With
Surjit S Bhalla
Covid19 Deaths: Variation Across Countries
Existing literature on
COVID deaths has focused mainly on identifying government measures which may
have been successful in slowing the fatality rate or cumulative death rates. In
this note we analyze exogenous factors which may explain divergences in the
rate of mortality (deaths) from COVID.
Our analysis on deaths
uses the same underlying model/framework as used in the estimation of COVID
cases. Several contemporary and historical studies of virus diffusion have
documented that the spread follows an S-shaped pattern. We are not aware of any
studies showing that the number of deaths very likely also follows an S pattern
– but we are not epidemiologists so we very likely have missed the studies –
there must be some.
Framework and Approach
The prime exogenous
determinants of COVID cases (Blog 4) were found to be urbanization, the share
of elderly male population, and average temperature that each country had
experienced during the last five months. Because of the imperatives of an
S-shaped pattern, and in order to account for this influence, we had estimated,
and reported, cross-country models as of day 40, 60, 80 and day 100 of virus
diffusion in each country. We use the same model to explain cross
country Corona deaths with the difference that the model is estimated for
different death days, rather than different infection days. The cross-sections are for day 30 through day 70
of deaths, in increments of 20 days. For completeness, we also add log
population as a determinant of log deaths; as expected, its coefficient gets
close to 1 for longer period samples (for 70 days, the coefficient is 0.94).
The presence/absence of log population does not make any difference to the results,
but it is econometrically correct to include it.
Death rates depend on the
both the number of cases and on the variable that directly affect fatality of
the disease, such as aged population and the quality of health infrastructure.
As equations are estimated in reduced form, the difference in the number of
deaths across countries will also be determined by the variables which affect
the spread of the virus, even if they do so indirectly (via the influence on
infections). The share of urban population was found to be an important
determinant of case transmission (possibly operating as a social distancing
proxy). It may however also be correlated with direct determination of death
rates i.e. urbanization may be a proxy for better health care facilities. Analogously,
higher temperature was found to slow the spread of virus infections, but higher
temperatures may also make the patient less vulnerable to serious illness.
Results
Table 1 (and Chart 1)
reports our experiments with modelling (log) COVID death rates. Separate
regressions are reported for day 30 thru day 80, in increments of 10 days; as
for the case of infections, the separate day regressions are estimated to
capture the likely different stages of the S-shaped (logistic) curve of
diffusion. The first noteworthy result: all three determinants (age,
temperature and urbanization) remain statistically significant – more
importantly, their magnitude stays broadly the same. This is very encouraging
because it suggests that our model specification is robust.
The second important
result: effect of aged population on deaths is much more pronounced than was
the case with infections. In the case of
infections, we had found that the share of male population greater than 60
yielded worked the best in terms of statistical significance – in the case of
deaths, the effect is the highest for males over the age of 80. These results are consistent with limited data
available for COVID death rates by age from hospital data in different
countries, which has been partially attributed to co-morbidity and other
pre-existing conditions (like diabetes and heart problems). Though conjectured,
we are unaware of any empirical study documenting the vulnerability of deaths
to differences in the share of aged population
The third result is that
temperature variable is highly significant. This result parallels the effect of
temperature on corona virus infections, but is even stronger, suggesting
that higher temperature may have both direct and indirect effects on reducing
death rates.
Table 1:
Determinants of of COVID19
deaths across countries
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Dependent Variable: Log of Covid19 deaths
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Days since the first day COVID19
death was observed
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30
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50
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70
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70
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Log population
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0.569***
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0.795***
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0.940***
|
0.942***
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(8.45)
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(10.71)
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(11.01)
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(10.06)
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% population >= age80
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0.849**
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0.987**
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0.787*
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1.075**
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(2.92)
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(3.07)
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(2.35)
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(3.25)
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% urban
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0.0138*
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0.0217**
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0.0211**
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0.0301***
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(2.50)
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(3.33)
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(2.63)
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(3.72)
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Average temperature
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-0.0405**
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-0.0455**
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-0.0577**
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-0.0710**
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(-2.86)
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(-2.92)
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(-2.98)
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(-3.12)
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(log) # Hospital Beds
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-0.622**
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(-3.00)
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-6.609***
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-10.08***
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-11.51***
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-4.376
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_cons
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(-4.70)
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(-6.26)
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(-6.12)
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(-1.18)
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# observations
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154
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145
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120
|
110
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adj. R-sq
|
0.5274
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0.6168
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0.5918
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0.6677
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t statistics in parentheses
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="* p<0.05
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** p<0.01
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Sources: COVID19 data, JHU, World
Bank, UN
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The effect of share of
urban population on deaths is also significant (Table 1). The magnitude of the
effect is much less than was the case with the number of infections. This
suggests that the correlation between urbanization and quality of health care
is high, and that the quality of health care in urban areas may be directly
helping reduce the incidence of death rates. We test for this possibility below.
If urban hospitals have better equipment
and quality of health care than rural ones, as is true in most countries, then
urbanization effect would be lower and could eventually turn negative
(capturing transmission via lack of social distancing)
The number of deaths (and
infections) will obviously be higher the larger the population, ceteris
paribus. Curiously, this result is the least noticed in the media (and even
in some scholarly articles). The most common line in the media (and twitter and
podcasts) is that the number of infections or deaths recorded a new high
yesterday! But each new local high will mean (after the tide or curve has
turned) less and less percent increase, and eventually a flat, or zero
increase.
The effect of population
on number of deaths has steadily increased over time from 0.57 on day 30 to
reach 0.94 on day 70. In other words, if a country has 10 % higher population
than another country, it will have ( 0.94*10) 9.4 % more deaths, again, after
accounting for all other influences.
Quality of Health
Services and Effect on deaths We also analyzed the effect of quality of health
services on the corona virus death rate across countries, by using the log
magnitude of hospital beds as an indicator. This variable is found to be
significant at the 5% level (last column of Table 1). Its magnitude is -0.622 i.e. each 10 %
increase in hospital beds would lead to, given average effects, a 6.2 % decline
in COVID deaths.
And now for a picture of
comparative performance in the war against COVID
Chart 1 documents the
overall prediction vs reality on day 70 (again, day 70 is not the same date for
different countries but different dates reflecting day 70 of the observed death
rates within the country). The most
prominent outlier is USA with a higher than predicted number of Covid related
deaths. Other countries with higher than predicted deaths are Great Britain,
Italy, Spain and Brazil. On the other side China, Japan, Taiwan, and Hong Kong
(among many others) stand out as countries with less than predicted number of
deaths.
Missing from the picture
is Viet Nam – it is missing because it has zero recorded deaths to date (number
of infections only 329). Cambodia also has zero deaths, and only 125
infections. Laos even fewer infections (19) and zero deaths. Myanmar 240 cases
and 6 deaths; Costa Rica 12263 cases and 10 deaths. Earlier, we had
mentioned how population size can affect interpretations of performance.
COVID history of New Zealand and
Australia is revealing. New Zealand with a 4.8 m population has only 22 deaths;
Australia has a population of 25.3 million and only 103 deaths i.e. a
population 5.3 times as large, with deaths only 4.7 times higher.
Chart
1: Actual and Model Predicted Corona Death Rates
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