Title of article
Research Paper: Binary Regression With a Misclassified Response Variable in Diabetes Data
Author/Authors
Rastegar, Maryam Department of Biostatistics - University of Social Welfare and Rehabilitation Sciences, Tehran , Bakhshi, Enayatollah Department of Biostatistics - University of Social Welfare and Rehabilitation Sciences, Tehran , Hosseinzadeh, Samaneh Department of Biostatistics - University of Social Welfare and Rehabilitation Sciences, Tehran
Pages
4
From page
49
To page
52
Abstract
Objectives: The categorical data analysis is very important in statistics and medical sciences.
When the binary response variable is misclassified, the results of fitting the model will be biased in
estimating adjusted odds ratios.
The present study aimed to use a method to detect and correct misclassification error in the response
variable of Type 2 Diabetes Mellitus (T2DM), applying binary logistic regression.
Methods: Data from the Diabetes Screening test in the Health Center of Zahedan City, Iran,
were explored. It included 819 Iranian adults with a binary response variable (T2DM). By a new
method, the misclassification parameters and the estimated parameters in logistic regression were
validated. Statistical analysis was performed using SAS, and P<0.05 were considered as statistically
significant. Results are presented as Odds Ratio (OR) and 95% Confidence Interval (CI).
Results: Increased age (OR=1.04, 95% CI=1.02-1.06), hypertension (OR=3.06, 95% CI=1.80-
5.21), and obesity (OR=1.99, 95% CI=1.26-3.15), all elevated the odds of T2DM.
Discussion: The method provided adjusting for bias due to misclassification in logistic regression,
and using it is recommended.
Keywords
Logistic regression , Diabetic , Odds ratio
Journal title
Iranian Rehabilitation Journal (IRJ)
Serial Year
2019
Record number
2499719
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