Spatial regression with covariate measurement error: A semiparametric approach

Spatial data have become increasingly common in epidemiology and public health research thanks to advances in GIS (Geographic Information Systems) technology. In health research, for example, it is common for epidemiologists to incorporate geographically indexed data into their studies. In practice, however, the spatially defined covariates are often measured with error. Naive estimators of regression coefficients are attenuated if measurement error is ignored. Moreover, the classical measurement error theory is inapplicable in the context of spatial modeling because of the presence of spatial correlation among the observations. We propose a semiparametric regression approach to obtain bias-corrected estimates of regression parameters and derive their large sample properties. We evaluate the performance of the proposed method through simulation studies and illustrate using data on Ischemic Heart Disease (IHD). Both simulation and practical application demonstrate that the proposed method can be effective in practice.

[1]  L. Waller,et al.  Applied Spatial Statistics for Public Health Data: Waller/Applied Spatial Statistics , 2004 .

[2]  K. Pickett,et al.  Multilevel analyses of neighbourhood socioeconomic context and health outcomes: a critical review , 2001, Journal of epidemiology and community health.

[3]  L. Ryan,et al.  Spatio-temporal Analysis of Acute Admissions for Ischemic Heart Disease in NSW, Australia , 2005, Environmental and Ecological Statistics.

[4]  M. Wand,et al.  Smoothing with Mixed Model Software , 2004 .

[5]  B P Carlin,et al.  Spatio-temporal models with errors in covariates: mapping Ohio lung cancer mortality. , 1998, Statistics in medicine.

[6]  N. Breslow,et al.  Statistical methods in cancer research. Volume II--The design and analysis of cohort studies. , 1987, IARC scientific publications.

[7]  D. Ruppert Selecting the Number of Knots for Penalized Splines , 2002 .

[8]  Wayne A. Fuller,et al.  Measurement Error Models , 1988 .

[9]  Paul H. C. Eilers,et al.  Flexible smoothing with B-splines and penalties , 1996 .

[10]  Lianne Sheppard,et al.  Insights on bias and information in group-level studies. , 2003, Biostatistics.

[11]  D. Cook,et al.  Multiple regression in geographical mortality studies, with allowance for spatially correlated errors. , 1983, Biometrics.

[12]  Md Hamidul Huque,et al.  On the impact of covariate measurement error on spatial regression modelling , 2014, Environmetrics.

[13]  S. Wood Generalized Additive Models: An Introduction with R , 2006 .

[14]  M. Wand,et al.  Semiparametric Regression: Parametric Regression , 2003 .

[15]  David Ruppert,et al.  Semiparametric regression during 2003-2007. , 2009, Electronic journal of statistics.

[16]  P. Elliott,et al.  Spatial Epidemiology: Current Approaches and Future Challenges , 2004, Environmental health perspectives.

[17]  Christopher J Paciorek,et al.  The importance of scale for spatial-confounding bias and precision of spatial regression estimators. , 2010, Statistical science : a review journal of the Institute of Mathematical Statistics.

[18]  R Core Team,et al.  R: A language and environment for statistical computing. , 2014 .

[19]  R. Burnett,et al.  Confounding and exposure measurement error in air pollution epidemiology , 2011, Air Quality, Atmosphere & Health.

[20]  P. Diggle Applied Spatial Statistics for Public Health Data , 2005 .

[21]  Sander Greenland,et al.  Modern Epidemiology 3rd edition , 1986 .

[22]  Annamaria Guolo,et al.  Robust techniques for measurement error correction: a review , 2008, Statistical methods in medical research.

[23]  Jiguo Cao,et al.  Parameter Estimation of Partial Differential Equation Models , 2013, Journal of the American Statistical Association.

[24]  Rong Chen,et al.  Ozone Exposure and Population Density in Harris County, Texas , 1997 .

[25]  D. Ruppert,et al.  Penalized Spline Estimation for Partially Linear Single-Index Models , 2002 .

[26]  R. Tibshirani,et al.  Generalized Additive Models , 1991 .

[27]  Douglas W. Nychka,et al.  Design of Air-Quality Monitoring Networks , 1998 .

[28]  Robert Tibshirani,et al.  Bootstrap Methods for Standard Errors, Confidence Intervals, and Other Measures of Statistical Accuracy , 1986 .

[29]  Noel A. C. Cressie,et al.  Statistics for Spatial Data: Cressie/Statistics , 1993 .

[30]  C Montomoli,et al.  Spatial correlation in ecological analysis. , 1993, International journal of epidemiology.

[31]  Noel A Cressie,et al.  Statistics for Spatial Data. , 1992 .

[32]  N. G. Best,et al.  Disease mapping with errors in covariates. , 1997, Statistics in medicine.

[33]  Lianne Sheppard,et al.  Efficient measurement error correction with spatially misaligned data. , 2011, Biostatistics.

[34]  D. Bates,et al.  Mixed-Effects Models in S and S-PLUS , 2001 .

[35]  Joel Schwartz,et al.  Measurement error caused by spatial misalignment in environmental epidemiology. , 2009, Biostatistics.

[36]  Robert Tibshirani,et al.  An Introduction to the Bootstrap , 1994 .

[37]  N. Breslow,et al.  Approximate inference in generalized linear mixed models , 1993 .

[38]  N E Day,et al.  Statistical methods in cancer research. IARC Workshop 25-27 May 1983. , 1987, IARC scientific publications.

[39]  J. Snow On the Mode of Communication of Cholera , 1856, Edinburgh medical journal.

[40]  Xihong Lin,et al.  Spatial Linear Mixed Models with Covariate Measurement Errors. , 2009, Statistica Sinica.

[41]  Ali S. Hadi,et al.  Finding Groups in Data: An Introduction to Chster Analysis , 1991 .

[42]  Andrew W. Roddam,et al.  Measurement Error in Nonlinear Models: a Modern Perspective , 2008 .