Abstract:
In this study, a logistic
the Institute of Medical Research, Kuala Lumpur, Malaysia which contained 32
observations and 3 variables(
Three logistic regression models were constructed namely: the null model (model with
only the constant), model with the two predictors and model with the best
predictor.Backward selection procedure was used in this study
variable that contributes to the outcome of the erythrocyte sedimentation rate (ESR).
The logistic regression models were constructed for the data with their corresponding
accuracy and precision at 95% confidence level.Various tests were
validate the models obtained.The result shows that only
significantly to the outcome of the erythrocyte sedimentation rate (ESR) while
Globulins do not really contributed. It is indeed possible to predict whether a patient is
healthy or not based on the values of
individual. Also it was discovered that the
in predicting whether a patient is healthy or not.The best model was the model with
the two predictors with 87.5
Keywords: Logistic regression,
maximum likelihood, prediction, akaike information criteria, deviance, modelling
1.0 Introduction
Logistic regression model is a mathematical model that describe the relationship of several independent variabless to a binar
(dichtomous) dependent variable.Logistic regression model was developed primarily by Cox in 1958 and Walker and Duncan
in 1967 [1- 4].Logistic regression can be seen as a special case of
regression. The model of logistic regression, however, is based on quite different assumptions (about the relationship
between dependent and independent variables) from those of linear regression [5].
In particular the key differences of these two models can be seen in the following two features of logistic regression. First,
the conditional distribution is a Bernoulli
variable is binary. Second, the predicted values are probabilities and are therefore restri
distribution function because logistic regression predicts the
Logistic regression is an alternative to Fisher's 1936 classification method,
linear discriminant analysis hold, application of
linear discriminant assumptions are true, logistic regression assumptions must hold. The converse is not true, so the logisti
model has fewer assumptions than discriminant analys
variables [8-9]. All the analysis were carried out using Statistical Package for Social Sciences [10
1.1 The Erythrocytes Sedimentation Rate
The erythrocyte sedimentation rate (ESR), al
cells sediment in a period of one hour. It is a common
The erythrocyte sedimentation rate (ESR) is the
Corresponding author: Aye P.O, E-mail: ayepatricko@gmail.com, Tel.:
Journal of the Nigerian Association of Mathematical Physics
163
Journal of the Nigerian Association of Mathematical Physics
Volume 37, (November, 201
Health Status Analysis of the Erythrocyte Sedimentation Rate (ESR) of Patients Using
Logistic Regression Method
Aye P.O, 2Ologbonyo J.J and 3Azuaba E.
Department of Mathematical Sciences, Adekunle Ajasin University, Akungba
Ondo State, Nigeria
Department of Mathematics, Federal University of Technology, Minna, Nigeria
Abstract
In this study, a logistic regression model was fitted using a secondary data from
the Institute of Medical Research, Kuala Lumpur, Malaysia which contained 32
observations and 3 variables(Fibrinogen ( ), γ-Globulins ( ) and Health Status).
Three logistic regression models were constructed namely: the null model (model with
only the constant), model with the two predictors and model with the best
predictor.Backward selection procedure was used in this study to select the best
variable that contributes to the outcome of the erythrocyte sedimentation rate (ESR).
The logistic regression models were constructed for the data with their corresponding
accuracy and precision at 95% confidence level.Various tests were carried out to
validate the models obtained.The result shows that only Fibrinogen contributed
significantly to the outcome of the erythrocyte sedimentation rate (ESR) while γ
do not really contributed. It is indeed possible to predict whether a patient is
healthy or not based on the values of Fibrinogen ( ) and γ-Globulins ( ) of an
t was discovered that the Fibrinogen ( ) is the best predictor to use
in predicting whether a patient is healthy or not.The best model was the model with
the two predictors with 87.5% accuracy.