| Literature DB >> 36136622 |
Helina Helmy1,2, Muhammad Totong Kamaluddin3, Iskhaq Iskandar4.
Abstract
Tuberculosis (TB) is a highly infectious disease, representing one of the major causes of death worldwide. Sustainable Development Goal 3.3 implies a serious decrease in the incidence of TB cases. Hence, this study applied a spatial analysis approach to investigate patterns of pulmonary TB cases and its drivers in Bandar Lampung (Indonesia). Our study examined seven variables: the growth rate of pulmonary TB, population, distance to the city center, industrial area, green open space, built area, and slum area using geographically weighted Poisson regression (GWPR). The GWPR model demonstrated excellent results with an R2 and adjusted R2 of 0.96 and 0.94, respectively. In this case, the growth rate of pulmonary TB and population were statistically significant variables. Spatial pattern analysis of sub-districts revealed that those of Panjang and Kedaton were driven by high pulmonary TB growth rate and population, whereas that of Sukabumi was driven by the accumulation of high levels of industrial area, built area, and slums. For these reasons, we suggest that local policymakers implement a variety of infectious disease prevention and control strategies based on the spatial variation of pulmonary TB rate and its influencing factors in each sub-district.Entities:
Keywords: epidemiology; geographic information system; geostatistics; health; infectious disease; spatial science
Year: 2022 PMID: 36136622 PMCID: PMC9502094 DOI: 10.3390/tropicalmed7090212
Source DB: PubMed Journal: Trop Med Infect Dis ISSN: 2414-6366
Estimated number of pulmonary TB deaths in 2020 [1,70,71].
| Region | Pulmonary TB Deaths |
|---|---|
| World | 1,500,000 |
| Indonesia | 13,174 |
| Lampung | 163 |
| Bandar Lampung | 32 |
Figure 1Administration map of Bandar Lampung, Indonesia.
Characteristics of the spatial data used in this study.
| No. | Data | Data Class | Timespan | Reference |
|---|---|---|---|---|
| 1 | Number of Pulmonary Tuberculosis Cases | Socio-demographic | 2020 | [ |
| 2 | Pulmonary Tuberculosis Growth Rate | Socio-demographic | 2015–2020 | [ |
| 3 | Population | Socio-demographic | 2020 | [ |
| 4 | Distance to the Urban Center | Land Use | 2020 | [ |
| 5 | Industrial Area | Land Use | 2020 | [ |
| 6 | Green Open Space Area | Land Use | 2020 | [ |
| 7 | Slums Area | Land Use | 2020 | [ |
| 8 | Built Area (GAIA) | Land Use | 1985–2018 | [ |
Figure 2Scatter plot and correlation coefficient of all explanatory variables.
Statistical summary of ordinary least square (OLS) results.
| Variable | Coefficient | StdError | t-Statistics | Probability | Robust_SE | Robust_t | Robust_Pr | VIF |
|---|---|---|---|---|---|---|---|---|
| Intercept | −7.420 | 25.487 | −0.291 | 0.078 | 19.944 | −0.372 | 0.716 | - |
| Population | 0.002 | 0.001 | 3.320 | 0.006 * | 0.001 | 5.773 | 0.000 * | 2.631 |
| Distance to the Urban Center | −3.416 | 1.975 | −1.730 | 0.109 | 1.336 | −2.556 | 0.025 * | 1.828 |
| Industrial Area | 0.167 | 3.763 | 0.044 | 0.965 | 2.568 | 0.065 | 0.949 | 3.678 |
| Green Open Space | −40.034 | 56.106 | −0.714 | 0.489 | 37.453 | −1.069 | 0.306 | 1.931 |
| Built Area | −8.995 | 6.864 | −1.311 | 0.215 | 5.318 | −1.691 | 0.117 | 2.591 |
| 5 Years Average Pulmonary TB Growth Rate | 5.615 | 1.157 | 4.581 | 0.000 * | 1.195 | 4.697 | 0.001 * | 1.352 |
| Slums | 0.249 | 0.143 | 1.735 | 0.108 | 0.078 | 3.190 | 0.008 * | 2.633 |
|
| ||||||||
| Number of Observations | 20 | Akaike’s Information Criterion (AICc) | 205.284 | |||||
| Multiple R-Squared | 0.83 | Adjusted R-Squared | 0.73 | |||||
| Joint F-Statistics | 8.288 | Prob (>F), (7,12) degrees of freedom | 0.001 * | |||||
| Joint Wald Statistics | 177.349 | Prob (>chi-squared), (7) degrees of freedom | 0.000 * | |||||
| Koenker (BP) Statistics | 9.603 | Prob (>chi-squared), (7) degrees of freedom | 0.212 * | |||||
| Jarque–Bera Statistics | 0.896 | Prob (>chi-squared), (2) degrees of freedom | 0.639 * | |||||
* An asterisk next to a number indicates a statistically significant p-value (p < 0.01).
Figure 3Spatial distribution of AFB smear-positive pulmonary tuberculosis (TB) cases in Bandar Lampung in 2020.
Figure 4Estimated and real AFB smear-positive pulmonary tuberculosis (TB) by sub-districts in Bandar Lampung.
Figure 5Residuals map of OLS and GWPR model.
Figure 6Incidence rate of pulmonary TB in Bandar Lampung in 2020.
Figure 7Spatial variations of pulmonary TB cases, pulmonary TB growth rate, population, built area, industrial area, and slums.