The evaluation of ordinal regression model's performance through the implementation of multilayer feed-forward neural network: a case study of hypertension
Background Hypertension, or high blood pressure, is a common medical condition that affects a significant portion of the global population. It is a major risk factor for cardiovascular diseases (CVD), stroke, and kidney disorders. Objective The objective of this study is to create and validate...
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Main Authors: | , , , , , , , |
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Format: | Article |
Language: | English |
Published: |
Springer Nature
2024
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Subjects: | |
Online Access: | http://irep.iium.edu.my/117524/1/117524_The%20evaluation%20of%20ordinal%20regression%20model%27s%20performance.pdf http://irep.iium.edu.my/117524/ https://www.cureus.com/articles/229713-the-evaluation-of-ordinal-regression-models-performance-through-the-implementation-of-multilayer-feed-forward-neural-network-a-case-study-of-hypertension#!/ https://doi.org/10.7759/cureus.54387 |
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Summary: | Background
Hypertension, or high blood pressure, is a common medical condition that affects a significant portion of
the global population. It is a major risk factor for cardiovascular diseases (CVD), stroke, and kidney
disorders.
Objective
The objective of this study is to create and validate a model that combines bootstrapping, ordered logistic
regression, and multilayer feed-forward neural networks (MLFFNN) to identify and analyze the factors
associated with hypertension patients who also have dyslipidemia.
Material and methods
A total of 33 participants were enrolled from the Hospital Universiti Sains Malaysia (USM) for this study. In
this study, advanced computational statistical modeling techniques were utilized to examine the
relationship between hypertension status and several potential predictors. The RStudio (Posit, Boston, MA)
software and syntax were implemented to establish the relationship between hypertension status and the
predictors.
Results
The statistical analysis showed that the developed methodology demonstrates good model fitting through
the value of predicted mean square error (MSE), mean absolute deviance (MAD), and accuracy. To evaluate
model fitting, the data in this study was divided into distinct training and testing datasets. The findings
revealed that the results strongly support the superior predictive capability of the hybrid model technique. In
this case, five variables are considered: marital status, smoking status, systolic blood pressure, fasting blood
sugar levels, and high-density lipoprotein levels. It is important to note that all of them affect the hazard
ratio: marital status (β1, -17.12343343; p < 0.25), smoking status (β2, 1.86069121; p < 0.25), systolic blood
pressure (β3, 0.05037332; p < 0.25), fasting blood sugar (β4, -0.53880322; p < 0.25), and high-density
lipoprotein (β5, 5.38065556; p < 0.25).
Conclusion
This research aims to develop and extensively evaluate the hybrid approach. The statistical methods
employed in this study using R language show that regression modeling surpasses R-squared values in
predicting the mean square error. The study's conclusion provides strong evidence for the superiority of the
hybrid model technique. |
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