| Literature DB >> 23311958 |
Zhijie Zhang1, Michecal Ward, Jie Gao, Zengliang Wang, Baodong Yao, Tiejun Zhang, Qingwu Jiang.
Abstract
Satellite measurements have distinct advantages over conventional ground measurements because they can collect the information repeatedly and automatically. Since 1970 globally and 1985 in China, the availability of remote sensing (RS) techniques has steadily grown and they are becoming increasingly important to improve our understanding of human health. This paper gives the first detailed overview on the developments of RS applications for disease control in China. The problems, challenges and future directions are also discussed with an aim of guiding prospective studies.Entities:
Mesh:
Year: 2013 PMID: 23311958 PMCID: PMC3558403 DOI: 10.1186/1756-3305-6-11
Source DB: PubMed Journal: Parasit Vectors ISSN: 1756-3305 Impact factor: 3.876
Characteristics of studies using RS techniques in disease control studies during 1996-2003
| schistosomiasis | South of the Yellow River | To explore the possibility of using prediction model for schistosomiasis surveillance. | NOAA-AVHRR, 1 km | Overlay analysis | [ |
| schistosomiasis | Dantu county, Zhenjiang city, Jiangsu province | To quantitatively measure the changes of marshland area related to schistosomiasis. | Aerial photography maps | Manual measurement | [ |
| schistosomiasis | Anning River, Xichang city, Sichuan province | To determine whether environmental conditions observable via Landsat TM imagery correlate with the presence of snails. | Landsat TM, 30 m | Unsupervised and supervised classification | [ |
| schistosomiasis | Yangtze River within Nanjing city, Jiangsu province | To understand the distribution of snail habitats in the lake and marshland regions. | Landsat MSS, 30 m | Tasseled Cap Transformation | [ |
| schistosomiasis | Liupo village, Guichi region, Anhui province | To identify the suitable vegetation types for snails. | Landsat TM, 30 m | Unsupervised classification | [ |
| schistosomiasis | Poyang Lake | Identify the water regions in schistosomiasis epidemic regions. | Landsat TM, 30 m | Visual interpretation | [ |
| schistosomiasis | Poyang lake | To identify snail habitats in Poyang Lake regions. | Landsat TM, 30 m | Unsupervised classification | [ |
| Malaria | Jiangsu Province | To explore the possibilities of predict the trend of malaria epidemic with RS images. | NOAA-AVHRR, 1 km | Correlation analysis | [ |
| schistosomiasis | Jiangning county | To explore the relationship of NDVI and snail habitats. | NOAA-AVHRR and MODIS Terra, 1 km | Linear regression | [ |
| Dengue fever | Guangdong province | To explore the relationship of NDVI and | NOAA-AVHRR, 1 km | Linear regression | [ |
Characteristics of studying classification techniques of RS images for disease control during 2003-present
| schistosomiasis | Dongzhi county, Anhui province | To explore appropriate index for monitoring snail habitats. | Landsat TM, 30 m | Unsupervised classification | [ |
| schistosomiasis | Jiangning county | To analyze the vegetation characteristics of snail habitats. | Landsat ETM+, 30 m | Unsupervised classification | [ |
| schistosomiasis | Poyang Lake | To identify snail habitats. | Landsat TM, 30 m | Unsupervised classification and tasseled-cap transformation | [ |
| schistosomiasis | Zhongxiang city,Hubei province | To identify snail habitats. | Landsat TM, 30 m | Neural network analysis | [ |
| schistosomiasis | Poyang lake | To identify snail habitats. | Landsat TM, 30 m | Knowledge-based Decision trees | [ |
| schistosomiasis | Guichi region, Anhui province | To identify snail habitats. | CBERS, 20 m | Index-based quantitative classification | [ |
| schistosomiasis | Poyang lake | To predict the distribution of snail habitats. | Landsat TM, 30 m | Fuzzy classification | [ |
| schistosomiasis | Dali city, Yunnan province | To predict the suitability of snail habitats. | Landsat TM, 30 m | Suitability modeling technique | [ |
| plague | Tongyu county, Jilin province | To identify appropriate regions for the living of | Landsat TM, 30 m | Unsupervised classification | [ |
Using RS-extracted environmental indices as covariates in the process of spatial data modeling
| schistosomiasis | Jiangning county | To predict snail density. | Landsat ETM+, 30 m | Linear regression analysis and Kriging interpolation | [ |
| schistosomiasis | Xichang city, Sichuan province | To predict snail density. | Ikonos, 4 m; ASTER, 30 m | Linear regression and semi-variogram analysis | [ |
| schistosomiasis | Jiangsu province | To study the spatio-temporal variation of schistosomiasis infection risk. | NOAA-AVHRR, 1 km | Bayesian spatial modeling | [ |
| malaria | Southeastern Yunnan Province | To study the relationship of RS-extracted NDVI to Anopheles density and malaria incidence rate. | NOAA-AVHRR, 1 km | principal component analysis, factor analysis and grey correlation analysis | [ |
| schistosomiasis | Jiahu village of Yugan county (Poyang Lake) | To study quantitative relationships between snail density and various environmental indices from RS images. | Landsat TM, 30 m | Linear regression analysis | [ |
| schistosomiasis | Eryuan county, Yunnan Province | To understand ecological variability of snail distribution. | SPOT5, 5 m | Bayesian spatial modeling | [ |
| schistosomiasis | Guichi region, Anhui province | To identify the risk regions of schistosomiasis. | NOAA-AVHRR, 1 km; CBERS, 20 M | Generalized additive models | [ |