| Literature DB >> 21375751 |
Fang Huang1, Shuisen Zhou, Shaosen Zhang, Hongju Wang, Linhua Tang.
Abstract
BACKGROUND: Malaria has been endemic in Linzhi Prefecture in the Tibet Autonomous Region (TAR) over the past 20 years, especially in Motou County with a highest incidence in the country in recent years. Meteorological factors, such as rainfall, temperature and relative humidity in Motou County were unique compared to other areas in Tibet as well as other parts of China, thus the objective of this work was to analyse the temporal correlation between malaria incidence and meteorological factors in Motou County, in order to seek the particular interventions for malaria control.Entities:
Mesh:
Year: 2011 PMID: 21375751 PMCID: PMC3060153 DOI: 10.1186/1475-2875-10-54
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Figure 1Feature of Motuo County relative to neighboring counties and countries.
Figure 2Annual and monthly malaria incidence of Motuo County. (a) monthly malaria incidence of Motuo County (b) annual malaria incidence Motuo County
Spearman correlations coefficient between meteorological variables, untransformed malaria case count and logarithmically transformed malaria case count
| relative humidity | rainfall | average temperature | average maximum temperature | average minimum temperature | malaria incidence | |
|---|---|---|---|---|---|---|
| relative humidity | 1.000 | 0.844** | 0.794** | 0.728** | 0.836** | 0.543** |
| rainfall | 0.844** | 1.000 | 0.738** | 0.675** | 0.772** | 0.348** |
| average temperature | 0.794** | 0.738** | 1.000 | 0.981** | 0.990** | 0.518** |
| average maximum temperature | 0.728** | 0.675** | 0.981** | 1.000 | 0.954** | 0.529** |
| average minimum temperature | 0.836** | 0.772** | 0.990** | 0.954** | 1.000 | 0.510** |
| malaria incidence | 0.543** | 0.348** | 0.518** | 0.529** | 0.510** | 1.000 |
Significance of correlation coefficient different from zero: ** = P < 0.01
Figure 3Cross-correlation coefficients of time series of monthly meteorological variables and monthly malaria incidence at several lags for Motuo County.
Figure 4Cross-correlation coefficients of time series of pre-whitened monthly meteorological variables and monthly malaria incidence time series at several lags for Motuo County.
Maximum and minimum Pearson product-moment cross-correlation coefficients, starting month and lag (number of months that malaria case time series are lagged behind) for which the maximum or minimum occurred, and significance of the regression coefficient for differenced meteorological variables and differenced annual malaria case time series (n = 22), corrected for first order auto regressive correlation
| District | Minimum | Maximum | ||
|---|---|---|---|---|
| r | start month (lag) | r | start month (lag) | |
| Differenced annual average maximum temperature vs. differenced annual malaria incidence | -0.668** | 9(1) | 0.286 | 4(3) |
| Differenced annual average relative humidity vs. differenced annual malaria incidence | -0.382 | 4(3) | 0.432* | 9(1) |
| Differenced annual rainfall vs. differenced annual malaria incidence | -0.207 | 4(3) | 0.451* | 9(1) |
r = Pearson product moment correlation coefficient
Significance of regression coefficient different from zero:* = P < 0.05, ** = P < 0.01