The reproductive number R0 of COVID-19 in Peru: An opportunity for effective changes
Fecha
2020Metadatos
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On December 31, 2019, the city of Wuhan, from the People's
Republic of China, reported to the World Health Organization (WHO)
around twenty-seven cases of pneumonia of unknown etiology, which
was identified on January 7, 2020, as new coronavirus (nCOV) [1].
Subsequently, the WHO named it as COVID-19 (Coronavirus Disease
2019).
Peru reported, on March 06, the first imported case of COVID-19 in
a Peruvian man with travel history to Europe. Then, other cases were
confirmed among his relatives [2]. Given the increase in the number of
cases, on March 15, the Peruvian president declared a State of Emergency, compulsory social isolation, and international border closure.
The mechanism of transmission of COVID-19 is through person-toperson contact. For this reason, it is important to evaluate the likelihood of the spread of the disease in Peru and the Lima province.
Therefore, we aimed to estimate the reproductive number (R0) of
COVID-19 during its early outbreak in the Lima province and Peru.
R0 was calculated to estimate the spread of COVID-19 in the Lima
province and Peru. The R0 is a measure to quantify the probability of
new cases that result from an effective contact with an infected individual. It depends on a specific point in time and the social behavior
of a community. Therefore, it is unique for a specific population and
region.
Data was extracted the reports of the Peruvian Ministry of Health.
The “incidence” package was used to calculate the incidence in the
selected 5-day time frame. Moreover, we retrieved the R0 with the
Poisson likelihood technique using the “earlyR” package and made the
graphics with the “ggplot2” package. All analysis was made in the R
software version 3.6.2.
The overall basic reproductive number of Peru during the outbreak
period was 2.97 (See Fig. 1), meaning that a single case could have
infected almost 3 different persons. Lima had a similar outcome with an
R0 of 2.88.
After the declaration of the State of Emergency, the R0 are expected
to decrease. However, several remarks may point towards a sustained
or increased R0 in the population. First, the number of cases could
increased due to a delay in the delivery of swab samples to Lima and the
subsequent test results to the respictive provinces. During this early
phase of the outbreak, the only available laboratory was the National
Institute of Health (INS), located in Lima. Therefore patients in other
provinces had to wait more than 3 days for their laboratory result [3],
which may have resulted in a higher transmission rate and an improper
medical management and isolation containment of the true cases.
Second, the place were the sample was taken could increase the rate of
false negatives. A recent report [4] indicated that the results of molecular tests, such as RT-PCR, depend on where it is obtained. This is
because there is a difference between bronchoalveolar lavage fuild
especimens (93%) compared to the nasal swabs (63%) and pharyngeal
swabs (32%); the last one is the location where health perssonel take
the samples of the Peruvian suspected cases.
Other causes for the high R0 could be that, despite the State of
Emergency, the population have not respected the quarantine. A local
report identified persistent mass gatherings in different parts of the
country [5], and an estimated of 16,000 detainees for inflicting the
temporary Govenrment restrinctions. Furthermore, several individuals
did not respect the require “social distancing” bewteen person to
person. Studies highlight that “social distancing” is one of the pivotal
public health measures to reduce the transmission in places were there
is evidence of community transmission [6].
These results identified the likelihood of the spread of COVID-19 in
Lima province and Peru. Moreover, the behaviors of several individuals
against the Governement mitigation actions suggest that the spread
will, in fact, increase. Moreover, is expected that Peru reduces the time
of cases identification by descentralizing testing laboratories and the
implementation of antigen-antibody tests.
Colecciones
- Chiclayo [1]