Jingbo Liang1, Hsiang-Yu Yuan2, Lindsey Wu3, Dirk Udo Pfeiffer4. 1. Department of Biomedical Sciences, Jockey Club College of Veterinary Medicine and Life Sciences, City University of Hong Kong, Hong Kong, China. 2. Department of Biomedical Sciences, Jockey Club College of Veterinary Medicine and Life Sciences, City University of Hong Kong, Hong Kong, China. sean.yuan@cityu.edu.hk. 3. Department of Infection Biology, Faculty of Infectious and Tropical Diseases, London School of Hygiene & Tropical Medicine, London, UK. 4. Centre for Applied One Health Research and Policy Advice, City University of Hong Kong, Hong Kong, China.
Abstract
BACKGROUND: Although by late February 2020 the COVID-19 epidemic was effectively controlled in Wuhan, China, estimating the effects of interventions, such as transportation restrictions and quarantine measures, on the early COVID-19 transmission dynamics in Wuhan is critical for guiding future virus containment strategies. Since the exact number of infected cases is unknown, the number of documented cases was used by many disease transmission models to infer epidemiological parameters. This means that it was possible to produce biased estimates of epidemiological parameters and hence of the effects of intervention measures, because the percentage of all cases that were documented changed during the first 2 months of the epidemic, as a consequence of a gradually improving diagnostic capability. METHODS: To overcome these limitations, we constructed a stochastic susceptible-exposed-infected-quarantined-recovered (SEIQR) model, accounting for intervention measures and temporal changes in the proportion of new documented infections out of total new infections, to characterize the transmission dynamics of COVID-19 in Wuhan across different stages of the outbreak. Pre-symptomatic transmission was taken into account in our model, and all epidemiological parameters were estimated using the Particle Markov-chain Monte Carlo (PMCMC) method. RESULTS: Our model captured the local Wuhan epidemic pattern as two-peak transmission dynamics, with one peak on February 4 and the other on February 12, 2020. The impact of intervention measures determined the timing of the first peak, leading to an 86% drop in the Re from 3.23 (95% CI, 2.22 to 4.20) to 0.45 (95% CI, 0.20 to 0.69). The improved diagnostic capability led to the second peak and a higher proportion of documented infections. Our estimated proportion of new documented infections out of the total new infections increased from 11% (95% CI 1-43%) to 28% (95% CI 4-62%) after January 26 when more detection kits were released. After the introduction of a new diagnostic criterion (case definition) on February 12, a higher proportion of daily infected cases were documented (49% (95% CI 7-79%)). CONCLUSIONS: Transportation restrictions and quarantine measures together in Wuhan were able to contain local epidemic growth.
BACKGROUND: Although by late February 2020 theCOVID-19epidemic was effectively controlled in Wuhan, China, estimating theeffects of interventions, such as transportation restrictions and quarantine measures, on theearly COVID-19 transmission dynamics in Wuhan is critical for guiding future virus containment strategies. Since theexact number of infected cases is unknown, the number of documented cases was used by many disease transmission models to infer epidemiological parameters. This means that it was possible to produce biased estimates of epidemiological parameters and hence of theeffects of intervention measures, because the percentage of all cases that were documented changed during the first 2 months of theepidemic, as a consequence of a gradually improving diagnostic capability. METHODS: To overcome these limitations, we constructed a stochastic susceptible-exposed-infected-quarantined-recovered (SEIQR) model, accounting for intervention measures and temporal changes in the proportion of new documented infections out of total new infections, to characterize the transmission dynamics of COVID-19 in Wuhan across different stages of the outbreak. Pre-symptomatic transmission was taken into account in our model, and all epidemiological parameters wereestimated using the Particle Markov-chain Monte Carlo (PMCMC) method. RESULTS: Our model captured the local Wuhan epidemic pattern as two-peak transmission dynamics, with one peak on February 4 and the other on February 12, 2020. The impact of intervention measures determined the timing of the first peak, leading to an 86% drop in the Re from 3.23 (95% CI, 2.22 to 4.20) to 0.45 (95% CI, 0.20 to 0.69). The improved diagnostic capability led to the second peak and a higher proportion of documented infections. Our estimated proportion of new documented infections out of the total new infections increased from 11% (95% CI 1-43%) to 28% (95% CI 4-62%) after January 26 when more detection kits were released. After the introduction of a new diagnostic criterion (case definition) on February 12, a higher proportion of daily infected cases were documented (49% (95% CI 7-79%)). CONCLUSIONS: Transportation restrictions and quarantine measures together in Wuhan were able to contain local epidemic growth.
Coronavirus disease 2019 (COVID-19), an acuterespiratory infection originally identified in the city of Wuhan in Hubei Province, China, has spread worldwide in 2020 [1, 2]. Estimating theeffects of intervention measures is still one of the major scientific goals in order to identify prevention measures that areeffective in different countries around the world [3]. The preciseestimation of theeffective reproduction number (Re), theexpected number of new infections caused by an infectious individual, is critical for the identification of appropriate intervention measures to contain the outbreak [1, 4–8]. Although many recent studies haveevaluated how intervention measures implemented in Wuhan reduced disease spread to regions outside Wuhan [6, 9–12], the investigation of the contribution of interventions within Wuhan, theepidemic source region itself, has received little attention [13, 14], possibly because an irregular pattern of transmission dynamics during early February hinders the model fitting processes, making the preciseestimation of the parameters difficult.To control the virus spread during theearly outbreak stage, the Chinese government implemented strict travel restrictions on January 23, 2020 in Wuhan [15]. The first epidemic peak occurred 12 days after the restrictions were implemented. Soon afterwards, the number of new daily documented cases started to fluctuate for about 2 weeks around this peak value, followed by another peak with an extremely high number of cases, and it then reduced to very low levels (Figure S1). The transmission dynamics with such an irregular and unusual pattern can affect theestimation of theeffects of intervention measures. The high number of documented cases after the introduction of interventions was generally hypothesized to be mainly caused by improved diagnostic capability [16], leading to more detected cases rather than caused by the intrinsic growth of theepidemic. However, most studies have not considered the changes in diagnostic capability over time, which can affect the number of documented infections and, ultimately, theestimation of Re.Accounting for temporal changes in COVID-19 diagnostic capability is critical for characterizing transmissibility and understanding the pattern of the local Wuhan epidemic. Recent studies have shown that the total potential number of cases has been significantly underestimated, with more than 80% of all infections undocumented during the initial period following the identification of SARS-CoV-2 as the causative agent [17]. While the number of total new infections is driven by theepidemic growth, after the introduction of new commercial kits [18] and introduction of more sensitive diagnostic criteria [16] (Fig. 1), diagnostic capacity in Wuhan improved, resulting in a higher proportion of total new infections been documented. Therefore, it is important to consider the improvements in diagnostic capacity over time when using the documented data to construct transmission models for COVID-19 in Wuhan.
Fig. 1
The daily number of new COVID-19 documented (reported) cases by date and the timeline of improved diagnostic capability and transportation restrictions implemented in Wuhan, China. Wuhan transportation restrictions were implemented on January 23 [15]; New commercial kits were approved by the State Food and Drug Administration (SFDA) on January 26 [18]; Updated diagnostic criteria, i.e. COVID-19 case confirmation should rely on both clinical diagnosis and laboratory diagnosis, was introduced on February 12 [16]. A break was made in the y-axis, and the narrow grey horizontal bar indicates where the break was set
The daily number of new COVID-19 documented (reported) cases by date and the timeline of improved diagnostic capability and transportation restrictions implemented in Wuhan, China. Wuhan transportation restrictions were implemented on January 23 [15]; New commercial kits were approved by the State Food and Drug Administration (SFDA) on January 26 [18]; Updated diagnostic criteria, i.e. COVID-19 case confirmation should rely on both clinical diagnosis and laboratory diagnosis, was introduced on February 12 [16]. A break was made in the y-axis, and the narrow grey horizontal bar indicates where the break was setA particularly important challenge is to understand the proportion of transmission that occurs prior to the onset of illness. During theearly outbreak, several studies have described the pre-symptomatic transmission of SARS-CoV-2, including a 20-year-old woman from Wuhan believed to have passed on theinfection to five of her family members [19] and a Chinese individual believed to haveinfected her German business partner [20], both in the absence of symptoms. Theexistence of pre-symptomatic transmission indicates that COVID-19infected individuals can be infectious during the incubation period. However, previous classical susceptible-exposed-infected-recovered (SEIR) models assume weak or no infectiousness during the incubation period [14, 21], potentially resulting in an underestimation of the infectiousness of COVID-19 cases.In this study, in order to overcome the difficulties related to describing irregular fluctuations in the transmission dynamics and the limitation of the simple SEIR model for dealing with such data, a stochastic susceptible-exposed-infected-quarantined-recovered (SEIQR) model was developed to describe the Wuhan COVID-19 transmission pattern after the initial outbreak stage. This model extends the classic SEIR model by including pre-symptomatic transmission and quarantined status and allows theeffects of transportation restrictions and quarantine measures on virus transmission patterns to beestimated while accounting for improvements in the diagnostic capacity over time. After considering varying diagnostic capabilities, we will show that this model can capture the transmission dynamics well and can estimate the reduction in Re precisely.
Methods
Data collection
The daily number of new documented COVID-19 confirmed cases from January 11 to March 10 in Wuhan, Hubei province, China, by reported date, were collected from the Wuhan Municipal Health Commission [22] and the National Health Commission of thePeople’s Republic of China [23]. During this period, asymptomatic cases were not classified as confirmed cases in Wuhan [24, 25], and only confirmed cases were reported in the commission’s official daily reports.
Description of the SEIQR epidemic model
An SEIQR model was developed to estimate theeffect of intervention measures on COVID-19 transmission dynamics in the Wuhan population (Fig. 2). In our model, S, E, I, Q and R represent the number of individuals in susceptible, exposed, infectious (after incubation time), quarantined, and recovered statuses, with the total population size N = S + E + I + Q + R assumed to be 11 million (the permanent population in Wuhan [26]). Here, we defined susceptible individuals change to exposed individuals after they have had effective contact with the virus. Exposed individuals were further divided into two groups: E1, exposed individuals at the latent period who are not able to transmit the disease; E2, exposed individuals not at the latent period who are at a pre-symptomatic stage (referred to pre-symptomatically infectious individuals). The proportions of E1 and E2 out of total exposed individuals were determined using the proportion of the time span of latent period and pre-symptomatic transmission period within the incubation period. TheSEIQRequations were derived as follows:
Fig. 2
SEIQR model schema. The population is divided into five compartments: S (susceptible), E (exposed), I (infectious), Q (quarantined), and R (recovered). E2 is the number of exposed individuals after latent period who are pre-symptomatically infectious, β is the transmission rate, σ is the incubation rate, q is the quarantine rate, γ is the recovery rate. A fraction of newly symptomatic infections seek for medical care and are eventually documented by hospitals, where p(m| i) is the probability of an infection develops symptoms and seeks medical care, p(hosp _ diag| m)t represents the probability that a symptomatic infectious outpatient is diagnosed as COVID-19 case by the hospital
SEIQR model schema. The population is divided into five compartments: S (susceptible), E (exposed), I (infectious), Q (quarantined), and R (recovered). E2 is the number of exposed individuals after latent period who are pre-symptomatically infectious, β is the transmission rate, σ is the incubation rate, q is the quarantine rate, γ is the recovery rate. A fraction of newly symptomatic infections seek for medical care and areeventually documented by hospitals, where p(m| i) is the probability of an infection develops symptoms and seeks medical care, p(hosp _ diag| m)t represents the probability that a symptomatic infectious outpatient is diagnosed as COVID-19 case by the hospitalΔE, t is defined as the number of newly exposed individuals before symptom onset, during a time interval from t − 1 to t, ΔI, t is the number of new infections after incubation time (including both symptomatically and asymptomatically infectious cases), ΔQ, t is the number of newly quarantined cases, and ΔR, t is the number of newly recovered individuals. We assumed ΔE, t, ΔI, t, ΔQ, t, and ΔR, t follow Poisson distributions:
whereE2t − 1 is the number of pre-symptomatically infectious individuals (E2) at time t − 1, assumed determined as , σ is the rate at which someexposed individuals become symptomatically infectious cases (1/σ is the incubation period), η is the latent period, q is the quarantine rate (1/q the time between symptom onset and quarantine start), γ is the recovery rate, expressed by γ = 1/(τ − 1/σ), and τ is the generation time. Here we assumed τ was fixed to be 10 days considering the period from being infected to recovered was generally longer than the observed serial interval (e.g. 7.5 days) [1] and the infectious period was estimated to be around 10 days by a virology study [27]. Using a constant value of τ can reduce the model uncertainty. βt is the transmission rate on day t. In this model, βt is assumed to be modulated by the Wuhan transportation restriction policy, represented as an exponential relationship with a lag effect:
where polt is an indicator variable for the daily transportation restriction policy, with polt = 0 if there is no transportation restriction at time t (i.e., before January 23) [15] and polt = 1 otherwise. α is the transportation restriction effect coefficient, β0 is the basic transmission rate without transportation restrictions, and lag1 indicates the lag time of the transportation restrictions effect on the virus transmission rate assumed to be 6 days [13]. Thus, βt has a constant value throughout the period before the transportation restriction worked and change to a different constant value after then.
Mapping SEIQR model to observed hospital document cases
Model estimates of new infections (ΔI, t, including both symptomatically and asymptomatically infectious cases) can not be compared with observed hospital documented cases directly. This is because documented data only captures COVID-19 cases who seek hospital care and are successfully diagnosed, which will only be a proportion of the total number of new infections in the population estimated in the model. To address this discordance, we introduced an observation model to link theSEIQR model simulated new infections to the observations. The daily number of hospital documented cases, (hosp _ document)t + lag2, was assumed to follow a normal distribution with the mean defined as the number of new infections ΔI, t that were reported (documented) with a delay of lag2 (days). Here, lag2 was a parameter, which was set as 6 (days) [13]:
where p(m| i), the probability of an infection develops symptoms and seeks medical care, was assumed to be fixed at 0.8 according to the high motivation of care-seeking behavior in Wuhan [28]. Hospital diagnostic rate, p(hosp _ diag| m)t + lag2, represents the probability that a symptomatic infectious outpatient is diagnosed as COVID-19 case by the hospital with a delay of lag2 days. ϵ2 is the distribution variance, and ϵ was manully assumed to be 600 (around 30% of the number of daily new documented cases at the first peak). We also defined (prop _ doc)t, the proportion of documented cases out of total new infections, could be calculated as (prop _ doc)t = p(m| i) × p(hosp _ diag| m)t.Given that the diagnostic capability progressed over time, hospital diagnostic rate p(hosp _ diag| m)t was assumed to have three different values during each of the three periods: p1(hosp _ diag| m) is the rate for the period prior to January 27 when test kits were limited, p2(hosp _ diag| m) is the rate for the period between January 27 and Feburary 11 when test kits were sufficient but diagnostic criteria was biased without incorporating clinical diagnosis [18], and p3(hosp _ diag| m) is the rate for the period after February 12 when test kits were sufficient and diagnostic criteria became more sensitive based on both clinical diagnosis and laboratory diagnosis [16]. The values of p1(hosp _ diag| m), p2(hosp _ diag| m) and p3(hosp _ diag| m) wereestimated after fitting the model to the number of daily hospital documented cases. Hospital documented cases on the specific days of January 27, February 12, and February 13, thedates of change in testing capacity [16, 18] (Figure S1), are likely to contain retrospectively documented cases due to the transition to new diagnostic criteria or test kits [29]. Therefore, we removed the original values of these threedata and re-filled them by using “na.spline” function in R. That is, the smoothed values of these threedates and the original data of other dates were used during the model fitting process.
Effective reproductive number R
After obtaining the posterior distributions of model parameters βt, σ, q, γ and model status St, theeffective reproductive number Re before and after the intervention policy was implemented can be calculated using thenext-generation matrix (NGM) approach. Following methods previously described by Diekmannet al. [30], the transmission matrices T and Σ can be calculated. Briefly, each element in T represents the average number of newly infected cases in theexposed compartment (E) per unit time due to transmission via a singleinfected individual in theexposed (E) or infectious group (I), calculated as or βtSt. Σ represents the transitions between model states. Re could be calculated as the first eigenvector of the matrix NGMt:
where βt, St, σ, q, γ, and N are defined as described above.Re without theeffect of quarantine was calculated as follows: first, weestimated the values of all parameters with quarantine measures through the model fitting process. Second, we simulated theepidemiological curves by setting the quarantine rate as zero (q =0, a scenario without quarantine measures) but keep viral infection-related parameters (σ, η, γ, βt) the same as those wereestimated. Finally, we calculated this Re through theEq. (5) using the simulated epidemiological curve (St) and the corresponding parameters above mentioned.
Model-filters and validations
Since the time-varied true number of individuals in S, E, I, Q and R statuses were not directly observable, we used Particle Markov-chain Monte Carlo (PMCMC) method to handle such hidden variables by simultaneously estimating both the parameters and the hidden variables [31]. Our framework of PMCMC contains two parts: theSEIQR transmission model that generates the transmission dynamics and the observation model that maps SEIQR model to observed hospital document cases. All posterior distributions for theepidemiological hidden variables and parameters were obtained using thePMCMC method, implemented in the Nimble R library [32].The priors for the parameters were drawn from the following distributions: for the incubation period, 1/σ~U(1, 10); for the latent period, η~U(1, 7); 1/q~U(1, 10), for the time between symptom onset and quarantine start; β0~U(0, 1) for the basic transmission rate; and α~N(0, 1), for transportation control coefficient. In the observation model, the priors for time progressed hospital diagnostic rates were set as uniform distribution: p1(hosp _ diag| m) /p2(hosp _ diag| m) ~U(0, 1), p2(hosp _ diag| m) /p3(hosp _ diag| m) ~U(0, 1), p3(hosp _ diag| m)~U(0, 1).To assess convergence, three independent chains of the SMC algorithm sets were conducted using 100,000 iterations of 1000 particle samples in each chain. We calculated theeffective sample size (ESS) and Gelman-Rubin convergence diagnostic statistics across the three chains.
Results
Reconstructing disease dynamics
The daily number of documented COVID-19 cases in Wuhan, increased exponentially up until the first epidemic peak occurring on February 4, and started to fluctuate around the first peak value for about 2 weeks. Note that the values of the highest peak occurring around theend of the second week in two consecutive days in February were ignored in our study because this peak was primarily caused by the retrospectively documented cases under thenew diagnostic criteria, whose actual symptom onset date was diversely distributed and can not be traced by our model (Figure S1). The irregular fluctuations can beexplained by theeffects of interventions and the improved diagnostic capability: the interventions determined the timing of the first peak and may cause a decline pattern afterward; the improved diagnostic capability led to an increase in the number of the documented cases. Together, a high number of cases can be produced for about 2 weeks. Our stochastic SEIQR model reproduced this irregular pattern by a two-peak dynamic with the first peak occurring on February 4 and the second peak occurring shortly on February 12 (Fig. 3). Our estimated times and intensities coincide with the observed epidemic pattern. Theestimated incubation period was 5.68 days (95% CI 2.46–8.03), and theestimated latent time was 2.82 days (95% CI 1.10–5.40) (Table 1).
Fig. 3
The daily number of new documented confirmed cases by date in Wuhan, China. The red line represents model-estimated cases, grey shadow represents the 95% prediction interval, black points represent the observed documented cases, the blue shaded background denotes incrementally increasing proportions of new documented infections out of total new infections in the corresponding period. Daily documented cases on January 27, February 12, and February 13, the dates of change in testing capacity, are likely to include retrospectively documented cases due to the transition to new diagnostic criteria or test kits [16, 18, 29]. The data on these 3 days were ignored during the model fitting process. A break was made in the y-axis, and the white horizontal bar indicates where the break was set
Table 1
Parameter estimates of the SEIQR epidemic model. The definitions of the parameters are described. The mean value and 95% credible interval (CI) of the posterior distribution of each of the parameters are included. Convergence is diagnosed to have occurred when the value of Gelman-Rubin convergence is close to 1 or the ESS is larger than 200
Parameters
Definition
Mean
95% CI
Gelman-Rubin convergence
ESS
1/σ
Incubation period (days)
5.68
(2.46, 8.03)
1.006
261.56
η
Latent period (days)
2.82
(1.10, 5.40)
1.005
309.46
1/q
Time between symptom onset and quarantine start (days)
5.44
(1.99, 9.76)
1.003
477.50
α
Transportation restriction coefficient
−1.96
(−2.90, −1.21)
1.003
411.77
β0
Basic transmission rate without transportation restrictions
0.67
(0.44, 0.97)
1.001
293.01
p1(hosp _ diag| m)
Hospital diagnostic rate from Jan 11 to Jan 26
0.14
(0.01, 0.54)
1.002
396.84
p2(hosp _ diag| m)
Hospital diagnostic rate from Jan 27 to Feb 11
0.35
(0.05, 0.78)
1.008
571.52
p3(hosp _ diag| m)
Hospital diagnostic rate from Feb 12 to Mar 10
0.61
(0.09, 0.98)
1.004
557.22
The daily number of new documented confirmed cases by date in Wuhan, China. The red line represents model-estimated cases, grey shadow represents the 95% prediction interval, black points represent the observed documented cases, the blue shaded background denotes incrementally increasing proportions of new documented infections out of total new infections in the corresponding period. Daily documented cases on January 27, February 12, and February 13, thedates of change in testing capacity, are likely to include retrospectively documented cases due to the transition to new diagnostic criteria or test kits [16, 18, 29]. Thedata on these 3 days were ignored during the model fitting process. A break was made in the y-axis, and the white horizontal bar indicates where the break was setParameter estimates of theSEIQRepidemic model. The definitions of the parameters are described. The mean value and 95% credible interval (CI) of the posterior distribution of each of the parameters are included. Convergence is diagnosed to have occurred when the value of Gelman-Rubin convergence is close to 1 or theESS is larger than 200
Effects of intervention measures
Both transportation restrictions and quarantine measures had significant impacts on theeffective reproductive number Re. The initial value of Re was estimated to be 3.23 (95% CI 2.22–4.20) from January 5 to January 28 (Fig. 4), but dropped by 86% to 0.45 (95% CI 0.20–0.69) from January 29 to March 4 after the implementation of transportation restrictions, calculated based on theestimated values of transmission rate βt (Figure S2). Theestimated time delay to the start of quarantine after symptom onset was 5.44 days (95% CI 1.99–9.76) (Table 1). For limiting the outbreak growth, quarantine measures were important but not essential. Without quarantine measures, the initial value of Re would increase to 4.54 (95% CI 3.65–6.79) before transportation restrictions had an impact, and would become 0.60 (95% CI 0.23–1.27) after then (Fig. 4). Although Reeventually became less than one, the high initial value of Re would have caused a huge case burden during theearly phase of the outbreak. We further tested how the improvements in the diagnostic capacity influenced theestimation of Re: about 12–16% overestimation of Re was found due to assuming a fixed diagnostic capacity (Figure S3); and the model fitting Watanabe-Akaike Information Criterion (WAIC) was increased to be 899.50, comparing to 896.06 from our model, indicating a better fit for our model taking account of improving diagnostic capability.
Fig. 4
Estimation of the effective reproductive number Re in Wuhan. The red point represents the estimated Re assuming quarantine measures were not implemented, the black point represents Re when quarantine measures were assumed to be implemented, and whiskers show the 95% credible intervals
Estimation of theeffective reproductive number Re in Wuhan. The red point represents theestimated Re assuming quarantine measures were not implemented, the black point represents Re when quarantine measures were assumed to be implemented, and whiskers show the 95% credible intervals
Effects of detection capability
During theepidemic, the detection capability of COVID-19 in Wuhan was improved several times through the increased availability of test kits and the introduction of more sensitive diagnostic criteria (Fig. 1). These improvements in the detection capability greatly affected the proportion of documented infections during three periods. From January 11 to January 26, theestimated proportion of documented new infections out of total new infections was 11% (95% CI 1–43%), increasing to 28% (95% CI 4–62%) following the increase in test kit production on January 26. Then the proportion increased further to 49% (95% CI 7–79%) after February 12 when more sensitive diagnostic criteria were introduced (Fig. 5a). Theestimated potential cumulative number of infections is correlated with but higher than the observed hospital documented cases in Wuhan, and a sudden surge of hospital documented cases on February 12 can beexplained by the introduction of the more sensitive diagnostic criteria (Fig. 5b).
Fig. 5
Prediction of temporal diagnostic capability and potential cumulative infections in Wuhan. a The estimated proportion of new documented infections out of total new onset infections during different time periods with 95% credible intervals. b The red line is the predicted potential total cumulative cases, and the red shadow area represents the 95% prediction interval; the grey bar shows the hospital documented cumulative cases
Prediction of temporal diagnostic capability and potential cumulativeinfections in Wuhan. a Theestimated proportion of new documented infections out of total new onset infections during different time periods with 95% credible intervals. b The red line is the predicted potential total cumulative cases, and the red shadow area represents the 95% prediction interval; the grey bar shows the hospital documented cumulative cases
Discussion
This is the first study to demonstrate theeffects of intervention measures on the transmission dynamics in Wuhan while taking account of improvements in diagnostic capacity over time. Our results indicated that the transportation restrictions and quarantine measures together in Wuhan were able to contain local epidemic growth by substantially reducing Re by 86%. This proportion of the reduction in Re was exactly the same as the proportion of the reduction in the average daily number of contacts per person (14.6 vs. 2.0) between a baseline period (before the outbreak) and the outbreak period in another study using contact surveys in Wuhan [33]. Since very few studies haveestimated theeffects of the transportation restrictions in Wuhan, the reduction of contact rate offers valuable information to project the possibleeffects on the reproduction number. Assuming the transmissibility was proportional to the contact numbers, the reduction ratio of the contact numbers will be proportional to the reduction ratio in Re. These results confirm that measuring contact mixing is an accurate way to estimate the impacts of intervention measures. Furthermore, the proportion of undocumented infections was estimated to be reduced during the outbreak, as a consequence of the improvements in diagnostic capability. These findings will help to inform further analysis aimed at developing prevention strategies and evaluating theeffects of public health interventions.While most studies assumed a fixed proportion of documented infections over time, the study presented hereestimates an initial proportion of documented infections of 11%, similar to previous predictions of 14% by Ruiyun et al. [17], which progressively increases with the improvement of diagnostic capability. Our results suggest that the increase in the number of cases during theearly outbreak needs to be interpreted cautiously, given that the proportion of documented infections is highly dependent on the availability and use of test kits over time. As detection was enhanced through improved clinical diagnosis [16], a sharp rise in cumulative cases on February 12 is likely explained by prior onset cases retrospectively documented under new diagnostic criteria. The undocumented infections may be largely associated with mild illness that areinsufficiently serious to seek treatment [17]. Our results show that theestimated proportion of documented new infections out of total new infections increased to 49% after diagnostic sensitivity was increased. Besides the increased test kit production and the more sensitive diagnostic criteria mentioned above, there are other factors that may enhance case detection: such as extensive testing, more test equipment, and more health workers and expertise [34]. Over the study period, the amount of community testing was strongly dependent on the supply of test kits [35], especially for the time before January 26. The amount of test equipment/health workers and expertise was gradually increased over time, however, the related data is not available.Theestimation of Re in the study from January 5 to January 28 is consistent with other recent studies [36] (3.11 by Jonathan et al. [5], 3.15 by Tian et al. [6], 1.4 to 3.9 by Li et al. [1], see in Table 2). Furthermore, our results demonstrate that the combination of transportation restrictions and quarantine measures was able to reduceCOVID-19 transmission. Transportation restrictions, including stopping all forms of public transportation, including trains, and air travel, sharply reduced social contacts thereby reducing virus transmission rates [13, 17]. Population behavioral responses (e.g., social distancing, contacts mixing, wearing facemasks, etc.) were changed concurrently with the implementation of transportation measures [33, 38]. Because a gradual increase in documented hospital cases in February can be partly due to the increased detection capability, theeffect of intervention measures (indicated as the reduction in Re) was estimated to be larger than previous studies that assumed fixed detection rates over the course of theepidemic. For example, Re was estimated to drop by 55.3% by Kucharski et al. [13]. Quarantine of infections was also found to beessential in curbing theepidemic. Our model estimated that the time between symptom onset and quarantine start was 5.44 days, similar to theestimates previously reported by Tian et al. (5.19 days) [6].
Table 2
A summary of models, data descriptions, reported estimates of the basic/effective reproductive number
Ref.
Model
Data (study period)
Basic (R0) or effective (Re) reproduction number
Li et al. [1]
stochastic standard susceptible-exposed infectious-recovered (SEIR) model
daily onset cases in Wuhan, China (December 10–January 4, 2020)
2.2 (95% CI: 1.4–3.9)
Jonathan et al. [5]
deterministic susceptible-exposed infectious-recovered (SEIR) metapopulation model
daily reported cases in Wuhan, China (January 1–January 22, 2020)
3.11 (95% CI: 2.39–4.13)
Tian et al. [6]
deterministic susceptible-exposed infectious-recovered (SEIR) model
daily reported cases in 262 cities in China, including Wuhan (December 31, 2019 - February 19, 2020)
3.15 (95% CI: 3.04–3.26, before the implementation of the transportation restrictions);
0.97–3.05 (after control was scaled-up from 23 January onward)
Majumder et al. [37]
incidence decay and exponential adjustment (IDEA) model
daily reported cases in Wuhan, China (December 1, 2019 - January 26, 2020)
2.54–3.61
Kucharski et al. [13]
meta-population stochastic susceptible-exposed infectious-recovered (SEIR) model
daily onset cases in Wuhan and internationally exported cases from Wuhan, China (December 1, 2019 - February 10, 2020)
2.35 (95% CI: 1.15–4.77, 1 week before transportation restrictions were introduced); 1.05 (95% CI: 0.41–2.39, 1 week after transportation restrictions were introduced)
A summary of models, data descriptions, reported estimates of the basic/effective reproductive number3.15 (95% CI: 3.04–3.26, before the implementation of the transportation restrictions);0.97–3.05 (after control was scaled-up from 23 January onward)Theestimated incubation period was 5.68 days which is also consistent with other recent studies [1, 6, 39–41]. As theestimated latent period is 2.82 days, some transmissions may occur before the symptom onset. Finding ways to reduce possible contact during the pre-symptomatic transmission period may be a critical component in containing the spread of the virus. Given theexistence of pre-symptomatic transmission, this study supports government recommendations that people who have had close contact with confirmed cases, regardless of whether they show symptoms or not, need to be quarantined for 14 days [42].The current study suggests that although intensive transportation restrictions and quarantine measures were critical in containing theCOVID-19 outbreak in Wuhan, the improvements in detection capability have to be taken into account in order to evaluate theeffectiveness of these intervention measures more accurately. This will allow more meaningful evaluations of public health control effects, which are important for making decisions on which intervention used in Wuhan should be replicated in other parts of the world in order to effectively control the current pandemic.There are two limitations to this study. First, in addition to its effect on theinfected individuals, the quarantine intervention can result in a lower number of susceptible individuals. Our model did not consider that because the number of close contacts during that period is not available. Given that the daily incidence was about 200 cases per million population and that Wuhan’s population size is approximatly 11 million [26], the proportion of susceptible individuals that were traced and quarantined each day is relatively small if we assumeeach infected case contacted 30 individuals. Its impact on theestimation of Re would be therefore small. Second, in this study, we assumed that the proportion of asymptomatic cases among all cases was constant over time. It is unlikely that it will be possible to get good estimates of the number of asymptomatic cases during the outbreak. Despite these limitations, we demonstrated that our methodology allowed for improved approximation of the actual epidemic pattern by taking account of changes in diagnostic capacity.
Conclusions
The combination of transportation restrictions and quarantine measures used in Wuhan was able to effectively contain local COVID-19epidemic spread.Supplementary Figures: Figure S1. The original observed daily documented cases without removing values. The red points indicate the observed number of cases at thedates when many retrospectively documented cases were counted. Data in these 3 days were replaced by smoothing values because they contain many retrospectively documented cases. The black points indicate the observed number of cases. Blue shaded background denotes incrementally increasing proportions of new documented infections out of total new infections on the corresponding period caused by improved diagnostic rates. Figure S2. Estimation of the transmission rate βt with 95% credible intervals. Figure S3. Estimation of theeffective reproductive number Re using a fixed hospital diagnostic rate in Wuhan. The fixed hospital diagnostic rate was assumed to beequal to theestimated mean value of the original rate (0.14, see in Table 1) when not considering the improvement of diagnostic capability. Re was estimated to be 3.76 (95% CI 2.43 - 4.36) before the transportation restrictions worked and to be 0.56 (95% CI 0.34 - 0.79) after then. Figure S4. Trace plots of parameter values for the model frame. The three different colours represent three chains.
Authors: Benjamin J Cowling; Sheikh Taslim Ali; Tiffany W Y Ng; Tim K Tsang; Julian C M Li; Min Whui Fong; Qiuyan Liao; Mike Yw Kwan; So Lun Lee; Susan S Chiu; Joseph T Wu; Peng Wu; Gabriel M Leung Journal: Lancet Public Health Date: 2020-04-17
Authors: Nathan Ford; Haley K Holmer; Roger Chou; Paul J Villeneuve; April Baller; Maria Van Kerkhove; Benedetta Allegranzi Journal: EClinicalMedicine Date: 2021-07-19