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Total Excess Mortality Surveillance for Real-Time Decision-Making in Disasters and Crises

Published online by Cambridge University Press:  13 March 2023

Carlos Santos-Burgoa*
Affiliation:
The George Washington University
Alejandra Garcia-Meza
Affiliation:
Independent Consultant
Maria Jose Talayero
Affiliation:
The George Washington University
Nolan Kuenster
Affiliation:
The George Washington University
Ann S. Goldman Hawes
Affiliation:
The George Washington University
Elizabeth Andrade
Affiliation:
The George Washington University
*
Corresponding author: Carlos Santos-Burgoa, Email: csantosburgoa@gwu.edu.
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Abstract

Crises such as Hurricane Maria and the coronavirus disease 2019 (COVID-19) pandemic have revealed that untimely reporting of the death toll results in inadequate interventions, impacts communication, and fuels distrust on response agencies. Delays in establishing mortality are due to the contested definition of deaths attributable to a disaster and lack of rapid collection of vital statistics data from inadequate health system infrastructure. Readily available death counts, combined with geographic, demographic, and socioeconomic data, can serve as a baseline to build a continuous mortality surveillance system. In an emergency setting, real-time Total, All-cause, Excess Mortality (TEM) can be a critical tool, granting authorities timely information ensuring a targeted response and reduce disaster impact. TEM measurement can identify spikes in mortality, including geographic disparities and disproportionate deaths in vulnerable populations. This study recommends that measuring total, all-cause, excess mortality as a first line of response should become the global standard for measuring disaster impact.

Type
Concepts in Disaster Medicine
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of Society for Disaster Medicine and Public Health, Inc.

There are 2 approaches for mortality reporting in a disaster or crisis: event-attributable death counts and estimating total excess mortality (TEM). TEM reports the additional number of deaths within a period compared with the expected number of deaths (the counterfactual should the event not have happened) within a period, encompassing all causes of death. Neglect in timely TEM estimation of disaster mortality results in delayed action by authorities and their ability to define mitigation measures and prevent mortality in manmade and natural disasters and in health crises such as the coronavirus disease 2019 (COVID-19) pandemic. Estimating disaster mortality includes deaths directly attributable to the forces of a disaster and indirect deaths which have been precipitated by unsafe or unhealthy conditions pre-, during, and post-disaster. 1 Globally, there is a lack of a standardized approach for estimating disaster mortality. Reference Issa, Ramadugu and Mulay2 Use of event-attributable death counts as a method to measure impact has also been criticized as being flawed and heterogenic during crises such as Hurricanes Katrina and Maria, and the pandemic. The effort to characterize the overall impact of Hurricane Maria in Puerto Rico (PR) caused political strife and misguided responses until findings from a specific report commissioned on the disaster’s impact were communicated to the public. All because the lack of a standardized approach for estimating disaster mortality. Reference Santos-Burgoa, Goldman and Andrade3, Reference Andrade, Barrett and Edberg4 The COVID-19 pandemic presents another example of the challenges, delays, and heterogeneity in the estimation at the jurisdiction, national, and global levels of it’s true impact. Reference Stokes, Lundberg and Bor5

In epidemiology “Total Mortality” (TM)—known as “all-cause mortality”—is an indicator that reflects the overall result of the social, environmental, and health-care conditions in a population. The measurement of total mortality may be the simplest and most accessible indicator to identify progress in treatments, hospital performance, societal health, and human security performance. It is used as a benchmark for best practices for public health and health-care planning. Reference Baghdadi, Bourrée and Robert6 TM varies by socioeconomic status with known gradients within societies. It is used by media and analysts for their reporting and is measured by several national and regional systems for disease-specific surveillance, but frequently omitted in actual policy-making. Reference Checchi and Roberts7–11

Excess mortality from a disaster or crisis is estimated through various statistical methods including calculation of a mortality ratio, which compares “observed” deaths rates in the disaster-affected population to the “expected” death rate during the same time period in previous years. 12

Estimation of excess mortality includes various methods for the establishment of a counterfactual: the death rate of the population in the absence of the event. This can be established using weekly or monthly mortality data for the previous 3, 5, or more years. The regression model used to estimate the difference between observed deaths and the “expected” counterfactual mean can account for demographics, displacement, seasonal mortality trends, and other assumptions. 11

World Health Organization’s (WHO) Vital Strategies includes a rapid TEM surveillance method that estimates trends and excess mortality based on the expected age-specific mortality rates as observed in previous years, and the difference with the observed rates. 13 It can be carried out at the national, facility, or even community level. 11 PAHO, the WHO Regional Office for the Americas, provided tools to support the development of countries’ capacities to conduct the analysis, estimating the baseline from the historic average. 1416 European Union member countries implemented a procedure for excess mortality estimation after the Influenza A (H1N1) pandemic of 2009. 17 This model is based on the linear trends of 5-y mortality, correcting for information delays, using large age groupings, and considering a Poisson to predict mortality in a given time frame with and without seasonality. Poisson Regression models are used for modeling rare or infrequent events where the outcomes are count data, discrete data with nonnegative integer values occurring during a timeframe. Reference Hayat and Higgins18 Individual countries have adapted their own methods. In the United States (US), 19 the Center for Disease Control and Prevention (CDC) uses over dispersed Poisson modeling, based on Farrington’s algorithm, Reference Noufaily, Enki and Farrington20 adjusting for seasonality, and considering lag in information.

Recent contributions to the methods for calculating excess mortality in disasters include the estimation of the impact of Hurricane Maria in PR. Investigators observed the departure of the mortality rate from baseline, accounting for seasonality, age, sex, date, and socioeconomic status. Statistical modeling using over-dispersed log-linear regression of mortality and mortality risk after Hurricane Maria showed prolonged excess mortality compared with baseline and extending 6 mo after the storm, with an increasing mortality rate in older men and low-income populations. 1, Reference Santos-Burgoa, Sandberg and Suárez21 The investigators chose over-dispersed log-linear regression over “Poisson regression because the number of monthly deaths is greater than its mean, violating a basic condition of the Poisson model. Over-dispersed log-linear models produce the same models but different assessments of uncertainty compared with Poisson regression.” 19 Another study on excess mortality due to Australian bushfires found that bushfires caused 417 excess deaths from October 2019 to February 2020. Reference Arriagada, Palmer and Bowman22 Additionally, the worldwide demand for real-time excess mortality data to understand the COVID-19 pandemic’s true impact on the world population prompted efforts to produce estimates. Notable examples of COVID-19 death toll estimates are those developed by The Economist and the Institute for Health Metrics and Evaluation (IHME). Reference Checchi and Roberts7,8

The Economist uses a machine learning approach based upon official excess mortality data and over 100 national indicators that seem to correlate with excess deaths in over 80 countries where data are available. This includes official deaths, scale of COVID-19 testing and the results of antibody surveys. Reference Checchi and Roberts7 IHME researchers developed excess mortality estimates for 191 countries. They created a database of available all-cause weekly or monthly mortality data, correcting for time lags in reporting and underreporting of deaths. They excluded weeks with heat waves where excess mortality might be overestimated owing to the large increase in mortality observed from extreme heat during the pandemic. Expected mortality was calculated using an ensemble model (which reduces the spread of dispersions in predictions) to predict deaths in the absence of the COVID-19 pandemic for the years 2020 and 2021. For locations where weekly or monthly all-cause mortality data were not available, a statistical model was developed to capture the relationship between key COVID-19-related covariates (eg, seroprevalence, infection detection ratio) and other population level disease metrics, and excess mortality. 8 One of several limitations mentioned by the authors is that their estimates are based on all-age mortality data, male and female data combined. 8

This study describes the challenges of using different approaches (namely cause-specific mortality) to assess event impact and provide recommendations on how to integrate TEM into day-to-day surveillance systems.

Assessing Disaster or Crisis-Related Mortality and Its Impact on Decision-Making

The following sections address challenges to mortality surveillance and build on Noe’s main challenges to disaster-related mortality surveillance, with added consideration on the use of TEM. Reference Noe23

i. Defining disaster-related deaths by using cause-specific mortality

Relying on death certificate attribution for official mortality counts raises challenges in terms of the criteria for attribution used by the physician certifying the death and accounting for indirect mortality. To date, the international community has not agreed on a definition of disaster-related deaths, owing in part to the lack of standard methodology in the certification of deaths in disasters and in attribution of mortality.

The Technical Guidance for Monitoring and Reporting the Global Targets of the Sendai Framework for Disaster Risk Reduction (SFDRR) acknowledges the challenges in mortality attribution. 24,25 Member states have the flexibility to use their national methodology to measure deaths related to a disaster, without a strong guidance or approach. The report highlights that cause of death (CoD) is frequently not recorded as associated with a disaster. The SFDRR recommends that for monitoring and reporting deaths for Target A, countries focus on direct causes of death, which are easier to attribute, rather than using excess mortality which would include indirect deaths resulting from complications from chronic diseases, sidestepping the attribution of premature mortality relating to disasters. Reference Arriagada, Palmer and Bowman22

The CDC released guidance in 1999 and 2017 on death certification in disasters, based on CDC’s uniform disaster mortality case definitions with a pathway to determine attribution, 26,27 Although codes for disaster related mortality exist in the International Classification of Diseases (ICD-10), there is little or no training on certifying deaths occurring in disasters. And “currently no published standardized methodology exists for analyzing disaster-related mortality data”. Reference Issa, Ramadugu and Mulay2 Additionally, the definition of indirect deaths is still contested in the medical community.

ii. Capturing information in a timely manner

Delays in capturing cause-specific mortality information are a recurring theme in the literature. Reference Rosenbaum, Stillo and Graves28 In non-emergency settings, all information is filled by corresponding agencies/individuals such as the funeral director, the attending physician, and medical examiners in cases of non-natural deaths, and should be available through the national Civil Registration and Vital Statistics (CRVS) system in a timely manner. Reference Temple29 Although the “report” of a death is rapidly available, details on the death certificate, including codes for the CoD can take weeks to process. For TEM estimation, the only information required is a death event, age, sex, location, date, and ideally race and socio-economic status.

Aside from issues in quality reporting, a crisis or disaster can negatively impact the CRVS system’s functioning and the country’s capacity to accurately count deaths for an indeterminable length of time. Post Hurricane Maria, the only medical examiner’s office (PR Institute of Forensic Sciences) suffered from a backlog of autopsies due to infrastructural damages and a severe shortage of pathologists and other human resources. This interrupted the completion/revision of final death certificates, lowering the official death count. In the case of epidemics or pandemics, such as the cholera outbreak in Haiti, country capacity to test and report cases can also result in a lengthy process due to overwhelmed laboratories, shortages in reagents and personnel. Reference Salama, Spiegel and Talley30,Reference Ratnayake, Finger and Edmunds31

During the COVID-19 pandemic, measuring excess mortality using deaths from all causes helped overcome reporting and testing variations between countries, providing a summary measure of the total impact of the crisis and allowing comparability between countries. Reference Karlinsky and Kobak32 Considering that timely mortality reports are essential to mounting an effective response in disasters/crises, this approach is also less liable to interruptions in death reporting due to delays in processes for determining specific causes of death, as described following Hurricane Maria.

Building TEM surveillance systems in advance requires strengthening CRVS systems by: linking them to real-time “death reports”, integrating these into epidemiologic surveillance, routinely measuring mortality trends and incorporating an alert system for mortality peaks. It should be noted that, when trying to identify the overall impact of Hurricane Maria, it took approximately 11 mo to estimate TEM because a system was not yet existent. Results allowed researchers to identify social and geographic locations with the highest vulnerabilities. Advancing on this experience, during the COVID-19 pandemic, countries, states, and some cities estimated their TEM, in the best scenarios within 2-4 wk, but usually within 3 to 6 mo. with little consideration of its use to identify and target specific vulnerable groups at the local level. Reference Beaney, Clarke and Jain33 This resulted in delayed actions by governments to mitigate the impact of the crisis, leading to higher mortality rates. Reference Vestergaard and Mølbak34

iii. TEM and cause-specific mortality for public health decision-making and communication of impact

Lessons from the literature show that the counting of disaster-related deaths can lead to underestimations of the true mortality burden after a disaster or in a crisis, and directly affect government response efforts and actions. Reference Kung, Doppen and Black35 The use of excess mortality can provide governments with more accurate information on the impact of the disaster/crisis, using timely, readily available information and used to guide decision-making, allocation of resources, and crisis and risk communication. While accurate, timely estimation of mortality in a disaster or crisis is crucial for appropriate mitigation and response efforts, these estimates are of little use if they are not communicated effectively to the audiences that need this information, namely governments, disaster managers, and the public. Reference Reynolds36

There are no established guidelines for communication on mortality following disasters or crises. Reference Issa, Ramadugu and Mulay2 The lack of consensus on how to convey this information to diverse stakeholders is problematic given that mortality figures are key to understanding a disaster’s magnitude and impact, Reference Baghdadi, Bourrée and Robert6,Reference Combs, Quenemoen and Parrish37 as well as the rapidly evolving circumstances and effects of disasters occurring over longer time periods, such as those occurring during the COVID-19 pandemic and the extended recovery period following Hurricane Maria. Government capacity to effectively communicate risk must begin with the communication of impact, and mortality estimates are key indicators for determining and interpreting true levels of disaster impact.

Guidelines for disaster mortality communication should be established and integrated into Crisis and Emergency Risk Communication (CERC) training for government leaders, public health practitioners, and spokespersons. The consequences of this gap came into focus following Hurricane Maria when delays in mortality reports and mishandling of the situation by communicators contributed to major controversy and public backlash. Development of such guidance is complicated by a lack of research in this area, especially to elucidate how public audiences comprehend mortality estimates and interpret them in relation to risk mitigation. Reference Vestergaard and Mølbak34,Reference Lagassé, Rimal and Smith38,Reference Seeger, Sellnow and Ulmer39

Changing Global, National, and Local Practice: Six Recommendations to Build Total (All-Cause) Excess Mortality Surveillance Systems

The following recommendations were developed based on findings from the literature on the challenges of using cause-specific mortality and the benefits of using TEM for rapid decision-making.

1. Use total excess mortality as the minimum standard for mortality surveillance in a disaster/crisis

Total, all-cause, excess mortality as the indicator for emergency response helps to provide a quick picture of the impact of a disaster/crisis.

TEM surveillance during the COVID-19 pandemic is now considered a thorough and trustworthy approach to measure the impact of mortality by the pandemic. TEM data overcome inaccurate counts due to: (i) misdiagnosis or under-reporting of COVID-19 related deaths; (ii) disruption of care for unattended health conditions due to an overwhelmed health system 40,Reference Dey and Davidson41 ; (iii) care-seeking hesitation; (iv) the prioritization of COVID-19 patients over those with other ailments. Although cause-specific mortality provides deep insights on the impact of a disaster or crisis, the information presented above demonstrates that it is better used in the postdisaster setting.

2. Pre-establish baseline mortality with regular surveillance for real-time use during crisis

To allow timely response to an emergency, a continuous mortality surveillance system based on initial death “reporting” should be established in advance at the national and local levels. Once a disaster or crisis strikes, the model would already be in place to identify real-time spikes in mortality and a departure from baseline. There is opportunity for creating a continuous statistical model for overall, local, and national mortality surveillance. This simplified approach can even be used in low- and middle-income countries, where national capacity to evaluate cause-specific mortality may be limited, but the establishment of a baseline mortality surveillance system is feasible.

3. Structure the baseline (counterfactual) mortality on previous mortality and the demographic composition of the population

The counterfactual to predict expected deaths should be built in advance at all levels and include data on all-cause mortality considering seasonal patterns as well as the size of and changes to the population. 19 Key demographic variables include population age structure, sex, date, location, race, and socioeconomic status. Events which have a major effect on mortality such as natural disasters, heat waves, and armed conflict, etc., Reference Temple29 should also be considered.

4. Mandate an integrated information system between departments of civil registration and epidemiologic surveillance

Establishing shared data systems between the CVRS and the epidemiologic surveillance departments, to promote continuous data analysis, assures timeliness of TM information. Analysis for TEM only requires the use of the “initial report of death” (including sections 1-24 of the US Standard Death Certificate) to identify peaks, affected population groups, and geolocation to support the immediate response.

5. Develop mortality impact communication protocols for crisis management

For mortality surveillance to inform crisis and disaster planning and policies, as well as decision-making by government and public health leadership, risk, and impact communication must be prioritized, including the communication of disaster mortality. Differentiate risk communication from impact communication to the different target groups and prepare for effective support to policy-makers and communicators so objective situation awareness is supported, and informed decisions.

6. Benchmark and monitor Total Excess Mortality to identify critical public health needs locally, regionally, nationally, and globally

Given the heterogeneous codification of mortality between countries (as observed in COVID-19, being dependent on the differential testing and diagnosis confirmation rates), establishing TEM as the indicator to compare mortality between national jurisdictions and between countries will show the overall impact on population and social systems performance, independent of the diagnostic resources, helping to identify regions and populations requiring immediate attention.

Conclusions

Based on the literature from disasters and crises such as the COVID-19 pandemic, and the challenges identified from using cause-specific mortality to estimate impact, this article calls for the use of a TEM surveillance system for real-time use in public health response to target actions in crises and disasters.

Current practice for measuring mortality in a disaster, man-made or from natural causes, is not yet standardized at the global level. Challenges include the contested definition of deaths attributable to a disaster and the health systems infrastructure to rapidly collect high-quality vital statistics data. Obstacles include low capacity for disease surveillance, poor integration of CRVS systems to epidemiologic surveillance, major upheavals in a country owing to disasters or armed conflict, or local practices. These hardships have led to an underestimation of natural disasters impact such as Hurricane Maria in Puerto Rico, and of the COVID-19 pandemic.

To overcome these challenges, techniques have been developed to estimate mortality rates in the absence of detailed mortality data. Reference Adam42 Establishing TEM surveillance systems requires political will on the part of government officials and policy-makers to standardize national practice, and communication between key government agencies that produce demographic data, and public health authorities that systematize, analyze, and use the data to guide interventions.

Accurate estimation of TEM that identifies age, sex, date, race, socio-economic, or geographic location of the most affected populations can inform the development of effective policies and interventions to prevent deaths and contribute to world knowledge. This will provide added value to a routine medico-legal procedure, improve surveillance systems, and improve decision-making at all levels of governance. Through “real-time” readily available data, measuring TEM will contribute to the protection of the population’s health and safety in a disaster or crisis.

Author contributions

Alejandra Garcia Meza: contribution to study design, manuscript writing contributions and coordination, critical review, and editing of the study. Maria Jose Talayero: literature review, data analysis and interpretation, editing of the study, reference management. Nolan Kuenster: data analysis and interpretation, contribution to manuscript writing. Ann Goldman: contribution to study design, contribution to manuscript writing. Elizabeth Andrade: contribution to manuscript sections on disaster impact communication, crisis communication, and study review. Carlos Santos-Burgoa: conception of the work, design of the core concepts, contribution to the draft, critical revision of the article, and final approval of the version to be published.

Funding

None.

References

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