Hostname: page-component-78c5997874-g7gxr Total loading time: 0 Render date: 2024-11-10T08:24:05.616Z Has data issue: false hasContentIssue false

The Effect of Sustained Poor Air Quality on EMS Call Volume and Characteristics: A Time-Stratified Case-Crossover Study

Published online by Cambridge University Press:  12 December 2022

Alec McLeod*
Affiliation:
University of California Davis, Sacramento, California USA
Colin Murphy
Affiliation:
Independent Researcher, Sacramento, California USA
Garrett Hagwood
Affiliation:
University of California Davis, Sacramento, California USA
John S. Rose
Affiliation:
University of California Davis, Sacramento, California USA
*
Correspondence: Alec Mcleod Department of Emergency Medicine UC Davis Medical Center 2315 Stockton Blvd, PSSB 2100 Sacramento, California 95817 USA E-mail: aimcleod@ucdavis.edu
Rights & Permissions [Opens in a new window]

Abstract

Objectives:

As wildfires and air pollution become more common across the United States, it is increasingly important to understand the burden they place on public health. Previous studies have noted relationships between air quality and use of Emergency Medical Services (EMS), but until now, these studies have focused on day-to-day air quality. The goal of this study is to investigate the effect of sustained periods of poor air quality on EMS call characteristics and volume.

Methods:

Using a time-stratified case-crossover design, the effect of exposure to periods of poor air quality on number and type of EMS calls in California, USA from 2014-2019 was observed. Poor air quality periods greater than three days were identified at the United States Environmental Protection Agency’s (EPA’s) Air Quality Index (AQI) levels of Unhealthy for Sensitive Groups (AQI 100) and Unhealthy (AQI 150). Periods less than three days apart were combined. Each poor air quality period was matched with two one-week controls, the first being the closest preceding week that did not intersect a different case. The second control was the closest week at least three days after the case and not intersecting with a different case. Due to seasonal variation in EMS usage, from the initial cases, cases were used only if it was possible to identify controls within 28 days of the case. A conditional Poisson regression calculated risk ratios for EMS call volume.

Results:

Comparing the case periods to the controls, significant increases were found at AQI >100 for total number of calls, and the primary impressions categories of emotional state or behavior, level of consciousness, no patient complaint, other, respiratory, and abdominal. At an AQI >150, significance was found for the primary impressions categories of other, pain, respiratory, and digestive.

Conclusion:

These data demonstrate increased EMS calls during sustained poor air quality, and that several EMS primary impression categories are disproportionately affected. This study is limited by the imprecision of the primary impression’s classification provided by the EMS clinician responding to the EMS call. More research is needed to understand the effects of periods of poor air quality on the EMS system for more efficient deployment of resources.

Type
Original Research
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), 2022. Published by Cambridge University Press on behalf of the World Association for Disaster and Emergency Medicine

Introduction

According to the World Health Organization (WHO; Geneva, Switzerland), air pollution is the single largest environmental risk to public health, estimating that in 2012, one out of every nine deaths was caused by conditions related to ambient air pollution. 1 It is a largely preventable risk, and reduction in air pollution shows rapid impacts on health. Reference Schraufnagel, Balmes and De Matteis2 A large number of studies and meta-analyses have shown positive associations between poor air quality and a variety of health outcomes, including cardiac arrest, respiratory complaints, and stroke. Reference Yoo, Brown and Eum3Reference Niu, Liu, Yu, Wu and Xiang6 A majority of these studies use emergency department admissions as a gauge of the acute effects of air pollution, although those that have used Emergency Medical Services (EMS) data have also found associations between air quality and the same health outcomes and total ambulance call volume. Reference Zhao, Chen and Wang7Reference Wang, Leng and Liu9 When lagged effects (effects seen up to several days after the exposure) have been included, the associations have been extended to a variety of other complaints. Reference Jiang, Wu, Chen, Han and Jin10,Reference Sangkharat, Fisher, Thomas, Thornes and Pope11

The prevalence and intensity of large-scale wildfires in California, USA have increased over the past several decades. Many of these wildfires have resulted in a prolonged period of very poor air quality in large urban and suburban areas of the western United States. Previous studies have relied on day-to-day air quality as the exposure, including periods in which pollutant and air particulate matter levels were low. The effect of sustained periods of very poor air quality on call volume, using discrete time periods in which air quality was below a defined limit rather than a continuous observation was chosen for analysis in order to better understand the effects of these periods on public health. Emergency Medical Service call records were chosen for analysis because EMS clinicians are involved in every kind of out-of-hospital emergency, and therefore provide a unique insight into public health. The aim was to investigate the effects of periods of poor air quality, often induced by wildfires, on total 9-1-1 ambulance call volume and characteristics.

Methods

Design

A determination of non-human subject’s research was provided by the University of California, Davis IRB Administration (Sacramento, California USA; IRB ID: 1949327-1). A time-stratified case-crossover design was used, as it has been suggested as a method to study transient effects on the risk of acute events, Reference Maclure12 and because as a study design, it eliminates many confounders by using the case as their own control. Reference Janes, Sheppard and Lumley13

Air Quality Index (AQI) data were used to select case periods of poor air quality for each county. Analysis was performed using two cut-offs as defined by the United States Environmental Protection Agency (EPA; Washington, DC USA): Unhealthy for Sensitive Groups (AQI>100) and Unhealthy (AQI >150). To reinforce that the observed effects were due to air quality, analysis was also performed for periods of Good air (AQI≤50). Case periods were selected as any time-period that had a daily max AQI above (or below) the cut-off for more than three consecutive days. Previous studies have shown that the effects of poor air quality on health can continue for several days after exposure, with a drop off in effects seen after three days (lagged effects). Reference Jiang, Wu, Chen, Han and Jin10 For this reason, poor air quality periods that had less than three days between them were combined into one case. The mean and standard deviation of the length of poor air quality periods was calculated at each AQI cut-off level (Table 1).

Table 1. Length of Poor Air Quality Periods

Abbreviation: AQI, Air Quality Index.

Two controls within the same county were selected for each case period. The first was selected as the closest seven-day period preceding the poor air quality period that did not intersect with a different case. The second was the closest seven-day period after the poor air quality period that did not intersect with another case, and that was at least three days after the case to avoid capturing lagged effects of poor air quality in the control. Pre- and post-controls were selected in order to control for the effect of other environmental effects such as temperature and weather, and normal seasonal variation in EMS call volume. In cases where it was not possible to identify a control within 28 days, the case was disqualified from analysis due to the amplified effects of seasonal variation, and the control period no longer being comparable to the case period. At an AQI below 50, 947 case control pairs were found, 487 of which were disqualified due to distance between the case and control, leaving 460 pairs. At an AQI above 100, 289 case control pairs were found, 66 of which were disqualified due to distance between the case and control, leaving 223 pairs. At an AQI above 150, 76 case control pairs were found, seven of which were disqualified due to distance between the case and control, leaving 69 pairs.

A conditional Poisson regression was used to calculate incident rate ratios for total calls per day, as well as number of calls within each category of impression. Conditional Poisson regression has been suggested as appropriate when analyzing count data over short, stratified time periods. Reference Szyszkowicz14 Results are reported as rate ratios and 95% confidence intervals (CIs). All data analysis was performed in R version 4.2.1 (R Foundation for Statistical Computing; Vienna, Austria).

Air Quality Data

Using human health and environmentally based criteria, the EPA has defined five air pollutants as the most important indicators of air quality. These are also the indicators regulated by the United States Clean Air Act. These are carbon monoxide, nitrogen oxides, ground-level ozone, particle pollution, and sulfur oxides. In addition, they have developed a formula that calculates AQI using the daily maximums of each of these values, providing a way to identify combined air quality on a standardized scale from 0 to 500. 15 Daily AQI data by county were retrieved from the EPA’s pre-generated data files. 16 In counties where there are multiple air quality monitoring stations, the maximum daily value was reported.

The EPA also defines categories of air quality as:

  • 0-50 – Good;

  • 51-100 – Moderate;

  • 101-150 – Unhealthy for Sensitive Groups;

  • 151-200 – Unhealthy;

  • 201-300 – Very Unhealthy; and

  • 301+ – Hazardous.

EMS Call Data

De-identified ambulance call data were provided by California American Medical Response (AMR; Sacramento, California USA), the largest private ambulance provider in the state. Data included all 9-1-1 calls in which an AMR ambulance crew arrived on scene and made contact with a patient in 27 counties from 2014-2019 (Figure 1). Relevant fields from the data provided were: Incident Date, AMR Business Unit, Incident County, Primary Impression, Primary Impression Category, and Primary Impression Subcategory. Data from April through June 2017 were missing from the data provided by AMR and were not included for analysis. In total, records from 3,258,649 ambulance calls were collected.

Figure 1. Counties Included in the Study (California USA).

The location of each call was determined primarily from the incident county field, and in cases where that was not possible, from the AMR Business Unit field. Calls that occurred outside of California were excluded, leaving 3,258,440 records. Incident county data were generated from a free-response text field from the patient record and contained some typos. In cases where the intended county was easily identified, it was corrected. In cases where it was not, the call was assumed to have taken place in the county served by the AMR Business Unit due to the majority of calls completed by a business unit taking place in their home county. No other exclusion criteria were applied.

Due to variations in county EMS policies and procedures, primary impressions categories were recorded using classification systems that varied between AMR business units. To standardize the categories, each combination of Primary Impression Category and Primary Impression Subcategory were manually sorted into the 17 categories defined by the National Emergency Medical Services Information System (NEMSIS; Salt Lake City, Utah USA) eSituation.11 Primary Impression List. 17 These categories are: abdominal, cardiovascular, digestive, emotional state/behavior, endocrine/urinary, illness, injury, level of consciousness, malaise, mobility, neurological, no patient complaint, other, pain, reproductive system, and respiratory. In total, 37,769 records had no primary impression recorded. These records were kept for calculation of total daily calls, but were not included in any specific primary impression category. These data were then aggregated by day and county, yielding a count of total calls and calls within each category of primary impression for each day in each county.

Results

Utilizing the data from the six-year study period, 670,458 calls were identified as having occurred during a poor air quality period, either with an AQI cut-off greater than 100 or 150. A total of 916,616 calls were identified as having occurred during a period of Good air quality (AQI ≤50). The most frequent categories of primary impressions across all analyses were: pain, injury, cardiovascular, neurological, level of consciousness, and emotional state or behavior (Table 2).

Table 2. EMS Call Frequencies during Poor Air Quality Periods

Abbreviations: AQI, Air Quality Index; EMS, Emergency Medical Services.

Mean length of case periods (Table 1) and the rate ratios and 95% confidence intervals of both the poor and good air quality periods compared to the controls for each primary impression category were calculated at each AQI cut-off (Figure 2; Table 3). At an AQI level less than or equal to 50, periods of Good air, significant negative associations were found at the 95% confidence level for rate ratios of total calls (95% CI, 0.977-0.987), and the primary impression categories: cardiovascular (95% CI, 0.961-0.992), digestive (95% CI, 0.954-0.991), emotional state or behavior (95% CI, 0.962-0.996), injury (95% CI, 0.971-0.999), level of consciousness (95% CI, 0.961-0.993), malaise (95% CI, 0.936-0.978), neurological (95% CI, 0.968-0.998), no patient complaint (95% CI, 0.957-0.992), and other (95% CI, 0.931-0.980).

Figure 2. Rate Ratio 95% Confidence Intervals by Primary Impression and AQI Cut-Off.

Abbreviation: AQI, Air Quality Index.

Table 3. Rate Ratios of Number of Calls during Poor Air Quality Periods Compared to Control Periods

Abbreviations: AQI, Air Quality Index; RR, rate ratios; CI, 95% confidence intervals.

Above an AQI of 100, Unhealthy for Sensitive Groups, significant positive associations were found for rate ratios of total calls (95% CI, 1.015-1.031), and the primary impression categories: emotional state or behavior (95% CI, 1.031-1.077), level of consciousness (95% CI, 1.026-1.072), other (95% CI, 1.054-1.141), respiratory (95% CI, 1.010-1.055), and abdominal (95% CI, 1.007-1.063). A negative association was found for the no patient complaint category (95% CI, 0.951-0.990).

Finally, above an AQI of 150, Unhealthy, significant positive associations were found for rate ratios of the primary impression categories: other (95% CI, 1.022-1.165), respiratory (95% CI, 1.020-1.108), and digestive (95% CI, 1.004-1.093). A negative association was found for calls within the primary impression category for pain (95% CI, 0.954-0.997). A significant association was not found for the total number of calls at this AQI cut-off.

Discussion

The results indicate that there is a small but significant association between AQI and acute health events as measured by use of EMS. The primary limitation of this paper was the use of primary impressions to categorize health outcomes. Primary impressions are recorded as the first responder’s determination of the caller’s chief complaint or reason for calling. This determination is made with a very limited toolset, under time limited conditions, and may often not be accurate. In addition, if a patient has multiple complaints, only one is recorded as the primary impression.

Analysis of periods of good air quality was done to reinforce that the effects observed with poor air quality periods are associated with poor air quality exposure. These results demonstrate a decrease in number of total calls, and a decrease in the number of calls within primary impressions. With a decrease in the total call volume, it was hypothesized that there would be commensurate decreases in all categories. Several of these primary impression categories demonstrated disproportionate variability with changing air quality (digestive, emotional state or behavior, level of consciousness, and other), suggesting that these primary impressions may have associations with air quality.

Although the results align with previous studies conducted using hospital admission and emergency room visits that indicate an increase in acute respiratory outcomes, Reference Szyszkowicz and Kousha4,Reference Zheng, Ding and Jiang5 they stand in contrast with research that has shown an association between poor air quality and cardiovascular outcomes. Reference Yoo, Brown and Eum3 Compared to studies that used EMS as a measure of acute health events, once again, these results align with an increase in respiratory calls Reference Zhao, Chen and Wang7,Reference Wang, Leng and Liu9,Reference Jiang, Wu, Chen, Han and Jin10 but differ in that there was no significant association with cardiovascular outcomes, as has been noted in prior research. Reference Zhao, Chen and Wang7,Reference Ai, Wang and Qian8,Reference Jiang, Wu, Chen, Han and Jin10 This may be due to the imprecision of how primary impressions are categorized in this study. The NEMSIS suggested primary impression list includes cardiac arrest under the cardiovascular category, but includes obvious death, defined as “ill-defined or unknown cause of mortality,” in the other category. Due to the conversion from the non-standardized primary impressions used by AMR to the NEMSIS categories, it is possible that a portion of cardiac arrest outcomes were categorized in other, which did see a significant increase during periods of poor air quality.

Similarly, these findings are not concordant with previous research that has found an increase in hospitalization for stroke after exposure to poor air quality. Reference Niu, Liu, Yu, Wu and Xiang6 This may be due to neurological complaints presenting with a wide range of symptoms that could be categorized under a category such as level of consciousness, which did see an increase. Without the benefit of advanced training or imaging, it is difficult to differentiate neurological complaints from other illnesses in the field.

The association observed between poor air quality and the emotional state and behavior category of primary impression is supported by previous research that has been conducted using emergency hospitalizations or visits to a psychiatric unit, Reference Lundberg18,Reference Oudin, Åström, Asplund, Steingrimsson, Szabo and Carlsen19 and by research specifically examining ambulance usage. Reference Liu, Wang and Liu20 The digestive and abdominal categories are also supported by prior hospital-based research, Reference Liu, Jiang, Wu, Muheyat, Yao and Jin21 although no prior papers specifically concerning ambulance calls were identified in the literature review.

Limitations

The primary limitation of this paper was the use of primary impressions to categorize health outcomes. Another limitation of this study is the variability of the “Other” category of primary impressions. Calls concerning abuse/neglect, dehydration, heat exposure, and obvious death were included, but also any calls that were recorded as unspecified were included in this category. This is not uncommon, as in the field, it can often be a challenge to ascertain the reason that an ambulance was dispatched. In future studies, the addition of the final diagnoses provided by the receiving emergency department would better clarify the effect that air quality on EMS ambulance call characteristics.

It is also important to note the likelihood that this analysis includes some amount of Type 1 error. This would result in rejection of the null hypothesis and concluding that an association exists when that is not the case. Analyzing 17 primary impression categories at three different AQI cut-offs suggests that, by chance alone, one would find significant associations at the 95% confidence interval.

Conclusion

These data demonstrate increased EMS call volume during sustained periods of poor air quality. In addition, several EMS primary impression categories are disproportionately affected. This study is limited by the imprecision of the primary impression’s classification provided by the EMS clinician responding to the EMS call. More research is needed to understand the effects of periods of poor air quality on the EMS system for more efficient deployment of resources.

Conflicts of interest

The authors have no disclosures.

Data Availability Statement

The data that support the findings of this study were provided by American Medical Response California. Restrictions apply to the availability of these data, which were used under license for this study. Data are available from the authors with the permission of American Medical Response California.

References

World Health Organization. Ambient air pollution: a global assessment of exposure and burden of disease. https://apps.who.int/iris/rest/bitstreams/1061179/retrieve. Accessed September 19, 2022.Google Scholar
Schraufnagel, DE, Balmes, JR, De Matteis, S, et al. Health benefits of air pollution reduction. Ann Am Thorac Soc. 2019;16(12):14781487.CrossRefGoogle ScholarPubMed
Yoo, EH, Brown, P, Eum, Y. Ambient air quality and spatio-temporal patterns of cardiovascular emergency department visits. Int J Health Geogr. 2018;17(1):18.CrossRefGoogle ScholarPubMed
Szyszkowicz, M, Kousha, T. Emergency department visits for asthma in relation to the Air Quality Health Index: a case-crossover study in Windsor, Canada. Can J Public Health. 2014;105(5):e336341.CrossRefGoogle Scholar
Zheng, XY, Ding, H, Jiang, LN, et al. Association between air pollutants and asthma emergency room visits and hospital admissions in time series studies: a systematic review and meta-analysis. PLoS One. 2015;10(9):e0138146.CrossRefGoogle ScholarPubMed
Niu, Z, Liu, F, Yu, H, Wu, S, Xiang, H. Association between exposure to ambient air pollution and hospital admission, incidence, and mortality of stroke: an updated systematic review and meta-analysis of more than 23 million participants. Environ Health Prev Med. 2021;26(1):15.CrossRefGoogle ScholarPubMed
Zhao, R, Chen, S, Wang, W, et al. The impact of short-term exposure to air pollutants on the onset of out-of-hospital cardiac arrest: a systematic review and meta-analysis. Int J Cardiol. 2017;226:110117.CrossRefGoogle ScholarPubMed
Ai, S, Wang, C, Qian, ZM, et al. Hourly associations between ambient air pollution and emergency ambulance calls in one central Chinese city: implications for hourly air quality standards. Sci Total Environ. 2019;696:133956.CrossRefGoogle ScholarPubMed
Wang, X, Leng, M, Liu, Y, et al. Different sized particles associated with all-cause and cause-specific emergency ambulance calls: a multicity time-series analysis in China. Sci Total Environ. 2021;783:147060.CrossRefGoogle Scholar
Jiang, J, Wu, D, Chen, Y, Han, Y, Jin, W. Relationship between different air pollutants and total and cause-specific emergency ambulance dispatches in Shanghai, China. Int Arch Occup Environ Health. 2021;94(7):17091719.CrossRefGoogle ScholarPubMed
Sangkharat, K, Fisher, P, Thomas, GN, Thornes, J, Pope, FD. The impact of air pollutants on ambulance dispatches: a systematic review and meta-analysis of acute effects. Environ Pollut. 2019;254(Pt A):112769.CrossRefGoogle ScholarPubMed
Maclure, M. The case-crossover design: a method for studying transient effects on the risk of acute events. Am J Epidemiol. 1991;133(2):144153.Google ScholarPubMed
Janes, H, Sheppard, L, Lumley, T. Case-crossover analyses of air pollution exposure data: referent selection strategies and their implications for bias. Epidemiology. 2005;16(6):717726.CrossRefGoogle ScholarPubMed
Szyszkowicz, M. Case-crossover method with a short time-window. Int J Environ Res Public Health. 2019;17(1):202.CrossRefGoogle ScholarPubMed
Office of Air Quality Planning and Standards, United States Environmental Protection Agency. AQI Technical Assistance Document. https://www.airnow.gov/sites/default/files/2020-05/aqi-technical-assistance-document-sept2018.pdf. Accessed September 19, 2022.Google Scholar
United States Environmental Protection Agency. Pre-generated data files. https://aqs.epa.gov/aqsweb/airdata/download_files.html. Accessed May 5, 2022.Google Scholar
National Emergency Medical Services Information System. NEMSIS eStiuation.11 Provider’s Primary Impression. https://nemsis.org/technical-resources/version-3/version-3-resources/. Accessed September 19, 2022.Google Scholar
Lundberg, A. Psychiatric aspects of air pollution. Otolaryngol Head Neck Surg. 1996;114(2):227231.CrossRefGoogle ScholarPubMed
Oudin, A, Åström, DO, Asplund, P, Steingrimsson, S, Szabo, Z, Carlsen, HK. The association between daily concentrations of air pollution and visits to a psychiatric emergency unit: a case-crossover study. Environ Health. 2018;17(1):4.CrossRefGoogle ScholarPubMed
Liu, JJ, Wang, F, Liu, H, et al. Ambient fine particulate matter is associated with increased emergency ambulance dispatches for psychiatric emergencies. Environ Res. 2019;177:108611.Google ScholarPubMed
Liu, Y, Jiang, Y, Wu, M, Muheyat, S, Yao, D, Jin, X. Short-term effects of ambient air pollution on daily emergency room visits for abdominal pain: a time-series study in Wuhan, China. Environ Sci Pollut Res Int. 2022;29(27):4064340653.CrossRefGoogle ScholarPubMed
Figure 0

Table 1. Length of Poor Air Quality Periods

Figure 1

Figure 1. Counties Included in the Study (California USA).

Figure 2

Table 2. EMS Call Frequencies during Poor Air Quality Periods

Figure 3

Figure 2. Rate Ratio 95% Confidence Intervals by Primary Impression and AQI Cut-Off.Abbreviation: AQI, Air Quality Index.

Figure 4

Table 3. Rate Ratios of Number of Calls during Poor Air Quality Periods Compared to Control Periods