Predicting the Causal Effect Relationship Between COPD and Cardio Vascular Diseases
DOI:
https://doi.org/10.31449/inf.v44i4.3088Abstract
Coronary Obstructive Pulmonary Disease (COPD) is one of the critical factors that areaffecting the health of the population worldwide and in most cases affects the patientwith cardiovascular diseases and their mortality. The onset of COPD in a patient in mostof the cases affects him/her with cardio vascular disease and the management of the dis-ease becomes more complex for medical practitioners to handle. The factors affectingCOPD and cardiovascular disease in patients are most of the times, concurrent and areresponsible for their mortality. The list of factors and their underlying causes have beenidentified by experts and are treated with utmost importance before the patient suffersfrom an emergency condition and its management becomes even more difficult.This paper discusses the need to study COPD and the factors affecting it to avoidcardiovascular deaths. The dataset used for the study is a novel one and has beencollected from a Government Medical College, for study and experimentation. Classi-fication methods like Decision Trees, Random Forest (RF), Logistic Regression (LR),SVM (Support Vector Machine), KNN (K-Nearest Neighbours) and Naive Bayes havebeen used and Random Forests have given the best results with 87.5% accuracy. Theimportance of the paper is in the attempt to infer important links between the associ-ated features to predict COPD. To the best of our knowledge, such an attempt to inferthe decision regarding the prediction of COPD using Machine Learning classifiers hasnot been made yet. We have attempted to show an important correlation between theassociated features of COPD and compare different supervised classifiers to check theprediction performance after pre-processing the raw data. Coronary Pulmonate, Age,and Smoking have shown a strong correlation with the presence of COPD and the per-formance analyses of the classifiers have been shown using the ROC (Receiver OperatingCharacteristic) curve.References
G. E. Batista, R. C. Prati, and M. C.
Monard. A study of the behavior of several methods for balancing machine learning
training data. ACM SIGKDD explorations
newsletter, 6(1):20–29, 2004.
M. Cazzola, L. Calzetta, B. Rinaldi, C. Page,
G. Rosano, P. Rogliani, and M. G. Matera. Management of chronic obstructive pulmonary disease in patients with cardiovascular diseases. Drugs, 77(7):721–732, 2017.
J. R. Feary, L. C. Rodrigues, C. J. Smith,
R. B. Hubbard, and J. E. Gibson. Prevalence
of major comorbidities in subjects with copd
and incidence of myocardial infarction and
stroke: a comprehensive analysis using data
from primary care. Thorax, 65(11):956–962,
F. M. Franssen and C. L. Rochester. Comorbidities in patients with copd and pulmonary
rehabilitation: do they matter?, 2014.
Y. Fukuchi. The aging lung and chronic obstructive pulmonary disease: similarity and
difference. Proceedings of the American Thoracic Society, 6(7):570–572, 2009.
K. Ghoorah, A. De Soyza, and V. Kunadian.
Increased cardiovascular risk in patients with
chronic obstructive pulmonary disease and
the potential mechanisms linking the two
conditions: a review. Cardiology in review,
(4):196–202, 2013.
K. E. Holm, M. R. Plaufcan, D. W. Ford,
R. A. Sandhaus, M. Strand, C. Strange, and
F. S. Wamboldt. The impact of age on outcomes in chronic obstructive pulmonary dis-
COPD and Cardio Vascular Diseases Informatica 37 page 501–yyy 11
ease differs by relationship status. Journal of
behavioral medicine, 37(4):654–663, 2014.
S. Khan, P. Fell, and P. James. Smokingrelated chronic obstructive pulmonary disease (copd). Diversity and Equality in Health
and Care, 11(3-4):267–271, 2014.
R. Laniado-Labor´ın. Smoking and chronic
obstructive pulmonary disease (copd). parallel epidemics of the 21st century. International journal of environmental research and
public health, 6(1):209–224, 2009.
J. D. Maclay and W. MacNee. Cardiovascular disease in copd: mechanisms. Chest, 143
(3):798–807, 2013.
R. Mitchell, J. Michalski, and T. Carbonell.
An artificial intelligence approach. Springer,
D. Panda and S. R. Dash. Predictive system: Comparison of classification techniques
for effective prediction of heart disease. In
Smart Intelligent Computing and Applications, pages 203–213. Springer, 2020.
A. I. Papaioannou, K. Bartziokas,
S. Loukides, S. Tsikrika, F. Karakontaki, A. Haniotou, S. Papiris, D. Stolz, and
K. Kostikas. Cardiovascular comorbidities in
hospitalised copd patients: a determinant of
future risk? European Respiratory Journal,
(3):846–849, 2015.
B. N. Patel, S. G. Prajapati, and K. I.
Lakhtaria. Efficient classification of data
using decision tree. Bonfring International
Journal of Data Mining, 2(1):06–12, 2012.
J. Quint. The relationship between copd and
cardiovascular disease. Tanaffos, 16(Suppl
:S16, 2017.
K. F. Rabe, J. R. Hurst, and S. Suissa. Cardiovascular disease and copd: dangerous liaisons? European Respiratory Review, 27
(149), 2018.
L. Roever et al. Translational medicine.
A. Shujaat, R. Minkin, and E. Eden. Pulmonary hypertension and chronic cor pulmonale in copd. International journal of
chronic obstructive pulmonary disease, 2(3):
, 2007.
D. D. Sin and S. P. Man. Chronic obstructive
pulmonary disease as a risk factor for cardiovascular morbidity and mortality. Proceedings of the American Thoracic Society, 2(1):
–11, 2005.
A. Undas, P. Kaczmarek, K. Sladek,
E. Stepien, W. Skucha, M. Rzeszutko,
I. Gorkiewicz-Kot, and W. Tracz. Fibrin clot properties are altered in patients
with chronic obstructive pulmonary disease.
Thrombosis and haemostasis, 102(12):1176–
, 2009.
Y. Yang, J. Li, and Y. Yang. The research
of the fast svm classifier method. In 2015
th International Computer Conference on
Wavelet Active Media Technology and Information Processing (ICCWAMTIP), pages
–124. IEEE, 2015.
Downloads
Published
How to Cite
Issue
Section
License
I assign to Informatica, An International Journal of Computing and Informatics ("Journal") the copyright in the manuscript identified above and any additional material (figures, tables, illustrations, software or other information intended for publication) submitted as part of or as a supplement to the manuscript ("Paper") in all forms and media throughout the world, in all languages, for the full term of copyright, effective when and if the article is accepted for publication. This transfer includes the right to reproduce and/or to distribute the Paper to other journals or digital libraries in electronic and online forms and systems.
I understand that I retain the rights to use the pre-prints, off-prints, accepted manuscript and published journal Paper for personal use, scholarly purposes and internal institutional use.
In certain cases, I can ask for retaining the publishing rights of the Paper. The Journal can permit or deny the request for publishing rights, to which I fully agree.
I declare that the submitted Paper is original, has been written by the stated authors and has not been published elsewhere nor is currently being considered for publication by any other journal and will not be submitted for such review while under review by this Journal. The Paper contains no material that violates proprietary rights of any other person or entity. I have obtained written permission from copyright owners for any excerpts from copyrighted works that are included and have credited the sources in my article. I have informed the co-author(s) of the terms of this publishing agreement.
Copyright © Slovenian Society Informatika