Logo-jrhs
J Res Health Sci. 2022;22(2): e00549.
doi: 10.34172/jrhs.2022.84
PMID: 36511261
PMCID: PMC9818037
Scopus ID: 85134624178
  Abstract View: 574
  PDF Download: 171
  Full Text View: 178

Original Article

Time to Kidneys Failure Modeling in the Patients at Adama Hospital Medical College: Application of Copula Model

Firomsa Shewa*, Selamawit Endale, Gurmessa Nugussu, Jaleta Abdisa, Ketema Zerihun, Akalu Banbeta
*Corresponding Author: Email: firomsashewa.stat@yahoo.com

Abstract

Background: Kidney failure is a common public health problem around the world. The vast majority of kidney failure cases in Sub-Saharan African nations, including Ethiopia, go undetected and untreated, resulting in practically certain mortality cases. This study was aimed primarily to model the time to (right and left) kidneys failure in the patients at Adama Hospital Medical College using the copula model.

Study design: A retrospective cohort study.

Methods: The copula model was used to examine join time to the right and left kidneys failure in the patients by specifying the dependence between the failure times. We employed Weibull, Gompertz, and Log-logistic marginal baseline distributions with Clayton, Gumbel, and Joe Archimedean copula families.

Results: This research comprised a total of 431 patients, out of which, 170 (39.4%) of the total patients failed at least one kidney during the follow-up period. Factors such as sex, age, family history of kidney disease, diabetes mellitus, hypertension, and obesity were found to be the most predictive variables for kidney failure in the patients. There was a 41 percent correlation between the patients’ time to the right and left kidneys failure.

Conclusion: The patients’ kidney failure risk factors included being a male, older adult, obese, hypertensive, diabetic and also having a family history of kidney disease. The dependence between the patient’s time to the right and left kidneys failure was strong. The best statistical model for describing the kidney failure datasets was the log-logistic-Clayton Archimedean copula model.

First Name
Last Name
Email Address
Comments
Security code


Abstract View: 575

Your browser does not support the canvas element.


PDF Download: 171

Your browser does not support the canvas element.


Full Text View: 178

Your browser does not support the canvas element.

Submitted: 02 Mar 2022
Revision: 12 Jul 2022
ePublished: 30 Jun 2022
EndNote EndNote

(Enw Format - Win & Mac)

BibTeX BibTeX

(Bib Format - Win & Mac)

Bookends Bookends

(Ris Format - Mac only)

EasyBib EasyBib

(Ris Format - Win & Mac)

Medlars Medlars

(Txt Format - Win & Mac)

Mendeley Web Mendeley Web
Mendeley Mendeley

(Ris Format - Win & Mac)

Papers Papers

(Ris Format - Win & Mac)

ProCite ProCite

(Ris Format - Win & Mac)

Reference Manager Reference Manager

(Ris Format - Win only)

Refworks Refworks

(Refworks Format - Win & Mac)

Zotero Zotero

(Ris Format - Firefox Plugin)