Associations between Land-Use Patterns and Cardiovascular Disease Mortality in the Beijing—Tianjin–Hebei Megacity Region
Abstract
:1. Introduction
2. Methods and Data
2.1. Methods
2.1.1. Spatial Autocorrelation
2.1.2. Land-Use Patterns and Spatial Pattern Indices
2.1.3. Estimating the Global Impact of Factors
2.1.4. Estimating the Localized Effects of Factors
2.2. Study Area
2.3. Variables
2.3.1. Research Data
- (1)
- Dependent variable
- (2)
- Independent variables
2.3.2. Independent Variables Selection
3. Results
3.1. Spatial Autocorrelation for ASMR
3.2. Global Effects of Land-Use Pattern Characteristics
- Among the single-type distribution indices, AIE is significant at the p = 0.1 level with negative coefficients, indicating a negative correlation between ecological space clustering and ASMR, i.e., the more concentrated the ecological space, the stronger the CVD mortality inhibition. PDA also showed a significant negative correlation with ASMR, which suggests that fragmented patches of agricultural space are positive for public health.
- Among the bi-type interaction indices, LSIAE is significantly negative at the level of p = 0.1. This suggests that a more complex interaction between agricultural and ecological spaces is more effective at reducing CVD mortality. Conversely, a more regular pattern of these two types of land use in the combination zone will have a negative effect. The correlation between EDET and ASMR is more substantial, suggesting that a fragmented and staggered distribution between ecological and construction spaces will better control CVD mortality. Conversely, when these two types of land use are relatively close and compact, they provide greater health benefits.
- Among the all-type land-use patterns, MESH has a significant positive association with ASMR, indicating that higher MESH values correspond to higher ASMR. MESH is defined as the fragmentation of various patch types within a given study unit. Greater fragmentation and decentralization lead to a more positive effect and containment of CVD mortality, whereas concentrating the three types of land use may increase CVD mortality.
3.3. Local Effects of Land-Use Pattern Characteristics
4. Discussion
- (1)
- The moderate dispersion and organic combination of different types of land use enhances public health.
- (2)
- The impact of patch density characteristics depends on the unique properties of land use.
- (3)
- The spatial combination of patches has an impact on the role of each type of land use.
- (4)
- Varying levels of natural, social, and economic development lead to the spatial heterogeneity of impacts.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Categories | Variables | Code | Calculation |
---|---|---|---|
Single-type distribution index | Mean of patch area | AREA_MN | , where AREA[patchij] is the area of each patch in hectares. |
Patch density | PD | , where N is the number of patches and A is the total landscape area in square meters. | |
Largest patch index | LPI | , where max(aij) is the area of the patch in square meters and A is the total landscape area in square meters. | |
Mean shape index | SHAPE_MN | , where SHAPE[patchij] is the shape index of each patch. | |
Aggregation index | AI | , where gii is the number of like adjacencies based on the single-count method and is the class-wise maximum number of like adjacencies of class i. | |
Bi-type interaction index | Contagion | CONTAG | , where pq the adjacency table for all classes divided by the sum of that table and t the number of classes in the landscape. |
Landscape shape index | LSI | , where E is the total edge length in cell surfaces and Emin is the minimum total edge length in cell surfaces. | |
Edge Density | ED | , where E is the total landscape edge in meters and A is the total landscape area in square meters. | |
All-type index | Landscape shape index | LSI | , where E is the total edge length in cell surfaces and Emin is the minimum total edge length in cell surfaces. |
Patch density | PD | , where N is the number of patches and A is the total landscape area in square meters. | |
Landscape division index | DIVISION | , where aij is the area in square meters and A is the total landscape area in square meters. | |
Splitting index | SPLIT | , where aij is the patch area in square meters and A is the total landscape area. | |
Effective mesh size | MESH | , where aij is the patch area in square meters and A is the total landscape area in square meters. | |
Largest patch index | LPI | , where max(aij) is the area of the patch in square meters and A is the total landscape area in square meters. | |
Edge density | ED | , where E is the total landscape edge in meters and A is the total landscape area in square meters. |
Types | Variables | Code | Mean | Std. | Min. | Max. |
---|---|---|---|---|---|---|
Dependent variable | ASMR | CVD | −0.045 | 1.012 | −2.302 | 2.038 |
Independent variables | Aggregation index for ecological space | AIE | −0.018 | 1.005 | −3.051 | 1.393 |
Aggregation index for construction space | AIT | 0.037 | 1.022 | −1.735 | 3.647 | |
Patch density for agricultural space | PDA | 0.054 | 1.019 | −0.847 | 3.625 | |
Contagion for agricultural and ecological space | CONTAGAE | −0.018 | 1.001 | −1.783 | 1.199 | |
Landscape shape index for agricultural and ecological space | LSIAE | 0.063 | 1.004 | −1.443 | 3.976 | |
Edge density for agricultural and construction space | EDAT | 0.020 | 1.015 | −2.100 | 2.657 | |
Edge density for ecological and construction space | EDET | 0.044 | 1.021 | −0.621 | 4.829 | |
Effective mesh size for 3 types of land use | MESH | 0.023 | 1.047 | −0.875 | 7.051 | |
Splitting index for 3 types of land use | SPLIT | 0.038 | 1.013 | −0.804 | 6.006 | |
Control variables | Gross domestic product per capita | GDP | 0.028 | 1.051 | −0.319 | 9.894 |
Percentage of output from polluting industries | POLLUTE | −0.011 | 1.050 | −1.568 | 6.780 | |
Percentage of low-educated population (below high school) | LOW_EDU | −0.052 | 1.018 | −3.383 | 1.012 | |
Percentage of low-income population (below 2500 yuan/month) | LOW_INCOME | −0.061 | 1.026 | −2.410 | 0.983 | |
Hospital beds per capita | BED | −0.017 | 1.028 | −1.943 | 4.540 | |
Accessibility for healthcare services | ACCESS | 0.020 | 1.046 | −0.650 | 6.678 |
Types | Categories | Variables | OLS Model | SEM Model | ||
---|---|---|---|---|---|---|
Coefficient | p-Value | Coefficient | p-Value | |||
Landscape pattern variables | Univariate land-use pattern | AIE | −0.105 | 0.397 | −0.179 † | 0.088 |
AIU | 0.059 | 0.705 | −0.118 | 0.428 | ||
PDA | −0.433 ** | 0.008 | −0.261 † | 0.076 | ||
Bivariate interactive land-use pattern | CONTAGAE | −0.253 | 0.180 | −0.151 | 0.371 | |
LSIAE | −0.269 † | 0.072 | −0.256 † | 0.072 | ||
EDAT | 0.163 | 0.243 | 0.085 | 0.529 | ||
EDET | 0.111 | 0.414 | 0.248 † | 0.069 | ||
Multivariate land-use pattern | MESH | 0.180 | 0.172 | 0.296 * | 0.025 | |
SPLIT | 0.249 | 0.152 | 0.123 | 0.387 | ||
Control variables | Economic and social factors | GDP | 0.154 | 0.153 | 0.129 | 0.148 |
POLLUTE | 0.146 | 0.187 | 0.107 | 0.299 | ||
LOW_EDU | 0.684 ** | 0.001 | 0.578 ** | 0.004 | ||
LOW_INCOME | −0.133 | 0.342 | −0.170 | 0.286 | ||
Healthcare services | BED | −0.067 | 0.572 | −0.040 | 0.705 | |
ACCESS | 0.110 | 0.291 | 0.217 * | 0.012 | ||
Statistical diagnosis | R-squared: 0.400 Adjusted R-squared: 0.302 Log likelihood: −126.472 AIC: 284.944 Moran’s I (error): 2.139 *** Lagrange Multiplier (error): 4.7389 ** Robust LM (error): 5.703 ** | R-squared: 0.457 Log likelihood: −124.182 AIC: 280.364 |
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Kan, C.; Ma, Q.; Liu, A.; Yuan, Z. Associations between Land-Use Patterns and Cardiovascular Disease Mortality in the Beijing—Tianjin–Hebei Megacity Region. Land 2023, 12, 2176. https://doi.org/10.3390/land12122176
Kan C, Ma Q, Liu A, Yuan Z. Associations between Land-Use Patterns and Cardiovascular Disease Mortality in the Beijing—Tianjin–Hebei Megacity Region. Land. 2023; 12(12):2176. https://doi.org/10.3390/land12122176
Chicago/Turabian StyleKan, Changcheng, Qiwei Ma, Anqi Liu, and Zhaoyu Yuan. 2023. "Associations between Land-Use Patterns and Cardiovascular Disease Mortality in the Beijing—Tianjin–Hebei Megacity Region" Land 12, no. 12: 2176. https://doi.org/10.3390/land12122176
APA StyleKan, C., Ma, Q., Liu, A., & Yuan, Z. (2023). Associations between Land-Use Patterns and Cardiovascular Disease Mortality in the Beijing—Tianjin–Hebei Megacity Region. Land, 12(12), 2176. https://doi.org/10.3390/land12122176