期刊论文详细信息
BMC Public Health
A spatial model to predict the incidence of neural tube defects
Jun Wu1  Jinfeng Wang3  Lianfa Li2 
[1] Department OF Epidemiology, School of Medicine, University of California, Irvine, USA;Program in Public Health, College of Health Sciences, University of California, Irvine, USA;State Key Lab of Resources and Environmental Information Systems, Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences, 1305, No. A11, Rd. Datun, Anwai, Beijing, 100101, China
关键词: GAM;    Spatial model;    Residual;    Birth defects;    NTD;   
Others  :  1162878
DOI  :  10.1186/1471-2458-12-951
 received in 2012-03-25, accepted in 2012-10-05,  发布年份 2012
PDF
【 摘 要 】

Background

Environmental exposure may play an important role in the incidences of neural tube defects (NTD) of birth defects. Their influence on NTD may likely be non-linear; few studies have considered spatial autocorrelation of residuals in the estimation of NTD risk. We aimed to develop a spatial model based on generalized additive model (GAM) plus cokriging to examine and model the expected incidences of NTD and make the inference of the incidence risk.

Methods

We developed a spatial model to predict the expected incidences of NTD at village level in Heshun County, Shanxi Province, China, a region with high NTD cases. GAM was used to establish linear and non-linear relationships between local covariates and the expected NTD incidences. We examined the following village-level covariates in the model: projected coordinates, soil types, lithodological classes, distance to watershed, rivers, faults and major roads, annual average fertilizer uses, fruit and vegetable production, gross domestic product, and the number of doctors. The residuals from GAM were assumed to be spatially auto-correlative and cokriged with regional residuals to improve the prediction. Our approach was compared with three other models, universal kriging, generalized linear regression and GAM. Cross validation was conducted for validation.

Results

Our model predicted the expected incidences of NTD well, with a good CV R2 of 0.80. Important predictive factors included the fertilizer uses, locations of the centroid of each village, the shortest distance to rivers and faults and lithological classes with significant spatial autocorrelation of residuals. Our model out-performed the other three methods by 16% or more in term of R2.

Conclusions

The variance explained by our model was approximately 80%. This modeling approach is useful for NTD epidemiological studies and intervention planning.

【 授权许可】

   
2012 Li et al.; licensee BioMed Central Ltd.

【 预 览 】
附件列表
Files Size Format View
20150413082723513.pdf 848KB PDF download
Figure 4. 76KB Image download
Figure 3. 158KB Image download
Figure 2. 66KB Image download
Figure 1. 86KB Image download
【 图 表 】

Figure 1.

Figure 2.

Figure 3.

Figure 4.

【 参考文献 】
  • [1]Christianson A, Howson PC, Modell B: Global report on birth defects: the hidden toll of dying and disabled children. March of Dimes Foundation, New York; 2006.
  • [2]Milunsky A, Milunsky J: Genetic disorders and the fetus: diagnosis, prevention and treatment. 6th edition. John Wiley & Sons Ltd., West Sussex, UK; 2010.
  • [3]Finnell RH, Gelineau-van Waes J, Bennett GD, Barber RC, Wlodarczyk B, Shaw GM, Lammer EJ, Piedrahita JAE JH: Genetic basis of susceptibility to environmentally induced neural tube defects. Ann N Y Acad Sci 2000, 919:261-277.
  • [4]Sever LE: Looking for causes of neural tube defects: where does the environment fit in? Environmental Health Perspective 1995, 103(Suppl 6):165-171.
  • [5]Ren A, Qiu X, Jin L, Ma J, Li Z, Zhang L, Zhu H, Finnell RH, Zhu T: Association of selected persistent organic pollutants in the placenta with the risk of neural tube defects. Proceedings of the National Academy of Sciences(PNAS) of the United States of America 2011, 108:12770-12775.
  • [6]Li Z, Zhang L, Ye R, Pei L, Liu J, Zheng X, Ren A: Indoor air pollution from coal combustion and the risk of neural tube defects in a rural population in Shanxi Province, China. Am J Epidemiol 2011, 174:451-458.
  • [7]Chisholm K, Cook A, Bower C, Weinstein P: Risk of birth defects in Australia communities with high levels of brominated disinfection by-products. Environ Heal Perspect 2008, 116:1267-1273.
  • [8]Bai YN, Qu Y, Hu XB, Pei HP, Zhao C, Li XF, Guo HJ, Wang XB, Chen N: Multiple factor analysis for birth defects. Health Care of China’s Women and Babies (in Chinese) 2004, 19:44-46.
  • [9]Wang JF, Li XH, Christakox G: Geographical detectors-based health risk assessment and its application in the nural tube defects study of the heshun region, China. Int J Geogr Inf Sci 2010, 24:107-127.
  • [10]Wu JL, Chen G, Song XM: Spatiotemporal property analysis of birth defects in Wuxi, China. Biomedical Environmental Science 2008, 21:432-437.
  • [11]Zhang KL, Peng WY, He YW, Zheng XY, Wang JF, Chen Y: Analysis on trace element of geochemical environment in high prevalence area of birth defects. Public Health of China (in Chinese) 2007, 23:54-56.
  • [12]Li X, Wang J, Liao Y: A geological analysis for the environmental cause of human birth defects based on GIS. Toxicol Environ Chem 2006, 88:551-559.
  • [13]Lester EG, Grosby MK: Ascorbic acid, folic acid and potassium content in postharvest green-flesh honeydew muskmelons: influence of cultivar, fruit size, soil type, and year. J Am Soc Hortic Sci 2002, 127:843-847.
  • [14]Chi WX, Wang JF, Li XH, Liao YL: Regional correlation analysis of birth defects in Heshun county, Shanxi Province. Journal of Hygiene Research (in Chinese) 2007, 36:328-330.
  • [15]Liao YL, Wang JF, Wu JL, Driskell L, Wang W, Zhang T, Xue G, Zheng XY: Spatial analysis of neural tube defects in a rural coal mining area. Int J Environ Heal Res 2010, 20:439-450.
  • [16]Wang JF, Liu X, Christakos G, Liao YL, Gu X, Zheng XY: Assessing local determinants of neural tube defects in the Heshun region, Shanxi province, China. BMC Publ Health 2010, 10:1-11. BioMed Central Full Text
  • [17]Wang JF, Liu X, Liao YL, Chen HY, Li WX, Zheng XY: Prediction of neural tube defect using support vecor machine. Biomedical and Environmental Sciences 2010, 23:167-172.
  • [18]Paciorek JC: The importance of scale for spatial-counfound bias and precision of spatial regression estimators. Stat Sci 2010, 25:107-125.
  • [19]Nuckols J, Ward HM, Jarup L: Using geographic information systems for exposure assessment in environmental epidemiology studies. Environ Heal Perspect 2004, 112:1007-1015.
  • [20]Zuur FA, Ieno NE, Walker JN, Saveliev AA, Smith MG: Mixed effects models and extensions in ecology with R. Springer, New York; 2009.
  • [21]Hastie TJ: Generalized additive models. Chapman and Hall, New York; 1990.
  • [22]Gartan C, Guyon X: Spatial statistics and modeling. Springer Secience & Business, New York; 2010.
  • [23]Croen AL, Todoroff K, Shaw MG: Maternal exposure to nitrate from drinking water and diet and risk for nural tube defects. Am J Epidemiol 2001, 153:325-331.
  • [24]Manassaram MM, Backer LC, Moll MD: A review of nitrates in drinking water: maternal exposure and adverse reproductive and developmental outcomes. Environmental Health Perspective 2006, 114:320-327.
  • [25]Su GJ, Jerrett M, Beckerman B, Wilhelm M, Ghosh KJ, Ritz B: Predicting traffic-related air pollution in Los Angeles using a distance decay regression selection strategy. Environ Res 2009, 109:657-670.
  • [26]O’Brien MR: A caution regarding rules of thumb for variance inflation factors. Qual Quant 2007, 41:673-690.
  • [27]Goovaerts P: Geostatistics for natural resources evaluation. Oxford University Press, New York; 1997.
  • [28]Johnston K, Hoef MJ, Krivoruchko K, Lucas N, In Book ArcGIS 9: using ArcGIS Geostatistical analyst: ArcGIS 9: Using ArcGIS Geostatistical Analyst. Edited by. Redland, CA, ESRI; 2003.
  • [29]Draper NR, Smith H: Applied regression analysis. Wiley-Interscience, New York; 1998.
  • [30]Brender JD, Olive JM, Felkner M, Suarez L, Marckwardt W, Hendricks KA: Dietary nitrites and nitrates, nitrosatable drugs, and neural tube defects. Epidemiology 2004, 15:330-336.
  • [31]Shaffer, Waste Land: Waste Land: the Threat of Toxic Fertilizer, San Francisco, C. CALPIRG Charitable Trust, The State PIRGs; 2001.
  • [32]Winchester DP, Huskins J, Ying J: Agrichemicals in surface water and birth defects in the United States. Foundation Acta Pædiatrica/Acta Pædiatrica 2009, 98:664-669.
  • [33]Wu JL, Wang JF, Meng B, Chen G, Pang LH, Song XM, Zhang T, Zheng XY: Exploratory spatial data analysis for the identification of risk factors to birth defects. BMC Public Health 2004, 4:23. BioMed Central Full Text
  • [34]Vieira V, Webster T, Weinberg J, Aschengrau A, Ozonoff D: Spatial analysis of lung, colorectal, and breast cancer on Cape Cod: An application of generalized additive models to case control data. Environ Heal 2005, 4:11. BioMed Central Full Text
  • [35]Mercer DL, Szpiro AA, Sheppard L, Lindstrom J, Adar DS, Allen WR, Avol LE, Oron PA, Larson T, Liu L, Kaufman DJ: Comparing universal kriging and land-use regression for predicting concentrations of gaseous oxides of nitrogen (NOx) for multi-ethnic study of Attherosclerosis and Air pollution (MESA AIR). Atmospheric Environment 2011, 45:4412-4420.
  • [36]Carmona RH: The global challenges of birth defects and disabilities. Lancet 2005, 366:1142-1144.
  • [37]Priddy LK, Keller EP: Artificial neural networks: an Introducton. The International Society for Optimal Engineering, Washington; 2005.
  文献评价指标  
  下载次数:25次 浏览次数:10次