: PMC9191374 DOI: 10.1097/MD.0000000000027846
Source DB: PubMed Journal: Medicine (Baltimore) ISSN: 0025-7974 Impact factor: 1.817
Figure 1Temporal and spatial distribution of COVID-19 cases in Guangzhou, China, 2020. (A) The time distribution of COVID-19 cases by date of confirmation and onset; (B) the time distribution of imported and local cases by date of confirmation; (C) the time distribution of imported and local cases by date of onset; (D) location of Guangzhou and Wuhan, China; (E) spatial distribution of COVID-19 cases rate per million people across Guangzhou, China.
Characteristics of laboratory-confirmed COVID-19 cases in Guangzhou from Jan 7 to May 17, 2020.
| Characteristics | Total (n = 745) No./total no.(%) | Primary cases (n = 496) No./total no.(%) | Infected close contacts (n = 249) No./total no.(%) | |
| Gender, female | 324/745 (43.5%) | 206/496 (41.5%) | 118/249 (47.4%) | .15 |
| Age, Mean (SD) | 38.8 (16.9) | 38.7 (16.2) | 39.0 (18.2) | .84 |
| Region | .16 | |||
| China | 560/745 (75.2%) | 383/496 (77.2%) | 177/249 (71.1%) | |
| Africa | 157/745 (21.1%) | 100/496 (20.2%) | 57/249 (22.9%) | |
| Asia (out of China) | 5/745 (0.7%) | 3/496 (0.6%) | 2/249 (0.8%) | |
| Europe | 12/745 (1.6%) | 4/496 (0.8%) | 8/249 (3.2%) | |
| North America | 8/745 (1.1%) | 4/496 (0.8%) | 4/249 (1.6%) | |
| Oceania | 1/745 (0.1%) | 1/496 (0.2%) | 0/249 (0.0%) | |
| South America | 2/745 (0.3%) | 1/496 (0.2%) | 1/249 (0.4%) | |
| Cases type | <.01 | |||
| Imported cases | 438/745 (58.8%) | 336/496 (67.7%) | 102/249 (41.0%) | <.01 |
| Imported from Hubei | 214/438 (48.9%) | 162/336 (48.2%) | 52/102 (50.1%) | |
| Out of Hube (in China) | 53/438 (12.1%) | 29/336 (8.6%) | 24/102 (24.4%) | |
| Imported from overseas | 171/438 (39.0%) | 145/336 (43.2%) | 26/102 (25.5%) | |
| Local cases | 307/745 (41.2%) | 160/496 (32.3%) | 147/249 (59.0%) | <.01 |
| Associated with imported cases from Hubei | 63/307 (20.5%) | 19/160 (11.9%) | 44/147 (29.9%) | |
| Associated with imported cases from overseas | 208/307 (67.8%) | 116/160 (72.5%) | 92/147 (62.6%) | |
| Infected source cases unknown | 36/307 (11.7%) | 25/160 (15.6%) | 11/147 (8.1%) | |
| Cluster | 419/745 (56.2%) | 195/496 (39.3%) | 224/249 (90.0%) | <.01 |
| Household cluster | 342/419 (81.6%) | 161/195 (82.6%) | 181/224 (80.8%) | .64 |
| Case of severity | .01 | |||
| Asymptoms | 275/745 (36.9%) | 161/496 (32.5%) | 114/249 (45.8%) | |
| Symptoms | 412/745 (55.3%) | 288/496 (58.0%) | 124/249 (49.8%) | |
| Severe | 57/745 (7.7%) | 46/496 (9.3%) | 11/249 (4.4%) | |
| Death | 1/745 (0.1%) | 1/496 (0.2%) | 0 | |
| Time from onset to diagnosis, mean (SD) | 4.5 (4.4) | 5.2 (4.7) | 3.22 (3.3) | <.01 |
| Time from onset to quarantine, mean (SD) | 1.9 (5.2) | 2.9 (5.4) | -0.29 (4.0) | <.01 |
Key time-to-event intervals for laboratory-confirmed COVID-19 cases by different periods, as of May 17, 2020.
| Percentiles | |||||||||
| N | Mean (95% CI) | SD | 2.5th | 25th | 50th | 75th | 97.5th | ||
| Incubation period,∗ d | 102 | 6.51 (5.62–7.40) | 4.58 | 1.54 | 3.47 | 5.33 | 8.17 | 18.44 | |
| Serial interval,† d | 123 | 5.95 (5.24–6.66) | 3.99 | 0.84 | 3.02 | 5.08 | 7.95 | 15.92 | |
| Onset-to-quarantined, d | |||||||||
| Whole period | 392 | 5.36 (4.81–5.91) | 5.53 | 0.7 | 2.1 | 3.72 | 6.62 | 19.79 | – |
| Period 1 | 78 | 7.63 (6.93–8.33) | 3.15 | 2.09 | 5.32 | 7.46 | 9.74 | 14.19 | Ref |
| Period 2 | 197 | 4.49 (3.95–5.03) | 3.9 | 0.78 | 2.04 | 3.39 | 5.62 | 14.73 | <.0001 |
| Period3 | 117 | 4.66 (3.57–5.75) | 6.02 | 0.41 | 1.47 | 2.86 | 5.57 | 19.89 | <.0001 |
| Onset-to-confirmation, d | |||||||||
| Whole period | 660 | 5.07 (4.67∼5.47) | 5.19 | 0.67 | 2 | 3.54 | 6.27 | 18.64 | – |
| Period 1 | 78 | 9.10 (8.29∼9.91) | 3.63 | 2.62 | 6.45 | 8.93 | 11.55 | 16.59 | Ref |
| Period 2 | 255 | 5.63 (5.19∼6.07) | 3.62 | 0.9 | 2.97 | 4.87 | 7.47 | 14.61 | <.0001 |
| Period3 | 327 | 3.33 (2.98∼3.68) | 3.21 | 0.49 | 1.39 | 2.4 | 4.15 | 11.75 | <.0001 |
Figure 2Key time-to-event distributions of COVID-19 cases in Guangzhou, China, 2020. The vertical dashed lines represent the medians of the best-fitted distribution. (A) Comparison between the best-fitting distributions of serial interval and incubation period distribution; (B) comparison between the best-fitting distributions of the onset-to-quarantine and of the onset-to-confirmed for whole period; (C) comparison between the best-fitting distributions of the onset-to-quarantine for 3 periods; (D) comparison between the best-fitting distributions of the onset-to-confirmed for 3 periods.
Figure 3The effective reproduction number estimates based on laboratory-confirmed COVID-19 cases and public health control measures in Guangzhou. (A) The time distribution of imported and local cases by date of onset; (B) results were shown since January 14, calculated for the whole period (from January 14 to May 17) over 7-day moving average. The black horizontal line indicated R = 1, below which sustained transmission is unlikely so long as public health control measures were sustained, indicating that the outbreak is under control. The 95% credible intervals (CI) were presented as light bule shading. Daily estimates of R with 95% CrIs were shown in Supplementary Table 6, Supplemental Digital Content.