Covid-19 Case-Fatality Risk & Infection-Fatality Risk – important measures to help guide the pandemic response

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Dr Jennifer Summers, Professor Michael Baker, Professor Nick Wilson*

Summers J, Baker M, Wilson N. Covid-19 Case-Fatality Risk & Infection-Fatality Risk: important measures to help guide the pandemic response. Public Health Expert Blog. 11 May 2022. https://blogs.otago.ac.nz/pubhealthexpert/covid-19-case-fatality-risk-infection-fatality-risk-important-measures-to-help-guide-the-pandemic-response/

In this blog we explore two useful mortality indicators: Case-Fatality Risk (CFR) and Infection-Fatality Risk (IFR). We estimate the cumulative CFR in Aotearoa New Zealand (NZ) to be around 0.08%, which is lower than other jurisdictions who have used elimination approaches in the past, such as Australia, Singapore, Taiwan and Hong Kong. The cumulative number of Covid-19 infections in NZ is not known, but if we assume it is ~50%, the IFR would sit at ~0.03%. We recommend that the NZ Government improve Covid-19 surveillance in order to improve estimates of CFR, IFR and other key indicators to help guide future decisions around control measures.

Image from Pixabay

Aotearoa New Zealand (NZ) is in the post-peak stages of its first Omicron wave of Covid-19. The sharp increase in the number of reported cases in 2022 indicates how much more transmissible the Omicron variant is, compared to previous variants, after it spread widely when border control failed in early 2022. This picture is similar to other nations which had previously used border controls to manage Covid-19. As of 9 May 2022, NZ has reported ~826 deaths from Covid-19.

As we have discussed previously, NZ has managed through a range of public health measures to maintain a relatively low Covid-19 mortality rate which now sits at ~16-17 deaths per 100,000 population (also known as a crude mortality rate) during the pandemic compared to many other nations. This even resulted in an increase in life expectancy, and net decline in excess mortality (further supported in a May 2022 Report by the World Health Organization [WHO]). In this blog, we briefly look at two other Covid-19 mortality indicators; the case-fatality risk (CFR; also incorrectly referred to as a rate or ratio) and infection-fatality risk (IFR).

The Covid-19 CFR in NZ and internationally

The WHO describes the CFR as ‘the proportion of individuals diagnosed with a disease who die from that disease and is therefore a measure of severity among detected cases’:

Basically, the CFR ‘expresses the percentage of people that have been diagnosed with a disease that die from it’. A recent CDC study by Focacci, Lam & Bai (2022) found that of the various Covid-19 mortality indicators (such as the IFR and crude mortality rate), the CFR was best placed to ‘drive policy preferences that help stop the spread of the virus, as well as boost the level of concern with respect to a potential economic crisis’. However, the CFR is not an estimate of risk of death for an infected person, it is nevertheless useful when trying to increase understanding of the seriousness of an outbreak, such as Covid-19.

If we look at the data available from the NZ Ministry of Health, we can estimate the CFR based on the reported deaths and reported cases. Figure 1 shows the CFR in NZ by age group up to 4 May 2022 and Figure 2 shows the CFR in NZ by ethnicity. Whilst the CFR increases with age, the total CFR for the whole of NZ is 0.08%. The higher CFR seen at older ages in NZ is consistent with the international picture. The European/other ethnic group has the highest CFR at 0.1% and Asian the lowest at 0.024%. Care must be taken when interpreting these statistics, for example, there are different testing levels (along with underreporting), different vaccination levels and furthermore, different ethnic groups have differing age structures, ie, Māori and Pacific peoples have a much younger age structure compared to European/other which inevitably lowers the total CFR.

Figure 1: Case-Fatality Risk by Age Group in NZ (for the whole Covid-19 pandemic period)

Figure 2: Case-Fatality Risk by Ethnicity in NZ (for the whole Covid-19 pandemic period; not age-adjusted)

Using Our World in Data for the entire pandemic period, along with NZ, we have briefly looked at several other largely high-income jurisdictions who at some period during the Covid-19 pandemic utilised elimination approaches (Figure 3). Using these data up to 8 May 2022, NZ’s cumulative CFR sits around 0.08% (matching the NZ Ministry of Health based estimates), Singapore is 0.11%, Australia is 0.12%, Taiwan is 0.75% and Hong Kong sits at 0.77%. These cumulative CFR’s vary substantially when looking at the entirety of the pandemic, depending on several variables, such as country-specific demographic characteristics of the population (ie, age and underlying risk factors), the circulating variant(s) and in particular, surveillance and detection/reporting capabilities (see appendix Figure 1). If we exclusively calculate the CFR for the Omicron period in NZ (from mid-January 2022 when community transmission was detected along with the decrease in the Delta variant), the cumulative CFR still remains at 0.08% for NZ. Before Omicron, the cumulative CFR in NZ was ~0.34%.

Figure 3: Omicron Period – Covid-19 Case-Fatality Risk – Cumulative (selected jurisdictions that used elimination strategies in the initial response to the pandemic)

Singapore, and Hong Kong, like NZ, are currently post-peak of their first Omicron waves. For Australia, the first Omicron wave peaked in January 2022, and most states and territories are now probably past the peak of their second Omicron waves (except for Western Australia which is slightly delayed). For Taiwan, the Omicron wave is probably still to reach its peak, with the current outbreak the largest so far in the pandemic. There are also reports from the Taiwanese Central Epidemic Command Center that the majority of deaths up to 3 May 2022 in the Omicron wave are amongst the unvaccinated. A recent study (still to be peer-reviewed) suggests that in Hong Kong, ‘a similar fatality risk for unvaccinated cases in the early part of our fifth wave [Omicron BA.2 variant wave] compared to earlier waves, indicating that the intrinsic severity of BA.2 may not be much lower than the ancestral strain if at all…”. In NZ, about half of the Covid-19 deaths have occurred amongst those who have not had a booster, although proportionality, deaths are higher amongst the unvaccinated. However, to truly understand the reason for the current ~10 fold difference between NZ’s CFR and that of Hong Kong and Taiwan would require more extensive investigation.

There are also limitations to using CFR statistics during an ongoing outbreak to inform disease management and policy (as also made clear by Our World in Data), and also for cross country/jurisdiction comparisons. For example, the CFR may be underestimated due to the time lag from diagnosis of cases to reporting of deaths. Working in the opposite direction, the CFR may be overestimated if cases are undercounted. We only need to look at NZ to see potential underreporting of cases during the current Omicron period. Producing valid estimates of the IFR may be even more difficult again during an outbreak unless there is an ongoing measurement of infection rates (for example by using serological surveillance as is done in a recent CDC seroprevalence report).

The Covid-19 IFR in NZ

Our World in Data describes how the IFR is able to address the question of what the likelihood is of dying is for an infected individual. It does however require a reliable estimate of the total number of cases (including asymptomatic), not just the diagnosed cases like the CFR:

A recent systematic review published in the Lancet estimated from multiple seroprevalence surveys that during the pre-vaccine phase of the pandemic, the IFR in 190 countries/territories varied substantially based on age, location, time and with public health intervention. Age patterns for mortality and IFR from Covid formed a ‘J-shaped curve, with the lowest risk occurring at approximately age 7 years’. For countries, the highest age-standardised IFR estimates were for Peru and Portugal at 0.911% and 0.850% respectively. The specific estimates for NZ suggest that the pre-vaccine IFR was 1.217% (95% confidence interval [CI]: 0.810% to 1.866%) on 15 April 2020, and decreased to 0.79% (95%CI: 0.605% to 1.056%) by 1 January 2021. When this measure is age-standardised (to the global age distribution of the world’s population), the pre-vaccine IFR in NZ is estimated to decrease to 0.445% (95%CI: 0.341% to 0.595%) on 1 January 2021.

The impact of different variants contributing to the current true number of cases in NZ (not just those which are confirmed), along with the wide-spread vaccination and potential immunity from previous infections in NZ would substantially change the IFR estimate from these pre-vaccine IFR estimates. If we apply the results of a recent CDC seroprevalence report indicating that ~50% of all Americans have SARS-CoV-2 antibodies, NZ would have a IFR of 0.03% (for the period of the entire pandemic) with ~50% of the population having been infected (whether having symptoms or not).

One estimate for seasonal influenza IFR in NZ is 0.039%, so if we assume that ~50% of New Zealanders have/had Covid-19, the IFR for Covid-19 of 0.03% (for the period of the entire pandemic) is lower than the IFR for seasonal influenza. However, this IFR Covid-19 estimate for NZ is not robust, and would need be adjusted for age/ethnicity/vaccination status to allow valid comparison with seasonal influenza (for which vaccination rates are much lower than for Covid-19). Such a comparison should ideally consider the impact of long-term complications from either Covid-19, such as long-Covid, or seasonal influenza.

What could the NZ Government do to improve surveillance and disease control?

To robustly explore the impact of Covid-19 in terms of mortality, in particular amongst different groups in the NZ population, accurate data inputs are needed. These data would help inform future Covid-19 pandemic policy decisions, along with helping to identify at-risk populations more accurately. The following are actions that the NZ Government could consider to improve Covid-19 surveillance and management:

  • Ideally, NZ would conduct a similar population-based antibody survey to the recent CDC seroprevalence report to give more quality estimates of the number of people who have been infected with SARS-CoV-2, the virus that causes Covid-19 . This would allow for the calculation of a more valid IFR estimate for NZ.
  • As we have described previously, there is the ongoing potential for new Covid-19 variants. In general, genome sequencing needs to be maintained (eg, of a random sample of people arriving in NZ and for a random sample of cases admitted to hospitals). There may even be a case for routinely sampling wastewater from incoming international flights – as successfully used in Australia.
  • As part of targeting interventions to those who are most vulnerable to dying from Covid-19, the NZ Government should consider enabling a second booster/fourth dose for high-risk groups, ideally before the upcoming winter period (as approved in Australia for higher-risk individuals). Similarly, consideration should be made to reducing the minimum age for boosters in NZ, which currently is 16 years of age (as recommended by the CDC) along with reducing the time period between child doses.
  • Further efforts should be made to encourage both Covid-19 vaccinations and seasonal influenza vaccinations before the upcoming winter period.
  • Further efforts are need to improve indoor ventilation (eg, schools and offices), but also to maintain high levels of mask use in indoor settings.

Unfortunately, NZ can expect future Covid-19 pandemic waves, so these above actions will help strengthen the populations’ immunity to both Covid-19, but also other respiratory infections such as seasonal influenza. Furthermore, by strengthening surveillance in NZ, the NZ Government can more accurately assess Covid-19 mortality risks, giving insight into the burden amongst the most at-risk populations, along with giving more robust analysis to feed into future Government policies.

* Author details:  All authors are with the Department of Public Health, University of Otago, Wellington.

Appendix

Appendix Figure 1: Entire Pandemic Period – Covid-19 Case-Fatality Risk – Cumulative (for those jurisdictions that used elimination strategies at some point during the first two years of the pandemic)

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7 thoughts on “Covid-19 Case-Fatality Risk & Infection-Fatality Risk – important measures to help guide the pandemic response

  1. this is excellent analysis. any thoughts regarding the 90 day interlude between infections and reinfections. As we reduce our public health social interventions we are seeing increasing case rates in working age adults in the Nth Island. Nga mihi

    • Kia ora Dr Kletchko,
      Thank you for your comments. The Ministry of Health does not consider reinfection likely to occur within 90 days of a previous Covid-19 infection. The Ministry does not collect data on reinfection, and this limits our understanding of the burden of Covid-19 in the community. For example, it is not possible to add positive RAT results to the My Covid Records if a previous infection has been reported in the previous 90 days. This might have implications for individuals who need to access Covid-specific sick leave and may result in further spread of Covid. However, there is international evidence for a rise in the number of Covid-19 reinfections, even more so with the Omicron variant, which is another reason for strengthening the public health measures in place, rather than reducing them. There is also some evidence to suggest that the risk of developing Long Covid is increased with each reinfection.
      Regards
      Dr Summers

      • In Auckland our current daily rate of infection is 0.16%. In my highly vaccinated leafy suburb I am hearing of a lot more infections this time around and a large degree of non reporting.
        I think it would be conservative to multiply that case rate by 2.5.
        On that basis we would reach 100% in 250 days.
        In my view we are still under any balance point between infections and our waning immunity, whether across infection-induced or vaccine-induced.
        I note the mention of 90 days as some kind of marker for reinfection.
        What about 180 days?
        What about 365 days?
        I don’t see or hear, anywhere, consideration of the true effects of waning immunity.
        If there is any waning at all, restrictions will mean those who escape their turn at infection will undergo further waning. They will emerge more likely to be infected, less able to resist the process.

        • I have been searching for any evidence that public health measures create any permanent reduction in total cases, without some other game changing occurrence – eg elimination, improved vaccination.
          Or without endless repetition. And this would be made dubious by significant waning immunity.
          I have found none.
          The BMJ has this meta-analysis of measures: –
          https://www.bmj.com/content/375/bmj-2021-068302
          The introduction says;
          “A variety of containment and mitigation strategies have been adopted to adequately respond to covid-19, with the intention of deferring major surges of patients in hospitals and protecting the most vulnerable people from infection.”
          Both good and useful goals but deferment only.
          What is the exit strategy for universal measures?
          Vulnerable people could up their own protection by better masks for themselves and visitors, by visitors taking a RAT.
          Sure, we have unknown variants brewing, which will raise infection numbers. Some of these may be more severe and infection now may be preferable.
          Prof Blakely floated the possibility to unvaccinated people with the arrival of Omicron.

  2. There is a small elephant in the room now.
    Figure 2 shows the CFR for European at 1.46 times higher than the CFR for Maori.
    Age factors would confound this and need to be analysed.
    (Personally I am pro-Maori, pro-Pasifika and pro-justice. Justice demands that special funding be made on the grounds of provable need. I do have a problem, and it is having to sidestep seemingly poorly analysed demands through the media for special funds.)
    I note early reports of concern about case rates in Counties Manukau. My attitude was, they are lucky -we will all cop it -they have first dibs on the hospital beds.
    Things have indeed switched around.
    Current case rates in ADHB are 1.42 times higher than CMDHB.
    Hospital bed use is nearly 3 times higher.

    • I’d like to downgrade my elephant above, perhaps to the size of a stuffed toy.
      I am probably the last person reading this to have realised the full extent of the disparity in age at the top end of Maori and Euro demographics.
      Maori over 70 years, approx 7%.
      European over 70 years, approx 26%.
      As a lens …
      If all deaths are assumed to be over 70s, Maori risk would be 3 times higher.
      If Maori deaths alone are assumed to be in over 60s, (population ~19%) the risk to the cohorts would be similar.

      BTW. I have plotted our ICU and Death figures, with an offset to align them better. It makes ICU look dangerous. Or perhaps our death figures are not quite fit for purpose.
      Currently they are nearly touching, which appears to be partially an influence from Easter and Anzac weekends.
      Those weekends have both lifted case numbers.
      If the lift wasn’t there our current upswing would show up as steeper.

  3. Why is no attention being given by responsible experts, to the role of environmental factors in different nations and regions Covid outcomes? By April 2020 I was not satisfied with the orthodoxy about how Covid spreads, because it spread so randomly and had such randomness in its severity, that it was obvious that something had to be “filtering” spread and virulence, and this was extremely unlikely if spread was by contact and large droplets. Therefore I was interested to discover back then, the “aerosol buildup indoors” hypothesis, and I was advocating for this as the correct one from around June 2020.

    Aerosol buildup indoors obviously will be affected by the extant climate and weather. Maurice de Hond convincingly argued as the pandemic spread around the world, that the outbreaks coincided with particular weather patterns that result in indoors environments being sealed off to a greater extent (air pollution also plays an obvious role).

    I argued that it was entirely likely that NZ had some Covid infected overseas arrivals right from January 2020 and this made insufficient impact on any health statistics for anyone to be concerned. The fact that it was summertime here obviously helped. The WHO stubbornly refused to accept the aerosol hypothesis and also said “Covid is not seasonal”, which confused the issue, the complex reality being that summertime in some places also causes indoors environments to be sealed off against the outdoors heat. Some regions around the world have high pollen levels sometimes, or high particulate levels during harvesting season, which have the same effect. When you think these things through properly, there is major explanatory power for ALL the regional outcome data.

    Humidity causes aerosols to precipitate faster and remain airborne shorter. Few indoors environments in NZ even with airconditioning, end up with low humidity because the ambient humidity is high. 20 percent or lower is seasonally common in many parts, eg New York; very seldom does anywhere in NZ fall below 45 and it is common in Auckland and Wellington for it to be 70+.

    UV is “the principal virucide in the natural environment” and of course NZ has high levels of UV, as sunscreen experts can testify.

    NZ’s mild temperatures for much of the time result in a lot more natural ventilation being used at all times of year; we have some pleasant days even in the middle of winter. Much of our stock of buildings is naturally “draughty” and not in a bad way. Air exchange occurs at a much higher rate even with windows closed, than in some countries where stone, masonry and concrete is the predominant building material even for homes. We have much less calm weather, and winds and breezes create a lot more “accidental ventilation”.

    The emerging data, such as that presented in this article, completely supports the hypothesis that natural environment and built environment are highly significant in diseases where aerosol buildup indoors is the main vector. I cannot describe my own feelings, after two and a half years of social, economic, and health destruction in the name of targeting a single respiratory virus, at the absence of “official expert” discussion of these factors. These people should have known all this stuff in the first place; an intelligent layperson could work it out by 3/4 of the way through 2020.

    Another error cascade has resulted from total failure to consider an “inoculum dose – illness severity” causative relationship. At least some of the seeming “mystery” of random illness severity – some people dying, others asymptomatic but positive – can be explained by DOSE of inhaled viruses. This relates to aerosol concentration in the indoors air, times the duration the patient was present. Care Homes are killing fields because the victims are there 24/7 inhaling the built-up aerosolized virus. It is not “entirely” about their frailty!

    The focus of expert public policy advice on de-risking schools is baffling, considering that if we could de-risk Care Homes, we wouldn’t have the lion’s share of the “Covid death toll” we do have, and the old folk could have a few more weeks or months or years before dying of whatever was their pre-existing weaknesses. I was very confirmed a few months ago when Ioannidis et al published a study showing the IFR in Care Homes as TEN TIMES higher than the same age cohorts “outside of Care Homes”. Covid-19 was really not a pandemic at all, it was “Care Home sick building syndrome”. With some contribution from “sick building syndrome” everywhere else, a consequence of “energy efficient” buildings and HVAC being such a fad for a couple of decades and counting.

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