Evaluating the Health Risks of Air Quality and Human Thermal Comfort–Discomfort in Relation to Hospital Admissions in the Greater Athens Area, Greece
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area Characteristics
2.2. Data Collected
2.2.1. Hospital Admissions
- Evaggelismos (EVA), Konstantopoulio (KON), and Elpis (ELP)—Central GAA Sector;
- Attikon (ATI)—West GAA Sector;
- Tzanio (TZA)—Piraeus (Southwest GAA);
- Sismanoglio (SIS)—North GAA Sector.
- ✓
- Data Availability and Consistency: Hospitals were chosen based on the availability of consistent admissions data covering the study period (2018–2022) to ensure robust analysis;
- ✓
- Relevance to the Study: The selected hospitals include clinics specializing in RD and CVD, as these diseases are strongly linked to air pollution and temperature extremes;
- ✓
- Public Healthcare System Representation: Only public hospitals were included to ensure access to a broad and diverse patient population, avoiding biases related to private healthcare access;
- ✓
- Hospital Capacity and Regional Coverage: The six hospitals in the dataset collectively have a total bed capacity of 2907, which accounts for approximately 34% of the total bed capacity of public hospitals in Attica, standing at 8476 beds as of 2022 [45], ensuring adequate case volume for analysis.
2.2.2. Air Quality Index Levels
2.2.3. Apparent Temperature
2.3. Distributed Lag Non-Linear Model (DLNM)
3. Results
3.1. Impact of the DMAQIL on Hospital Admissions
3.2. Impact of DEATL on Hospital Admissions
3.3. Impact of Interaction Term on Hospital Admissions
4. Discussion
5. Conclusions
5.1. Policy and Hospital Recommendations
- Hospital Preparedness and Public Health Response
- Hospitals should implement action protocols informed by advanced heat–health–air quality warning systems, allowing for proactive patient management during high-risk periods;
- Emergency departments should be equipped with specialized protocols for handling heatstroke, respiratory distress, and cardiovascular exacerbations linked to environmental exposure;
- Vulnerable populations, such as the elderly, children, and individuals with preexisting conditions, should be prioritized in hospital risk mitigation plans during extreme weather and pollution events.
- Air Quality and Urban Planning Policies
- Policymakers should strengthen air quality regulations by enforcing stricter pollution control measures, particularly for industrial zones and traffic-congested areas, where air pollution is most severe;
- Urban planning should integrate green infrastructure, such as vegetation barriers and urban forests, to reduce Urban Heat Island effects and improve air quality;
- Public awareness campaigns should educate citizens about self-protection measures, such as avoiding outdoor activities during high pollution days and using air filtration systems indoors.
5.2. Implications for Environmental Regulations and Hospital Protocols
5.3. Study Limitations and Potential Biases
- Data quality and measurement bias: Air pollution and meteorological data were obtained from certain monitoring stations, which may not fully capture personal exposure levels or localized environmental variations within the GAA;
- Lack of individual and demographic data: The analysis was based on aggregated hospital admissions rather than individual health records, limiting the ability to control for demographic variations, preexisting medical conditions, socioeconomic factors, or lifestyle behaviors that could influence health risks;
- Potential reporting bias: The dataset excludes cases from private hospitals, which may lead to an incomplete representation of hospital admissions across different socioeconomic groups. Additionally, unreported cases of mild or untreated conditions could result in an underestimation of the true health burden;
- Confounding factors: While the model adjusts for seasonality and long-term trends, additional confounding factors, such as indoor air pollution, occupational exposures, or medication use, were not directly assessed;
- Higher-order Nonlinearities and model assumptions: Although the DLNM with the NB model was selected due to its strong fit and ability to handle overdispersion, GAMs are capable of capturing complex, non-linear relationships in the data. The slightly lower RMSE and MAE values for the GAM suggest that higher-order non-linear effects may exist, which the DLNM does not fully capture.
5.4. Future Research Directions
- Integrate high-resolution patient data to assess individual susceptibility more accurately;
- Expand real-time environmental surveillance by deploying additional monitoring stations for better spatial coverage;
- Develop personalized health risk models that account for socioeconomic disparities in exposure and access to healthcare;
- Investigate potential synergies between pollutants to enhance the understanding of their individual and combined impacts on health outcomes;
- Future research could explore DLNM-GAM hybrid models to capture both the delayed and non-linear effects of environmental exposures while balancing flexibility with interpretability;
- While the current findings provide valuable insights, future studies could benefit from access to larger datasets and more granular hospital or exposure data to further reduce noise and uncertainty in the estimates. Additionally, incorporating machine learning techniques—such as random forests, gradient boosting, or neural networks—may further improve model efficiency by capturing complex, non-linear interactions that traditional approaches may miss. These techniques hold promise for enhancing predictive accuracy and uncovering more nuanced patterns in environmental health relationships.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
GAA | Greater Athens Area |
DMAQIL | Daily Maximum Air Quality Index Level |
DEATL | Daily Extreme Apparent Temperature Level |
CVDs | Cardiovascular diseases |
RDs | Respiratory diseases |
HAs | Hospital admissions |
DLNM | Distributed Lag Non-linear Model |
AQI | Air Quality Index |
AT | Apparent Temperature |
RR | Relative Risk |
ER | Exposure–Response |
GAMs | Generalized Additive Models |
NB | Negative Binomial |
AE | Asymmetric Epanechnikov |
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DEATL | DEAT | Percentile | Temperature (°C) | Vapor Pressure (hPa) | Wind Velocity (m/s) |
---|---|---|---|---|---|
9 | Over 37.24 | Over 95th | 31.6–44.4 | 8.1–31.2 | 0.0–4.5 |
8 | 35.78 to 37.24 | 90th–95th | 30.1–40.1 | 9.6–30.6 | 0.0–5.4 |
7 | 34.54 to 35.78 | 85th–90th | 28.7–39.2 | 7.5–31.9 | 0.0–5.8 |
6 | 33.17 to 34.54 | 80th–85th | 27.8–38.2 | 7.2–31.1 | 0.0–6.3 |
5 | 31.74 to 33.17 | 75th–80th | 26.6–37.9 | 9.1–29.9 | 0.0–7.6 |
4 | 29.62 to 31.74 | 70th–75th | 24.8–36.3 | 6.0–29.7 | 0.0–8.9 |
3 | 27.89 to 29.62 | 65th–70th | 23.2–36.0 | 4.8–27.7 | 0.0–9.8 |
2 | 24.73 to 27.89 | 60th–65th | 21.1–35.8 | 4.9–26.8 | 0.0–13.0 |
1 | 21.31 to 24.73 | 55th–60th | 18.6–31.8 | 5.4–24.1 | 0.0–16.1 |
0 | 14.50 to 21.31 | 50th–55th | 13.6–30.9 | 4.5–22.9 | 0.0–17.0 |
0 | 11.44 to 14.50 | 45th–50th | 11.2–24.3 | 3.6–17.8 | 0.0–13.4 |
−1 | 4.51 to 11.44 | 40th–45th | 5.7–18.8 | 3.1–15.9 | 0.0–13.4 |
−2 | 2.33 to 4.51 | 35th–40th | 3.8–14.6 | 3.1–11.5 | 0.0–13.9 |
−3 | 1.74 to 2.33 | 30th–35th | 3.3–11.6 | 2.9–9.5 | 0.0–11.6 |
−4 | 1.51 to 1.74 | 25th–30th | 3.1–10.5 | 3.4–9.1 | 0.0–9.4 |
−5 | 1.32 to 1.51 | 20th–25th | 3.0–9.7 | 3.2–8.9 | 0.0–9.8 |
−6 | 1.17 to 1.32 | 15th–20th | 2.9–9.8 | 3.2–9.8 | 0.0–10.3 |
−7 | −0.27 to 1.17 | 10th–15th | 1.6–12.4 | 2.5–10.4 | 0.0–16.1 |
−8 | −2.45 to −0.27 | 5th–10th | −0.3–9.4 | 3.0–8.2 | 0.0–12.1 |
−9 | Up to −2.45 | Up to 5th | −6.5–6.9 | 0.0–7.9 | 0.0–13.9 |
Parameters | Negative Binomial | Poisson | GAM |
---|---|---|---|
AIC | 15,007.05 | 20,535.5 | 20,697.62 |
BIC | 15,414.5 | 20,937.44 | 20,991.84 |
Dispersion parameter | 1.123719 | 6.229468 | 6.22823 |
R | 0.6051255 | 0.6087412 | 0.6078343 |
RMSE | 14.39894 | 14.3544 | 13.93135 |
MAE | 11.71858 | 11.69806 | 11.45116 |
Parameters | Classical DLNM | DLNM + AE Kernel |
---|---|---|
AIC | 15,007.05 | 12,152.64 |
BIC | 15,414.5 | 12,559.68 |
Dispersion parameter | 1.123719 | 1.094679 |
R | 0.6051255 | 0.7931329 |
RMSE | 14.39894 | 6.6336854 |
MAE | 11.71858 | 5.3533178 |
MB | −0.00888 | −0.00010 |
MFB | 10.30241 | 2.086531 |
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Kladakis, A.; Retalis, A.; Giannaros, C.; Vafeiadis, V.; Fameli, K.-M.; Assimakopoulos, V.D.; Moustris, K.; Nastos, P.T. Evaluating the Health Risks of Air Quality and Human Thermal Comfort–Discomfort in Relation to Hospital Admissions in the Greater Athens Area, Greece. Sustainability 2025, 17, 5182. https://doi.org/10.3390/su17115182
Kladakis A, Retalis A, Giannaros C, Vafeiadis V, Fameli K-M, Assimakopoulos VD, Moustris K, Nastos PT. Evaluating the Health Risks of Air Quality and Human Thermal Comfort–Discomfort in Relation to Hospital Admissions in the Greater Athens Area, Greece. Sustainability. 2025; 17(11):5182. https://doi.org/10.3390/su17115182
Chicago/Turabian StyleKladakis, Aggelos, Adrianos Retalis, Christos Giannaros, Vasileios Vafeiadis, Kyriaki-Maria Fameli, Vasiliki D. Assimakopoulos, Konstantinos Moustris, and Panagiotis T. Nastos. 2025. "Evaluating the Health Risks of Air Quality and Human Thermal Comfort–Discomfort in Relation to Hospital Admissions in the Greater Athens Area, Greece" Sustainability 17, no. 11: 5182. https://doi.org/10.3390/su17115182
APA StyleKladakis, A., Retalis, A., Giannaros, C., Vafeiadis, V., Fameli, K.-M., Assimakopoulos, V. D., Moustris, K., & Nastos, P. T. (2025). Evaluating the Health Risks of Air Quality and Human Thermal Comfort–Discomfort in Relation to Hospital Admissions in the Greater Athens Area, Greece. Sustainability, 17(11), 5182. https://doi.org/10.3390/su17115182