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Victoria COVID-19 projections – 5 October 2021

What’s new?

Today’s announcement was 1763 new local cases is the highest of the outbreak.

The Gompertz model projects an ongoing trajectory of case growth and is likely an underestimate. The model estimates around 9,500-10,500 new cases in the coming week.  However, if the transmission dynamics have significantly changed over the past week, then these estimates may be quite inaccurate.  Accounting for the 7-day projection underestimate (12%), the model suggests around 14,000 new cases.

Note: using non-linear regression of the data to the Richards’ growth curve model is failing. I have had to use the most recent standard errors of parameter estimates (from 29 Sep 2021) to undertake some of the simulations. The Gompertz model is unaffected.

 

Projection of new daily cases, and cumulative counts of COVID-19 with data up to 5 October 2021

What is this?

Blue charts the the Gompertz model.  The top image is a chart of the cumulative (total) COVID-19 cases in Victoria, starting from 4 August 2021, and the lower image is a chart of the daily new cases.  Only local cases are included (i.e., excluding cases identified in quarantine).  Projections are given for the next 7 days.  It should be noted that estimates have high levels of uncertainty beyond a few days and must be interpreted cautiously.

The projections are made using a model by fitting the cumulative case data since 4 August 2021 to a Richards’ growth curve and Gompertz equation using non-linear regression. The dark central dashed lines are the model estimates, with 95% confidence intervals of the estimate. On the lower chart, the colour gradations can be understood as the degree of uncertainty in the model projections.

 

Gompertz and Richards’ growth curve

The Gompertz function is a type of sigmoid, or “S”-shaped curve. It’s been around since the early 19th century and was initially used to describe and model demographic mortality curves, and hence, well known to actuaries. The Gompertz function can also be used to accurately model biological growth (e.g., epidemics, tumour size, enzymatic reactions). I have chosen to use this model to help with creating insights as earlier in the pandemic, it was found to be useful in modelling cumulative cases of COVID-19 from the Chinese outbreaks (Jia et al. arXiv:2003.05447v2 [q-bio.PE]).

The Richards’ growth curve (or the generalised logistic function), which is a broad family of sigmoid (S-shaped) curves that can describe well many types of growth, including epidemics. It has also been demonstrated to have utility in modelling COVID-19 outbreaks in 2020 (Lee et al. PLoS One 2020 doi: 10.1371/journal.pone.0236860).

Gompertz equation:

Richard’s growth curve / generalised logistic function:

Why the changes?

I’ve undertaken some assessment of the degree of predictive error in both the Gompertz and Richards’ growth curve models.  These charts compare the 7- and 14-day total case projections of the models, to what actually occurred in reality 7 and 14 days later.  For interpretation, above the 0% error line means that the model provided an over-estimate compared to reality, and below the 0% error line an underestimate.

Like seen in the Sydney 2021 models in early July, the very early data from about the first month results in models that lack stability, with a tendency to underestimate, before “catching up” with the data.  The Richards’ growth curve model has been quite unstable and is currently broken.  The Gompertz model projections had been describing the case series well but has started underestimating.

 

Daily case trends

Comparison between the Gompertz and Richards’ growth curve model projections, along with smoothed data trends (7-day simple moving average, and GAM) with data up to 5 October 2021

The generalised additive model gives a descriptive “reality check” to the models.  The GAM can be considered as an advanced smoothed trend of the daily counts. The Richards’ model is broken and has major uncertainty. The Gompertz model is likely underestimating.

Model summaries

Richards’ growth curve model

summary(model.r)

Model fitted: Generalised logistic (ED50 as parameter) (5 parms)

Parameter estimates:

                 Estimate Std. Error t-value p-value
b:(Intercept) -3.2048e-02         NA      NA      NA
c:(Intercept) -1.5674e+02         NA      NA      NA
d:(Intercept)  3.5597e+05         NA      NA      NA
e:(Intercept)  6.4195e+01         NA      NA      NA
f:(Intercept)  3.8292e+00         NA      NA      NA

Residual standard error:

 163.0779 (58 degrees of freedom)

Gompertz model

summary(model.g)

Model fitted: Gompertz (4 parms)

Parameter estimates:

                 Estimate  Std. Error   t-value   p-value    
b:(Intercept) -2.1668e-02  1.1771e-04 -184.0793 < 2.2e-16 ***
c:(Intercept)  1.2380e+02  4.2671e+01    2.9012  0.005218 ** 
d:(Intercept)  3.4250e+05  9.2977e+03   36.8374 < 2.2e-16 ***
e:(Intercept)  1.0910e+02  5.4197e-01  201.3020 < 2.2e-16 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error:

 193.3006 (59 degrees of freedom)

 

Want to know more?

Primary data source is from Victoria Government Department of Health for daily new cases.  The analysis is performed using RStudio Cloud using R version 4.1.0.

Today’s charts

Data: au_covid_vic
R code: models_vic