Literature DB >> 34540315

Early reports of epidemiological parameters of the COVID-19 pandemic.

Keeley Allen1, Amy Elizabeth Parry1, Kathryn Glass1.   

Abstract

BACKGROUND: The emergence of a new pathogen requires a rapid assessment of its transmissibility, to inform appropriate public health interventions.
METHODS: The peer-reviewed literature published between 1 January and 30 April 2020 on COVID-19 in PubMed was searched. Estimates of the incubation period, serial interval and reproduction number for COVID-19 were obtained and compared.
RESULTS: A total of 86 studies met the inclusion criteria. Of these, 33 estimated the mean incubation period (4-7 days) and 15 included estimates of the serial interval (mean 4-8 days; median length 4-5 days). Fifty-two studies estimated the reproduction number. Although reproduction number estimates ranged from 0.3 to 14.8, in 33 studies (63%), they fell between 2 and 3. DISCUSSION: Studies calculating the incubation period and effective reproduction number were published from the beginning of the pandemic until the end of the study period (30 April 2020); however, most of the studies calculating the serial interval were published in April 2020. The calculated incubation period was similar over the study period and in different settings, whereas estimates of the serial interval and effective reproduction number were setting-specific. Estimates of the serial interval were shorter at the end of the study period as increasing evidence of pre-symptomatic transmission was documented and as jurisdictions enacted outbreak control measures. Estimates of the effective reproduction number varied with the setting and the underlying model assumptions. Early analysis of epidemic parameters provides vital information to inform the outbreak response. (c) 2021 The authors; licensee World Health Organization.

Entities:  

Mesh:

Year:  2021        PMID: 34540315      PMCID: PMC8421745          DOI: 10.5365/wpsar.2020.11.3.011

Source DB:  PubMed          Journal:  Western Pac Surveill Response J        ISSN: 2094-7321


Coronavirus disease 2019 (COVID-19) presents an enormous challenge to public health. By 18 April 2020, 140 million cases had been reported across 222 countries and areas, with an estimate of 3 million people having died. () The overwhelming attention placed on COVID-19 and the volume of research published in the early months of this pandemic (over 4100 papers in PubMed to the end of April 2020) create challenges for public health responders attempting to understand the epidemiology of this disease. There is a need to distil and synthesize the findings that are most relevant to inform public health interventions. Estimates of the transmission parameters of a pathogen are required as soon as practicable, to inform the public health response. With known pathogens, public health responders can use data and estimates from previous outbreaks to make evidence-based decisions. However, with an emerging pathogen, such as severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), past outbreaks may provide limited utility; hence, epidemic parameters must be estimated from early cases and detected transmission events. A successful outbreak response is informed by rapid data collection and analysis, to understand the dynamics of disease spread and identify appropriate, informed interventions. Understanding disease transmission of a new pathogen requires knowledge of the incubation period, serial interval and reproduction number. The basic reproduction number is the expected or average number of secondary cases that result from one infected person if no individuals in the population are immune to the pathogen and no measures are in place to reduce spread. In practice, pathogens rarely propagate freely through a population because individuals change their behaviour or governments enact public health interventions. The effective reproduction number is the expected or average number of secondary cases in a population where some individuals are immune or interventions to limit spread are in place. The distribution of the incubation period is crucial for determining the length of quarantine for potentially exposed individuals and travellers. (-) Estimates of the serial interval provide public health responders with an idea of the time available to identify and isolate potential cases before they can spread the disease to others. (, ) The reproduction number of a disease provides a population-wide estimate of the scale of a potential outbreak and a baseline to test the effectiveness of different interventions in limiting disease transmission. (-) Although highly influential, early estimates of the incubation period, serial interval and reproduction number are generally based on small sample sizes that may not be representative of the wider population at risk. (, , ) Although some literature reviews have reviewed the epidemiology of COVID-19, (-) they have not collated the estimates of epidemic parameters from the initial period of the COVID-19 pandemic. The aim of this study was to collate and compare the characteristics of the COVID-19 pandemic up to 30 April 2020.

Methods

Studies that describe or estimate the epidemic characteristics of the COVID-19 pandemic until 30 April 2020 were collected. Epidemiological parameters were limited to the incubation period, the serial interval and the reproduction number. The incubation period is the length of time experienced by an individual case from the point of infection to the start of symptom onset. The serial interval refers to the mean length of time between successive cases in a chain of transmission, measured as the length of time from symptom onset in a primary case to symptom onset in a secondary case. Both the incubation period and serial interval in this analysis are measured in days. Over the course of the COVID-19 pandemic so far, governments have enacted public health interventions at different times and to different extents. Individual behaviours have changed at different rates as individuals have learned about COVID-19 and responded to media reports, government messaging and their understanding of risk. Several estimates of the reproduction number overlap periods when governments have enacted significant public health interventions. Although this study focuses on estimates from the early stages of the outbreak, when most of the population were susceptible and potentially not modifying their behaviour, this study refers to all estimates of the reproduction number as the effective reproduction number. We searched peer-reviewed published research articles from PubMed using the terms “coronavirus” AND “novel” OR “new” OR “covid” OR “Wuhan” OR “ncp” OR “ncov” for articles published online until 30 April 2020. The literature search ran from 24 February 2020 to 12 May 2020. All articles were imported to Zotero 5.0.87 for review. Eligible articles were reviewed for date of online publication, study period, sample size, setting, method of calculating epidemic parameters, assumptions used to inform these calculations and output measures (including the approach to estimating uncertainty). Studies were included in this review if they reported estimates of at least one of the relevant epidemic parameters and were written in English. Any articles published before 1 November 2019, pre-prints, grey literature and case reports were excluded.

Ethics and permissions

Ethical approval was not sought for this review of existing, publicly available peer-reviewed literature.

Results

The PubMed search returned 4426 articles published online up to 30 April 2020. Of these articles, 3581 were excluded at the screening assessment and a further 759 at the eligibility assessment, giving a total of 86 included studies. The results of the search and eligibility assessment are shown in Fig. 1. Preferred reporting items for systematic reviews and meta-analysis diagram of study selection [insert Figure 1]
Figure 1

Preferred reporting items for systematic reviews and meta-analysis diagram of study selection

Of the 86 included studies, 15 calculated more than one epidemic parameter of interest. Sixty of the 86 studies used data from mainland China for part or all of their analysis, and 11 specifically analysed outbreak data from Hubei province or the city of Wuhan.

Incubation period

A total of 33 studies estimated the incubation period of COVID-19 (). Mean estimates were reported in 15 studies, ranging from 1.8 to 9.9 days; however, 44% of the mean estimates were 5–6 days. The shortest mean estimate (incubation period = 1.8 days) was calculated from returned travellers from Hubei province in China, using their last day of travel as their date of exposure. () One study’s mean estimate of 9.9 days was calculated from a series of 14 cases in Viet Nam. ()
Table 1

Estimated incubation period of COVID-19 from included epidemiological parameters studies published between 1 January and 30 April 2020

Study authorsOnline publication dateStudy periodSample sizeSettingEstimate (days)*Uncertainty estimate (days)Uncertainty measure
Chan et al. (15)24 January 202026 December 2019–15 January 20205Mainland China-3–6Range
Li et al. (16)29 January 2020Up to 22 January 202010Wuhan/Hubei5.24.1–7.095% CI
Backer, Klinkenberg and Wallinga (17)6 February 202020 January 2020 –28 January 202088International6.45.6–7.795% CrI
Ki and Task Force for 2019-nCoV (18)9 February 202020 January 2020 –8 February 202028Republic of Korea3.9; [3.0]0–15Range
Jiang, Rayner and Luo (19)13 February 2020Up to 8 February 202050Mainland China4.94.4–5.595% CI
Linton et al. (20)17 February 202017 December 2019 –31 January 2020158International5.6; [4.6]4.4–7.4; 3.7–5.795% CrI
Xu et al. (21)19 February 202010 January 2020 –26 January 202056Mainland China[4]3–5IQR
Tian et al. (22)27 February 202020 January 2020 –10 February 2020203Mainland China[6.7]±  5.2SD
Cai et al. (23)28 February 202019 January 2020–3 February 202010Mainland China6.52–10Range
Guan et al. (24)28 February 2020Up to 23 January 2020291Mainland China[4]2–7IQR
Liu et al. (25)3 March 20201 January 2020–5 February 202058Mainland China6.0; [5.0]3–8; 1–16IQR; Range
Lauer et al. (26)10 March 20204 January 2020–24 February 2020181International[5.1]4.5–5.895% CI
Zhao et al. (27)12 March 202023 January 2020–5 February 202019Mainland China[8]6–11IQR
Pung et al. (28)16 March 202018 January 2020–10 February 202017Singapore[4]3–6; 1–11IQR; Range
Leung (29)18 March 202020 January 2020–12 February 2020105Mainland China (travelled to Hubei)1.81.0–2.795% CI
70Mainland China (local transmission)7.26.1–8.495% CI
Chang et al. (30)23 March 202028 January 2020–9 February 202015Mainland China[5]1–6Range
Jin et al. (31)24 March 202017 January 2020–8 February 202021Mainland China – GI symptoms[4]3–7IQR
195Mainland China – No GI symptoms[5]3–8IQR
Zhang et al. (32)2 April 202019 January 2020–17 February 202049Mainland China5.21.8–12.495% CI
Le et al. (33)2 April 202017 January 2020 –14 February 202012Viet Nam9.9±  5.2SD
Zhu and Chen (34)2 April 20201 December 2019 –23 January 2020Not specifiedMainland China, Hong Kong Special Administrative Region (SAR) China, Macau (SAR) China, Taiwan (China)5.671–14Range
Han et al.356 April 202031 January 2020 –16 February 202025Mainland China – adults[5]3–12Range
   7Mainland China – children[4]2–12Range
Shen et al.367 April 20208 January 2020–26 February 20206Mainland China[7.5]1–16Range
Sanche et al.377 April 202015 January 2020 –30 January 202024Mainland China4.23.5–5.195% CI
Ghinai et al.388 April 2020February–March 202015United States of America4.3; [4]1–7Range
Huang et al.3910 April 202023 January 2020 –20 February 20208Mainland China[2]1–4Range
Zheng et al.4010 April 202017 January 2020 –7 February 2020161Mainland China[6]3–8Range
Xia et al.4112 April 202023 January 2020 –18 February 202010China incl. Hong Kong Special Administrative Region (SAR) China, Macau (SAR) China, Taiwan (China)7.0±  2.59; 2–14SD; Range
Chen et al.4214 April 202028 January 2020 –11 February 202012Mainland China8.01–13Range
Song et al.4323 April 202016 January 2020 –29 January 202022Mainland China-2–13Range
Jiang et al.4423 April 202023 January 2020 –13 February 20204Mainland China-9–13Range
Nie et al.4527 April 202019 January 2020 –8 February 20202907Mainland China[5]2–8IQR
Yu et al.4629 April 2020Up to 19 February 2020132Mainland China[7.2]6.4–7.995% CI
Bi et al.4730 April 202014 January 2020 –12 February 2020138Mainland China[4.8]4.2–5.495% CI

*Mean estimates. Median estimates are shown in [square brackets]. Multiple estimates of incubation period for the same population within the same study are shown in the same row and separated by a semicolon. Estimates of the incubation period in the same study for different populations are shown in separate rows.

CI: confidence interval; CrI: credible interval; GI: gastrointestinal; IQR: interquartile range; SD: standard deviation.

Notes: Sample size reported in Table 1 is the sample size used to calculate the incubation period, not necessarily the whole study sample. All estimates are reported to one decimal place, except where stating findings from papers that did not provide that level of precision.

*Mean estimates. Median estimates are shown in [square brackets]. Multiple estimates of incubation period for the same population within the same study are shown in the same row and separated by a semicolon. Estimates of the incubation period in the same study for different populations are shown in separate rows. CI: confidence interval; CrI: credible interval; GI: gastrointestinal; IQR: interquartile range; SD: standard deviation. Notes: Sample size reported in Table 1 is the sample size used to calculate the incubation period, not necessarily the whole study sample. All estimates are reported to one decimal place, except where stating findings from papers that did not provide that level of precision. A further 22 estimates of the incubation period were summarized by their median. These studies were generally reporting on a specific cluster or outbreak investigation, and median estimates largely ranged from 4 to 7 days. Estimates outside of this range were calculated from case series; for example, a median range of 1–4 days was found among eight participants () and an estimated 8-day incubation period for a study involving 19 participants. () The distribution of the mean and median incubation estimates by sample size of the study is shown in Fig. 2. Incubation period estimates and sample size of study (n = 28 studies, 35 estimates) published between 1 January and 30 April 2020 [insert Figure 2]
Figure 2

Incubation period estimates and sample size of study (n = 28 studies, 35 estimates) published between 1 January and 30 April 2020

A further three studies only included a range of observed incubation periods. The longest incubation period from these studies was 16 days, recorded in an outbreak investigation in mainland China. () Additional estimates of the 95th percentile of the incubation period ranged from 10.3 days (95% confidence interval [CI]: 8.6–14.1) () to 14 days (95% CI: 12.2–15.9). ()

Serial interval

Of the 15 studies that included a serial interval, eight were published in April 2020. Mean serial interval estimates were calculated in 14 studies and ranged from 3.1 to 7.5 days ().
Table 2

Estimated serial interval from included COVID-19 epidemiological parameters studies published between 
1 January and 30 April 2020

Study authorsOnline publication dateStudy periodSample sizeTransmission pairsSettingEstimate (days)*Uncertainty estimate (days)Uncertainty measure
Li et al. (16)29 January 2020Up to 22 January 2020106Wuhan/Hubei7.55.3–19.095% CI
Ki and Task Force for 2019-nCoV (18)9 February 202020 January 2020–8 February 20202812Republic of Korea6.6; [4.0]3–15Range
Liu et al. (25)3 March 20201 January 2020–5 February 202015 single intracluster transmission cases12 clustersMainland China5.5--
56 single co-exposure cases56 clustersMainland China3.1--
Nishiura et al. (38)4 March 2020Up to 12 February 2020Notspecified28 – all pairsInternational[4.0]3.1–4.995% CrI
18 – most certain pairsInternational[4.6]3.5–5.995% CrI
Pung et al. (28)16 March 2020Up to 15 February 202043Singapore 3–8Range
Du et al. (39)19 March 202021 January 2020 –8 February 2020752468Mainland China4.03.5–4.495% CI
Wu et al. (40)19 March 20201 December 2019 –28 February 2020Not specified43International75.8–8.195% CI
Zhang et al. (32)2 April 202019 January 2020–17 February 20206335Mainland China5.13.1–11.695% CI
Ji et al. (41)7 April 202023 January 2020 –27 March 20205132Wuhan/Hubei6.56.3SD
Huang et al. (35)10 April 202023 January 2020 –20 February 202098Mainland China[1]0–4Range
Wang et al. (42)10 April 202011 January 2020–16 February 202011585Wuhan/Hubei5.5±  2.7SD
He et al. (43)15 April 20207 January 2020 –4 March 2020Not specified77International5.8; [5.2]4.8–6.8; 4.1–6.495% CI
Kwok et al. (44)23 April 202023 January 2020–13 February 20203826Hong Kong Special Administrative Region (SAR) China4.63.4–5.995% bCI
26 – adjusted for right truncationHong Kong Special Administrative Region (SAR) China4.83.5–6.995% CrI
Bi et al. (37)27 April 202014 January 2020–12 February 2020Not specified48Mainland China6.3; [5.4]5.2–7.6; 4.4–6.595% CI
Ganyani et al. (45)30 April 202014 January 2020–27 February 2020544 clustersSingapore5.2–3.4–13.995% CrI
11416 clustersMainland China3.9–4.5–12.595% CrI

*Mean estimates. Median estimates are shown in [square brackets]. Multiple estimates of serial interval for the same population within the same study are shown in the same row and separated by a semicolon. Estimates of the serial interval in the same study for different populations are shown in separate rows.

bCI: Bayesian confidence interval; CI: confidence interval; CrI: credible interval; SD: standard deviation.

Notes: Sample size reported is the sample size used to calculate the serial interval, not necessarily the whole study sample. All estimates are reported to one decimal place, except where stating findings from papers that did not provide that level of precision.

*Mean estimates. Median estimates are shown in [square brackets]. Multiple estimates of serial interval for the same population within the same study are shown in the same row and separated by a semicolon. Estimates of the serial interval in the same study for different populations are shown in separate rows. bCI: Bayesian confidence interval; CI: confidence interval; CrI: credible interval; SD: standard deviation. Notes: Sample size reported is the sample size used to calculate the serial interval, not necessarily the whole study sample. All estimates are reported to one decimal place, except where stating findings from papers that did not provide that level of precision. The estimated serial intervals were longer in studies published at the start than at the end of the study period, with a mean interval of 7.5 days in late January 2020 and a mean of 4–5 days in early March 2020. Estimates published from March 2020 onwards included transmission pairs with negative serial intervals, or intervals shorter than the incubation period, suggesting possible pre-symptomatic transmission. Mean estimates of the serial interval that included negative transmission pairs generally ranged from 3.9 to 5.8 days (). The four median serial interval estimates ranged from 1.0 to 5.4 days. Excluding the estimate of 2 days from a case series of eight cases, () the median serial interval ranged from 4.0 to 5.4 days ().

Reproduction number

There were 90 estimates of the reproduction number from 52 studies across three World Health Organization (WHO) regions: Western Pacific Region, European Region and Region of the Americas. Reproduction number estimates ranged from 0.3 to 14.8. Of the 90 reported estimates, 33 estimates (37%) were between 2 and 3, and 20 estimates (22%) were between 3 and 4 ().
Table 3

Estimated reproduction number from included COVID-19 epidemiological parameters studies published between 1 January and 30 April 2020

Study authorsOnline publication dateStudy periodSample sizeMethodSettingEstimateUncertainty intervalUncertainty measure
Wu et al. (46)23 January 202010 January 2020 –12 January 202041Zoonotic transmission – Cauchemez et al. 2013 (47)Wuhan/Hubei0.30.17–0.4495% CI
Li et al. (16)29 January 2020Up to 22 January 2020425Transmission model with renewal equationsWuhan/Hubei2.21.4–3.995% CI
Riou and Althaus (48)30 January 2020Up to 18 January 202050Stochastic transmission modelWuhan/Hubei2.21.4–3.890% HDI
Zhao et al. (49)30 January 202010 January 2020–24 January 20202033Exponential growth model methodMainland China2.24–3.581.96–2.55to 2.89–4.3995% CI
Wu et al. (50)31 January 20201 December 2019 –28 January 202055Differentialequation – SEIR compartment modelInternational2.682.47–2.8695% CrI
Zhao et al. (51)1 February 20201 December 2019 –24 January 202041Exponential growth model methodMainland China2.562.49–2.6395% CI
Tang et al. (52)7 February 202010 January 2020 –15 January 202041Differential equation – SEIR compartment modelMainland China6.475.71–7.2395% CI
Ki and Task Force for 2019-nCoV (18)9 February 202020 January 2020– 8 February 202026Estimated from transmission chainsRepublic of Korea0.480.25–0.8495% CI
Zhou et al. (53)12 February 2020Up to 25 January 20202820Differential equation – SEIR compartment modelMainland China2.83–3.28--
Jung et al. (54)14 February 202031 December 2019 –24 January 202092Exponential growth model methodMainland China2.1; 3.22.0–2.2; 2.7–3.795% CI
Zhang et al. (55)22 February 2020Up to 16 February 2020355Cori et al. methodology (56)Cruise ship2.282.06–2.5295% CI
Lai et al. (57)25 February 2020Up to 4 February 202052Coalescent-based exponential growth and a birth-death skyline methodMainland China2.62.1–5.195% CI
Chen et al. (58)28 February 20207 December 2019 –1 January 2020Not specifiedBats-Hosts-Reservoir-People transmission network modelWuhan/Hubei3.58--
Rocklov, Sjodin and Wilder-Smith (59)28 February 202021 January 2020 –19 February 20203700Differential equation – SEIR compartment modelCruise ship14.8--
Mizumoto and Chowell (60)29 February 202020 January 2020 –17 February 20203711Discrete timeintegral equationCruise ship5.80.6–11.095% CrI
Fang, Nie and Penny (61)6 March 202020 January 2020 –29 February 202035 329Differential equation – SEIR compartment modelMainland China2.35–3.21--
Zhou et al.7010 March 202010 January 2020–31 January 202044Differential equation – SEIR compartment modelMainland China5.3167--
Kucharski et al.7111 March 20201 December 2019 –11 February 2020Not specifiedDifferential equation – SEIR compartment modelWuhan/Hubei2.351.15–4.7795% CI
Yang and Wang7211 March 202023 January 2020 –10 February 2020Not specifiedDifferential equation – SEIR compartment modelWuhan/Hubei4.25--
Zhao and Chen7311 March 202020 January 2020 –30 January 2020Not specifiedDifferential equation – SEIR compartment modelMainland China4.7092--
Choi and Ki7412 March 202029 December 2019–3 January 2020Not specifiedDifferential equation – SEIR compartment modelWuhan/Hubei4.0284.010–4.04695% CI
 - -20 January 2020 –17 February 202030 -Republic of Korea0.5550.509–0.60295% CI
Kuniya7513 March 202015 January 2020–29 February 2020239Differential equation – SEIR compartment modelJapan2.62.4–2.895% CI
Remuzzi and Remuzzi7613 March 202019 February 2020 –8 March 2020UnclearExponential growth model methodItaly2.76–3.25--
Li et al.7716 March 202010 January 2020–23 January 2020801Differential equation – SEIR compartment modelMainland China2.382.03–2.7795% CrI
Shim et al.7817 March 202020 January 2020 –26 February 20206284Generalized growth modelRepublic of Korea1.51.4–1.695% CI
Du et al.4919 March 202021 January 2020–8 February 2020752Not statedMainland China1.321.16–1.4895% CI
Wu et al.5019 March 20201 December 2019–28 February 202045 771Differential equation – SEIR compartment modelWuhan/Hubei1.941.83–2.0695% CrI
Yuan et al.7928 March 202023 February 2020–9 March 2020NotspecifiedExponential growth model method; Wallinga time dependent methodItaly3.27; 3.103.17–3.38; 2.21–4.1195% CI
 -----France6.32; 6.565.72–6.99; 2.04–12.2695% CI
-----Spain5.08; 3.954.51–5.74; 0–10.1995% CI
-----Germany6.07; 4.435.51–6.69; 1.83–7.9295% CI
Anastassopoulou et al.8031 March 202011 January 2020–10 February 2020NotspecifiedDifferential equation – SEIR compartment modelWuhan/Hubei4.63.56–5.6590% CI
Ferretti et al.8131 March 2020Up to end March 202040 transmission pairsExponential growth model methodMainland China21.7–2.590% CI
Huang et al.8231 March 202013 January 2020–9 March 202080 754Differential equation – SEIR compartment modelMainland China2.23–2.51--
Tian et al.8331 March 202031 December 2019 –23 January 2020Not specifiedDifferential equation – SEIR compartment modelMainland China3.153.04–3.2695% BCI
Zhu and Chen342 April 20201 December 2019–23 January 2020Not specifiedPoisson Transmission ModelMainland China2.472.39–2.5595% CI
Sanche et al.377 April 202015 January 2020–30 January 2020140Differential equation – SEIR compartment modelMainland China5.73.8–8.995% CI
Zhao et al.848 April 20201 December 2019–8 January 2020Not specifiedDifferential equation – SEIR compartment modelWuhan/Hubei2.52.4–2.795% CI
Pan, Liu and Wang8510 April 20205 December 2019 –8 March 202032 583Cori et al. methodology112Wuhan/Hubei3.823.72–3.9395% CrI
Abbott et al.8614 April 2020Up to 25 January 20201975Stochastic branching process modelMainland China2.8–3.8--
Puci et al.14 April 202022 March 2020–29 March 2020975Differential equation – SEIR compartment modelItaly1.821.51–2.0195% CI
Du et al.8716 April 20201 December 2019–22 January 202019Exponential growth methodMainland China1.91.47–2.5995% CrI
Torres-Roman et al.8817 April 20206 March 2020–15 March 2020NotspecifiedCori et al.methodology112Peru2.97--
Tsang et al.8920 April 202015 January 2020–3 March 2020NotspecifiedExponential growth modelMainland China2.8–3.5--
Muniz-Rodriguezet al.9022 April 202019 February 2020–19 March 2020978Exponential growth model; renewal equations methodIslamic Republic of Iran4.4; 3.53.9–4.9; 1.3–8.195% CI
Zhuang et al.9122 April 2020Up to 5 March 2020NotspecifiedStochastic model, maximum likelihood estimation approachItaly2.6; 3.32.3–2.9; 3.0–3.695% CI
 -----Republic of Korea2.6; 3.22.3–2.9; 2.9–3.595% CI
Gatto et al.9223 April 202024 February 2020–23 March 2020107Differential equation – SEIR compartment modelItaly3.63.49–3.8495% CI
Han et al.9323 April 202021 January 2020–15 February 2020482Exponential growth model methodMainland China2.91.8–4.595% CI
Caicedo-Ochoa et al.9425 April 2020Up to 23 March 2020 (first 10 days after reaching 25 cases in each location)NotspecifiedCori et al. methodology112Two serial intervals used: 7.5 days; 4.7 daysSpain6.48; 2.95.97–7.02; 2.67–3.1495% CrI
 -----Italy6.41; 2.836.11–6.71; 2.70–2.9695% CrI
-----Ecuador12.86; 3.9512.05–13.68; 3.70–4.2195% CrI
-----Panama7.19; 3.676.37–8.08; 3.25–4.1395% CrI
-----Brazil6.53; 2.915.85–7.25; 2.60–3.2395% CrI
-----Chile5.79; 2.675.32–6.28; 2.45–2.8995% CrI
-----Colombia5.65; 2.675.04–6.29; 2.38–2.9895% CrI
-----Peru5.24; 2.364.68–5.83; 2.11–2.6395% CrI
-----Mexico4.94; 2.424.37–5.56; 2.14–2.7295% CrI
Bi et al.4727 April 202014 January 2020–12 February 202048Estimated from transmission chainsMainland China0.40.3–0.595% CI
Distante et al.9527 April 2020Up to 29 March 2020Not specifiedExponential growth methodItaly3.6--
Ndairou et al.9627 April 20204 January 2020–9 March 2020NotspecifiedDifferential equation – SEIR compartment modelWuhan/Hubei0.945--
Peirlinck et al.9727 April 202021 January 2020–4 April 2020311 357Differential equation – SEIR compartment modelUnited States of America5.3± 0.95SD
Adegboyeet al.9828 April 202027 February 2020–11 April 2020318Cori et al.methodology112Nigeria2.71--
Ganyani et al.5530 April 202014 January 2020–27 February 202091Exponential growth model methodSingapore1.251.17–1.3495% CrI
 ---135Exponential growth model methodMainland China1.411.26–1.5895% CrI
Ivorra et al.9930 April 20201 December 2019–29 March 2020NotspecifiedDifferentialequation – SEIR compartment modelMainland China4.2732--

Multiple estimates of the reproduction number for the same population within the same study are shown in the same row and separated by a semicolon. Estimates of the incubation period in the same study for different populations are shown in separate rows.

bCI: Bayesian confidence interval; CI: confidence interval; CrI: credible interval; HDI: high density interval; SD: standard deviation; SEIR: susceptible-exposed-infected-recovered.

Notes: Sample size reported is the sample size used to calculate the serial interval, not necessarily the whole study sample. All estimates are reported to the number of decimal places provided in each study.

Multiple estimates of the reproduction number for the same population within the same study are shown in the same row and separated by a semicolon. Estimates of the incubation period in the same study for different populations are shown in separate rows. bCI: Bayesian confidence interval; CI: confidence interval; CrI: credible interval; HDI: high density interval; SD: standard deviation; SEIR: susceptible-exposed-infected-recovered. Notes: Sample size reported is the sample size used to calculate the serial interval, not necessarily the whole study sample. All estimates are reported to the number of decimal places provided in each study. The initial low estimate of 0.3 relied on the early assumption that the pathogen was primarily spread through zoonotic transmission. () Other estimates of the reproduction number under 1 were reported in jurisdictions with rapid public health interventions during the study period, including the Republic of Korea and Singapore. (, , ) The highest reproduction number estimate (14.8) was from analyses of transmission dynamics onboard the Diamond Princess cruise ship. () The distribution of reproduction number estimates by the assumed serial interval is shown in Fig. 3. Just over half (n = 50) of the 90 reproduction number results used an estimate of the serial interval to calculate the reproduction number. Serial interval estimates used to estimate the reproduction number ranged from 4 () to 10 days, with the latter taken from the estimated serial interval for severe acute respiratory syndrome (SARS) in early outbreaks. () Studies generally applied serial intervals from the earliest COVID-19 estimate of 7.5 days () and the accepted serial interval of SARS of 8.4 days. () Estimated reproduction number and serial interval of the model (n = 23 studies, 50 estimates) published between 1 January and 30 April 2020 [insert Figure 3]
Figure 3

Estimated reproduction number and serial interval of the model (n = 23 studies, 50 estimates) published between 1 January and 30 April 2020

Discussion

This study provides a review of estimated epidemic parameters of the COVID-19 outbreak up to 30 April 2020. Estimates of the incubation period were similar across the study period, with a mean estimated value of 5–6 days and a range of 2–14 days. Estimates of the serial interval shortened over the study period, from 7.5 days in late January 2020 to a mean of 4–5 days in early March 2020. Estimates of the reproduction number varied in the studies collated up to 30 April 2020. Although some estimates of the reproduction number were as high as 14.8, over half were between 2 and 4. The higher estimates demonstrate the impact of the setting, individual behaviours and public health interventions – the highest estimates were associated with cruise ships, (, , ) whereas the lowest estimates were generally calculated in areas with a rapid response to an outbreak. (, , , ) The incubation period reflects the growth of a virus in an individual, and thus is largely a biological function that would not be expected to vary with changes in human behaviour and wider public health interventions. Variations in the incubation period reported in this study may, in part, result from the study designs adopted. Several estimates of the incubation period were reported directly from cluster investigations, often with low sample sizes. Studies with more than 20 participants had less variation between estimates than studies with smaller sample sizes. The definition of exposure, including the potential for continuous exposure in a household, may also have influenced results by artificially lengthening or shortening the incubation period, depending on study design and differences in local epidemiological reporting protocols. The serial interval and reproduction number are likely to be influenced by public health interventions, social behaviours and political decisions. Estimates of these two epidemic characteristics are therefore setting-specific, which may explain the variance across the results in this study. The serial interval estimates also changed as new information about the pathogen came to light, primarily the potential for pre-symptomatic and pauci-symptomatic transmission. (-) However, these revised estimates of the serial interval were rarely used to revise reproduction number estimates. A longer serial interval results in a higher estimate of the reproduction number. The earliest published estimate by Li et al.’s study (first published online on 29 January 2020) () of six transmission pairs in Wuhan was higher than most of the later estimates. That estimate was applied as an assumed serial interval in 10 studies published in March and April 2020, (, , , , -) despite not being used in Li et al.’s own calculation of the reproduction number. () These early studies have been used to inform national and regional responses to the COVID-19 pandemic, and they demonstrate the importance of and reliance on early estimates to inform future research and public health decision-making. Variations in the estimated reproduction number may also occur due to other assumptions applied in calculations. The initial estimate of the reproduction number of 0.3 assumed zoonotic transmission as the primary mode of transmission, based on the information available at the time. () The method applied may also influence the final estimate of the reproduction number. This is evident in the studies estimating the reproduction number of the Wuhan outbreak from December 2019 to mid-February 2020, which increased in later publications that used the same data sources and time periods. The reproduction number was estimated to be 2.2 in studies published in January and February 2020, (, ) but increased to 4 in articles published in March and April 2020. (, , ) The epidemiological parameters reviewed share some similarities to that of SARS and Middle East respiratory syndrome (MERS), two diseases caused by coronaviruses that have caused significant outbreaks in the early 21st century. The estimates of the range and mean of the incubation period of COVID-19 are similar to that of SARS (2–10 days, mean of 5–6 days) (, , ) and MERS (2–14 days, median of 5–6 days). (, ) However, the estimated serial interval for COVID-19 is shorter than the observed intervals for SARS (8.4 days) () and MERS (7.6–12.6 days). (, ) The later estimates of the COVID-19 serial interval published in April 2020 are shorter than the estimates for the incubation period, suggesting the potential for pre-symptomatic transmission, which has not been observed for SARS or MERS. (, , ) The estimated reproduction number of COVID-19 is similar to the estimates for the 2002–2003 SARS outbreak. () This study has some important limitations. It provides a descriptive assessment and does not include meta-analysis or recalculations of results. The use of different methods and different outputs from each study limits the capacity for meta-analysis. This review may also be impaired by publication bias. Several included studies were based on small sample sizes, which led to imprecise results. The ongoing pandemic requires the active involvement of public health researchers to assess unfolding situations and advise on local responses. Fulfilling crucial roles as the pandemic unfolded may have limited the potential to publish findings, restricting our understanding of epidemic parameters in real time and reducing the representativeness of the results. This potential publication bias may also explain in part the overrepresentation of data from mainland China although COVID-19 has led to outbreaks worldwide. Nevertheless, the early published estimates included in this study have been used worldwide to inform public health responses, and they provide the best available evidence in the timeframe of this study. Only studies written in English were included in this review. This excludes many early estimates written in Mandarin and Korean, which also limits the representativeness of this analysis. Furthermore, this analysis was limited to peer-reviewed published journal articles indexed in PubMed, which represents only a fraction of the literature published on the COVID-19 pandemic. The current pandemic has seen the proliferation of pre-print articles and increased attention on their results. Grey literature published by WHO, national governments and other organizations were also omitted. In times of emergency, pre-prints and grey literature may provide new information in a timely manner; however, this review focused only on estimations of epidemic parameters that have been subject to external peer review. Pandemics are inherently uncertain times. The challenges of the ongoing COVID-19 pandemic are compounded by SARS-CoV-2 being a new pathogen, which public health and clinical professionals have had to rapidly assess, understand and respond to. Early estimates can provide useful interim guidance for public health decision-making. This is particularly true for transmission that is driven by biological characteristics, such as the incubation period. Epidemic characteristics that are influenced by human behaviours and public health interventions are less certain and require interpretation within the context of data collection and analysis of the study. Reliance on data from small sample sizes and specific settings is necessary in the context of an outbreak, but it also limits the generalizability of findings to other contexts. Uncertainty in epidemic characteristics should not mean that we do not act. Although earlier estimates may rely on less-than-ideal sample sizes and sample structures, they are necessary to facilitate decision-making in a timely manner. However, reliance on the first estimates published may limit or bias our understanding of new data. The increasing availability of pre-print articles provides an outlet for urgent distribution of findings during an outbreak of a novel pathogen, provided preliminary findings are interpreted with caution before peer review. This study underscores the ongoing challenge and ever-present need for outbreak investigations and research to be both timely and frequently updated, to provide the best evidence to guide interventions. Further research is required to refine estimates of the serial interval and reproduction number, to improve our understanding of this pandemic in different contexts, and to provide reference values to enable a timely response to potential future outbreaks of COVID-19 and any future emerging coronaviruses and other potential pandemic diseases.
  110 in total

1.  Transmission dynamics and control of severe acute respiratory syndrome.

Authors:  Marc Lipsitch; Ted Cohen; Ben Cooper; James M Robins; Stefan Ma; Lyn James; Gowri Gopalakrishna; Suok Kai Chew; Chorh Chuan Tan; Matthew H Samore; David Fisman; Megan Murray
Journal:  Science       Date:  2003-05-23       Impact factor: 47.728

2.  High Contagiousness and Rapid Spread of Severe Acute Respiratory Syndrome Coronavirus 2.

Authors:  Steven Sanche; Yen Ting Lin; Chonggang Xu; Ethan Romero-Severson; Nick Hengartner; Ruian Ke
Journal:  Emerg Infect Dis       Date:  2020-06-21       Impact factor: 6.883

3.  Epidemiologic characteristics of early cases with 2019 novel coronavirus (2019-nCoV) disease in Korea.

Authors:  Moran Ki
Journal:  Epidemiol Health       Date:  2020-02-09

4.  Early Transmission Dynamics in Wuhan, China, of Novel Coronavirus-Infected Pneumonia.

Authors:  Qun Li; Xuhua Guan; Peng Wu; Xiaoye Wang; Lei Zhou; Yeqing Tong; Ruiqi Ren; Kathy S M Leung; Eric H Y Lau; Jessica Y Wong; Xuesen Xing; Nijuan Xiang; Yang Wu; Chao Li; Qi Chen; Dan Li; Tian Liu; Jing Zhao; Man Liu; Wenxiao Tu; Chuding Chen; Lianmei Jin; Rui Yang; Qi Wang; Suhua Zhou; Rui Wang; Hui Liu; Yinbo Luo; Yuan Liu; Ge Shao; Huan Li; Zhongfa Tao; Yang Yang; Zhiqiang Deng; Boxi Liu; Zhitao Ma; Yanping Zhang; Guoqing Shi; Tommy T Y Lam; Joseph T Wu; George F Gao; Benjamin J Cowling; Bo Yang; Gabriel M Leung; Zijian Feng
Journal:  N Engl J Med       Date:  2020-01-29       Impact factor: 176.079

5.  A familial cluster of pneumonia associated with the 2019 novel coronavirus indicating person-to-person transmission: a study of a family cluster.

Authors:  Jasper Fuk-Woo Chan; Shuofeng Yuan; Kin-Hang Kok; Kelvin Kai-Wang To; Hin Chu; Jin Yang; Fanfan Xing; Jieling Liu; Cyril Chik-Yan Yip; Rosana Wing-Shan Poon; Hoi-Wah Tsoi; Simon Kam-Fai Lo; Kwok-Hung Chan; Vincent Kwok-Man Poon; Wan-Mui Chan; Jonathan Daniel Ip; Jian-Piao Cai; Vincent Chi-Chung Cheng; Honglin Chen; Christopher Kim-Ming Hui; Kwok-Yung Yuen
Journal:  Lancet       Date:  2020-01-24       Impact factor: 79.321

6.  Epidemiological and clinical characteristics of 333 confirmed cases with coronavirus disease 2019 in Shanghai, China.

Authors:  Xiao Yu; Xiaodong Sun; Peng Cui; Hao Pan; Sheng Lin; Ruobing Han; Chenyan Jiang; Qiwen Fang; Dechuan Kong; Yiyi Zhu; Yaxu Zheng; Xiaohuan Gong; Wenjia Xiao; Shenghua Mao; Bihong Jin; Huanyu Wu; Chen Fu
Journal:  Transbound Emerg Dis       Date:  2020-05-13       Impact factor: 4.521

7.  Preliminary prediction of the basic reproduction number of the Wuhan novel coronavirus 2019-nCoV.

Authors:  Tao Zhou; Quanhui Liu; Zimo Yang; Jingyi Liao; Kexin Yang; Wei Bai; Xin Lu; Wei Zhang
Journal:  J Evid Based Med       Date:  2020-02-12

8.  On a Statistical Transmission Model in Analysis of the Early Phase of COVID-19 Outbreak.

Authors:  Yifan Zhu; Ying Qing Chen
Journal:  Stat Biosci       Date:  2020-04-02

9.  Estimating the generation interval for coronavirus disease (COVID-19) based on symptom onset data, March 2020.

Authors:  Tapiwa Ganyani; Cécile Kremer; Dongxuan Chen; Andrea Torneri; Christel Faes; Jacco Wallinga; Niel Hens
Journal:  Euro Surveill       Date:  2020-04

10.  Incubation period of 2019 novel coronavirus (2019-nCoV) infections among travellers from Wuhan, China, 20-28 January 2020.

Authors:  Jantien A Backer; Don Klinkenberg; Jacco Wallinga
Journal:  Euro Surveill       Date:  2020-02
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