Quasi-Likelihood Techniques in a Logistic Regression Equation for Identifying Simulium damnosum s.l. Larval Habitats Intra-cluster Covariates in Togo.

IF 4.4 1区 地球科学 Q1 REMOTE SENSING Geo-spatial Information Science Pub Date : 2012-01-01 Epub Date: 2012-09-24 DOI:10.1080/10095020.2012.714663
Benjamin G Jacob, Robert J Novak, Laurent Toe, Moussa S Sanfo, Abena N Afriyie, Mohammed A Ibrahim, Daniel A Griffith, Thomas R Unnasch
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引用次数: 4

Abstract

The standard methods for regression analyses of clustered riverine larval habitat data of Simulium damnosum s.l. a major black-fly vector of Onchoceriasis, postulate models relating observational ecological-sampled parameter estimators to prolific habitats without accounting for residual intra-cluster error correlation effects. Generally, this correlation comes from two sources: (1) the design of the random effects and their assumed covariance from the multiple levels within the regression model; and, (2) the correlation structure of the residuals. Unfortunately, inconspicuous errors in residual intra-cluster correlation estimates can overstate precision in forecasted S.damnosum s.l. riverine larval habitat explanatory attributes regardless how they are treated (e.g., independent, autoregressive, Toeplitz, etc). In this research, the geographical locations for multiple riverine-based S. damnosum s.l. larval ecosystem habitats sampled from 2 pre-established epidemiological sites in Togo were identified and recorded from July 2009 to June 2010. Initially the data was aggregated into proc genmod. An agglomerative hierarchical residual cluster-based analysis was then performed. The sampled clustered study site data was then analyzed for statistical correlations using Monthly Biting Rates (MBR). Euclidean distance measurements and terrain-related geomorphological statistics were then generated in ArcGIS. A digital overlay was then performed also in ArcGIS using the georeferenced ground coordinates of high and low density clusters stratified by Annual Biting Rates (ABR). This data was overlain onto multitemporal sub-meter pixel resolution satellite data (i.e., QuickBird 0.61m wavbands ). Orthogonal spatial filter eigenvectors were then generated in SAS/GIS. Univariate and non-linear regression-based models (i.e., Logistic, Poisson and Negative Binomial) were also employed to determine probability distributions and to identify statistically significant parameter estimators from the sampled data. Thereafter, Durbin-Watson test statistics were used to test the null hypothesis that the regression residuals were not autocorrelated against the alternative that the residuals followed an autoregressive process in AUTOREG. Bayesian uncertainty matrices were also constructed employing normal priors for each of the sampled estimators in PROC MCMC. The residuals revealed both spatially structured and unstructured error effects in the high and low ABR-stratified clusters. The analyses also revealed that the estimators, levels of turbidity and presence of rocks were statistically significant for the high-ABR-stratified clusters, while the estimators distance between habitats and floating vegetation were important for the low-ABR-stratified cluster. Varying and constant coefficient regression models, ABR- stratified GIS-generated clusters, sub-meter resolution satellite imagery, a robust residual intra-cluster diagnostic test, MBR-based histograms, eigendecomposition spatial filter algorithms and Bayesian matrices can enable accurate autoregressive estimation of latent uncertainity affects and other residual error probabilities (i.e., heteroskedasticity) for testing correlations between georeferenced S. damnosum s.l. riverine larval habitat estimators. The asymptotic distribution of the resulting residual adjusted intra-cluster predictor error autocovariate coefficients can thereafter be established while estimates of the asymptotic variance can lead to the construction of approximate confidence intervals for accurately targeting productive S. damnosum s.l habitats based on spatiotemporal field-sampled count data.

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用Logistic回归方程拟似然技术识别多哥沙棘幼虫栖息地群内协变量。
盘尾丝虫病的主要黑蝇媒介Simulium damnosum s.l.的聚集性河流幼虫栖息地数据回归分析的标准方法,假设了将观测生态采样参数估计值与多产栖息地相关联的模型,而不考虑残留的聚类内误差相关效应。一般来说,这种相关性来自两个来源:(1)随机效应的设计和回归模型中多个水平的协方差;(2)残差的相关结构。不幸的是,无论如何处理(如独立、自回归、Toeplitz等),残差聚类内相关估计的不显著误差都会高估预测damnosum s.l.河流幼虫栖息地解释属性的精度。本研究于2009年7月至2010年6月在多哥2个预先建立的流行病学站点取样,确定并记录了多个基于河流的水蚤幼虫生态系统栖息地的地理位置。最初,数据被聚合到proc genmod中。然后进行了基于凝聚的分层残差聚类分析。然后使用月度咬人率(MBR)分析抽样的聚类研究地点数据的统计相关性。然后在ArcGIS中生成欧几里得距离测量和与地形相关的地貌统计数据。然后在ArcGIS中使用按年咬人率(ABR)分层的高密度和低密度群集的地理参考地面坐标进行数字覆盖。这些数据被叠加到多时相亚米像素分辨率卫星数据上(即QuickBird 0.61m波段)。然后在SAS/GIS中生成正交空间滤波特征向量。基于单变量和非线性回归的模型(即Logistic、泊松和负二项)也被用来确定概率分布,并从抽样数据中识别统计上显著的参数估计。此后,使用Durbin-Watson检验统计量来检验零假设,即回归残差与AUTOREG中残差遵循自回归过程的备选方案不自相关。对PROC MCMC中每个采样估计量采用正态先验构造贝叶斯不确定性矩阵。残差揭示了高、低abr分层簇的空间结构化和非结构化误差效应。分析还表明,对于高abr分层的群集,估计量、浊度水平和岩石的存在具有统计学意义,而对于低abr分层的群集,估计量与浮动植被之间的距离具有重要意义。变系数和常系数回归模型、ABR分层gis生成的聚类、亚米分辨率卫星图像、鲁棒残差聚类诊断测试、基于mbr的直方图、特征分解空间滤波算法和贝叶斯矩阵能够准确地自回归估计潜在不确定性影响和其他残差概率(即:异方差性)用于检验地理参考的河鼠幼虫栖息地估定值之间的相关性。由此得到的残差调整后的聚类内预测误差自协变量系数的渐近分布可以建立,而渐近方差的估计可以导致构建近似置信区间,以准确定位基于时空野外采样计数数据的生产性沙棘栖息地。
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来源期刊
CiteScore
10.10
自引率
28.30%
发文量
710
审稿时长
31 weeks
期刊介绍: Geo-spatial Information Science was founded in 1998 by Wuhan University, and is now published in partnership with Taylor & Francis. The journal publishes high quality research on the application and development of surveying and mapping technology, including photogrammetry, remote sensing, geographical information systems, cartography, engineering surveying, GPS, geodesy, geomatics, geophysics, and other related fields. The journal particularly encourages papers on innovative applications and theories in the fields above, or of an interdisciplinary nature. In addition to serving as a source reference and archive of advancements in these disciplines, Geo-spatial Information Science aims to provide a platform for communication between researchers and professionals concerned with the topics above. The editorial committee of the journal consists of 21 professors and research scientists from different regions and countries, such as America, Germany, Switzerland, Austria, Hong Kong and China.
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