| Literature DB >> 25594780 |
Yunjing Wang1, Yuhan Rao2, Xiaoxu Wu3, Hainan Zhao4, Jin Chen5.
Abstract
Climate change is a significant and emerging threat to human health, especially where infectious diseases are involved. Because of the complex interactions between climate variables and infectious disease components (i.e., pathogen, host and transmission environment), systematically and quantitatively screening for infectious diseases that are sensitive to climate change is still a challenge. To address this challenge, we propose a new statistical indicator, Relative Sensitivity, to identify the difference between the sensitivity of the infectious disease to climate variables for two different climate statuses (i.e., historical climate and present climate) in non-exposure and exposure groups. The case study in Anhui Province, China has demonstrated the effectiveness of this Relative Sensitivity indicator. The application results indicate significant sensitivity of many epidemic infectious diseases to climate change in the form of changing climatic variables, such as temperature, precipitation and absolute humidity. As novel evidence, this research shows that absolute humidity has a critical influence on many observed infectious diseases in Anhui Province, including dysentery, hand, foot and mouth disease, hepatitis A, hemorrhagic fever, typhoid fever, malaria, meningitis, influenza and schistosomiasis. Moreover, some infectious diseases are more sensitive to climate change in rural areas than in urban areas. This insight provides guidance for future health inputs that consider spatial variability in response to climate change.Entities:
Mesh:
Year: 2015 PMID: 25594780 PMCID: PMC4306891 DOI: 10.3390/ijerph120100767
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
A 2×2 table for epidemiological relative risk calculation.
| Group | Disease | Disease | Total |
|---|---|---|---|
| Yes | No | ||
| Exposure group | A | B | A+B |
| Non-Exposure group | C | D | C+D |
| Total | A+C | B+D | A+B+ C+D |
Figure 1Flowchart of the calculation of Relative Sensitivity.
Figure 2Schematic figure for calculating the Relative Sensitivity: (a) identification of the exposure and non-exposure groups; (b) linear model of the exposure group; (c) linear model of the non-exposure group.
Figure 3Location of the study area and its sub-areas.
Descriptive statistics for the climate variables in the exposure and non-exposure groups in Anhui province.
| Climate Variables | Groups | |
| |||
|---|---|---|---|---|---|
| Average | Maximum | Minimum | Standard Deviation | ||
| Temperature (°C) | Exposure | 2.11 | 4.57 | 0.75 | 0.76 |
| Non-exposure | 0.53 | 1.63 | 0.0001 | 0.34 | |
| Precipitation (m) | Exposure | 5.85 | 40.47 | 0.15 | 4.63 |
| Non-exposure | 1.84 | 17.56 | 0.0008 | 1.96 | |
| Absolute Humidity (mg/L) | Exposure | 115.24 | 253.05 | 34.65 | 44.69 |
| Non-exposure | 38.30 | 115.15 | 0.002 | 25.35 | |
The screening results for climate change-sensitive disease using RS indicator in Anhui province.
| Diseases | Monthly Average Temperature | Monthly Accumulated Precipitation | Monthly Average Absolute Humidity | |||
|---|---|---|---|---|---|---|
| Effective Counties | Counties with RS ≠ 0 * (Proportion) | Effective Counties | Counties with RS ≠ 0 * (Proportion) | Effective Counties | Counties with RS ≠ 0 * (Proportion) | |
| Dysentery | 77 | 35 (45%) | 77 | 51 (66%) | 77 | 73 (95%) |
| Hand, foot and mouth | 76 | 48 (63%) | 76 | 33 (43%) | 76 | 72 (95%) |
| Hepatitis A | 69 | 33 (48%) | 68 | 40 (59%) | 68 | 37 (54%) |
| Malaria | 36 | 21 (59%) | 36 | 10 (28%) | 36 | 30 (83%) |
| Influenza | 29 | 20 (69%) | 29 | 10 (34%) | 29 | 18 (62%) |
| Typhoid fever | 16 | 10 (63%) | 15 | 9 (60%) | 16 | 10 (63%) |
| Hemorrhagic fever | 10 | 1 (10%) | 10 | 2 (20%) | 10 | 6 (60%) |
| Meningitis | 8 | 4(50%) | 8 | 3 (38%) | 8 | 7 (88%) |
| Schistosomiasis | 9 | 6 (67%) | 7 | 4 (57%) | 9 | 5 (56%) |
* p-value is less than 0.05.
Figure 4The spatial distribution of RS for HFM in Anhui Province: (a) RS to temperature; (b) RS to precipitation; (c) RS to absolute humidity.
Figure 5The spatial distribution of RS for dysentery in Anhui Province: (a) RS to temperature; (b) RS to precipitation; (c) RS to absolute humidity.