Impact of Using Double Positive Samples in Deming Regression

In the method comparison approach, two measurement errors are observed. The classical regression approach (linear regression) method cannot be used for the analysis because the method may yield biased and inefficient estimates. In view of that, the Deming regression is preferred over the classical r...

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Main Authors: Samuel Akwasi Adarkwa, Frank Kofi Owusu, Samuel Okyere
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:International Journal of Mathematics and Mathematical Sciences
Online Access:http://dx.doi.org/10.1155/2022/3984857
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author Samuel Akwasi Adarkwa
Frank Kofi Owusu
Samuel Okyere
author_facet Samuel Akwasi Adarkwa
Frank Kofi Owusu
Samuel Okyere
author_sort Samuel Akwasi Adarkwa
collection DOAJ
description In the method comparison approach, two measurement errors are observed. The classical regression approach (linear regression) method cannot be used for the analysis because the method may yield biased and inefficient estimates. In view of that, the Deming regression is preferred over the classical regression. The focus of this work is to assess the impact of censored data on the traditional regression, which deletes the censored observations compared to an adapted version of the Deming regression that takes into account the censored data. The study was done based on simulation studies with NLMIXED being used as a tool to analyse the data. Eight different simulation studies were run in this study. Each of the simulation is made up of 100 datasets with 300 observations. Simulation studies suggest that the traditional Deming regression which deletes censored observations gives biased estimates and a low coverage, whereas the adapted Deming regression that takes censoring into account gives estimates that are close to the true value making them unbiased and gives a high coverage. When the analytical error ratio is misspecified, the estimates are as well not reliable and biased.
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spelling doaj-art-378447ade9144a1088733eb0fe0fa2922025-02-03T05:50:39ZengWileyInternational Journal of Mathematics and Mathematical Sciences1687-04252022-01-01202210.1155/2022/3984857Impact of Using Double Positive Samples in Deming RegressionSamuel Akwasi Adarkwa0Frank Kofi Owusu1Samuel Okyere2Department of Statistical SciencesDepartment of Statistical SciencesDepartment of MathematicsIn the method comparison approach, two measurement errors are observed. The classical regression approach (linear regression) method cannot be used for the analysis because the method may yield biased and inefficient estimates. In view of that, the Deming regression is preferred over the classical regression. The focus of this work is to assess the impact of censored data on the traditional regression, which deletes the censored observations compared to an adapted version of the Deming regression that takes into account the censored data. The study was done based on simulation studies with NLMIXED being used as a tool to analyse the data. Eight different simulation studies were run in this study. Each of the simulation is made up of 100 datasets with 300 observations. Simulation studies suggest that the traditional Deming regression which deletes censored observations gives biased estimates and a low coverage, whereas the adapted Deming regression that takes censoring into account gives estimates that are close to the true value making them unbiased and gives a high coverage. When the analytical error ratio is misspecified, the estimates are as well not reliable and biased.http://dx.doi.org/10.1155/2022/3984857
spellingShingle Samuel Akwasi Adarkwa
Frank Kofi Owusu
Samuel Okyere
Impact of Using Double Positive Samples in Deming Regression
International Journal of Mathematics and Mathematical Sciences
title Impact of Using Double Positive Samples in Deming Regression
title_full Impact of Using Double Positive Samples in Deming Regression
title_fullStr Impact of Using Double Positive Samples in Deming Regression
title_full_unstemmed Impact of Using Double Positive Samples in Deming Regression
title_short Impact of Using Double Positive Samples in Deming Regression
title_sort impact of using double positive samples in deming regression
url http://dx.doi.org/10.1155/2022/3984857
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