Human Health Risk Assessment due to Global Warming – A Case Study of the Gulf Countries
Abstract
:1. Introduction
2. Purpose
3. Method
- i)
- A-2, also known as “fragmented world scenario”, represents a world with unchecked population growth, considerable disparity in per capita income, self-dependence and local identities with regional based technological advancement.
- ii)
- B-2, also known as “local sustainability scenario”, assumes a world with unchecked population growth, modest economical growth, slower but diverse technological development, emphasizing possible regional based solutions of socio-economic concerns.
- Hadley Centre Climate Prediction and Research Model (HADCM3): It is a coupled atmosphere-ocean GCM developed at the Hadley Centre. It has a stable control climatology and does not use flux adjustment. The atmospheric component of the model has 19 levels with a horizontal resolution of 2.5 degrees of latitude by 3.75 degrees of longitude, which produces a global grid of 96 × 73 grid cells.
- Canadian center for Climate Modeling and Analysis (CCMa): This model has been used to produce ensemble climate change projections using the older IS92a forcing scenario, as well as the newer IPCC SRES A2 and B2 scenarios.
- National Center for Atmospheric Research (NCAR): It is the latest in a series of global atmosphere models developed at NCAR for the weather and climate research communities. It is a dynamic-thermodynamic model that includes a sub-grid scale ice thickness distribution, energy conserving thermodynamics, and elastic-viscous-plastic (EVP) dynamics.
Parameter | Hadley(A-2) | Hadley (B-2) | CCCma(A-2) | CCCma(B-2) | NCAR (A-2) | NCAR (B-2) |
---|---|---|---|---|---|---|
Temperature | °K | °K | °K | °K | °K | °K |
S-1 | 0.94 to 1.23 | 0.78 to 1.05 | 0.79 to 1.09 | 0.67 to 0.94 | 0.40 to 0.66 | 0.31 to 0.55 |
S-2 | 2.58 to 2.93 | 1.93 to 2.47 | 2.47 to 3.37 | 1.55 to 2.16 | 1.33 to 1.80 | NA |
Precipitation | mm | mm | mm | mm | Mm | mm |
S-1 | −44.6 to 108.39 | −12.7 to 144.3 | −152.7 to 103.8 | −197.2 to 61.2 | −102.5 to 138.5 | −0.12 to 145.07 |
S-2 | 3.0 to 485.90 | 16.9 to 530.4 | −147.4 to 174.1 | −126.0 to 113.6 | −157.4 to 458.1 | NA |
Relative | % | % | g/kg | g/kg | g/kg | g/kg |
Humidity | ||||||
S-1 | −0.12 to 0.44 | − 0.16 to 0.71 | 0.74 to 1.13 | 0.68 to 0.95 | 0.43 to 0.69 | 0.26 to 0.58 |
S-2 | 0.08 to 1.39 | 0.25 to 1.76 | 3.08 to 3.72 | 1.85 to 2.25 | 1.09 to 1.92 | NA |
4. Results
4.1. Health Impacts
- 3% increase in death rates per 1 °C increase in temperature for all-cause mortality for the hot and arid regions where the temperature of the warmest months exceed 30 °C, including the above Gulf countries was reported by McMichael [7]. The threshold temperature for the estimation of the temperature-attributable mortality was 23 °C.
- Hajat et al. [8] studied mortality in London from January 1976 to December 1996 on the basis of time-series analysis and concluded that >97 percentile average temperature resulted in increased mortality rates by 3.34%, 2.47% and 4.23% for every 1 °C rise in temperature, longest duration, and highest temperature respectively.
- Significant increases in mortality rates was observed at elevated temperatures for all of the 27 world cities included in study conducted by Kalkstein and Smoyer [9] for different climate change scenarios, with or without acclimatization based on the model acquired from the synoptic air mass and mortality.
- Dessai [10], while studying temperature-mortality in Lisbon, Portugal, used empirical statistical model with input data from two regional climate models HadRM2 and PROMES, predicted the increase in mortality rates from 57-113% by 2020 and 97-225% by 2050.
- Based on measured and modeled CO2 concentrations of 550 ppm, 750 ppm and unmitigated emissions in the environment McMichael et al. [7] projects the relative risks of cardio-vascular diseases for all age groups for these scenarios with reference to the baseline scenario for the Eastern Mediterranean region (EMR-B) comprising Bahrain, Oman Qatar and United Arab Emirates to increase from 1.000, 1.001 and 1.001 during 2000 to 1.002, 1.002 and 1.003, respectively, for central estimates (adjusted biological adaptation) in the year 2030. In the EMR-D region comprising Yemen the average estimates for the entire region were also identical for central estimates. Whereas for higher estimates (no physiological or behavioral adaptation) the relative risk for EMR-B increased from 1.001, 1.001 and 1.002 to 1.004, 1.004 and 1.007 respectively while for EMR-D the noted increase range was from 1.001, 1.001 and 1.002 to 1.004, 1.005 and 1.007 between 2000 and 2030.
4.2. Malarial Risk
- “Low malarial risk” will remain unchanged for UAE (1.07 million affected population).
- “Low malarial risk” will reduce from 0.92 to 0.48 million affected people from Oman.
- “Low malarial risk” will rise markedly for Yemen by affecting larger population group i.e. from 1.08 to 2.38 million.
4.3. Projected mortality rates and DALYs
5. Conclusions
Centre | Model | Longitude | Latitude |
---|---|---|---|
Hadley | HadCM3 | 41.25 - 60.00 E | 12.50 - 27.50 N |
CCCma | CGCM2 | 41.25 - 60.00 E | 9.2779 - 27.83 N |
NCAR | NCAR-PCM | 42.1875 - 61.875 E | 12.55776 - 26.51 N |
Country | 2002 Population (`000) | 2002 all-cause mortality | 2100 extrapolated population est. (`000) | 2100 Projected all-cause mortality | Hadley’s Projected temp. (°K) increase | Odd Ratio | Projected temp. adj. all-cause mortality | Excess mortality due to temp. |
---|---|---|---|---|---|---|---|---|
Bahrain | 709 | 322.1 | 1,115 | 506.6 | 2.55–2.61 | 1.0774 | 545.8 | 39.2 |
Oman | 2,768 | 301.5 | 30,548 | 3327.4 | 2.62–2.82 | 1.0834 | 3604.9 | 277.5 |
Qatar | 601 | 247.2 | 1,044 | 429.4 | 2.57–2.82 | 1.081 | 464.2 | 34.8 |
UAE | 2937 | 303.7 | 4,540 | 484.9 | 2.57–2.86 | 1.0816 | 524.5 | 39.6 |
Yemen | 19,315 | 887.0 | 145,746 | 6693.1 | 2.64–2.93 | 1.0837 | 7253.3 | 560.2 |
Country | 2002 Population (`000) | 2002 all-cause DALY /100,000 | 2100 extrapolated population est. (`000) | 2100 Projected all-cause DALY | Hadley’s Projected temp. (°K) increase | Odd Ratio | Projected temp. adj./ all-cause DALY | Excess DALY due to temp. |
---|---|---|---|---|---|---|---|---|
Bahrain | 709 | 11,726 | 1,115 | 18,440 | 2.55–2.61 | 1.0774 | 19,868 | 1,428 |
Oman | 2,768 | 13,121 | 3,0548 | 144,805 | 2.62–2.82 | 1.0834 | 156,881 | 12,076 |
Qatar | 601 | 11,742 | 1,044 | 20,397 | 2.57–2.82 | 1.081 | 22,049 | 1,652 |
UAE | 2,937 | 14,067 | 4,540 | 21,744 | 2.57–2.86 | 1.0816 | 23,519 | 1,775 |
Yemen | 19,315 | 35,932 | 145,746 | 271,133 | 2.64–2.93 | 1.0837 | 293,827 | 22,694 |
Acknowledgments
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© 2008 by the authors; licensee Molecular Diversity Preservation International, Basel, Switzerland This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license ( http://creativecommons.org/licenses/by/3.0/).
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Husain, T.; Chaudhary, J.R. Human Health Risk Assessment due to Global Warming – A Case Study of the Gulf Countries. Int. J. Environ. Res. Public Health 2008, 5, 204-212. https://doi.org/10.3390/ijerph5040204
Husain T, Chaudhary JR. Human Health Risk Assessment due to Global Warming – A Case Study of the Gulf Countries. International Journal of Environmental Research and Public Health. 2008; 5(4):204-212. https://doi.org/10.3390/ijerph5040204
Chicago/Turabian StyleHusain, Tahir, and Junaid Rafi Chaudhary. 2008. "Human Health Risk Assessment due to Global Warming – A Case Study of the Gulf Countries" International Journal of Environmental Research and Public Health 5, no. 4: 204-212. https://doi.org/10.3390/ijerph5040204
APA StyleHusain, T., & Chaudhary, J. R. (2008). Human Health Risk Assessment due to Global Warming – A Case Study of the Gulf Countries. International Journal of Environmental Research and Public Health, 5(4), 204-212. https://doi.org/10.3390/ijerph5040204